Great Lakes Coastal Wetlands Monitoring Plan
               I
       fifer*.
                             Developed by the
                      Great Lakes Coastal Wetlands Consortium,
                      A project of the Great Lakes Commission

                              Funded by the
                     United States Environmental/ Protection Agency
                        Great Lakes National Program Office
                               March 2008

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                              Table of Contents
Editors	8

Authors	8

Acknowledgments	10

Executive Summary	12
  Statistical Design	13
  Chemical/Physical and Land Use/Cover Measurements	13
  Vegetation Community Indicators	14
  Invertebrate Community Indicators	14
  Fish Community Indicators	15
  Amphibian and Bird Community Indicators	15
  Landscape-Based Indicators	16
  Cost Analysis for Sampling Great Lakes Coastal Wetlands	17
  Data Management System	18
  Partnerships for Implementation	18
  Final Summary Recommendations	19

Chapter 1 Statistical Design	20
  Sampling design	21
  Sample Size Considerations and Ability to Detect Change	27
  Recommendations	28
  References	30

Chapter 2 Chemical/Physical and Land Use/Cover Measurements	31
  General Interpretation of Covariates	32
  References	33

Chapter 3 Vegetation Community Indicators	34
  Introduction	35
  Materials and Methods	40
  Interpretation of results	51
  Data handling and storage	51
  References	52

Chapter 4 Invertebrate Community Indicators	61
  Introduction	62
  Materials and Methods	63
  Limitations and Applicability of the IBI	64
  Discussion	70
  Synopsis - Current recommendations and future work	71
  References	75

Chpater 5 Fish Community Indicators	79
  Introduction	80
  Materials and Methods	81
  Worksheet for Calculating IBI Scores	85
  Limitations and alternate analyses	89
  References	90

Chapter 6 Amphibian Community Indicators	94
  Introduction	95
  Materials and Methods	96
  Interpretation of Results	.	98
  Data Handling and Storage	104
  Limitations	104
  References	105

Chapter 7 Bird Community Indicators	118
  Introduction	119
www glc org/wetlands

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   Materials and Methods	120
   Interpretation of Results	123
   Data Handling and Storage	128
   Limitations	128
   References	129

Chapter 8 Landscape-Based Indicators	145
   Introduction	135
   Existing Landscape Indicators	136
   Other Applications of Coastal Wetlands Landscape Monitoring Protocols	141
   Wetlands and Landscape Mapping Programs	143
   Spatial and Temporal Monitoring Considerations	143
   Remote Sensing and Ancillary Data Sources	145
   Innovative Remote Sensing Methods	152
   GLEI Stressor Gradient	157
   Recommended Long-Term Landscape Monitoring Protocols	160
   Implementation Approaches	164

Chapter 9 Cost Analysis for Sampling of Great Lakes Coastal Wetlands	172
   Introduction	173
   Objectives and background	173
   Methods	174
   Assumptions and limitations	183
   Results	184
   Case studies	185
   Summary	189
   References	190

Chapter 10 Data Management System	192
   Introduction	193
   System Design	194
   System Inputs and Outputs	194

Chapter 11  Partnerships for Implementation	203
   Partnerships for Implementation	204
   The Need for Partnership	204
   Existing and Historical Great Lakes Coastal Wetland Monitoring	205
   Framework for Implementation	210
   Implementation Strategy	226
   References	22632

Monitoring Great Lakes Coastal Wetlands: Summary Recommendations	234
   Introduction	235
   An Overview of the Monitoring Program	235
   Recommended Indicators and Procedures	237

Appendix A. Great Lakes Coastal Wetlands Classification	240

Appendix B. Validation and Performance of an Invertebrate Index of Biotic Integrity for Lakes Huron
and Michigan Fringing Wetlands During a Period of Lake Level Decline	24047

Appendix C. Fish Habitat Use Within and Across Wetland Classes in Coastal Wetlands of the Five Great
Lakes: Development of a Fish-based Index of Biotic Integrity	24068
                                                         Great Lakes Coastal Wetlands Monitoring Plan

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                              Tables and Figures
Figure 1-1. Conceptual illustration of terms used to describe various units associated with sampling a
population of interest. Each square represents a different wetland within the sampling region of interest.   22
Table 1-1 Tabular organization of response values, averages and slopes (Urquhart et al  1998). Note that in
the context of Consortium: sampling unit = wetland.                                               24
Figure 1-2. Examples of four different revisit designs,  beginning with the simplest, in which a single panel or set
of sampling units are visited on every sampling occasion, and ending with a complex partially augmented
serially alternating design (Urquhart et al. 1998).                                                   25
Figure 1-3. Partitioning of each panel into subpanels for Design 4 (Urquhart, N S , and Kincaid, T.M. 1999).   26
Table 1-2. Tabular organization of response values, averages and slopes (Sokal ,etal. 1981).             28
Table 3-1. Floristic Quality Assessment output for Mackinac Bay, Lake Huron.                           39
Table 3-2. Comparison of Native Mean C and Total Mean C scores  for three Great Lakes Marshes on lakes
Huron and Ene.                                                                               40
Figure 3-1. This aerial photo view of a wetland along northern Lake Huron  shows the location of three
transects, each beginning at the upland edge of the wetland and continuing south across the meadow
zone (white) and the emergent/submergent zone (dark). The transects end at the edge of the emergent
zone, even though there may be continued vegetation in a more open submergent zone  This open
vegetation cannot typically be seen easily on aerial photos. Photo A shows 15 sampling points in each of the
two zones. Photo insert B shows that if a narrow portion of this wetland, or a wetland that was narrow along its
entire length, were being sampled, that the transects would need to be configured at an angle to the
wetland's slope to allow for all 30 points to be placed. Locating the points along transects allows for more
rapid sampling than the random sampling shown in Figure 3-2                                       41
Figure 3-2. Random sampling of the wetland shown in figure 1. Random sampling can  be configured utilizing
GIS software, or by physically (or electronically) placing a grid over the photo and randomly choosing
sampling points.                                                                              42
Table 3-3. Wetland quality based on aquatic macrophyte sampling                                 45
Table 3-4. Mean Conservatism Scores for each regional marsh type                                  47
Table 3-5. Flow chart for determining quality rating  of submergent marsh zone or submergent component of
an emergent marsh zone.                                                                      49
Table 3-6. Species tolerant of nutrient enrichment, sedimentation, or increased  turbidity                50
Table 3-7. Combined standardized score from Table 3.3, Rows A-l and Table 3.5.                      50
Table 3-8. Examples of Combined Standardized Scores for five nvenne wetlands                       50
Table 4-1. Summary of the status of invertebrate assessment metrics developed or in development for     66
Great Lakes coastal wetlands by some key research groups. (Definitions provided on next page.)         66
Figure 4-1. Consortium invertebrate sampling locations relative to the "Sum_Rel" overall landscape stressor
scores.                                                                                       72
Table 4-2. Wet Meadow Zone: Dominated by Carex and Calamagrostis                              73
Table 4-3. Inner Scirpus Zone: Often dense Scirpus mixed with Pontedana and submergents, protected from
wave action.                                                                                 73
Table 4-4. Outer Scirpus Zone. Sometimes relatively sparse, usually monodommant stands, subject to direct
wave action.                                                                                 74
Figure 5-1. Mean values per net-night for Schoenoplectus zones For further reference, see Appendix C
(Uzarski, et al. 2003) at the end of this document.                                                  86
Figure 5-2. The IBI of Uzarski et al 2005 recommend  by the GLCWC  Data are collected using fyke nets For
further reference, see Appendix C (Uzarski, et al. 2003) at the end of this document.                    87
Table 5-1. Recommended Landscape and Water Quality Parameters to Record During  Field Surveys      88
Table 6-1. Checklist of supplies needed for the MMP amphibian monitoring protocols.                   98
Table 6-2. The approximate number of sites required to detect a difference in IBIs within an area of interest
(e.g.. Great Lakes basin, lake basin, state, region). IBIs are expressed out of 100 with higher scores indicating
amphibian communities in better condition.                                                      98
Table 6-3. Classification of Great Lakes amphibian species into community guilds.                      99
Table 6-4. A description of metnc codes used in the amphibian-based coastal wetland IBI.              99
Table 6-5. Amphibian community based coastal wetland IBIs (out of 100) for a subset of sites sampled south
of the Canadian Shield by  MMP surveyors from 1995-2003. Higher scores indicate amphibian communities in
better biotic condition.                                                                       101
Table 7-1. Checklists                                                                          122
Table 7-2. The approximate number of sites required to detect a difference in IBIs within an  area of interest
(e.g.. Great Lakes basin, lake basin. State, Region).  IBIs are expressed out of 100 with higher scores indicating
marsh bird communities in better condition                                                      122

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Table 7-3. A descnption of metric codes used in the marsh bird IBI.                                   123
Figure 7-1. Illustration of marsh user categories for bird species based on marsh use.                   124
Table 7-4. Coastal wetland marsh bird IBIs (out of 100) for a subset of sites sampled in Ecoregion 8 by MMP
surveyors from 1995-2003  Higher scores indicate marsh bird communities in better biotic condition.       126
Figure 8-1. Mean wetland connectivity, a measure of landscape fragmentation, in a one-kilometer coastal
region of the entire Great Lakes basin Because these analyses use two differing land cover data sets, results
for (a) U.S. and (b) Canada may not be directly comparable  (from Lopez et al, 2005).                 138
Figure 8-2  Percentage of perforated wetland, a measure of wetland connectivity-, in a one-kilometer coastal
region of the Great Lakes basin  Because these analyses use two differing land cover data sets, results for (a)
U.S. and (b) Canada may not be directly comparable (from Lopez et al., 2005)                       139
Figure 8-3. Mean minimum distance to closest like-type wetland patch (i.e., emergent-to-emergent, forested-
to-forested, and scrub/shrub-to-scrub/shrub) within each hydrologic unit. Because these analyses use two
differing land-cover data sets, results for (a) U.S. and (b)  Canada may not be directly comparable (from
Lopez et al., 2005).                                                                            139
Figure 8-4  The Shannon-Wiener  Index is one of several ways to measure the diversity of land-cover types
within a specific area of the landscape. The Shannon-Wiener values increase as the number of land-
cover/land-use types within the  reporting unit increases  Because these analyses use differing land-cover
data sets, results for the U.S and Canada are not directly comparable (from Lopez et al., 2005).         140
Figure 8-5. Simpson's Index is a measure of the evenness of the distribution of land-cover classes within a
specific area of the landscape.  Because these analyses use differing land-cover data sets, results for the U.S.
and Canada are not directly comparable (from Lopez et al., 2005).                                 141
Table 8-1. Listing of available landscape maps from historical and ongoing mapping programs          143
Table 8-2. List of current and historical sensor data available, the spectral regions in which they work, spatial
resolution, swath size and revisit  time, penod of operation, approximate cost and a link to further information
on each sensor and where the data can be obtained                                             148
Figure 8-12. Watersheds (3,591) delineated for the U.S. side of the Great Lakes basin (2007).             157
Figure 8-14. Integrated Sum-Rel score for the 3,590 U.S./Canadian Great Lakes watersheds (T. Hollenhorst,
NRRI, University of Minnesota et al. in prep).                                                      159
Table 8-3. List of datasets suitable for ecological monitoring efforts.                                  162
Table 8-4. List of selected landscape metncs used in environmental indicator and assessment work.      163
Table 9-1. Cost estimates of equipment needed for the sampling of wetland water chemistry            175
Table 9-2. Cost estimates of equipment needed for the sampling of wetland plants                    176
Table 9-3. Cost estimates of equipment needed for the sampling of wetland invertebrates              176
Table 9-4 Cost estimates of equipment needed for the sampling of wetland fish                       176
Table 9-5. Cost estimates of equipment needed for the sampling of wetland amphibians               177
Table 9-6. Cost estimates of equipment needed for the sampling of wetland birds                     177
Table 9-7. Cost estimates of equipment needed for the sampling of wetland landscape attnbutes       177
Table 9-8. Cost estimates of equipment needed for general wetland sampling. These costs are shared by all
indicators                                                                                    178
Table 9-9. Estimates of total costs and consumables for equipment to sample each indicator            179
Table 9-10. Estimates of costs for equipment possibly owned by agencies                            179
Table 9-11. Estimates of the sampling time, training time and training cost for wetland indicator sampling  180
Figure 9-1. Example of the Cost Estimator Tool in Excel.                                             182
Table 9-12. Estimates of startup,  per wetland and total costs for the sampling of each indicator at one site
and ten sites all ten miles away.                                                                 184
Figure 9-2. Cost estimate for the  minimalist scenario                                               186
Figure 9-3. Cost estimate for the no-expense-spared scenario                                       187
Figure 9-4. Cost estimate for the  middle-ground scenario                                          188
Table 11-1  Results from Consortium Phone Survey: Current Agency Monitoring  Efforts and Partnerships    213
Table 11 -2. Results from Consortium Phone Survey - State agency staffing and  available equipment for each
Consortium indicator and anticipated training needs.                                             215
Table 11 -3. Current coastal wetland monitoring efforts and partnerships among potential Canadian
Consortium partners  who responded to information inquiries                                        222
Table 11 -4. Expertise  and equipment availability, and training requirements for each Consortium indicator,
among potential Canadian Consortium partners who responded to information inquiries.               224
Figure 11-1. Framework for Adaptive Management                                               230
                                                           Great Lakes Coastal Wetlands Monitoring Plan

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                                               Editors
                                   Thomas M Burton, Michigan State University
                                     John C. Brazner, Inland Waters Institute
                                    Jan J H. Ciborowksi, University of Windsor
                                      Greg P. Grabas, Environment Canada
                                     John Hummer, Great Lakes Commission
                           John Schneider, U.S. EPA Great Lakes National Program Office
                                  Donald G Uzarski, Central Michigan University
                                              Authors
Chapter I - Statiscal Design
Donald G. Uzarski, Central Michigan University
Sango Otieno, Grand Valley State University

Chapter 2 - Chemical/Physical and Land Use/Cover
Measurements
Donald G. Uzarski, Central Michigan University
Thomas M. Burton, Michigan State University
Jan J H. Ciborowski, University of Windsor

Chapter 3 - Vegetation Community Indicators
Dennis A Albert, Michigan State University Extension -
    Michigan Natural Features Inventory

Chapter 4 - Invertebrate Community Indicators
Donald G. Uzarski. Central Michigan University
Thomas M. Burton, Michigan State University
John C. Brazner, Inland Waters Institute
JanJ.H. Ciborowski, University of Windsor

Chapter 5 - Fish Community Indicators
Donald G. Uzarski, Central Michigan University
Thomas M. Burton, Michigan State University
John C. Brazner, Inland Waters Institute
JanJ.H. Ciborowski, University of Windsor

Chapter 6 - Amphibian Community Indicators
Steven T. A. Timmermans, Bird Studies Canada
Tara L Crewe, Bird Studies Canada
Greg P Grabas, Environment Canada -
    Canadian Wildlife Service

Chapter 7 - Bird Community Indicators
Greg P. Grabas, Environment Canada -
    Canadian Wildlife Service
Tara L Crewe, Bird Studies Canada
Steven T. A. Timmermans, Bird Studies Canada

Chapter 8 - Landscape-Based Indicators
Laura L  Bourgeau-Chavez, Michigan Tech Research
    Institute
Ricardo D. Lopez, U.S EPA - Office of Research and
    Development
Anett Trebitz, U.S. EPA, Mid-Continent Ecology Division
Thomas Hollenhorst, University of Minnesota Duluth -
    Natural Resources Research Institute
George E. Host, University of Minnesota Duluth -
    Natural Resources Research Institute
Brian Hubert/, U.S. Fish and Wildlife Service -
    R-3 Ecological Services
Roger L. Gauthier, Great Lakes Commission
John Hummer, Great Lakes Commission

Chapter 9 - Cost Analysis for Sampling Great Lakes
Coastal Wetlands
Marci Meixler, Cornell University

Chapter 10 - Data Management System
Stuart Eddy, Great Lakes Commission
Richard D. Garcia, Great Lakes Commission

Chapter 11 - Partnerships for Implementation
Tracy L. Collm, Michigan Department of Environmental
    Quality
John Hummer, Great Lakes Commission
Knsta Holmes, Environment Canada -
    Canadian Wildlife Service
Ryan W. Archer, Bird Studies Canada

Monitoring Great Lakes Coastal Wetlands:
Summary Recommendations
Thomas M. Burton, Michigan State University
www glc org/wetlonds

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                                Acknowledgments
The authors and editors of this document gratefully acknowledge the following individuals and their
organizations for their contributions to this document:
                                                     Chapter 10 - Data Management System
                                                     Valerie J. Brady, University of Minnesota Duluth -
                                                         Natural Resources Research Institute
                                                     Krista Holmes, Environment Canada -
                                                         Canadian Wildlife Service
                                                     Denis Lepage, Bird Studies Canada
                                                     Marci Mender, Cornell University

                                                     Chapter 11 - Partnerships for Implementation
                                                     Peg Bostwick, Michigan Department of
                                                         Environmental Quality
Chapter 3 - Vegetation Community Indicators
Greg P Grabas, Environment Canada -
    Canadian Wildlife Service
Carol A. Johnston, South Dakota State University
John J. Mack, Cleveland Metroparks
Douglas A. Wilcox, U.S. Geological Survey -
    Great Lakes Science Center

Chapter 8 - Landscape-Based Indicators
Dennis A. Albert, Michigan State University
    Extension - Michigan Natural Features Inventory
Nancy French,  Michigan Tech Research Institute
Marcelle Grenier, Environment Canada
Krista Holmes,  Environment Canada -
    Canadian Wildlife Service
Laura Simonson, U.S. Geological Survey

The following individuals and organizations are gratefully acknowledged for their contributions to this
project:
Mark Bam, Cornell University
Peg Bostwick, Michigan Department of Environmental Quality
Ferenc A. De Szalay, Kent State University
Kim Fernie, Environment Canada - Canadian Wildlife Service
Robert W. Howe, Univensty of Wisconsin - Green Bay
Joel W. Ingram, (formerly)  Environment Canada - Canadian Wildlife Service
Lucmda B. Johnson, University of Minnesota Duluth - Natural Resources Research Institute
Ric Lawson, (formerly) Great Lakes Commission
Greg Mayne, Environment  Canada - Canadian Wildlife Service
Mary F. Moffett, U.S. EPA,  Mid-Continent Ecology Division
Gerald J. Niemi, University of Minnesota Duluth - Natural Resources Research Institute
Thomas Rayburn, (formerly) Great Lakes Commission
Karen Rodriguez, U.S. EPA - Great Lakes National Program Office
Julie Wagemakers, (formerly) Great Lakes Commission

Environment Canada - Canadian Wildlife Service gratefully acknowledges contributions to the Great
Lakes Coastal Wetlands  Consortium by:

Managerial Support
Joel Ingram, Lesley Dunn, Graham Bryan, Nancy Patterson, Donna Stewart, and Simon Llewellyn

Field Staff and Project Support
David Praskey, Carrie Sadowski, Barb Crosbie, Lenny Shirose, Maggie Galloway, Rob Read, Shawn Meyer, Paul
Watton, Brian Potter, Tamara Gomer, Nicholas Stow, Richard "Woody" Hamel, Jon Gorniak, Knstma Kostuk, and
Kate Gee. Satu Peranen, and Ian Kelsey

The Durham Region Coastal Wetland Monitoring Project (DRCWMP) was initiated in 2001  and has contributed to
the GLCWC process through Environment Canada - Canadian Wildlife Service The following contributors and
partners of the DRCWMP  are acknowledged for their role in advancing coastal wetland science:
                                                             Great Lakes Coastal Wetlands Monitoring Plan

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Central Lake Ontario Conservation Authority
Toronto and Region Conservation Authority
Ganaraska Region Conservation Authority
University of Toronto
University of Windsor
Regional Municipality of Durham
Ontario Power Generation
Editorial and Design Support - Great Lakes Commission
Christine Mannmen, Kirk Haverkamp, Elizabeth Schmidt

Photo Credits
Cover (top left to bottom right): Ohio wetland with sedges; courtesy USDA Natural Resources Conservation
Service, Romy Myszka Canoe and dock, Lake Superior Bark Bay, Wisconsin; courtesy Karen Rodriguez, U.S.
Environmental  Protection Agency. Lake Ontario near Syracuse, N.Y.; courtesy John Hummer, Great Lakes
Commission. Wetland within Illinois Beach State Park, Illinois; courtesy David Riecks, Illinois-Indiana Sea Grant
Lakeview Wildlife Management Area, Lake Ontario Eastern Basin; courtesy M Knutson, The Nature Conservancy,
Central and Western New York Chapter. East Bay Marshes, Lake Ontario New York; courtesy New York State
Department of Environmental Conservation. Wetland within Indiana Dunes National Lakeshore, Lake Michigan,
Indiana; courtesy David Riecks, Illinois- Indiana Sea Grant. Wetland pasture, Ontario, Canada; courtesy USDA
Natural Resources Conservation Service, Romy Myszka. Lotus-m situs, Michigan; courtesy National  Park Service,
Indiana Dunes National Lakeshore.
www glc org/wetlands

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                                   Executive Summary
This document represents nearly seven years of work that has resulted in a long-term plan to monitor Great Lakes
coastal wetlands using a scientifically validated sampling design and suite of indicators and metrics developed by many
project partners   It includes a thorough cost analysis chapter that describes estimated costs associated with each
element of the plan The document should be of great value and benefit to agencies planning to incorporate coastal
wetland monitoring into their overall monitoring strategy.

This document recommends multiple biological protocols and metrics for  monitoring the condition of Great Lakes
coastal  wetlands -  including those for plants, invertebrates, fish, amphibians,  and birds  Also recommended is a
design for sampling Great Lakes coastal wetlands that allows users to monitor condition of these wetlands on an
annual basis  With a combination of repeated site visits and random sampling of other wetlands on an annual basis,
users can establish status and trends (positive, negative, no change) of wetland condition for a given site, region, or
for all Great Lakes coastal wetlands

The objective of environmental monitoring is to establish the condition of ecosystems relative to reference conditions
(the least impacted ecosystems in the area being monitored) and track changes in condition through time  Monitoring
data  are  used to establish  baseline conditions, temporal trends and compliance with regulatory requirements
Comprehensive monitoring is important to  detect  subtle changes to  the  environment that could have long-term
negative consequences if not recognized and addressed

The Great Lakes have  benefited greatly from environmental monitoring Decisions made by considering the results of
effective monitoring programs have permitted the Great Lakes community  to set fish consumption guidelines, better
understand the health of Great Lakes fisheries, curb the loss of important wetlands, maintain safe air and drinking
water, post public beach closings to avoid illness, control the introduction of invasive species through early detection,
and maintain high  water  quality standards  These  are  just a few of the many  benefits of  maintaining a robust
environmental monitoring regime in the Great Lakes basin (Great Lakes Commission, 2006)

In the 1990s, the need for environmental indicators measuring the integrity of Great  Lakes coastal  wetlands was
identified, and many scientists and  regulators around the  Great Lakes began to work toward  developing indicators
that could be used  to effectively monitor coastal wetland quantity and quality  In 1994,  a seminal  paper  by The
Nature Conservancy's Great Lakes Program titled The Conservation of Biological Diversity in the Great Lakes Ecosystem
Issues and Opportunities, called  attention to Great Lakes coastal wetlands as "a system distinct to  the  Great  Lakes "
Further, the authors  underlined  the value of  Great Lakes coastal wetlands to the Great Lakes as a whole in  the
following excerpts from the paper

      "They [Great Lakes coastal wetlands] are ecologically unique because they are dominated by large lake processes such as water
    level fluctuations, wave actions, and  wind tides or "seiches " Spanning a diversity of types and the full geographic range,
    including freshwater estuaries, lagoons and deltas, Great Lakes coastal wetlands play a pivotal role in the aquatic ecosystem of
    the Great Lakes, storing and cy cling nutrients and organic materialJrom the land into the aquatic food web  They sustain large
    numbers of common or regionally rare bird, mammal, herptile and invertebrate species,  including land-based species that feed
    from the highly productive wetlands Most of the lakes'fish species depend upon them for some portion of their life cycles Large
    populations of migratory birds rely on them for staging and feeding areas Short- and long-term fluctuations in lake levels play
    a critical role in  maintaining both wetland and shoreline systems  The processes of sediment inputs and longshore transport are
    important in maintaining bars and spits that shelter waters of many highly productive wetlands "

Papers presented  at the 1996 and 1998  State of the Lakes Ecosystem Conferences (SOLEC) reported on the status of
Great Lakes coastal  wetlands Authors concluded that Great Lakes coastal wetlands were a valuable resource, but that
no system  was in  place to determine their status or to track wetlands  losses,  degradation or  improvements in
condition  Furthermore, although many organizations focused resources on specific Great Lakes coastal wetlands and
 10                                                                  Great Lakes Coastal Wetlands Monitoring Plan

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related issues, no one entity had responsibility for data collection and interpretation to determine basmwide status
and trends and/or disseminate results

To  continue development of indicators and  coordinate efforts leading  to  future Great  Lakes coastal wetland
monitoring, the U S  Environmental Protection Agency Great Lakes National Program Office (U S  EPA-GLNPO)
sent out a request for proposals (RFP) in spring 2000 for consortia to design an implementable, long-term program
to monitor Great Lakes coastal wetlands  The U S  EPA-GLNPO considered the creation  of a consortium, an
approach that could meet these purposes and capitalize on the existing mandates and authorities of the organizations
already working on Great Lakes coastal wetlands The Great Lakes Commission submitted a proposal in response to
the RFP and was awarded a grant to begin this work

Thus, the Great Lakes Coastal Wetlands Consortium (Consortium) was formed in 2000 with the goal of producing a
cohesive, long-term plan to monitor Great Lakes coastal wetlands  The Great Lakes Commission served as secretariat
for the Consortium and, through the efforts of many partners, this plan  has been completed  Since inception of the
Consortium, more than 50 organizations have contributed to this plan from initial pilot studies, to development of a
Great Lakes coastal  wetlands inventory and classification system,  drafting  of final coastal wetlands monitoring
protocols, to the design of a publicly accessible international database  The partners included scientific and policy
experts drawn from key U S  and Canadian federal, state and provincial agencies,  nongovernmental organizations,
academia, and members of other interest groups with responsibility for coastal wetlands monitoring

The following are summaries of each aspect of the plan The details of the plan have been included in the individual
chapters that follow


Statistical Design

The sampling design  specifies how wetlands should be selected and the number, type and location (spatial and/or
temporal) of wetland sampling units that are assessed The paramount purpose  of sampling designs within the context
of the Consortium's recommendations for monitoring is to ensure that  data collected  are representative  of an area
and are of adequate scope to support defensible (statistical) inference This permits one to draw logical conclusions
about wetlands  in federal,  tribal, regional, state  and provincial areas  of  responsibility  while maintaining  the
standardized sampling protocols necessary to draw conclusions regarding wetlands at the entire basin level  Deciding
how to sample is often difficult because one must consider trade-offs between costs and benefits of the amount  and
type of sampling undertaken Thus, any sampling design represents a balance between the study objectives and the
constraints of cost, time, logistics, safety and existing technology

Many aspects of statistical design  (in italics below) are addressed in this  chapter,  including those involving target
populations and sampling frames (Figure 1-1), allocation and arrangement of samples (membership design), frequency of
sampling occasions (revisit design), measurements to be taken at sampling locations (response design), and the number of
samples required to meet stated objectives (sample size)


Chemical/Physical and Land  Use/Cover Measurements

Basic chemical/physical parameters should be measured, and on-site observation of disturbance should be recorded at
the same time that biological sampling is undertaken  These data will be used as covanates, helping to account for
some of the statistical variability encountered during data analysis as well as providing the necessary information to
develop additional metrics for quantifying ecosystem health  Sampling and analytical procedures should follow those
recommended in Standard Methods for the Examination of Water and Wastewater (APHA 1998) or accepted U S
EPA, U S Geological Survey, Environment Canada, or other operating procedures as dictated by local agencies  It is
www glc org/wetlands                                                                                    11

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understood that logistic constraints may preclude the collection of some of these data, but it is essential that as many
as possible are collected

This chapter discusses several elements related to chemical/physical and  land use/cover measurements that are
important considerations For a coastal wetlands monitoring program These elements include:

       •  Ensuring use of properly serviced and calibrated equipment and detailed check-box field data sheets,
       •  Which parameters should be considered and included in the sampling design if deemed relevant and
          budgets allow,
       •  Quality assurance/quality control procedures,
       •  Site assessment protocols, and
       •  General Interpretation of Covanates
Vegetation Community Indicators
Emergent and submergent plants have been sampled in Great Lakes coastal wetlands for the purposes of classification,
identification of wetlands important for protection or acquisition, and characterization of wetlands for management
Sampling  has often been conducted  along  transects with  the purpose of identifying physical gradients  and
corresponding biological gradients or zones Relatively discrete vegetation zones occur at most coastal wetland sites
due to differences in water depth, substrate, and exposure to wind and wave energy  Wave energy also affects
wetland vegetation diversity  Plant sampling should be conducted in a way that insures that major plant zones are
included at each site Sites should also be subdivided by major coastal wetland type (riverine, drowned nvermouth,
open  embayment, closed embayment)   A classification of  coastal  wetlands was developed  by the Consortium
(Appendix  A  at  the  end  of this document)  and  is  also  available  on  the  Consortium's  web  page at
www glc org/wetlands

Plant  community attributes that correlated with marsh condition for all five of the Great Lakes were based on (1)
identifying and quantifying the distribution and coverage of invasive plants for  major plant zones and  overall, (2)
identifying significant changes to the submergent and  floating-leaved vegetation of the emergent and  submergent
marsh zones, and (3) comparing regional Mean Conservatism  Indices for Great Lakes coastal wetland types to a local
site's  Mean Conservatism Indices by plant zone and overall  These three attributes were incorporated into nine
metrics by dividing plant zones into wet and dry portions of the plant zone  Protocols for collecting each set of data
include a choice of using transects across the zones or using a sampling procedure with quadrats sampled by randomly
selected locations within a randomly selected subset of grid elements
Invertebrate Community Indicators
The invertebrate Index of Biotic Integrity (IBI) proposed and tested by Uzarski et al  (2004) appears to be the most
appropriate and most broadly applicable means of assessing invertebrate community condition currently available for
Great Lakes coastal wetlands  Other metrics are available for additional classes of wetlands, but they require data
collected by field methods that differ slightly or substantially from those of Uzarski et al (2004)  These alternative
methods are included where possible for comparison Furthermore, because these alternative IBIs are either still in
development or  testing  phase,  or  have not been  quantitatively  assessed  against  well-defined  gradients of
anthropogenic disturbance,  it is  premature  to  recommend  their  use  Thus,  the Uzarski  et al  protocol  is
recommended for sampling using the same protocol for all vegetation types and for all types of Great Lakes coastal
wetlands Metrics can be tested using data collected in the monitoring program and modified appropriately to extend
to other wetland types not included in the Uzarski et al  publication Alternative protocols can also be developed
using procedures developed by others after they have been cross-tested against the Uzarski et al protocol
12                                                                Great Lakes Coastal Wetlands Monitoring Plan

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Fish  Community Indicators
Great Lakes coastal wetlands provide critical habitat For more than 80 species of fish (Jude and Pappas 1992)  More
than 50 of these species depend  upon wetlands while  another 30+ migrate into and out of them during different
periods m their life history (Jude and Pappas 1992, Wilcox 199S, Wei et al  2004)  An additional 30+ species offish
may be occasional visitors to coastal wetlands based on occurrence in adjacent habitats (Jude and Pappas 1992, Wei et
al. 2004)

Fish have  long been included as key indicators in assessment of biotic integrity in streams (e.g , Karr et al  1986,
Lyons and Wang 1996) and to a lesser degree in lakes (e g , Fabrizio et al 1995, Whittier 1998) and  estuaries (e g ,
Jordan et al 1991,  Oeegan et al  1997)  Fish  had  historically  received little attention as indicators  of  wetland
condition, but recognition of their ecological  significance in Great  Lakes coastal wetlands (Jude and Pappas  1992)
generated considerable interest in using fish as indicators for these habitats (Wilcox et al  2002, Timmermans and
Craigie 2003, Environment Canada and Central Lake Ontario Conservation Authority 2004, Uzarski et al  2005)

This chapter provides step-by-step detail of the Consortium-developed fish IBI, which is based on multiple metrics for
Typha (cattail) & Schoenoplectus (bulrush)-dominated wetlands in relation to water quality and agricultural/urban land-
use stresses (Uzarski et al. 2005) The chapter also compares the Consortium-developed  monitoring protocols to
alternative methods developed using fish as an  indicator for coastal wetland health The fish  metrics have been  tested
for all  five Great Lakes and can be utilized across the basin at present These metrics can be modified and improved
using data collected as the monitoring program is adopted basmwide


Amphibian  and Bird Community Indicators

Being directly associated with the Great Lakes hydrological influences, lacustrine or coastal wetlands are among the
most important wetlands  that occur within the Great Lakes basin  A  high proportion of the Great Lakes basin's
wildlife species inhabit wetlands during part of their life cycle,  and  numerous  bird  species federally listed as
threatened or endangered  in the  United States or of conservation concern in Ontario are associated  with wetlands
Although much is known about many landbird species of the Great Lakes, the ecology of most marsh-dependent birds
has received much less attention, and relatively little is known about species such as rails and other secretive  marsh
birds

Similarly, several frog and toad species are associated with wetlands of the Great Lakes basin  Amphibians rely heavily
on  aquatic environments  for reproduction and other life sustaining purposes Most amphibians inhabit  wetland
environments during most or part of their life cycle, and among the amphibian class, frogs and toads generally rely
most heavily on wetland systems   Amphibians  may also be the most sensitive vertebrates to aquatic and atmospheric
pollution, and therefore may be  deemed highly useful early warning  indicators of wetland pollution  and habitat
degradation

As  recently as the 1990s, researchers began to realize that marsh bird and amphibian populations were declining in
the Great Lakes basin However, the  magnitude and geographic extent of these declines was still  uncertain The
uncertainty  surrounding the nature of the declines was  primarily due  to lack of extensive, scientifically rigorous,
consistently collected data, as well as a lack of detailed population information on localized metapopulations

As  a result  of the loss and degradation of marsh habitats throughout the Great Lakes  basin, there  was increasing
concern  among  citizens  and scientists  that continued  stresses,  including urban,  industrial  and  agricultural
development were negatively affecting marsh-dependent wildlife populations and other marsh functions such as water
quality  improvement  Consequently, Bird Studies Canada (BSC), in partnership  with Environment  Canada,
developed the Marsh Monitoring Program (MMP) in Ontario in  1994 With substantial financial support from U S
www glc org/wetlands                                                                                     13

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EPA-GLNPO and the Great Lakes Protection Fund, the MMP was launched bmationally throughout the Great Lakes
basin in 1995 and has continued to operate annually since

The methodological framework used to create coastal wetland indices of biotic integrity (IBI) relied on nine years of
MMP data and was similar for both  the bird and anuran communities Within each community, attributes (e g  ,
species richness and  abundance of marsh birds, species richness and presence/absence of anurans) that responded
significantly to disturbance across  sites were  identified  The  field-based values for responsive  attributes (called
metrics)  were standardized  All metrics were then combined to give a quantitative measure of the condition of the
community

The  marsh bird community IBI  incorporated  guilds that represent disturbance-sensitive  marsh-nesting birds and
general marsh-users  The metrics used were (1) abundance of  non-aerial foragers, (2) abundance of marsh nesting
obligates, and (3) species richness (number of species present in a sample) of area-sensitive marsh nesting obligates

The amphibian community  IBI also incorporated three metrics  (1) total species richness,  (2) species richness of
woodland species, and (3) probability  of detecting a woodland species within the wetland

The bird and amphibian I Bis were developed using sites in the Great Lakes basin within Ecoregion 8 (i e , Southern
lakes Huron and Michigan, all of lakes Ontario, Erie, St Clair and connecting channels)  Therefore, these IBIs should
be limited to reporting on coastal wetland sites within this geographic area Site size might also be a limiting factor for
this approach,  as there is evidence that suggests IBIs  incorporating a guild  approach  might not provide accurate
measures of marsh bird community condition in sites composed of less than 10  hectares of emergent marsh


Landscape-Based Indicators

The Landscape chapter defines the role of landscape data in wetland monitoring, assesses landscape scale monitoring
methods and data sources, and identifies an operational strategy for recurring  assessment of the extent, composition
and vigor of coastal wetland complexes and the surrounding landscape at a synoptic  scale The chapter provides
background information on landscape methods to monitor coastal  wetlands,  and describes various remote sensing
resources, tools and techniques  Because coastal wetland monitoring needs exist at the local, county, tribal, state,
provincial and federal levels, the methods described are designed to provide flexibility in the sources of data used for
landscape mapping and monitoring, as well as  the ability to tailor them toward specific needs and budgets of each
project At the same time, it is important to provide some general protocols on classification schemes and landscape
monitoring to keep the end products consistent enough for merging with adjacent maps created by other agencies,
and for comparison to future maps

The  Landscape chapter describes the indicators and assessment and management programs that landscape metrics
would inform  It also discusses details of landscape monitoring (e g , sampling design, data sources and limitations,
methodological  innovations) and how they can be  used to construct stressor gradients  Recommendations for  a
landscape monitoring protocol are provided  The chapter  also describes and analyzes the Consortium's wetland
inventory, which was assembled from various  landscape data sources and is  itself a spatial data set for intersecting
with other landscape data layers

To support Great Lakes coastal wetland monitoring, assessment and management into the future, a two-tier wetland
mapping system is recommended, combining (1) a moderate (30 m) resolution satellite-based mapping of the entire
basin every five years, and (2) a high resolution (< 1  m) airborne or satellite-based map of one lake basin per year on
a rotating basis This two-tier approach would provide a consistent baseline  map from synoptic data sources using
semi-automated techniques at the regional  scale every five years, as well as a fine  resolution map allowing more
detailed discrimination of wetland boundaries and landscape land use and land cover Using satellite data allows for
multi-temporal  and  multi-spectral  analysis to  map  wetlands that are  dynamic  throughout the seasons and allows
 14                                                                 Great Lakes Coastal Wetlands Monitoring Plan

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automated change detection techniques to be used to update existing maps such as those of the National Wetlands
Inventory (NWI) Note that highly sensitive areas (e g  wetlands in high population areas or areas of rapid land
cover/land use change and those with aggressive invasive species) will need to be mapped at high resolution with
greater frequency

Coastal wetlands are impacted by both local factors and stressors acting at the watershed scale, hence assessment and
monitoring should quantify stressors operating at both spatial scales  The protocols described  in this chapter are
designed to monitor key landscape indicators that quantify watershed-scale changes relevant to coastal wetlands The
basic strategy is to (I) identify data sources that  are updated regularly across the  basin, (2) define watershed-scale
spatial summary units  appropriate for coastal wetlands, (3) enumerate key landscape metrics for these units, and (4)
describe a monitoring  process that allows identification of trends in key landscape stressor variables across the basin
The techniques and information in this chapter can be used in conjunction with field-based indicators described in
other chapters to evaluate relationships among the broader landscape conditions and the condition and functions of
coastal wetlands The  use of remote sensing  data allows for a repeatable and comprehensive view of broad spatial
characteristics across  the Great  Lakes basin  (eg,  to  produce  landscape  metrics  and  indicators),  providing
opportunities to capture the instances and magnitude of disturbances,  which may, in turn, affect — or already have
affected — coastal wetland condition and functions


Cost Analysis for  Sampling Great Lakes  Coastal Wetlands

Great Lakes coastal wetland monitoring involves many possible  costs including paying and training staff,  buying
equipment, travel expenses, and processing of samples  Funding availability often determines how much sampling is
feasible, therefore it is important to evaluate cost as a factor in developing a wetland monitoring program

During the course of this project detailed cost estimates were assembled and analyzed for the following indicators
water chemistry, plants, invertebrates, fish,  amphibians,  birds, and landscape attributes  Cost estimates for each
indicator included
      •  each item of equipment needed to sample each indicator and whether it is likely to already be owned, if it
          is shared by several indicators, and if it is consumable,
      •  salaries for technicians and professionals involved in sampling,
      •  the length of time it takes each person to sample each wetland for each indicator,
      •  time needed to tram staff in the protocols for sampling each indicator,
      •  external lab processing of water chemistry and invertebrate samples, and
      •  automobile  and boat travel (per mile/kilometer)

These cost estimates formed the basis for the  development of a spreadsheet-based Wetland Sampling Cost Estimator
Tool This tool presents cost information in a format most useful for monitoring agencies since it allows them to test
an almost unlimited variety of scenarios and  evaluate the relative differences in cost  Members of the Consortium
evaluated and verified  the Cost Estimator Tool and its underlying assumptions and cost formulas
www glc org/wetlands                                                                                     15

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Data Management System
Because of the breadth of potential users of the Consortium's coastal wetlands monitoring plan, there is clearly a need
for a mechanism to Facilitate communication and data sharing In response, the Consortium's data management group
developed a standardized approach that could be applied across the region, allowing data to be easily shared by
researchers and sponsoring agencies  A centralized, online Data Management System (DMS) has been implemented
The DMS described in the Data Management chapter of this document is designed to allow data  to be recorded in
standardized Formats and placed in a data archive housed within the Consortium website

The Consortium DMS is considered a First generation system and will be fine-tuned as problems arise during its use
by managers, regulators and others It accepts data files prepared using a standardized data template compatible with
Microsoft Excel and other spreadsheet software and stores the data on the Consortium web site and data server From
there, Files can be downloaded and used as needed  The data template approach was chosen during the DMS design
phase because it allowed system development to take place while scientific subcommittees finalized protocol content
Future versions of the DMS will include the capacity to upload raw data and to select and retrieve data  based on more
refined criteria.

The DMS is housed within an online database programmed using standard php/MySQL software The user interface
consists of background information about the Consortium and the DMS, a  log-in page, and data submission and
retrieval Forms  As a means of protecting the integrity of the database, users are required to register before they can
upload data  Active members of the Consortium's development committees  were registered when the system was
created New users must submit a registration request via the DMS log-in page  Individuals retrieving data are asked
to register as a means of tracking the distribution of the Consortium's products
Partnerships for Implementation
In 2001  and 2002, initial stakeholder meetings of the Consortium were held in the U S  and Canada to raise
awareness of and receive input toward developing a science-based, bmational coastal wetland monitoring plan for the
Great  Lakes  Presentations  and  discussion  groups were  used to begin partner engagement  Since then, the
Consortium has been a significant presence at SOLEC, where representatives from agencies and organizations from
around the basin  meet to discuss indicators  that assess environmental condition of the Great Lakes  The biennial
SOLEC conferences have offered a venue for presentation of Consortium monitoring protocols and results from pilot
investigations

From the beginning, it was clear that agencies and organizations wishing to adopt Consortium protocols would need
assistance in implementing this  monitoring  plan and forming  partnerships to optimize  use of staff, funding and
equipment resources Consequently, the Consortium Partnerships for Implementation Committee (PIC) was formed
to promote awareness of and execution of this plan

The PIC  identified agencies and organizations that conduct coastal wetland monitoring or other wetland monitoring
activities in the  Great  Lakes basin   It used  the Great Lakes  Commission's 2006 report Environmental Monitoring
Inventory  of the Great Lakes Basin, which assessed gaps and overlaps in observing systems and monitoring programs  The
gap analysis summarized monitoring efforts for 21 resource  areas, highlighted potential gaps in monitoring coverage,
and provided recommendations to address the gaps

The PIC surveyed agencies  and organizations that might  benefit from adoption of the Consortium's basin wide,
standardized monitoring  protocols and assessed whether  these entities would have  the capacity to conduct this
monitoring  Survey questions addressed aspects of current  or former coastal wetland monitoring activities, staff or
volunteer expertise, available equipment, funding mechanisms, and protocol training requirements
16                                                               Great Lakes Coastal Wetlands Monitoring Plan

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Finally, the PIC developed an implementation strategy for presentation to potential partner agencies, in order that
the process of adopting (or adapting) this plan would be less daunting for those that already lack sufficient resources
This strategy includes adaptive management techniques to make adoption of the plan more seamless

Although implementing  new  programs can  be  difficult  for many agencies due  to funding, equipment, and  stafT
limitations, the PIC found that a number of agencies and  organizations throughout the Great Lakes basin are already
conducting monitoring programs that,  if willing, could fully or partially adopt or adapt Consortium protocols  In
addition, the PIC identified a number of partnership opportunities that could assist in the implementation of this plan

Adoption or  adaptation  of the  Consortium coastal  wetland  monitoring protocols can  aid agencies in satisfying
monitoring mandates  and  contribute to the goals set forth in SOLEC, the Great Lakes Regional Collaboration
(GLRC), the Great Lakes Water Quality Agreement (GLWQA), and other important  cooperative efforts  The
recruitment of agencies and the formation of partnerships among those agencies  will lead to greater success when
implementing this plan Accurate, standardized monitoring data, of which this plan will produce when implemented,
is in the best interest of many Great Lakes stakeholders
Final  Summary Recommendations
In this chapter, we recommend an integrated sampling program for the entire basin that includes plant, invertebrate
and fish metrics, with time of sampling periods recommended that allows a small crew of three trained individuals to
gather, analyze and interpret the required data for parts of the Great Lakes shoreline in a particular jurisdiction with
aid from several seasonal workers For large states and provinces such as Michigan and Ontario with responsibility for
multiple lakes and many miles/kilometers of lake shore, two or more such crews would be needed  These individuals
would also work with trained volunteers using MMP protocols to generate the amphibian and bird data
www glc org/wetlonds                                                                                    1 7

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                         Chapter  I
                 Statistical  Design
                        Chapter Authors
                Donald G. Uzarski, Central Michigan University
                 Sango Otieno, Grand Valley State University
18
Great Lakes Coastal Wetlands Monitoring Plan

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Sampling design

Sampling design is a description of the sample collection plan that specifies the number, type, and location (spatial
and/or temporal) of sampling units  to be selected for assessment  The paramount purpose of sampling designs --
within the context of the Consortium's recommendations for monitoring -- is to ensure the collection of data that are
representative of an area and of adequate scope  to permit one to draw logical conclusions about a population of
interest  But deciding how to sample is often difficult, because one must consider trade-offs between the costs and
benefits of the amount and type of sampling undertaken  Thus, any sampling design represents a balance between the
study objectives and the constraints of cost, time, logistics, safety and existing technology

One must also make numerous practical and statistical decisions to be confident that a sampling design and indicator
measurements provide the necessary "vital sign" information (Busch and Trexler 2003) The following questions can
help make those decisions
       •  What are the defining spatial boundaries of the ecological system'
       •  What is the appropriate temporal frame (time of year) for sampling'
       •  What is the appropriate time interval between samples7
       •  What sample size is necessary to estimate the value of the indicator'
       •  What survey  design is most efficient (random, systematic, stratified random)'
       •  What is the appropriate unit of measure for the indicator variable'
       •  Is there an optimal sample unit size and shape for estimating the value of the
          indicator'
       •  What are the trade-offs between gams in precision and statistical power versus the
          additional costs per sample'
       •  How can the  implementation plan be designed so that uncertainty about the true state of the ecological
          system is minimized'

Many of these questions are  addressed  in this chapter, including those involving target populations and sampling
frames (Figure 1-1), allocation  and  arrangement  of samples (membership design), frequency of sampling occasions
(revisit design), measurements  to be taken at sampling locations (response design), and the number of samples required
to meet stated objectives (sample size)  Italicized terms are described later in this chapter Sampling designs, within the
context of the Consortium's recommendations  for the  intended implementation plan, encapsulate the series  of
decisions that dictate where, when, and how to sample a "vital sign" indicator (e g , the indicator nitrate as a measure
of wetland water chemistry)  (Elzinga et al  2001)  A sound sampling design requires clear  and  concise monitoring
objectives and must be flexible

Because the  intent of this document is to propose a robust implementation plan that can meet the needs of the Great
Lakes coastal wetland  science  community and policymakers well into  the  future, the  designs  must be  able  to
accommodate  changes  in management  and funding priorities, as well  as environmental  changes   Likewise, the
description of a good sampling design should be appropriately concise, understandable and manageable  Overly
complex designs can be confusing and may make  an implementation plan less accessible to its key audience, few  of
whom are  likely  to be  familiar  with statistics  and  sampling  design  theory  Therefore, a description of an
implementation plan should begin simply and add complexity conservatively and only when needed to explain how  to
achieve specific objectives Of course,  to  monitor the  health and integrity of a coastal  wetland, some level  of
complexity cannot be avoided,  particularly when the region of interest is large, remote, spatially complex and
difficult to access (McDonald and Geissler 2004)

Since monitoring objectives call  for estimating the status of wetlands in a region, trends in their condition, or both,
these two terms  are used explicitly  in this chapter and follow  definitions given  by Urquhart et al  (1998) and
McDonald(2003)  Status is a measure of a current attribute, condition or state, and is typically summarized as a


www glc org/wetlonds                                                                                      19

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population  mean. In the case of assessing wetland status, the population consists of all wetlands in the region of
interest. So "wetland status" describes the average condition of all wetlands in an area at a specific time. Trend is a
measure of change through time. This change can refer to a population parameter such as a mean (net trend;  i.e.,
change in the average condition of wetlands through time), or of an individual member or unit of a population (gross
trend; i.e., change in the condition of one specific wetland of interest through time). Status is typically estimated by
sampling many different units  (different wetlands) throughout the area of interest during a single time interval. In
contrast, the study of trends requires repeated sampling, sometimes of the same wetlands, and sometimes of different
wetlands.  The question of whether the program goal is to estimate status, trends or both is one of the first and most
important things that must be addressed.
Figure 1-1. Conceptual illustration of terms used to describe various units associated with sampling a
population of interest. Each square represents a different wetland within the sampling region of interest.

The first step in developing an implementation plan is to define the geographic bounds of the region of interest and
perform an inventory of all of the study units (wetlands) within the region. The complete set of study units (study
units  = wetlands) in the region is the target  population  (Figure 1.1). Some portion  of  the region may be
inaccessible or otherwise  unsuitable for evaluation. Consequently, we  compile a subset of units that can be sampled,
and these together make up the sample population.

The next important step when developing a sampling design is to define the environmental units of interest within a
specified study  area (Figure 1-1). A population consists of elements, i.e., the objects on which a measurement is
taken (ScheafTer et al. 1990).  This is the basic "unit" of observation. In our case, the elements are  the individual
wetlands.  The  implementation  plan becomes defined by  selecting  a sufficiently representative subset  of units
(wetlands) for sampling (indicated by squares in Figure 1 -1).

Sampling unit refers to the place that is actually sampled. We quantify our target population by using a sampling
frame, defined as the collection  of sampling units. A sample is a subset of units chosen to evaluate the condition of
each unit through counts, observation, or other form of measurement. If the sampling units are selected using some
type of random draw, the sample is said to constitute a probability-based sample (because it is equally likely that
any unit could have been  chosen). Whenever possible, a probability-based  sampling design should be used.  This lets
20
Great Lakes Coastal Wetlands Monitoring Plan

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us argue that the "average" value calculated For the wetlands sampled truly represents the sample population as a
whole

If estimates of average condition are biased because the locations were not completely randomly chosen, they are
subject to "nonsamplmg error" (Lessler and Kalsbeek 1992) Nonsamplmg error reduces the precision and accuracy of
estimates   Lessler and Kalsbeek (1992) identified three components of nonsamplmg error, some of which may be
unavoidable
      1     Frame error results when the sampled population is very different than the target population (Figure 1 -1)
           The two types of frame error are overcoverage and undercoverage Overcoverage occurs when the
           sampled population contains elements that were not part of the target population Undercoverage occurs
           when elements of the target population are omitted from the sampled population
      2.   Nonresponse error results from the failure to obtain measurements for all of the samples originally
           selected (yellow squares in Figure 1 -1) When the missing measurements are very different from the
           values obtained from the wetlands that could be sampled, the estimates calculated from the available data
           may be biased
      3    Measurement error is defined as the difference between the measurements obtained during sampling and
           the true value of the measure This can result from observers' detection errors or from using inaccurate
           instruments

Once the target population and sampling frame have been determined, a strategy must be developed for determining
how many samples should be collected, allocating the sampling effort appropriately across the sampling frame,
determining (randomly) which specific wetlands in a subregion should be sampled, and liming the visits for sampling
Most sample designs selected  for use with Consortium-developed metrics will involve rotating field sampling efforts
through various sets of sample units over time. In this situation, it is useful to define a panel of sample units A panel
is a group of wetlands  whose members are always sampled together according to a schedule of repeating "revisit" time
periods (Urquhart and Kmcaid  1999, McDonald 2003)  See Figure  1-2  for a schematic representation  of different
revisit designs

The rules by which units (wetlands) in the population become  members  of a  panel are  called the membership
design (McDonald 2003)  Membership design specifies the  spatial allocation procedure One familiar membership
design strategy is simple random sampling  This procedure involves drawing units from a population at random (i e ,
with equal probability) Unfortunately, this often fails to produce an ideal spatial pattern of samples across the study
region because the habitat itself may be spatially uneven  In particular, simple-randomly selected samples can often be
patently distributed or clustered, leaving large areas of the frame unsampled   An alternative is to draw a spatially
balanced random sample following the methods described  by  Stevens  and Olsen  (2004)   This method involves
splitting the sampling  frame into a number of zones (strata) and randomly selecting the required number of sampling
units from within each zone  This  "stratified-random" approach allows for a  spatially balanced, random draw of
samples with variable inclusion probabilities  Often, a  designer generates  an ordered list of sample units for each
stratum that can support additions and or omissions of sample collections while retaining  spatial balance These
features provide considerable flexibility and efficiency to a sampling design

Index  sites — also known as sentinel or intensive sites — are sampling locations that are  (i)  visited repeatedly and
regularly, (n) sites where more detailed measures are made, or (in) both  Conversely, a survey (or extensive) site is a
sampling location  that is  visited once or  on an irregular  basis, or  where less  detailed measures are  obtained
Generally,  "always" visiting a sampling site provides data that  are most useful  for  detecting temporal variation
(trends) The data array from this type of design would  look  like Table 1-1  (from Urquhart et al.  1998), except that
the rows would  represent  the selected  set of wetlands,  rather than all of the wetlands This balanced data structure
has substantial appeal, and is the design most monitoring personnel and ecologists seem to favor  In fact, even some
statisticians (Skalski 1990) think this is by far the best temporal design for trend detection
www glc org/wetlonds                                                                                      21

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However, repeated sampling violates the equal-likelihood-of-samplmg assumption of probability based designs and
introduces bias into status estimates  A trend-detection design is most powerful for determining changes through
time, if the same sites are sampled on every occasion and samples are collected at regular intervals  However, this
design cannot be used to determine overall status because the sites are not randomly selected

In contrast, the most statistically powerful design to summarize status in a region  involves randomly selecting the
complete set of sampling sites on every occasion Some sites may be resampled, but only if they are selected  by
chance This design is less powerful for illustrating trends

What  kind  of sampling  design should be used  to monitor a spatially dispersed (regional) ecological resource of
interest' Often, a monitoring program requires assessing both overall status  and temporal trends in the  region of
interest  We want it to have good power for detecting temporal trends in a regional  population while simultaneously
providing precise estimates of that population's status  This is where compromise strategies such as panel sampling
are most appropriate (Urquhart et al  1998, see below) A mixed design incorporates some pattern of revisits to sites
(wetlands),  but that also involves collecting some new samples from the regional population for each "revisit "

Table 1-1. Tabular organization of response values, averages and slopes  (Urquhart et al  1998) Note that in
the context of Consortium- sampling unit = wetland.
Sampling
iinii
(= lake)
1
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The Consortium  adopted the notation of Urquhart et al   (1998) to describe  revisit  designs for brevity  and
consistency Fig 1-2 schematically summarizes four designs for a monitoring program that assesses a study region over
a period of 12 years Figure 1 -2 relates to Table 1 -1 as follows
22                                                                Great Lakes Coastal Wetlands Monitoring Plan

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PANEL
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X



X


X

X


X



X

X





X











X







X



X


X

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X



X



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X












-

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Figure 1 -2. Examples of four different revisit designs, beginning with the simplest, in which a single panel or
set of sampling units are visited on every sampling occasion, and ending with a complex partially
augmented serially alternating design (Urquhart et al. 1998).

Each panel in Fig 1 -2 represents a selection of rows from Table 1 -1, subject to the restriction that no wetland ('lake'
reference from Urquhart et al  1998) occurs in more than one panel, the columns in Fig 1 -2, except for the first two,
are the same as those in Table  1-1  The X's in Fig  1-2 identify the year(s) in which wetlands from a particular panel
will be visited  The first two columns identify the panels and give the numbers of wetlands in  the respective panels
Each of the four designs was developed for the same number of wetland visits each year (60)  The designs therefore
operate under the same fixed  budget for field work, except that Design 4 must have fewer  wetlands (lakes) (55)
during the first year of sampling in order to have 60 in subsequent years  Each of the designs continues for more years
www glc org/wetlonds
23

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than are displayed in the table The pattern of repetition (revisits) in the first three designs should be obvious, but the
pattern in Design 4 deserves a bit more explanation  Fig 1-3 below  (Urquhart, et al ,  1999) illustrates a detailed
form of Design 4

  Design 4 - Partially Augmented Serially Alternating
  1-4-Paiwl*
  ArJ •= Sub-Panels
           fl OF SITES   YEAR1  YEAR 2  YEAS 3  YEAR 4  YEARS   YEARS  YEAR 7   YEARS  YEARS YEAR 10  YEAR 11  YEAR 12
      1         15        X                           X                            X
      2         35               X                            X                           X
      3         35                      X                            X                            X
      4         40                             X                            X                           X
     1A        5        X      X                    X                            X
     2A        5               X      X                     X                           X
     3A        S                      XX                     X                            X
     4A        S                             XX                     X                           X
     1B        5        X                           XX                    X
     2B        5               X                            XX                     X
     33        5                      X                            XX                    X
     48        5                             X                            XX                    X
     1C        5        X                           X                            XX
     2C        5               X                            X                           XX
     3C        5                      X                            X                            XX
     4V        »                             A                            X                           *
     ID        S        X                           X                            X
     20        S               X                            X                           X
     3D        5                      X                            X                            X

Figure 1-3. Partitioning of each panel into subpanels for Design 4 (Urquhart, N S., and Kincaid, T.M. 1999).

Randomly select (without replacement) four panels of 55 wetlands each from the sample population of wetlands
(lakes) (see Fig 1-3) Schedule each panel to be visited every  four years, with a different panel starting in each of the
first four years Randomly divide each panel into 11 subpanels of five sites each (these are labeled A-K above, but only
A-D are  shown)   Each time a panel is visited, randomly select a subpanel  of five wetlands (lakes) to visit for two
consecutive years -  that year and the following one  The first four lines of Design 4 in  Fig 1-3 collect the remaining
subpanels that would not be visited in two consecutive years during the first 12 years representing 35, 35, 35, and 40
sites that will not be revisited respectively  The next  two lines, labeled  1A and 2A, display the visit pattern of the first
subpanels from the  first two panels (panel  1 subpanel A and panel 2 subpanel A), the lines labeled IB and 1C display
the visit pattern of the second and third subpanels of panel  1

As mentioned above the desired design must make a compromise between competing  concerns of status and trend
Designs  1, 3,  and  4 have  similar power  to  detect trends  because they include revisits to sites and  incorporate
augmentation  to achieve connectedness  However,  Designs  3 and 4 will give the most precise estimates of overall
status because they include  visits to the most sites (after 20 years Design 2  is superior for estimating status but still
does not provide a  good  estimate of trend)  There are two  reasons why Design 4 is superior to Design 3 First, it
provides a better estimate of the amount of "Wetland  x Year" variation (i e  , to what extent does the estimate for a
wetland depend on the year m which it was sampled), and second, it also causes less impact of physical sampling on
the wetland due to  repeat visits (i e , taking the same samples from the same locations annually for 20 or more years,
Urquhart et al   1998)
24                                                                  Great Lakes Coastal Wetlands Monitoring Plan

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Sample Size Considerations  and Ability to Detect  Change

Populations  in the real world are dynamic, change over time is  to be expected  However, what is important is
whether or  not there has been  meaningful change (meaningful to the ecosystem, or public), what has caused the
observed change, and whether or not the resource is expected to change further

To  understand  what constitutes a meaningful  and significant change, one must differentiate between  statistical
significance and biological significance  Statistical significance relies on probability and is influenced by sample size
Thus, even trivial changes (from  a biological perspective) can be judged to be statistically significant if the sample size
is large enough. So, regardless of statistical significance, one should consider something biologically significant if it
represents a major shift in ecosystem structure or  function (e g , loss of one or more species, addition of non-native
species, changes in ecosystem processes)  The term "effect size" is operationally defined to be the smallest difference
that represents a biologically meaningful change in a variable  of interest. It is typically expressed as a percentage of the
average existing value  Effect size is a value judgment that can be decided on the basis of prior scientific evidence, best
professional  judgment, public consensus, or  legislated regulations  However, the effect size is also an attribute that
must be defined as part of the implementation plan so that the sample design can be developed to  maximize the
power of detecting a change of that magnitude, should it occur The power of a statistical comparison is the ability to
detect  a biologically  meaningful change  when it  occurs  A statistical significant  change is not always biologically
significant, but a biologically significant change must also be statistically significant, if the latter is not true, then the
power of the statistical comparison must be increased

Thus, from  a monitoring standpoint, one should  be concerned with both statistical significance and the  power to
detect a biologically significant effect To  answer this, it must be decided what level of statistical significance to attain
(i e , what is our Type I error rate or a,  discussed below),  what level of change to consider biologically meaningful
(what is the effect size), how certain one wishes to be to detect that change (what is the power), and how variable the
indicator measure is that we are trying to estimate (what is the variance) The  relationships among power, sample
size, effect size and variation are summarized in equation 1 below

Power  a                (sample size) x (effect size)	

(i)
                (variance) x (number of groups being compared)

In addition to  implementation objectives, a sampling objective must be defined. Sampling objectives establish a
desired level of statistical power, the capacity to detect a "real" change or trend, a minimum detectable change or
effect size, and acceptable levels of both a false-change (a or  the probability of a Type I error) and a missed-change (P
or the probability of a Type II error) (Elzinga et al  2001) Sample size affects each of these components The larger
the  sample size, the lower error  and the greater the power to detect a change (Eqn 1)  Reducing sample size, which
is desirable for cost-effectiveness,  leads to reduced power and higher error  rates These tradeoffs are mitigated by
reducing variance estimates (in  the denominator  of equation 1),  either through  modifications in response design,
another component (e g , revisit design),  or by accepting a higher minimum effect size (in the numerator of equation
l)(Steidletal  1997)

In general,  sample size  should  be large enough  to give a high probability of detecting any changes that are of
management,  conservation or  biological  importance, but  not unnecessarily  large  (Manly   2001)   Scientists
traditionally seek to reduce Type  I errors, and  accordingly prefer small alpha levels In a regional implementation
plan with a strong  resource-conservation  mandate, however, it is preferable  to employ an early warning philosophy
by tolerating a higher alpha, but consequently increasing the power to detect differences or trends (Sokal and Rohlf
1995, Mapstone 1995, Roback and Askms 2005)
www glc org/wetlonds                                                                                    25

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Accordingly,  the Consortium has initially  set a very high target of an alpha of 0 10 and power of 0 80  The
magnitudes of change that could be detected given these standards will depend on sampling effort, a given indicator,
and on the wetland-to-wetland variability Table 1-2 shows how sample size has to change to provide a given degree
of power to detect various effect sizes of >20%, in agreement with other monitoring approaches  For some indicators
and measures, it is possible to significantly increase power with acceptable  increases in cost  For the initial set of
protocols, a priori power analyses will be used to determine the approximate sample size needed to an effect size of
20%  Given the specification of alpha, desired power, and effect size, combined with information on the variance of
the response variable m question (obtained from available data or comparable analogous data, where available), it is
possible to calculate the sample size required to achieve these results Statistical  power analysis (Gerrodette 1993), is
the typical approach to estimating sampling sizes for monitoring population trends

From Table 1-2 below,  Minimum sample size necessary to be 80% certain (i e , power =08)  that a specified true
difference (=effect size) between two groups will be found to be significant (p<0 05) V is the coefficient of variation
of the 'reference' group (V= ([standard deviation/mean) x  100)) The variances of the two groups are assumed to be
equal The dotted line transecting the table indicates the minimum differences likely to be designated significant with
triplicate sampling The heavy line transecting the table  indicates the minimum differences likely to be designated
significant if 12 wetlands are sampled per group  Entries for which n>IOO may be overestimated by approximately
2%  Three replicates are considered to be an absolute minimum sample size if outliers are to be identified Entries
were determined from power formulae given by Sokal and Rohlf (1981)

Table 1 -2. Tabular organization of response values, averages and slopes (Sokal, et al  1981).
V (%) Effect Size (True difference between two means (%)

100
90
80
70
60
50
40
30
20
10
100
14
12
9
7
5
4
3
3
3
3
90
18
14
11 |
9
7
5
3L_.
3
3
3
80
22
18
14
11 1
8
6
4
3
3
3
70
29
23
18
14
11 1
7
5
3 !
3
3
60
39
32
25
19
14
10 |
7
4
3
3
50
54
41
36
28
20
14
9|
5
3!..
3
40
67
55
47
40
32
22
14
8|
4
3
30
99
73
67
55
45
36
25
14
7\
3 :
20
201
163
129
99
81
67
52
32
14
4 1
10
801
649
513
393
289
201
129
73
33
14
One may use existing software programs (e g  Gerrodette 1993) and simple equations (Elzinga et al  2001, Manly
2001) for approximating sample sizes  In the context of Consortium, the development of a monitoring and sampling
program is best accomplished in a workshop setting involving key stakeholders and technical personnel and including
the input of researchers and statisticians who can explain the  theory and trade-offs to participants in straightforward
terms   Such individuals could  operate statistical software at the  workshops  to  demonstrate  the power and
effectiveness of various sampling scenarios through simulations

Recommendations

For now, the  Consortium  will recommend a  target number of wetlands stratified by Great Lake and ecoregion
Ideally, a minimum of 12 wetlands from each ecoregion on each Great Lake should be randomly selected for study
The recommendation of 12 is simply  a starting point until power analyses using means and variances of IBI scores
from the GLCWC pilot studies can be performed  The number of sites may then be adjusted accordingly  Twelve
sites were chosen based on best professional judgment and experience using the Burton et al (1999) IBI and protocol
26                                                                Great Lakes Coastal Wetlands Monitoring Plan

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on many Lake Huron and Lake Michigan wetlands over the past 10 years  If less than 12 sites are present within a
given ecoregion, then all of the sites should be sampled   Whenever possible, more than 12 sites per ecoregion per
Great Lake and connecting channel should be sampled

Four panels of 12 wetlands were randomly selected (without replacement) from the population in each ecoregion
Each panel should be visited every four years, with a different panel starting in each of the first four years  From each
panel is a randomly selected subset of three wetlands (subpanel) that will be visited two consecutive years  These
subpanels were selected so they do not overlap, which effectively partitions each panel into four subpanels  Design 4
in Fig 1-3 above shows the pattern of sampling
www glc org/wetlonds                                                                                      27

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References

Busch, O E , and D  T Trcxlcr, editors 2003  Monitoring Ecosystems Island Press, Washington

EUinga, C L , D W  Sal/er, J  W Willoughby, and J P  Gibbs  2001  Monitoring plant and animal populations Blackwell Science, Inc

Gcrrodettc, T  1993 TRENDS Software Tor a power analysis of linear regression The Wildlife Society Bulletin 21 515-516

Lcsslcr, J T.andW  D  Kalsbcclc  1992 Nonsamplmg Errors in Surteys  John Wiley and Sons, Inc , New York

Manly, B F j 2001  Statistics for Environmental Science and Management Chapman & Hall/CRC, Boca Raton, Florida

Maps tone, B 1995  Scalable decision rules for environmental impact studies  Effect si/c, type I & type II errors  Ecological Applications S 401-
410

McDonald, T  L 2003 Review of Environmental Monitoring Methods Survey Designs Environmental Monitoring and Assessment 85 277-
292

McDonald, T  L , and P H  Geissler 2004  Systematic and stratified sampling designs in long-term ecological monitoring studies
http  //science nature nps gov/im/momtor/docs/SamplcDcsigns doc

Roback, P J , and R A  Askins 2005 Judicious use of multiple hypothesis tests  Conservation Biology 19 261-267

Schcaflcr, R  L , W Mcndcnhall, and L  Ott 1990  Elementary Survey Sampling, 4* edition PWS-Kent, Boston

Skalski, J R  1990 A design for long-term monitoring Journal of Environmental Management 30 139—144

Sokal, R  R , and F  J  Rohlf  1995 Biometry, 3rd edition WH  Freeman and Company, New YorL.

Sokal, R R  andFJ  Rohlf 1981 Biometry, 2nd Ed  Freeman Publ , San Francisco, CA

Stcidl, R J ,J P Hayes, and E Schaubcr 1997 Statistical power analysis in wildlife research Journal of Wildlife Management 61 270-279

Stevens Jr , D L , and A  R Olscn  2004 Spatially balanced sampling of natural  resources Journal of American Statistical Association 99 262-
278

Urquhart, N S,andT M Kmcaid  1999 Trend detection in repeated surveys of ecological responses Journal of Agricultural, Biological, and
Environmental Statistics 4 404-414

Urquhart, N S,S G Paulscn, and D P Larscn 1998 Monitoring for policy relevant regional trends over time  Ecological Applications
8 246-257
This chapter is adapted from Sierra Nevada Network fSIEN,) monitoring plan
Draft SIEN Phase III Report, December 2006 http /Av\vw nps gov/archive/seki/snn/snn index him
28                                                                         Great Lakes Coastal Wetlands Monitoring Plan

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                   Chapter 2
          Chemical/Physical and
    Land Use/Cover Measurements
                  Chapter Authors
            Donald G. Uzarski, Central Michigan University
             Thomas M. Burton, Michigan State University
             JanJ.H. Ciborowski, University of Windsor
www.glc.org/wetlonds
29

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Basic chemical /physical parameters should be measured at the  same time that biological sampling is undertaken
These data will be used as covanates, helping to account for some of the statistical variability encountered during data
analysis  The colleting and analytical procedures should follow  those  recommended in Standard Methods for the
Examination of Water and Wastewater (APHA 1998) or accepted U S  EPA, USGS or other operating procedures as
dictated by local agencies

Properly serviced and calibrated meters provide excellent quality data in the field  Multimeters permit reliable field
measurements of parameters such as dissolved oxygen, temperature,  turbidity, specific conductance and pH, but
back-up water sampling containers should be taken along in case of equipment failure  The use of detailed check-box
field data sheets can help ensure that all required measurements are taken and  that  samples are properly handled and
stored during  the trip  GPS coordinates for each sampling point should be  recorded at the time of collection site by
the field crew

Other water chemistry parameters routinely require that water samples be collected, preserved and properly stored
until  they  can be sent to  a  lab for analysis  Measurements such as soluble reactive phosphorus,  ammonium-N,
nitrite/mtrate-N, chloride, dissolved oxygen, temperature, turbidity, specific conductance, pH and total alkalinity
should be considered and included in the sampling design if deemed relevant and  budgets allow  They can provide
essential  information that can help determine the nutrient  status of a wetland, possible sources of degradation and
even  which of several possible  indices  of biotic integrity (IBI) formulations may be most appropriate for biological
assessment

Additional  measurements of chlorophyll a,  total  phosphorus,  sulfate, redox potential  (in the water column),
vegetation  type  and stem density, and organic sediment depth (simply measured  by  forcing a  meter stick into the
organic sediments until more resistance indicates a change  in consistency)  should  also be considered and are highly
recommended  Sediment samples can  also be collected and assessed in the laboratory for particle size and organic
content  analysis  Quality  assurance/quality control  procedures should follow  standard operating protocols
recommended by U S  EPA,  USGS,  Environment Canada, or those that have been routinely used by the  sponsoring
agency if there is a historical record to which the surveys contribute

Some IBIs exist in several formulations  that are tied to the dominant landscape type of the wetland being sampled  In
other cases, on-site assessment of land use, local disturbances, aquatic vegetation distribution and growth  forms, and
other  local  habitat  features  provide  important  complementary  diagnostic   information   The  Great  Lakes
Environmental Indicator (GLEI) field  teams investigating fish and invertebrate  condition in  wetlands developed
detailed  site assessment protocols using simple classification systems to assess these  variables  in various classes of
coastal wetlands  More detailed habitat assessment protocols have been developed  by the Ohio EPA for both coastal
and inland  wetlands  Notes on possible point sources of pollution and land cover including plant zonation should be
recorded in the field note book  A good sketch, as well as on-site photos of the area, should be made as well
General  Interpretation of Covariates
Turbidity,  specific  conductance, and chloride should be considered to be linear, with greater  values indicating
disturbance  However, specific conductance values should  not be interpreted as being related to anthropogenic
disturbance until reaching  values near  600  uS  Extreme  values, either  very  high  or very low for nitrate-N,
ammonium-N, and  soluble reactive phosphorus concentrations, as well as percent saturation of dissolved oxygen and
pH, should be considered indicators of disturbance  With respect to inorganic dissolved nutrients, we tended to find
moderate concentrations at relatively pristine sites

Impacted sites often have either nondetectable values, because these systems are very productive and the nutrients are
tied up m organic matter and sediments, or nutrient concentrations that are so high  that the communities do not
assimilate them as quickly as they enter the system   Also, m a system experiencing cultural eutrophication, dissolved
30                                                                 Great Lakes Coastal Wetlands Monitoring Plan

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oxygen may be as high as 180% saturated during the day when samples are collected In this case, percent saturation
likely plummets at night when only respiration is taking place in the absence of photosynthesis  Likewise, a system
with organic pollutants may have very low percent saturation (e g , 50%) of dissolved oxygen due to decomposition
of excess organic matter in the absence of photosynthesis  This can be caused by siltation, cloud cover, coverage of
duckweed (Lemna or  Spirodela spp.) and/or turbidity  Often, pH measurements follow this relationship to some
degree,  a very high daytime  pH may be indicative of extreme productivity, while very low daytime pH may  be
indicative of organic pollution

Basic chemical/physical  parameters should be measured and personal observations of disturbance should be recorded
in conjunction with biotic sample collection These data will be used as covanates, helping to account for some of the
statistical variability encountered during data analysis  It is understood that logistics may preclude the collections of
some of these data, but ask that as many as possible are collected
References

APHA 1998 Standard Methods for the Examination of Water and Wastcwater, 20th edition American Public Health Association, Washington,
DC
www glc org/wetlands                                                                                       31

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                     Chapter 3
  Vegetation Community Indicators
                     Chapter Author
           Dennis A. Albert, Michigan State University Extension -
                Michigan Natural Features Inventory
32
Great Lakes Coastal Wetlands Monitoring Plan

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Introduction

Vegetation sampling  has  been  conducted m  Great Lakes  coastal wetlands  For  the  purposes of  classification,
identification of important wetlands for protection or acquisition, and characterization of wetlands for  management
Sampling  has often  been  conducted  along transects  with  the purpose of  identifying  physical gradients and
corresponding biological gradients or zones  It is recognized that relatively discrete vegetation zones occur at most
coastal wetland sites  due to differences in water  depth  and  substrate,  and that wave energy also  effects  wetland
vegetation diversity.  A  classification of coastal wetlands, developed by the Great  Lakes Wetland  Consortium,  is
present on the Consortium's web page

In the initial phases of this project, data were collected across four regional areas of lakes Erie, Ontario and Huron, in
an attempt to develop a Great Lakes-wide plant index of biotic integrity (IBI) Studies were being conducted in other
parts of the Great Lakes as well in attempts to create a multimetric plant index These attempts have not been clearly
successful for several reasons, including extreme water level fluctuations, as well as the complex array of disturbance
factors that occur at different spatial scales and in different spatial configurations around the Great Lakes Differences
in prevailing wind direction, shoreline configuration and wetland size all combine to make direct  comparisons of
neighboring wetlands  nonproductive

Because of the limited success at developing a Great Lakes-wide IBI with plants, this study  suggests a  more limited
approach to evaluating coastal  wetland degradation, one  focusing on those factors agreed on by the  plant ecologists
studying  Great Lakes coastal wetlands and participating  in the Great Lakes Coastal Wetlands Consortium  These
factors include  1) the coverage and distribution of invasive plants, 2) the coverage and diversity of submergent and
floating plants, and 3) computing the Flonstic Quality Index (FQI) and comparing it to regional FQI scores

In the Great Lakes, the expansion of invasive plants  into  wetlands is the result of disturbances that alter the upper,
seasonally wet edge of the  wetland or disturbances that alter the permanently flooded portion of the  wetland The
wet meadow and inner emergent marsh  zones are typically  degraded by alterations of the hydrology  caused  by
ditching or the physical disturbance of sediments, resulting in the introduction of invasives In contrast, changes to the
outer emergent marsh and the submergent marsh  zones are the result of disturbances to the flooded portion of the
marsh by dredging, the addition of nutrients in the form of fertilizer or animal waste, or the addition of fine sediment
as the result of intensive agriculture It is recommended that these zones be monitored separately to  identify sources
of degradation, and thus allow solutions to be identified for each zone

Alterations of the wet  meadow or upper emergent zone result in drier conditions  and bare  exposed sediments,
allowing small-seeded invasive species to establish and rapidly expand by rhizomes or stolons. Many invasives are tall
perennials that shade out native plants  A list of invasive species is provided

The submergent and flooded emergent marsh zones are degraded by fine sediments and organic nutrients from either
agriculture or urban areas,  resulting in high turbidity and resultant reduced photosynthesis and regeneration by seed
for many submergent plants   Added  nutrients and sediments provide habitat for Eurasian  carp — large,  aggressive
bottom feeders which uproot many aquatic plants   Some of the species most tolerant of high nutrient and turbidity
levels are invasive species that form dense weed beds of reduced habitat value to fish and other aquatic fauna

A successful approach to evaluating the mtactness of plant communities is the computation of a flonstic  quality index,
which utilizes all plant species present at a site to estimate the mtactness of the plant community  Conservatism index
scores, discussed below, are developed and applied regionally with upper and lower limits  of 10 and  zero  A mean
conservatism score evaluates the mtactness of the wetland habitat,  based on all of the plant species at a site  The use of
the mean conservatism index is recommended for monitoring changes to Great Lakes coastal  wetland vegetation
www glc org/wetlands                                                                                       33

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In summary, this monitoring  protocol  focuses on  1)  identifying  and  quantifying those invasive plants that are
considered indicators of degraded habitat, 2)  identifying significant changes to the submergent and floating-leaved
vegetation of emergent and submergent marsh zones, and 3) comparing regional Mean Conservatism Indices for
Great Lakes coastal wetland types to the local site's Mean Conservatism Indices

Vegetation Sampling

Extensive vegetation sampling has been conducted in Great Lakes coastal wetlands for the purpose of classification,
identification of important wetlands for protection or acquisition, and characterization of wetlands for management
Much of the sampling has been conducted along transects placed perpendicular to the shoreline with the purpose of
identifying physical gradients  and corresponding  biological gradients or zones   In general,  it is recognized that
relatively discrete zones of shrub, wet meadow,  emergent and sometimes submergent  vegetation occur at most
coastal wetland sites, and that these zones are related to differences in water depth, as well as associated differences in
substrate  Frequency of inundation and wave energy increase with water depth in coastal wetlands directly connected
to the Great Lakes  As wave energy increases,  the amount of aquatic vegetation decreases, along high energy areas of
the shoreline,  the  only coastal wetlands  present are sheltered  behind a barrier dune or beach ridge  See the
classification of coastal wetlands on the Great Lakes Wetland Consortium web site for a more detailed description of
coastal wetland types (Albert et al  2003, Albert et al  2005)

Evaluation of Great Lakes coastal wetlands quality and health

In the initial phases of this project, data were collected in more than 40 wetlands across four regional areas of lakes
Erie, Ontario and Huron  in an attempt to develop a Great Lakes-wide  plant Index of Biotic Integrity (IBI), which
would allow the ranking of all Great Lakes wetlands sites (Mine and Albert 2004)  This attempt was not conducted in
isolation, as other studies were being conducted as well, typically on a smaller scale (Albert and Mine 2004, Albert et
al 2006, Mack et al in press, Simon and Rothrock 2006, Stewart et al  2003, 1999, Wilcox et al  2002)  Attempts
to create a multimetnc plant index have not been clearly successful,  for several reasons Probably the greatest source
of variability in Great  Lakes wetland plant community composition is  the extreme  water  level fluctuations that
characterize the Great Lakes (Wilcox et al  2002, Albert and Mine 2004, Albert et al 2006,  Hudon et al  2006)
Comparing the health of  several  wetlands of  a single type or lake  is complicated by  the fact  that each  wetland  is
altered  by a complex  array of disturbance factors  that occur  at  different  spatial scales and in different spatial
configurations  For example, winds along Sagmaw Bay  result in nutrient-rich organic sediments  from the Saginaw
River accumulating in a single wetland, contributing to the formation of dense  algal  mats nearly a meter thick at
times While other wetlands may receive similar amounts of organic sediments, they are not regularly concentrated
to such a degree by the wind  Prevailing wind direction, shoreline configuration and wetland size all combine to make
direct comparisons of neighboring wetlands nonproductive

Because of the limited  success in  developing a Great Lakes-wide IBI for plants,  we are suggesting a more limited
approach to evaluating coastal wetland degradation, one focusing on those factors agreed on by the plant ecologists
studying Great Lakes coastal wetlands and participating in the Great Lakes Coastal  Wetlands Consortium These
wetland  ecologists agreed that the most effective factors or approaches for evaluating wetland  degradation were
measuring 1) the coverage and distribution of invasive plants,  2)  the  coverage and  diversity of submergent and
floating plants,  and 3) computing the Flonstic Quality Index (FQI) and comparing it lo regional  FQI scores A fourth
and extremely important approach, determining the amount of wetland already lost or altered by comparing historic
and recent aerial photos, is not the focus of the vegetation group

In the Great Lakes, the expansion of invasive plants into wetlands is the result of two distinct types of disturbance
disturbances that alter  the upper, seasonally wet edge  of the wetland  or disturbances that alter the permanently
flooded portion of the wetland The wet meadow and inner emergent marsh zones are only occasionally flooded and
are typically degraded as the result of alterations of the  hydrology caused by ditching or the physical disturbance of
34                                                                 Great Lakes Coastal Wetlands Monitoring Plan

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sediments Major introductions of mvasives into the wet meadow are often the result of such physical disturbances  In
contrast, changes to the outer emergent marsh and the submergent marsh zones are the result of disturbances to the
flooded portion of the marsh, either by dredging, the addition of nutrients in the form of fertilizer or animal waste, or
the addition  of fine  sediment as the  result of intensive agriculture  For this  reason, we have  separated  the
recommended monitoring into tracking these zones separately for the purpose of identifying the sources of the
degradation, and thus potentially allowing solutions to be identified for each zone

Alteration of the wet meadow or upper emergent zone often results in both drier conditions and exposed sediments
with no vegetation, a combination that allows small-seeded invasive species to become established in large numbers
Once established, many of the invasive plants in this zone are able to rapidly expand  by rhizomes or stolons  Many of
these mvasives are also tall perennials that rapidly shade out and replace shorter native plants  A list of these invasive
species is provided in the footnotes of Table 3  1 below

The submergent marsh zone and the flooded portion of the emergent marsh zone are often degraded by the addition
of fine  sediments and  organic nutrients from either agriculture or urban areas, resulting  in high turbidity  High
turbidity levels  reduce the ability of many submergent plants  to  photosynthesize  effectively  In addition,  the
deposition of suspended  particulates on submergent  plants may  affect gas  exchange  with the environment  The
combination of high turbidity and deposition of fine  sediments on  the  bottom also  reduces the ability of many
submergent and floating plants to reproduce from seed, resulting in reduced plant  reproduction These additions of
nutrients and sediments also provide excellent habitat for Eurasian carp (Cypnnus carpio), which are large, aggressive
bottom feeders  Carp disturb the sediment, resulting in the resuspension of sediments and the uprooting of many
aquatic plants  While minor levels of nutrient enrichment result in increased growth of many submergent and floating
plants,  further  increases  in nutrient  enrichment are followed by rapid loss of plant  coverage and/or diversity as
turbidity increases beyond a critical point Some of the species most tolerant  of high nutrient and turbidity levels are
invasive species  These mvasives typically form dense weed beds that are of reduced habitat value to fish and other
aquatic fauna and may create localized nocturnal anoxia

An approach that has been used  successfully to evaluate  the mtactness of plant communities is  computation of a
flonstic quality index using a flonstic quality assessment (FQA) program,  which utilizes all plant species present at a
site to  estimate the mtactness  of the  plant community and the  site  FQAs are used to develop several indices,
including the widely used conservatism inde\ (Q and ihejlonstic quality inde\  Each species is assigned a conservatism
index based upon the specificity of a plant to  a specific habitat  Species that can occupy a broad range of habitats are
assigned low conservatism index scores, while those that are very restricted in their habitat are assigned high scores
Conservatism index scores are assigned through consensus by groups of plant ecologists  with expert knowledge of
plant species habitat fidelity  Conservatism index scores are developed and  applied regionally and have upper and
lower limits of 10 and zero  A mean conservatism score evaluates the conservatism  of all of the species at a site The
flonstic quality index is based on  the square of the number of species times the conservatism index and is therefore
influenced more by the number of species  collected at a site than  is the mean conservatism  index Flonstic quality
index scores are overly sensitive to sample size and water-level fluctuation, thus resulting in potentially large year-to-
year score changes that  do not  reflect real changes  in  wetland  quality  For that reason,  the  use of the  mean
conservatism (Mean C) is recommended for monitoring changes to Great Lakes coastal wetland vegetation

Use of the Michigan Flonstic Quality Assessment program  (Herman et al 2001) is recommended for the Great Lakes
basin, as it was designed for use in Michigan, which encompasses most of the latitudinal gradient encountered  in the
Great Lakes  Alternative FQIs  for Ohio, Indiana, Wisconsin,  and southern Ontario do  not adequately reflect the
diverse flora found in Great Lakes wetlands The FQA  software is available through the Conservation  Research
Institute (Conservation Design Forum  cdf@cdfmc com)  Table 3-1  shows the standard output from FQA analyses
for Mackmac Bay,  a  northern  Lake Huron protected embayment Standard indices  computed with the software
include FQI score, Mean  C score, and Wetland Index (W)   Each of these are computed for native species and for the
total flora at a site, including adventive species For this study, the Mean C for native species and total flora are being
used  For Mackmac Bay, there are 44 native species and only one adventive species As a result, the  Mean C for native
www glc org/wetlands                                                                                       35

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species (6 1) and total species (6 0) are very similar  For more disturbed sites, the difference between native and total
Mean C scores can be much greater (Table 3-2)

In summary, this monitoring  protocol focuses on  1) identifying  and quantifying those invasive  plants that are
considered indicators of degraded habitat, 2) identifying significant changes to the submergent and floating-leaved
vegetation of the emergent and submergent marsh zones, and 3) comparing regional mean conservatism indices for
Great Lakes coastal wetland types to the local site's mean conservatism indices
36                                                                  Great Lakes Coastal Wetlands Monitoring Plan

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Table 3-1. Floristic Quality Assessment output forMackinac Bay. Lake Huron
Site
FLORISTIC
44
45
61
6
407
402
-47
-47
AVG



Mackmac Bay 1999
QUALITY DATA
NATIVE SPECIES
Total Species
NATIVE MEAN C
W/Adventives
NATIVE FQI
w/Adventives
NATIVE MEAN W
W/Adventives
Obi Wetland




Native
Tree
Shrub
W-Vine
H-Vine
P-Forb
B-Forb
A-Forb
P-Grass
A-Grass
P-Sedge
A-Sedge
Fern

44
0
3
0
0
28
0
2
2
1
7
0
1
By D Albert
9780%
000%
670%
000%
000%
6220%
000%
440%
440%
220%
1560%
000%
220%

Adventive
Tree
Shrub
w-Vme
H-Vine
P-Forb
B-Forb
A-Forb
P-Grass
A-Grass
P-Sedge
A-Sedge


1
0
0
0
0
1
0
0
0
0
0
0


220%
000%
000%
000%
000%
220%
000%
000%
000%
000%
000%
000%

ACRONYM   C   SCIENTIFIC NAME
AGRHYE     4   Agrostis hyemalis
ASTPUN     5   Aster puniceus
BIDCER     3   Bidens cernuus
CALCAN    3   Calamagrostis canadensis
CAMAPR    7   Campanula apannoides
CXAQUA    7   Carex aquatilis
CXLASI     8   Carex lasiocarpa
CXSTRI      4   Carex stncta
ELEACI     7   Eleochans aciculans
ELESMA     5   Eleochans smallu
EQUFLU     7   Equisetum fluviatile
GALTRD     6   Galium tnfidum
HETDUB     6   Heteranthera dubia
HIPVUL     10  Hippuns vulgans
IRIVER      5   Ins versicolor
LATPAL     7   Lathyrus palustns
LYCUNI     2   Lycopus uniflorus
LYSTHY     6   Lysimachia thyrsiflora
MYRGAL    6   Mynca gale
MYREXA     10  Mynophyllum exalbescens
MYRHET     6   Mynophyllum heterophyllum
NAJFLE     5   Najas flexilis
NUPVAR     7   Nuphar vanegata
POLAMP    6   Polygonum amphibium
PONCOR    8   Pontedena cordata
POTAMP    6   Potamogeton amplifohus
POTGRM    5   Potamogeton gramineus
POTNAT     5   Potamogeton natans
POTPAL     7   Potentilla palustns
W
1
-5
-5
-5
-5
-5
-5
-5
-5
-5
-5
-4
-5
-5
-5
-3
-5
-5
-5
-5
-5
-5
-5
-5
-5
-5
-5
-5
-5
WETNESS
FAC-
OBL
OBL
OBL
OBL
OBL
OBL
OBL
OBL
OBL
OBL
FACW+
OBL
OBL
OBL
FACW
OBL
OBL
OBL
OBL
OBL
OBL
OBL
OBL
OBL
OBL
OBL
OBL
OBL
PHYSIOGNOMY
Nl P-Grass
Nt P-Forb
Nt A-Forb
Nt P-Grass
Nt P-Forb
Nt P-Sedge
Nt P-Sedge
Nt P-Sedge
Nt P-Sedge
Nt P-Sedge
Nt Fern Ally
Nt P-Forb
Nt P-Forb
Nt P-Forb
Nt P-Forb
Nt P-Forb
Nt P-Forb
Nt P-Forb
Nt Shrub
Nt P-Forb
Nt P-Forb
Nt A-Forb
Nt P-Forb
Nt P-Forb
Nt P-Forb
Nt P-Forb
Nt P-Forb
Nt P-Forb
Nt P-Forb
COMMON NAME
TICKLEGRASS
SWAMP ASTER
NODDING BUR MARIGOLD
BLUE JOINT GRASS
MARSH BELLFLOWER
SEDGE
SEDGE
SEDGE
SPIKE RU S H
SPIKE RU S H
WATER HORSETAIL
SMALL BEDSTRAW
WATER STAR GRASS
MARE'S TAIL
WILD BLUE FLAG
MARSH PEA
NORTHERN BUGLE WEED
TUFTED LOOSESTRIFE
SWEET GALE
SPIKED WATER MILFOIL
VARIOU S LEAVED WATER MILFOIL
SLENDER NAIAD
YELLOW POND LILY
WATER SMARTWEED
PICKEREL WEED
LARGE LEAVED PONDWEED
PONDWEED
PONDWEED
MARSH CINQUEFOIL
www glc org/wetlands
                                                                                               37

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Table 3-1  Flonstic Quality Assessment output for Mackinac Bay. Lake Huron. Continued
Site        Mackinac Bay 1999                                 By D Albert
SAGLAT
SALCAN
SCHACU
SCHSUB
SCUGAL
SIU S UA
SPAMIN
SPIALB
TEUCAN
TRIFRA
TYPANG
UTRINT
UTRMIN
UTRVUL
VALAME
ZIZAQU
1
9
5
8
5
5
8
4
4
6
0
10
10
6
7
9
               Sagittana latifolia
               Salix Candida
               Schoenoplectus acutus
               Schoenoplectus subterminalis
               Scutellana galenculata
               Sium suave
               Sparganium minimum
               Spiraea alba
               Teucnum canadense
               Tnadenum frasen
               TYPHA ANGU S TIFOLIA
               Utnculana intermedia
               Utnculana minor
               Utnculana vulgans
               Vallisnena amencana
               Zizania aquatica var aquatica
-5
-5
-5
-5
-5
-5
-5
-4
-2
-5
-5
-5
-5
-5
-5
-5
OBL
OBL
OBL
OBL
OBL
OBL
OBL
FACW+
FACW-
OBL
OBL
OBL
OBL
OBL
OBL
OBL
Nt P-Forb
Nt Shrub
Nt P-Sedge
Nt P-Sedge
Nt P-Forb
Nt P-Forb
Nt P-Forb
Nt Shrub
Nt P-Forb
Nt P-Forb
Ad P-Forb
Nt P-Forb
Nt P-Forb
Nt P-Forb
Nt P-Forb
Nt A-Grass
            COMMON ARROWHEAD
            HOARY WILLOW
            HARDSTEM BULRU S H
            BULRU S H
            COMMON SKULLCAP
            WATER PARSNIP
            SMALL BUR REED
            MEADOWSWEET
            WOOD SAGE
            MARSH ST JOHN'S WORT
            NARROW LEAVED CATTAIL
            FLAT LEAVED BLADDERWORT
            SMALL BLADDERWORT
            GREAT BLADDERWORT
            EEL GRASS
            WILD RICE
Table 3-2. Companson of Native Mean C and Total Mean C scores for three Great Lakes Marshes on lakes
Huron and Erie.
Marsh Name

Mackinac Bay, Lake Huron
Presque Isle Bay, Lake Erie
Bradleyville, Saginaw Bay, Lake
Huron
Mean C Score
Native
6.1
48
3.9
Total (Native + Adventive)
6.0
4.4
33
Materials and Methods

Protocol for Great Lakes Marsh Aquatic Macrophyte Sampling

Mapping to identify sampling transects or random sampling points:
      1    Using aerial photos, map wetland to be sampled, identifying major zones wet meadow, emergent, and
          possibly submergent (Figures 3-1 and 3-2)  Flooded portions of the emergent marsh zone typically
          contain abundant submergent and floating species, and these submergent plants can be analyzed rather
          than collecting data for the deeper submergent zone
      2    Overlay a random grid or identify three potential sampling transects that will cross typical zones
      3    If there are obvious monoculture (uniform) patches on the photos, these should be sampled, as these
          uniform areas are often areas of invasive plants Large, dense areas of invasive plants should be mapped
          with GPS units or identified  on aerial photos or satellite imagery to track the long-term expansion of
          these invasive patches

Field Sampling:
      1    In each zone, place 15 sample quadrats along transects or randomly, each quadrat with an area of 1 0 m
          Limit sampling to two zones, 1) the wet meadow zone and dry portion of the emergent zone, and 2) the
38
Great Lakes Coastal Wetlands Monitoring Plan

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          flooded portion of the emergent zone and the submergent zone (Figures 3-1 and 3-2). Sampling points
          can be located along three transects (Figure 3-1) or randomly located using a GIS mapping program
          (Figure 3-2). Establishing points along transects requires less time than sampling random points and may
          be preferred for monitoring; programs that have small budgets. For wetlands with narrow zones, sampling
          points may need to be located along a transect that is not perpendicular to the drainage gradient of the
          wetland (see Insert B on Figure 3.1). In some wetlands there is a submergent marsh zone that contains
          only floating or submergent plants. Typically, it is not necessary to sample this zone, as the flooded
          portion of the emergent zone will  contain most of the plants in the deeper submergent zone and the
          emergent zone can be sampled much more rapidly.
Figure 3-1. This aerial photo view of a wetland along northern Lake Huron shows the location of three
transects, each beginning at the upland edge of the wetland and continuing south across the meadow
zone (white) and the emergent/submergent zone (dark). The transects end at the edge of the emergent
zone, even though there may be continued vegetation in a more open submergent zone. This open
vegetation cannot typically be seen easily on aerial photos. Photo A shows 15 sampling points in each of
the two zones. Photo insert B shows that if a narrow portion of this wetland,  or a wetland that was narrow
along its entire length, were being sampled, that the transects would need to be  configured at an angle to
the wetland's slope to allow for all 30 points to be placed. Locating the points along transects allows for
more rapid sampling than the random sampling shown in Figure 3-2.
www.glc.org/wetlonds
39

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Figure 3-2. Random sampling of  the wetland shown in figure 1.' Random sampling can be configured
utilizing GIS software, or by physically (or electronically) placing a grid over the photo and randomly
choosing sampling points.

      2.    If transects are used, the starting point for each transect is randomly placed within 25 meters of the
           upland edge of the wet meadow zone, with sampling points established  25 meters apart. The location of
           each sampling quadrat around a sampling point is selected randomly using compass bearings and distances
           from one to nine meters. Percent cover is estimated for each plant species in the sample quadrat;
           coverage is estimated for all emergent, floating and submergent species. Substrate, organic depth, water
           depth and water clarity  (using Secchi disk)  are recorded. Depths of shallow organic soils can be measured
           with forcing a sharpened 4' x 3" (1.2 m x 8 cm) clear Plexiglas tube into the substrate until mineral soils
           are encountered and then forcing a rubber  stopper into the top of the tube to create a vacuum, and then
           extracting the tube and  reading the depth of the organic material in it. For deeper organic materials, as
           often encountered in barrier-enclosed or riverine wetlands, a 10-foot (3 m) length of '4 inch (1.8 cm)
           aluminum conduit provides an inexpensive measuring pole. In each sample plot, list the species present
           along with approximate coverage value.  Use  values of 1%, 3%, 5%, 10% and so on, increasing by
           increments of 5% for higher coverage values. Note that cumulative areal coverage of all species can
           exceed 100% because more than one species can occupy the same space in a 2-dimensional plane. In
           addition, if it is not possible to place the  quadrat close to the ground (i.e., in dense Tfpha), surveyors
           should be mindful of parallax and not include areas outside of the quadrat  frame in their areal coverage
           estimates.

          Although only vascular macrophytes are used in the mean conservatism  indices, surveyors should record
          all aquatic macrophytes (e.g., Chara, Nitella, Riccia, Ricciocarpos). This may allow for further analyses in the
          future, including potential development of FQ1 indices for nonvascular plants. We are suggesting that
40
Great Lakes Coastal Wetlands Monitoring Plan

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          plant taxonomic nomenclature be based on that found in the Michigan Flora (Voss 1972, 1985, 1996 and
          Herman et al 2001)  This will allow easy utilization of the FQA program, which contains almost all of
          the Great Lakes wetland flora  Another web-based flora of North America has been recommended
          (http //www itis gov). because it covers the entire flora of the continent, but taxonomic differences
          between this program and the FQA program are significant and will require the development of a
          crosswalk between ITIS and the FQA nomenclature

          Data are recorded on a standardized plant sampling form (Figure 3-3) This form provides the scientific
          names of the most commonly occurring aquatic macrophytes, with spaces provided for unknown species
          or species not listed on the form For some genera with many species, such as Carex or Potamogeton, spaces
          are provided to fill in additional species within the genus  Since there are more than 600 species of aquatic
          macrophyte within Great Lakes coastal wetlands, only the most common are listed on the form A more
          complete list of species is provided in Appendix  1  While this is a more complete list, no wetland tree
          species are included, although they might establish briefly during low-water conditions or they may be
          present at the edges of the open coastal wetland

Worksheets
The  worksheets utilized for the plant protocols include Table 3-3:  Wetland quality based on aquatic macrophyte
sampling, Table  3-5:  Flow chart  for  determining quality rating of submergent marsh zone or submergent
component of an  emergent marsh zone, Table 3-6:  Species tolerant  of nutrient enrichment, sedimentation, or
increased turbidity,  and Table 3-7:  Combined standardized score from Table 3-3, Rows A-l. Tables 3-1, 3-2, 3-4,
and  3-8  provide additional examples and information,  but are  not  required for computer marsh quality scores
Figure 3-3: Great Lakes Marsh Sampling Form, is utilized for collecting plant data in the wetland

Checklists
One checklist  is included  Appendix 3-1,  a list of the most common wetland plants encountered in Great Lakes
coastal wetlands

Site selection/number of sites/stratification
Project-wide site selection, number of sites, and stratification is based on recommendations in  the Statistical Design
chapter of the report by Otieno and Uzarski  Overall statistical analysis selects  and stratifies sites on the basis of
ecoregions (Omernik 2000) and lake  For individual administrative units (state or province), it  is  recommended that
hydrogeomorphic type (Albert  and  Simonson 2004)  be noted, as the  hydrogeomorphic types are  important  for
understanding flonstic differences

As noted above, 15 sampling points are located in each zone of the wetlands chosen for sampling Species areas curves
leveled off after 12  to  15 sampling points in each marsh zone for most of the U S and Canadian wetlands studied,
demonstrating that overall plant diversity was adequately sampled

Analysis of quadrat data (use Table 3.3):
      1   Compute overall INVASIVE COVER for the entire site by summing  the coverage values for all invasive
          plants and dividing by the number of quadrats This is the INVASIVE COVER score for the entire site and
          can be used to estimate the site quality, see Table 3-3-A  for quality classes (High,  Medium, Low, Very
          Low) and the equivalent numeric scores (5,3, 1, 0).

      2   Compute overall  INVASIVE  FREQUENCY for the entire site by summing the number of quadrats
          containing invasive species and dividing by the total  number of quadrats   See Table 3-3-B for quality
          classes based on INVASIVE FREQUENCY
www glc org/wetlonds                                                                                    41

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          Compute the MEAN  CONSERVATISM INDEX for the entire site by totaling the conservatism score
          For each species and dividing by the number of species  This can be rapidly computed using the Michigan
          FQA software (Herman et al 2001)  The mean conservatism index for all species (total) is divided by the
          mean conservatism index for native species (native) and the ratio is compared (See Table 3-3, Row C for
          quality scores)   Low scores  (0 79 or lower)  reflect large numbers of exotic species and  degraded
          conditions  Table 3-4 provides average regional mean conservatism index scores for each of the Great
          Lakes and for each of the  hydrogeomorphic types   The scores in Table 3 4 are not used in computing the
          quality of the  wetland,  but provide a regional perspective to wetland quality  in different lakes and
          hydrogeomorphic types

          Compute overall INVASIVE COVER for the wet meadow and dry emergent zone by summing the
          coverage values for all INVASIVE plants in these zones and dividing by the number of quadrats in these
          zones This is the INVASIVE COVER score for the wet meadow and dry emergent zone and can be used
          to estimate the zone quality, see Table 3-3, Row D for quality classes

          Compute  overall  INVASIVE FREQUENCY for  the wet meadow and  dry emergent  zone by
          summing the number  of quadrats (in these zones) containing INVASIVE species and dividing by the total
          number of quadrats in the wet meadow and dry emergent zones  See Table 3-3, Row E for quality classes
          of the wet meadow and dry emergent zone based on INVASIVE  FREQUENCY

          Compute the MEAN  CONSERVATISM INDEX for the wet meadow and dry emergent zone by
          totaling the conservatism  score for each species in these zones and dividing by the number of species This
          can be  rapidly computed using the  Michigan  FQA software (Herman  et al  2001)   The mean
          conservatism index for all species (total) in the wet meadow and dry emergent zone is divided by
          the mean conservatism index for native species (native) and the ratio is compared (See Table 3-3, Row  F
          for quality scores)  Table  3-4 provides average regional mean conservatism index scores  by  zone for
          most of the Great Lakes and hydrogeomorphic types

          Compute overall INVASIVE COVER for the flooded emergent and submergent zone by summing
          the coverage values for all invasive plants in these zones and dividing by the number of quadrats in these
          zones  This is the INVASIVE COVER score for the flooded emergent and submergent zone and
          can be used to estimate the zone quality, see Table 3-3, Row G for quality classes

          Compute overall INVASIVE FREQUENCY  for the Flooded  emergent and submergent zone by
          dividing the number  of quadrats (in these zones) containing invasive species and dividing by the total
          number of quadrats in the  flooded emergent and submergent zone   See Table 3-3, Row H for
          quality classes of the wet  meadow and dry emergent zone based  on INVASIVE FREQUENCY

          Compute the MEAN  CONSERVATISM INDEX for the flooded emergent and submergent zone
          by totaling the conservatism score for each species in these zones and dividing by the number of species
          This  can be rapidly computed using the Michigan  FQA  software (Herman et al  2001)  The mean
          conservatism index for all species (total) in the flooded emergent and submergent zone  is  divided
          by the conservatism index for native species (native) and the ratio is compared (See Table 3-3, Row I for
          quality scores) Table 3-4 provides average regional  mean  conservatism index scores by zone for most of
          the Great Lakes and hydrogeomorphic types
42         '                                                    Great Lakes Coastal Wetlands Monitoring Plan

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Table 3-3. Wetlond quality based on aquatic macrophyte sampling.
VARIABLE

A: INVASIVE COVER (entire
site)1
B. INVASIVE FREQ. (entire site)
C: Mean conservatism of entire
site (native/total)
QUALITY
HIGH (5)
Absent
Absent
>0.95
MEDIUM (3)
<25%
<25%
0.8 -0.94
LOW(l)
25-50%
25-50%
06-079
VERY LOW (0)
>50%
>50%
<06

D: INVASIVE COVER (wet
meadow and dry emergent
zones)2
E: INVASIVE FREQ. (wet
meadow and dry emergent
zones)
F: Mean conservatism score of
wet meadow and dry portion
of emergent zones
(native/total)
Absent
Absent
>0.95
<25%
<25%
0.8-094
25-50%
25-50%
0.6-0.79
>50%
>50%
<0.6

G: INVASIVE COVER (flooded
emergent and submergent
zone)3
H: INVASIVE FREQUENCY
(flooded emergent and
submergent zone)
1: Mean conservatism of
flooded emergent and
submergent zones
(native/total)
Absent
Absent
>095
<25%
<25%
0.8 -0.94
25-50%
25-50%
0.6-0 79
>50%
>50%
<0.6
'invasive species of entire site to include in  analysis  Butomus umbellatus (flowering rush),  Cirsium anense (Canadian
thistle), Cirsium palustre (marsh thistle), Cirswm vulgare (bull thistle),  Clycena ma\ima (tall manna grass), Hydrocharis
morsus-ranae (European frog's-bit), Impadens glandulifera (touch-me-not), Ins pseudacorus (yellow flag), Lythrum salicana
(purple loosestrife),  Mynophyllum  spicatum  (Eurasian  water  milfoil),  Phalans arundmacea (reed  canary grass),
Phragmnes australis (tall reed), Polygonum lapathifolium (nodding smartweed), Potamogeton cnspus (curly pondweed),
Rorippa amphibia (yellow cress), Rume\ cnspus (curly dock), Typha angustifolia (narrow-leaved cattail), Typha X glauca
(hybrid cattail)

2Invasive species of wet meadow  and dry emergent marsh  Cirsium arvense, Cirsium palustre,  Cirsium vulgare, Impatiens
glandulifera, Iris pseudoacorus, Lythrum salicana, Phalans arundmacea, Phragmnes australis, Polygonum lapathifolium, Konppa
amphibian, Rume\ cnspus, Typha angustifolia, Typha X glauca

3lnvasive species of flooded emergent and submergent  zone to include  in analysis   Butomus umbellatus, Hydrocharis
morsus-ranae, Lythrum salicana, Myriophyllum spicatum, Phalans arundmacea, Phragmnes australis, Potamogeton cnspus, Typha
angustifolia, Typha X glauca
www glc org/wetlands
43

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Reference conditions for Regional Wetland Types
Several regional wetland types were identified through cluster analysis and Twinspan ordinations (Hill 1973, 1979) of
vegetation data collected across the Great Lakes, including the connecting rivers (Mine 1997)  Mean conservatism
indices were computed for each of the regional wetland types (Table 3 2)  For most of the wetland types, the indices
were computed from the list of species that were present in more than 1% of the sampling points during inventories
conducted in  1987, 1988,  1989,  1994, and 1995 (Albert et al  1987, 1988, 1989, Mine  1997) For Georgian Bay
protected embayments and  Lake Erie sandspit embayments,  the indices were computed  from unpublished data
collected in 2003 and 2004 (D Albert)   For the Lake Huron, Lake Michigan and Lake Superior swale complexes
(barrier enclosed), scores were summarized from studies of swale complexes in Michigan (Comer et al  1991, 1993)
The Lake Ontario protected embayment and drowned river mouth sites are summarized from data collected by the
Canadian Wildlife Service of Environment Canada in 2002 and 2003
44                                                               Great Lakes Coastal Wetlands Monitoring Plan

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Table 3-4.  Mean Conservatism Scores for each regional marsh type.
LAKE or REGIONAL MARSH TYPE
Lake Erie Open Embayments**
Lake Erie Sand-spit Embayments

Georgian Bay Protected Embayments *
Lake Huron (northern) protected Embayments
Lake Huron (northern) Open Embayments (Rich
Fens)
Lake Huron's Sagmaw Bay Open Embayment
Lake Huron Swale Complex (Barrier Enclosed)

Lake Michigan Drowned River Mouths
Lakes Michigan (northern) Open Embayments
(Rich Fens)
Lake Michigan (northern) Protected
Embayments
Lake Michigan Swale Complex (Barrier
Enclosed)

Lake Ontario Bamer Beach Lagoons
Lake Ontario Drowned River Mouths
Lake Ontario Protected Embayments*

Lake St. Clair Open Embayments"

Lake Superior Barrier Beach Lagoons & Rivenne
Wetlands
Lake Superior Swale Complex (Barrier Enclosed)

St. Clair River Delta

St. Lawrence River Drowned River Mouths

St. Marys River Connecting Channel
MEAN CONSERVATISM SCORE BY ZONE
MEADOW ZONE
3.1 (46)
4.3 (4.5)

5.1 (6.5)
5.1
5.5
3.2
-

4.0
5.5
5.1
-

5.0
4.2
47(64)

31

63
-

4.2

4.4

5.1
EMERGENT
ZONE
3.8 (5 3)
44(61)

6.4 (7.2)
5.6
4.5
4.5
-

4.9
4.5
5.6
-

5.7
4.3
3.9 (5.8)

3.8

6.7
-

5.5

5.5

5.6
TOTAL
MARSH
3 7 (5.3)
4 5 (4.8)

5.8 (6.8)
5.6
5.1
3.9
4.9 (6.4)

45
5.1
5.6
5.3 (6.3)

5.3
4.2
4 5 (6 3)

3.7

6.4
5.9 (6.9)

4.7

5.0

5.6
* For Lake Ontario and Georgian Bay protected wetlands the mean scores for each zone are based on the scores of
several wetlands rather than on a mean coverage value for all of the marshes studies  The maximum score of a single
wetland for each zone is shown in parenthesis when the data is available ( )
** For Lake Erie, mean C scores from historic data collected in high quality wetland at Perry's Victory Monument
(Stuckey 1975) is shown in parenthesis Q
www glc org/wetlonds
45

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Evaluating wetland quality using submergent and floating plant species
Evaluating the quality of the portion of a wetland dominated by submergent or floating plants requires a multi-step
process (Table 3-5), as several factors can influence the presence and density of these plants  Table 3 5 summarizes
the ranks proposed for submergent or emergent zones using submergent and floating plants   It is common for
submergent plants to cover only a portion of the bottom substrate in a marsh,  so sparse submergent or floating
vegetation does  not  necessarily  indicate degraded conditions   High coverage (>75%) of submergent or floating
vegetation,  with a predominance  (>SO%) of nutrient-enrichment  or sediment-and-mcreased-turbidity  tolerant
species (Table 3-6) typically indicates that either agriculture or urban development has resulted in increased nutrient,
sediment, or turbidity in the lake waters  (Index score = 1), but not to a  level that would result in complete
elimination of submergent or floating vegetation (Index score = 0)  Under such conditions, other submergent and
floating plants can be more common, in which case  the wetland  is  considered less degraded (Index score = 3)
Submergent and floating vegetation cover  ranging from 25-75% is the typical condition for most  emergent and
submergent wetlands, and Index scores of 3 or 5 indicate this increased quality  Coverage values of less than 25%
indicate degraded conditions if only nutrient-enrichment or sediment-and-mcreased-turbidity tolerant species are
present, but are typical for other submergent or floating plant coverage values in many marshes (Index score = 5)

If submergent or floating plants  are completely absent, it can indicate several  conditions  In lower  stream reaches
(drowned river mouths, connecting rivers, or deltas), it can  indicate that the stream velocity is too high for these
plants to persist   Emergent plants may, however, be able to persist in these higher velocity regions of a stream
However, in protected bays or in slow-flowing lower reaches  of streams, lack of submergent and floating vegetation
typically indicates that sedimentation or turbidity is preventing plant establishment or persistence  When conditions
are windy or when turbidity is the result of fine mineral or organic sediments, turbidity is often evident and can be
directly linked to lack of wetland vegetation  However, when conditions are calm, surface waters can be clear, but
thick, loose sediments will often  be evident and easily stirred up during plant sampling  Another complication can be
that strong winds may stir  up sediment even though conditions are adequate for submergent and floating plants to
occupy the wetland  In this case, the wetland would be judged on the basis of the vegetation present, not on
the basis of the short-term turbidity

Combined standardized score

A combined standardized score can be calculated by adding the wetland quality scores from Table 3-3 (Rows A-I) and
Table 3-5   Each of these ten numeric scores ranges  from zero to five, with a maximum total score of 50 and a
minimum score  of zero  The Combined numeric quality scores and their equivalent descriptive quality scores are
shown in Table 3-7  Table 3-8 provides example scores for six riverine wetlands resulting from totaling the metrics
in Table 3-3 and 3-5
46                                                                 Great Lakes Coastal Wetlands Monitoring Plan

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Table 3-5.  Flow chart for determining quality rating of submergent marsh zone or submergent component
of an emergent marsh zone

Submergent or Floating
Vascular Plant Species
Present

Submergent or Floating
Plant Species Absent

Only Algae Present
Plant
Coverag
e
>75%
25-75%
<25%

0%


Type of submergent plants present
>50% nutrient-enrichment tolerant species
or sediment-and-increased-turbidity
tolerant species
<50% nutnent-ennchment tolerant species
or sediment-and-increased-turbidity
tolerant species
>50% nutrient-enrichment tolerant species
or sediment-and-increased-turbidity
tolerant species
<50% nutrient-enrichment tolerant species
or sediment-and-increased-turbidity
tolerant species
>75% nutnent-ennchment tolerant species
or sediment-and-increased-turbidity
tolerant species
<75% nutnent-ennchment tolerant species
or sediment-and-increased-turbidity
tolerant species

Clear water in rapidly flowing streams or
where bottom consists of cobbles or rock
Highly turbid at time of survey, loose bottom
sediments
Clear water, but thick, loose bottom
sediments


Index
Score
1
LOW
3
MODERATE
3
MODERATE
5
HIGH
1
LOW
5
HIGH

?
REQUIRES
FURTHER
ANALYSIS
0
VERY LOW
0
VERY LOW

0
VERY LOW
/Mapping of invasive species
If there are areas where  invasive  species have  greater than  50% cover, these should  be mapped   Boundaries of
polygons should be identified on recent aerial photos and or mapped with a GPS unit  Mapping allows the agency
managing the marsh  to either  initiate  restoration activities or document the  spread of invasive species in  future
monitoring periods  Further detailed sampling can be conducted m polygons  dominated by  mvasives to meet the
needs of the sampling agency For example, five randomly located 1 m2 quadrats could be sampled in one or several
large patches of invasive plants to document the species composition and relative coverage values (estimated to 5%)
for long-term monitoring of change  within the patches, either  due  to  natural wetland  changes or  to  active
management  If there are  several patches of invasive species, at least one polygon of each invasive-species type could
be sampled
www glc org/wetlonds
47

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Table 3-6. Species tolerant of nutrient enrichment, sedimentation, or increased turbidity.
Stress
Nutrient Enrichment







Sedimentation and Increased Turbidity









Species
Ceratophyllum demersum
Elodea canadens/s
Lemna minor
Mynophyllum spicofum
Pofamoqefon cnspus
Pofamoqefon pecf/nafus
Algae

Bufomus i/mbe/to/us
Ceratophyllum demersum
Elodea Canadens/s
Heferanfhera dub;a
Mynophyllum spicatum
Potamogeton cnspus
P. fo/iosus
P. pechnafus
P. PUSI//US
Ranuncu/us (ong/rosfris
Table 3-7. Combined standardized score from Table 3.3. Rows A-l and Table 3.5
Combined Numeric Score
0-5
6-20
21-40
41-50

Combined Descriptive Scores
VERY LOW
LOW
MEDIUM
HIGH

Table 3-8. Examples of Combined Standardized Scores for five nvenne wetlands
METRICS

Table 3A
Table 3B
Table 3C
Table 3D
Table 3E
Table 3F
Table 3G
Table 3H
Table 31
Table 5
TOTAL SCORE
SITES
Au Tram,
Mich
5
5
5
5
5
5
5
5
5
5
50
HIGH
Kalamazoo,
Mich.
3
0
3
3
3
3
5
3
3
1
27
MODERATE
Kewaunee,
Wis.
3
3
3
3
1
3
3
3
3
0
25
MODERATE
Fox Wis.
0
0
0
0
0
0
0
0
0
0
0
VERY LOW
Lineville, Wis.
1
0
3
0
0
3
1
0
3
1
12
LOW
48
Great Lakes Coastal Wetlands Monitoring Plan

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Interpretation  of results
In the vegetation section, an attempt was made to incorporate interpretations of the results into a discussion of the
protocols  For example, Table 3-4  (Mean conservatism scores for each regional marsh type) provides the scores
derived from previous sampling of coastal wetlands that will allow state and provincial wetland monitors to compare
their wetlands to the conditions encountered in each lake and hydrogeomorphic wetland type  Similarly, Table 3-8
(Examples of combined standardized scores For five riverine wetlands), shows the range of quality scores found for a
given wetland type, in this case riverine wetlands along lakes Michigan and Superior  It is common for riverine
wetlands in the northern portions of the Great Lakes to be of higher quality  than those in the southern portion of the
lakes, but it can be seen that even northern riverine wetlands (Kewaunee, Fox and a small stream at Lmeville near the
town of Green Bay) can be degraded by urban and agricultural land use

The effectiveness of vegetation data to detect wetland degradation  was discussed in the introduction  Probably the
greatest challenge in evaluating  wetland degradation  is presented by the response of wetland plant composition to
water-level fluctuations  The use of a simplified set of metrics and indices was an acknowledgement that the number
of effective plant metrics is greatly limited by natural plant response to water level fluctuation
Data handling and storage
A data-handling protocol has been developed by the Great Lakes Commission, which will maintain long-term storage
of the data collected for this project  The plant analyses have been simplified to utilize only the metrics (invasive
species and species tolerant of nutrient enrichment and turbidity) and indices (mean conservatism, part of flonstic
quality assessment) agreed upon by the group of wetland plant ecologists meeting in Duluth, Minn  during the spring
of 2007  As a result, the  statistical analysis of the vegetation data is not complex  However,  the data  collected
provides an opportunity to conduct future analyses as the long-term database is developed These future analyses may
well provide us with adequate data to further test metrics and indices developed for wetlands in other  parts of the
Great Lakes basin, and to develop a more robust set of Great-Lakes based plant metrics and indices
www glc org/wetlonds                                                                                     49

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   References

   Albert, D A , Mine, L D,, 2004  Plank as Regional Indicators of Great Lakes Coastal Wetland Health Aquatic Ecosystem Health and
   Management 7(2)  233-247

   Albert, D A , Reese, C , Crispin, S , VVilsmann, L A , Ouwinga, S J , 1987 A survey of Great Lakes marshes in Michigan's Upper Peninsula
   Michigan Natural Features Inventory, Lansing, Mich

   Albert, D A , Reese, G , Crispin, S , Pcnskar, M R , Wilsmann, L A , Ouwinga, S J , 1988 A survey of Great Lakes marshes in the southern
   half of Michigan's Lower Peninsula Michigan Natural Features Inventory, Lansing, Mich

   Albert, D A , Reese, G , Pcnskar, M R , Wilsmann, L A , Ouwinga, S J , 1989  A survey of Great Lakes marshes in the northern half of
   Michigan's Lower Peninsula and throughout Michigan's Upper Peninsula Michigan Natural Features Inventory, Lansing, Mich

   Albert, D  A , and L Simonson  (2004)  Coastal wetland imemoyofthe Great Lakes basin (CIS coverage of the entire U S Great Lakes
   www.glc.org/wctlands/inventory.htmh. Great Lakes Coastal Wetlands Consortium, Great Lakes Commission, Ann Arbor, M ich

   Albert, D  A , Tcplcy, A J , and L D  Mine  2006  Plants as indicators for Lake Michigan't Cieat Lakes coastal drowned n\er wetland health Pages
   238-258 in Thomas P Simon and Paul  M Stewart (Eds ), Coastal Wetlands of the Laurentiaa Great Lakes  Heath, Habitat, and Indicators,
   Authorhouse Press, Bloomington, Ind

   Albert, D  A,J W  Ingram, T A Thompson, and D A Wilco\ 2003  Hydrogcomorphic classification for Great Lakes coastal wetlands
   (Great Lakes Consortium web site)

   Albert, Dennis  A , Douglas A  Wilcox, Joel W Ingram, and Todd A Thompson 2005 Hydrogcomorphic classification for Great Lakes
   coastal wetlands Journal of Great Lakes Research 31 (Supplement 1)  129-146

   Bourdagns, M , C  A Johnston, and R  R Regal 2006   Properties and performance of the flonstic quality index in Great Lakes coastal
   wetlands Wetlands 26 (3)  718-735

   Comer,  P J and D A Albert   1993  A Sur\e\ of Wooded Dune and Strale Completes  in Michigan MNFI report to Michigan Department of Natural
   Resources, Land and Water Management Division, Coastal Zone Management  Program 159 pp

   Comer,  P J and D A Albert   1991  A Sunev of Wooded Dune and Swale Completes  in
   The Northern Loner and Eastern Upper Peninsulas of Michigan  MNFI report to the
   Michigan DNR, Coastal Zone Management Program  99 pp

   Environment Canada 2004 Durham Region Coastal Wetland Monitoring Project Year 2 Technical Report   Environment Canada, Ontario

   Herman, K D  , L A  Masters, M R  Pcnskar, A  A  Rc/mcck, G  S Wilhclm, W  W  Brodovich, and K  P  Gardiner  2001  Flonstic
   Quality Assessment with Wcltna Categories and Examples of Computer Applications for the State of Michigan

   Hill, M  O  1973  Reciprocal averaging  an eigenvector method of ordination  Journal of Ecology 61  237-249

   Hill, M  O  1979 TWINSPAN A FORTRAN Program for Arranging Multivanatc Data man Ordered Two-Way Table by Classification of the
   Individuals and Attributes Cornell Ecology  Program 41  Section of Ecology and  Systematic*, Cornell University, Ithaca, MY 90 pp

   Hudon, C  , D  Wilcox, and J  Ingram  2006 Modeling wetland plant community response to assess water-level regulation scenarios in the
   Lake Ontario-St Lawrence River basin Environmental Monitoring and Assessment  113(1-3)  303-328

   Mack, J  J  , N  H  Avdis, E C  Braig IV,  and D L Johnson  Accepted Application of a Vegetation-based Index of Biotic Integrity for Lake Erie
|   coastal marshes in Ohio   Journal of Aquatic  Ecosystem Health and Management

   Omcrmk 2000
   http //mercury ornl gov/mctadata/ornldaac/html/rgd/daac ornl gov_data_bluangcl_harvest_RGED_QC_basic_vcgctation_omcrnik_ccosy
   stems html

   Simon, P T , and P E Rothrock 2006  Plant Index of Biotic Integrity for Drowned River Mouth Coastal Wetlands of Lake Michigan Pages
   228-237 in Thomas P Simon and Paul  M Stewart (Eds ), Coastal Wetlands of the Laurcntian Great Lakes  Heath, Habitat, and Indicators,
   Authorhouse Press, Bloomington, Ind
   50                                                                             Great Lakes Coastal Wetlands Monitoring Plan

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Stewart, P M , Butcher, J T , Simon, T P , 2003 Response Signatures of Four Biological Indicators to an Iron and Steel Industrial Landfill In
T P  Simon (E ) Biological Response Signatures, pp  +19-444  CRC Press, New York, NY

Stewart, P M , Scribailo, R W , Simon, T P , 1999 The use of aquatic macrophytcs in monitoring and in assessment of biological integrity In
A  Gcrhardt (Ed )

Biomonitonng of Polluted Water, pp  27S-302 Environmental Research Forum vol 9 Trans Tech Publications, Zurich, Switzerland

Stuckcy, R L  197S A flonstic analysis of the vascular plants of a marsh at Perry's Victory Monument, Lake Eric  Michigan Botanist 14  144-
166

Swink, F , and G  Wilhclm  1994  Plants of the Chicago Region  Fourth Edition   Indiana Academy of Science,  Indianapolis, IN  921 pp

Voss, E G 1972  Michigan Flora  Part I Gymnospcrms and Monocoti Cranbrook Inst  Sci  Bull SS & Umv Mich Herb  488 pp

Voss, E G 198S  Michigan Flora  Part II Dicots (Saururaccac-Cornaccac) Cranbrook Inst Sci  Bull  S9 & Umv Mich Herb 724 pp

Voss, E G 1996  Michigan Flora  Part III Dicots (Pyrolaccac-Compositac) Cranbrook Inst Sci  Bull  61 &  Umv  Mich Herb 622 pp

Wilcox, D A  200S  Lake Michigan wetlands classification, concerns, and management opportunities Pages 421-437 m Edsall, T and M
Munawar, cds State of Lake Michigan Ecology, Health, and Management Ecovision World Monograph Scries  Aquatic Ecosystem Health and
Management Society, New Delhi

Wilcox, D A  2004  Implications of hydrologic variability on the succession of plants in Great Lakes wetlands Aquatic Ecosystem Health &_
Management 7(2) 223-231

Wilcox, D A , J  E Meeker, P  L Hudson, B J Armitagc, M  G  Black, and D  G U/arski 2002 Hydrologic variability and the application
of Index of Biotic Integrity metrics to wetlands a Great Lakes evaluation Wetlands 22(3) S88-6I5

Wilhclm, G , and L A Masters  199S  Flonstic quality assessment in the Chicago Region and application computer programs Morton
Arboretum, Lisle, IL  17 pp
 www glc org/wetlands

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Appendix 3-1. Great Lakes Marsh Sampling Form
Marsh name1 I Location:
GPS.N E
Local Jurisdiction: Date
Samplers
GPS Pt - begin transect 1
GPS Pt - begin transect 2
GPS Pt - begin transect 3
Lake: I Hydrogeomorphic Type:
Marsh zone- l=meadow 2=emergent
3=submergent
SUBSTRATE TYPE
ORGANIC DEPTH
WATER DEPTH
MARSH ZONE
SAMPLING POINT
SPECIES
Agrostis hyemahs
Algae sp
Alisma plantago-aquatica
Alnus rugosa
Aster puniceus
Aster umbellatus
Aster
Bidens cernuus
Bidens
Boehmena cylmdncal
Bolboschoenus fluviatihs
Brasenia schreben
Butomus umbellatus
Calamagrostis Canadensis
Calla palustns
Caltha palustns
Campanula apannoides
Carex aquatilis
Carex lacustns
Carex stncta
Carex
Carex
Cephalanthus occidentahs
Ceratophyllum demersum
Chara spp
Cicuta bulbifera
Cirsium
Cladium manscoides
Cornus stolonifera
Cornus
Cyperus
Decodon verticillatus
Drosera
Dulichium arundmaceum
Echmocloe walten
Eleochans smalhi
Eleochans

















































































































































































End1
End 2
End3
Substrate (circle): sand silt clay gravel
Secchi Disk Reading:




































































































































































































































































































































































































































































































52
Great Lakes Coastal Wetlands Monitoring Plan

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Page 2, Marsh Name1
SAMPLING POINT
SPECIES
Elodea Canadensis
Epilobium
Equisetum fluviatile
Erechtites hieracifoha
Engeron philadelphicus
Enophorum
Eupatonum maculatum
Eupatonum perfohatum
Euthamia grammifolia
Galium
Galium tnfidum
Glycena
Heteranthera dubia
Hippuns vulgans
Hydrochans morsus-ranae
Hypencum
Ilex verticillata
Impatiens capensis
Ins
Juncus
Juncus alpmus
Juncus balticus
Juncus canadensis
Juncus dudleyi
Juncus nodosus
Lathyrus palustns
Leersia oryzoides
Lemna minor
Lemna tnsulca
Lobelia
Ludwegia palustns
Lycopus amencanus
Lycopus uniflorus
Lysimachia
Lysimachis terrestns
Lysimachis thyrsiflora
Lythrum salicana
Megalodonta beckn
Mentha
Menyanthes tnfbhata
Mimulus nngens
Muhlenbergia glomerata
Myosotis
Mynophyllum exalbescens
Mynophyllum spicatum
Mynophyllum



Samplers:
























































































































































































































































































































































































































Date-





































































































































































































































































































































































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53

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Page 3. Marsh Name:
SAMPLING POINT
SPECIES
Najas flexihs
Nitella spp
Nuphar advena
Nuphar vanegata
Nymphaea odorata
Onoclea sensibihs
Osmunda
Pamcum
Peltandra virginica
Phalans arundmacea
Phragmites austrahs
Poa
Polygonum amphibium
Polygonum lapathifohum
Polygonum
Pontedena cordata
Potamogeton crispus
Potamogeton grammeus
Potamogeton illinoensis
Potamogeton natans
Potamogeton pectinatus
Potamogeton richardsonn
Potamogeton zostenformis
Potamogeton
Potamogeton
Potentilla palustns
Ranunculus longirostns
Ranunculus
Rhamnus
Rhynchospora
Ronppa palustns
Rosa palustns
Rubus
Rumex crispus
Rumex orbiculatus
Sagittana latifoha
Sagittana
Salix Candida
Salix exigua
Sahx
Sarracenia purpurea
Saururus cernuus
Scheuchzena palustns
Schoenoplectus acutus
Schoenoplectus pungens
Schoenoplectus subterminalis
Schoenoplectus tabernaemontani


Samplers.
























































































































































































































































































































































































































Date:





































































































































































































































































































































































54
Great Lakes Coastal Wetlands Monitoring Plan

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Page 4, Marsh Name1
SAMPLING POINT
SPECIES
Scirpus
Scutellana galenculata
Sium suave
Solarium dulcamara
Solidago
Sparganium
Sparganium chlorocarpum
Sparganium eurycarpum
Sparganium minimum
Sphagnum spp
Spiraea alba
Spirodela polyrhiza
Teucnum canadense
Thelyptens palustns
Tofieldia glutmosa
Tnadenum
Tnglochin
Typha angustifolia
Typha latifoha
Typha x glauca
Urtica dioica
Utnculana vulgans
Utnculana intermedia
Utnculana
Vaccmium
Valhsnena amencana
Verbena hastata
Veronica
Viburnum lentago
Viola cucullata
Vitis npana
Wolffia columbiana
Zannichelha palustns
Zizania aquatica

Samplers.








































































































































































































































































































Date:



































































































































































































































































NOTES.










www glc org/wetlands
55

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Appendix 3-2.  Wetland plant species most commonly  encountered in Great
Lakes coastal wetlands.
Acorus calamus
Agrostis hyemalis
Algae sp.
Ahsma plantago-aquatica
Alnus rugosa
Andromeda glaucophylla
Anemone canadensis
Apocynum sibmcum
Aroma melanocarpa
Asclepias incarnate
Aster boreahs
Aster dumosus
Aster lanceolatus
Aster lateriflorus
Aster longifolius
Aster novae-anghae
Aster puniceus
Aster umbellatus
Betula pumila
Bidens cernuus
Bidens connatus
Bidens coronatus
Bidens frondosus
Boehmeria cyhndnca
Bolboschoenus fluviatihs
Brasenia schreberi
Bromus ciliatus
Butomus umbellatus
Calamagrostis canadensis
Calamagrostis mexpansa
Calla palustns
Calhtriche hermaphroditica
Calopogon tuberosus
Caltha palustns
Campanula apannoides
Cardamine pensylvanica
Carex alata
Carex aquatilis
Carex atherodes
Carex bebbii
Carex bromoides
Carex buxbaumii
Carex canescens
Carex chordorrhiza
Carex comosa
Carex cnnita
Carex cryptolepis
Carex diandra
Carex exilis
Carex flava
Carex hystencina
Carex interior
Carex intumescens
Carex lacustns
Carex lanuginosa
Carex lasiocarpa
Carex leptalea
Carex hmosa
Carex livida
Carex michauxiana
Carex ohgosperma
Carex pauciflora
Carex paupercula
Carex prairea
Carex pseudo-cyperus
Carex retrorsa
Carex rostrata
Carex sartwellu
Carex scoparia
Carex sterihs
Carex stipata
Carex stncta
Carex tenera
Carex vesicana
Carex viridula
Carex vulpinoidea
Cephalanthus occidentahs
Ceratophyllum demersum
Chamaedaphne
calyculata
Chara spp
Chelone glabra
Cicuta bulbifera
Cmna arundinacea
Cirsium arvense
Cirsium muticum
Cladium manscoides
Clematis virgmiana
Cornus amomum
Comus drummondii
Comus foemina
Comus racemosa
Comus rugosa
Cornus stolonifera
Crataegus spp.
Cuscuta gronovn
Cyperus diandrus
Cyperus stngosus
Cypnpedium calceolus
Cypnpedium spp.
Cystoptens bulbifera
Decodon verticillatus
Deschampsia cespitosa
Drosera intermedia
Drosera rotundifoha
Dryoptens cnstata
Dulichium arundmaceum
Echmocloe walten
Eleocharis aciculans
Eleocharis elliptica
Eleocharis erythropoda
Eleocharis obtusa
Eleocharis rostellata
Eleocharis smallii
Elodea canadensis
Elodea nuttalln
Elymus virgmicus
Epilobium cihatum
Epilobium coloratum
Epilobium hirsutum
Epilobium leptophyllum
Equisetum fluviatile
Equisetum hyemale
Equisetum palustre
Equisetum vanegatum
Erechtites hieracifoha
Engeron philadelphicus
Enocaulon septangulare
Enophorum angustifohum
Enophorum spissum
Enophorum tenellum
Enophorum virgmiana
Eupatonum maculatum
Eupatonum perfohatum
Euthamia grammifoha
Gahum asprellum
Galium labradoncum
Gahum palustre
Galium tinctorium
Galium trifidum
Gaylussacia baccata
Geum aleppicum
Geum canadense
Geum nvale
Glycena boreahs
Glyceria canadensis
Glycena stnata
Heteranthera dubia
Hibiscus palustns
Hippuns vulgaris
Hydrocharis morsus-ranae
Hydrocotyle amencana
Hypencum boreale
Hypencum kalmianum
Hypencum majus
Ilex verticillata
56
                      Great Lakes Coastal Wetlands Monitoring Plan

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Impatiens capensis
Iris versicolor
Ins virgmica
Juncus alpinus
Juncus balticus
Juncus brevicaudatus
Juncus bufonius
Juncus canadensis
Juncus dudleyi
Juncus effusus
Juncus greenei
Juncus nodosus
Juncus pelocarpus
Juncus tenuis
Kalmia polifoha
Lathyrus palustris
Ledum groenlandicum
Leersia oryzoides
Lemna minor
Lemna trisulca
Liatris spicata
Lobelia dortmanna
Lobelia kalmii
Lobelia siphihtica
Lobelia spicata
Ludwegia palustris
Lycopus americanus
Lycopus uniflorus
Lysimachia ciliata
Lysimachia nummulana
Lysimachia quadnflora
Lysimachis terrestns
Lysimachis thyrsiflora
Lythrum alatum
Lythrum salicaria
Matteuccia struthioptens
Megalodonta beckn
Mentha arvensis
Mentha piperita
Menyanthes trifoliata
Mimulus nngens
Muhlenbergia glomerata
Muhlenbergia uniflons
Myosotis laxa
Myosotis scorpioides
Myosoton aquaticum
Mynca gale
Myrica pensylvanica
Myriophyllum alterniflorum
Myriophyllum exalbescens
Mynophyllum
heterophyllum
Myriophyllum spicatum
Myriophyllum tenellum
Myriophyllum verticillatum
Najas flexihs
Najas minor
Nelumbo lutea
Nemopanthus mucronata
Nitella spp.
Nuphar advena
Nuphar vanegata
Nymphaea odorata
Onoclea sensibihs
Osmunda cinnamomea
Osmunda regalis
Panicum lindheimen
Panicum virgatum
Pamassia glauca
Peltandra virgmica
Penthorum sedoides
Phalaris arundinacea
Phragmites austrahs
Physostegia virginiana
Pilea fontana
Pilea pumila
Platanthera clavellata
Poa palustns
Pogonia ophioglossoides
Polygonum amphibium
Polygonum
hydropiperoides
Polygonum lapathifohum
Polygonum pensylvanicum
Polygonum persicana
Polygonum punctatum
Polygonum sagittatum
Pontedena cordata
Potamogeton alpinus
Potamogeton amplilfolius
Potamogeton berchtoldn
Potamogeton crispus
Potamogeton epihydrus
Potamogeton filiformis
Potamogeton foliosus
Potamogeton friesh
Potamogeton gramineus
Potamogeton ilhnoensis
Potamogeton natans
Potamogeton nodosus
Potamogeton obtusifohus
Potamogeton pectmatus
Potamogeton perfohatus
Potamogeton praelongus
Potamogeton pusillus
Potamogeton nchardsonii
Potamogeton robbinsii
Potamogeton spmllus
Potamogeton strictifolius
Potamogeton zosteriformis
Potentilla ansenna
Potentilla fruticosa
Potentilla palustris
Prenanthes racemosa
Proserpinaca palustris
Pycnanthemum
virgimanum
Ranunculus abortivus
Ranunculus longirostns
Ranunculus pensylvanicus
Ranunculus recurvatus
Ranunculus sceleratus
Rhamnus alnifolia
Rhamnus frangula
Rhynchospora alba
Rhynchospora capillacea
Rorippa palustns
Rosa palustris
Rubus hispidus
Rubus pubescens
Rubus stngosus
Rumex cnspus
Rumex maritimus
Rumex orbiculatus
Sagittana graminea
Sagittaria latifolia
Sagittana montevidensis
Sagittaria ngida
Sagittans cuneata
Salix amygdaloides
Salix bebbiana
Salix Candida
Salix cordata
Salix discolor
Salix enocephala
Salix exigua
Salix lucida
Salix myncoides
Salix pedicellaris
Salix petiolaris
Salix pyrifloia
Salix sencea
Salix senssima
Sarracenia purpurea
Saururus cernuus
Scheuchzeria palustns
Schoenoplectus acutus
Schoenoplectus pungens
Schoenoplectus
subterminalis
Schoenoplectus
tabernaemontani
Scirpus atrovirens
Scirpus cespitosus
Scirpus cypennus
Scutellaria galenculata
Scutellaria latenflora
Sium suave
Solanum dulcamara
Sohdago gigantea
Solidago ohioensis
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Sohdago patula
Solidago rugosa
Solidago uhginosa
Sparganium amencanum
Sparganium chlorocarpum
Spirodela polyrhiza
Stachys palustns
Stachys tenuifoha
Symplocarpus foetidus
Teucnum canadense
Thahctrum dasycarpum
Thelyptens palustns
Tofieldia glutinosa
Tnadenum fraseri
Triadenum virginicum
Tnglochin mantimum
Tnglochm palustre
Typha angustifolia
Sparganium eurycarpum
Sparganium fluctuans
Sparganium minimum
Spartma pectinate
Sphagnum spp.
Typha latifoha
Typha x glauca
Urtica dioica
Utriculana comuta
Utncularia intermedia
Utricularia resupinatua
Utriculana vulgaris
Vaccmium corymbosum
Vaccinium macrocarpon
Vaccmium oxycoccos
Valhsnena amencana
Verbena hastata
Veronica        anagalis-
Spiraea alba
Spiraea tomentosa
Spiranthes cemua
Spiranthes romanzoffiana

aquatica
Veronica officinahs
Viburnum lentago
Viola cucullata
Vitis npana
Wolffia columbiana
Wolffia punctata
Xyns montana
Zannichellia palustris
Zanthoxylum amencanum
Zizania aquatica
Zizania   aquatica    var.
aquatica
58
                       Great Lakes Coastal Wetlands Monitoring Plan

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                       Chapter 4
 Invertebrate Community Indicators
                      Chapter Authors
              Donald G. Uzarski, Central Michigan University
               Thomas M. Burton, Michigan State University
                John C. Brazner, Inland Waters Institute
                JanJ.H. Ciborowski, University of Windsor
www.glc.org/wetlands
59

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Introduction

Great  Lakes coastal  wetlands  are subject  to  multiple  anthropogenic  disturbances  They are categorized  into
geomorphologic classes reflecting their location in the landscape and exposure to waves, storm surges and lake level
changes (Albert and Mine 2001) The anthropogenic disturbances to Great Lakes coastal wetlands are superimposed
on natural stress resulting From a highly variable hydrologic regime (Burton et al  1999, 2002, Keough et al 1999)

Fringing wetlands were the focus of the invertebrate studies reported here They make up more than one-quarter of
the 2  17x10' hectares of Great Lakes coastal  wetlands. They include protected and open embayment wetlands which
form along bays and coves leeward of islands or peninsulas They occur along all five Great Lakes, and  are especially
common on the southern and  northern shores  of lakes Michigan and Huron and in the  St  Mary's river-island
complex The location of the shoreline with respect to long-shore currents and wind  fetch  determines the type of
wetland found along the shoreline (Burton et al 2002) The greater the effective fetch (e g , Burton et al  2004), the
more the wetland is exposed to waves and storm surges until a threshold is reached where wetlands no longer persist
The separation of variation due to anthropogenic disturbance from variation due to natural stressors related to water
level  changes and to biogeographic  and  ecoregional differences (Brazner  et al  2007) is central to predicting
community composition and in turn, developing indices of biotic integrity (IBI) for these systems

The development of indicators of ecosystem health for the Great Lakes was recognized as a major need at
the State  of the Lakes Ecosystem Conference  (SOLEC) in 1998 in  Buffalo, N  Y., and  progress  in
developing indicators was the emphasis of SOLEC following that time. Among the indicators listed as high
priority needs at SOLEC 1998 were  indices of biotic integrity (IBIs) for coastal wetlands based on fish,
plants and invertebrates

Several initiatives have been undertaken to develop IBIs  for specific aquatic guilds of invertebrates in wetlands of
single  Great Lakes, but  their applicability to the entire basin  has not been tested  Krieger (1992), Thoma et al
(1999), and  de  Szalay et al  (2004)   evaluated  various  sampling methods  for assessing zoobenthos  at  Lake  Erie
drowned rivermouths These studies  were somewhat limited because few, if any, undegraded reference wetlands
remain in  Lake Erie (de  Szalay et al  2004)  Wilcox et al  (2002) attempted to develop wetland IBIs for the upper
Great  Lakes using fish,  macrophytes, and invertebrates  entering activity traps While they found attributes that
showed promise, they concluded that natural water level changes were  likely to alter communities and invalidate
metrics Burton et al  (1999) developed a preliminary macromvertebrate-based bioassessment procedure for coastal
wetlands of Lake Huron  This system could  be used across wide ranges of lake levels since it included invertebrate
metrics for  as many as four deep- and shallow-water plant zones, using  a scoring system based on the number of
inundated  zones present  That procedure has since been tested and modified (Uzarski et al 2004)   The methods
presented in Uzarski et al  (2004) are recommended herein

While Great Lakes-wide  studies of aquatic macrophytes indicate that similar geomorphic wetland types support very
different plant assemblages in geographically distinct ecoregions (Mine 1997, Mine and Albert 1998,  Chow-Fraser
and Albert  1998, Albert and Mine 2001), several plant zones are common to many of these systems  In preliminary
invertebrate-based IBI development studies,  Burton et al  (1999)  used dip nets to collect invertebrates  from  four
plant  zones  that characteristically develop in inundated shorelines of fringing lacustrine wetlands during high water
years  The invertebrate metrics  from each of those zones were used in the IBI of Uzarski et al (2004), where it was
argued that developing separate metrics for each wetland plant zone across a water level gradient from wet meadow
to the zone of deep-water emergents could  compensate for absence of higher elevation zones (e.g , wet meadow)
during low  lake level years by  placing more emphasis on metrics from  zones that  remained inundated  With the
exception of Lake Ontario, which is regulated, lake levels fell sharply between 1998 and 2002, permitting Uzarski et
al   (2004)  to test this assumption, and the  IBI  performed well  Based on this  verification, we recommend  the
60                                                                Great Lakes Coastal Wetlands Monitoring Plan

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collection procedures  and  metrics  described  by Uzarski  et  al   (2004) as the  primary means  of assessing
macromvertebrate community health in Great Lakes coastal wetlands

Other  sampling methods and  metrics have been  proposed and/or  implemented that pertain to other classes of
wetlands or areas that have may have lost their vegetative cover Although still in development or under refinement,
these approaches can be considered where the recommended Uzarski et al  (2004) IBI procedure is unsuitable (see
limitations (below)


Materials and Methods

Macroinvertebrates sampling

Macromvertebrate samples should be collected with standard 0 S-mm mesh, D-frame dip nets from late July through
August. July-August is the interval during which emergent plant communities generally achieve maximum annual
biomass and are mature, in flower and hence easier to identify than earlier in the season  Late mstars of most aquatic
insects are present in Great Lakes coastal wetlands from early July until mid-August

Three  replicate dip net samples  should be collected in each plant zone that is inundated to provide a measure of
variance  associated with sampling Each replicate should be collected from a random/haphazardly chosen location
ideally at least 20 meters from any other station Each dip net replicate collection should be a composite of sweeps
taken at  the surface, mid-depth and just above the sediments while brushing vegetation with the base of the net to
incorporate all microhabitat at a given replicate location

Net contents should be emptied into white pans that are approximately 25 cm wide, 30 cm long and 5 cm deep (size
of the pan can vary)  Drawing a grid of 5x5 cm squares on the inside bottom of the pan helps collectors systematically
examine the contents  One  hundred fifty  macromvertebrates should be collected using forceps and/or a pipette,
working systematically  from  one  end of the pan to  the other, attempting to pick all specimens from each grid before
moving on to the next  Specimens should be immediately placed into labeled (date, site, plant zone, rep  number) 30-
mL or larger vials containing 70% ethanol Special efforts should be made to ensure that smaller, cryptic and/or
sessile  organisms (those resting on or attached  to vegetation or debris) are  not overlooked  Multiple  sweep net
collections may be necessary  to achieve the  150-specimen count

For the majority of cases, obtaining 150 organisms per replicate is a relatively easy task  However, in some cases
invertebrates are extremely scarce Therefore, it is  suggested to limit picking-time for each replicate, the following is
a means  of semi-quantification or catch per unit effort Individual replicates should be picked for one-half-person-
hour (i e two people for 15 minutes) Organisms should then be tallied, if 150 organisms have not been obtained,
then picking should continue to the next multiple of 50  Therefore, each replicate sample should contain 50, 100, or
150 organisms  The number of organisms remaining in each of the picked grids of the pan should nearly always be
exhausted to the point where finding just a few more organisms will require a substantial effort  If this occurs for the
entire pan before the target number of specimens is reached, then timing should stop while dip nets are  used to refill
the pan

In the laboratory, specimens  should be identified to lowest operational taxonomic unit — usually genus or species for
most insects, crustaceans and gastropods — and then tallied Identifications should be made with the aid of a dissecting
microscope capable of at least 40x  magnification  Difficult-to-identify insect taxa such as  Chironomidae should be
identified to  tribe  or  family, and some  other invertebrate  groups including Oligochaeta,  Hirudmea,  Turbellana,
Hydracarma and Sphaerndae should be identified to  family level or, where this is not possible, to order  Taxonomic
keys such as those of Thorp  and  Covich (1991), or Merntt and  Cummins (1996)  should be used for identification
www glc org/wetlonds                                                                                     61

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Accuracy should be confirmed by sending voucher specimens to expert taxonomists   Sample vials may occasionally
contain small  parasitic invertebrates that have been released from their host upon submersion  in ethanol Such
organisms never occur by themselves in nature, and consequently they have not been considered in the creation of
invertebrate I Bis Therefore, they  should not be included in taxonomic lists used for richness counts or metric
calculations for the sample

Deviations from Protocol

The sampling protocols of  Burton et al   (1999) and  Uzarski et al   (2004)  were developed  for  sampling
macromvertebrates, and field crews were instructed to only pick macromvertebrates  However, micromvertebrates
(typically <1 mm long) such as Copepoda and Cladocera were commonly included in picked samples (D  Uzarski,
personal communication) These micromvertebrates were identified to order level and included in the databases from
which  the IBIs of Burton et al  (1999) and Uzarski et al  (2004) were derived  Inclusion of such specimens by the
original sampling crews suggests that this might also occur when others use the IBI, but it is  not recommended
Nevertheless,  to ensure that  the IBI was robust  to this common error, Uzarski et al  (2004) used  those data in
calculations of metrics such as percent Crustacea+Mollusca and the total richness and diversity metrics Inclusion of
the micromvertebrates had little effect on the IBI (D  Uzarski, unpublished data)


Limitations and Applicability of the  IBI

Sensitivity to Interannual Fluctuation in Water Levels

Wilcox et al  (2002) argued that the IBI approach would not work for coastal wetlands because natural water level
fluctuations of the Great Lakes  would likely alter communities and invalidate metrics  However, by sampling only
defined and  inundated  vegetation  zones,  this protocol removes enough  variation associated with water level
fluctuation  to maintain metric consistency from year to year During development, the IBI of Uzarski et al  (2004)
was tested during times of above average annual lake levels and during times neanng record lows

Although other collection methods may yield additional taxa and individuals, the purpose of the Consortium field
methodology and data analysis is to give an indication of invertebrate community condition — not a full taxonomic
inventory   Thus,  consideration  of  the benefit using more exhaustive sampling protocols should  be  based  on  the
potential diagnostic value of alternative or additional collecting methods

Plant Zone Applicability,

This IBI was developed specifically for only three  plant zones commonly  found in fringing  Great  Lakes  coastal
wetlands It performed well in  lakes Huron and Michigan for the Scirpus (Schoenoplectus) and wet meadow plant
zones (Uzarski et al  2004) However, Uzarski et al  (2004) recommended that the Typha IBI not be used without
further modification  The Typha IBI has since been adapted for use in Lake Ontario (see below)

Many wetland types, such  as drowned river  mouth wetlands and  dune and swale complexes, can contain very
different plant and animal communities  Therefore, the Burton et al (1999) and Uzarski et al (2004) IBI scores will
not apply  However, these data should still be collected using the standard protocol above so that IBIs specific to these
systems can be developed (see below)

Modifications made for Lake Ontario
62                                                               Great Lakes Coastal Wetlands Monitoring Plan

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Coastal wetland macromvertebrates have been sampled as part of the Durham Region Coastal Wetland Monitoring
Project (DRCWMP) for five years, using methodology consistent with Uzarslci et al (2004) except for the vegetation
zones sampled.

Sweep net data collected from Typha zones in Lake Ontario did not yield suitable metrics for Burton et al (1999) and
Uzarski et al  (2004)  However, the Typha zone is the only vegetation zone consistently found within Lake Ontario
coastal wetlands.  Inner and outer Scirpus zones are not  common, and meadow  marsh (when  present) is seldom
inundated in  July and August  In support of the Consortium process, the DRCWMP developed a separate  Lake
Ontario-based Typha community aquatic macromvertebrate IBI (Environment Canada and the Central Lake Ontario
Conservation Authority (EC and CLOCA) 2004a, EC and CLOCA 2004b)

A modified IBI was developed using data collected from a  suite of Durham Region and other Lake Ontario sites that
represented a range in disturbances and hydrogeomorphic types Data were collected according to Uzarski et al
(2004) and assessed for suitability to report on Lake Ontario Typha zones using metrics identified in Burton et al
(1999)   Environment Canada has successfully  applied the DRCWMP IBI  to  report on the condition  of coastal
wetlands across Lake Ontario and to contribute to the Remedial Action Plan  for the Bay of Qumte Area of Concern
(EC-Canadian Wildlife Service 2007)

This IBI developed by EC and CLOCA (2004)  is recommended for assessment of Lake Ontario coastal wetlands
However, because it is lake-specific, additional work will be required to compare and calibrate the results of this IBI
to allow them to be interpreted in a Great Lakes basin-wide context

Alternative Methods  and Associated Research Needs

The Great Lakes cover a huge  area, traversing  a broad  latitudinal  gradient   Consequently,  geological  and
biogeographic variation has  major influences on  the physical structure and ecological character of the wetlands (see
Landscape chapter)  These differences are reflected strongly in the composition of aquatic invertebrate communities
A detailed analysis of the sources of variation affecting aquatic invertebrate indicators (Brazner et al  2007a) found
that zoobenthic community composition strongly reflects local vegetation conditions, which varies among  lakes and
ecoregions Anthropogenic  stress accounted for only 20%  or less of the variation in 10 invertebrate metrics assessed
across five wetland hydrogeomorphic types, five Great Lakes, and six ecoregions (Brazner et al  2007a,b)  Although
meaningful stress-response trends could be determined, the strength and direction of responses varied complexly by
wetland type  within each lake (Brazner et al  2007a)  Similar results have been reported by others (Brady et al 2006,
Kostuk and Chow Fraser 2006)  This makes  it  unlikely that a single invertebrate IBI will be developed that can be
used for all wetlands in the  Great Lakes The IBI of Uzarski et al  (2004), which are calibrated to dominant emergent
vegetation types,  are currently the most broadly applicable across the Great Lakes  However, even this  IBI needs
modification to account for  regional differences (e g , Lake Ontario Typha  wetlands - see below)
www glc org/wetlonds                                                                                     63

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Table 4-1. Summary of the status of invertebrate assessment metrics developed or in development for
Great Lakes coastal wetlands by some key research groups. (Definitions provided on next page.)


Wetland Type
Fringing wetlands
Drowned river mouth
Barrier protected
Unvegetated/High
energy
Sampling Type
D-net
Activity trap
Core sampling
Grab sampling
Artificial substrate
Light trap
Wetland condition criterion
Best professional
ludgment
Scores of other IBIs
Land cover (Ag/urban)
Water chemistry
Multiple GIS-based
stresses
Sites stratified along
gradient(s)
Sites randomly selected
IBI cross-validated
Covariates
Date
Lake
Ecoregion
Wetland type
Vegetation type
Adjacent
veqetation/Land use
Substrate texture
Substrate org.
content
Water depth
pH, DO, Conductivity
Turbidity
Nutrient
concentration (P,N)
Chi a
Weather conditions
RESEARCH GROUP
Consortium

All
(vegetation)




X



X
X

X

X
X

X

Yes


X

X
X









REMAP


M,C,E



X
X






X (fish, plant)
X
X


X
No


X

X










GLEI

S.M.H.E.O
S.M.H.E.O
S.M.H.E.O
S.M.H.E.O

X

X
X



X

X
X
X
X

Yes

X
X
X
X
X
X
X
X
X
X
X


X
Chow Fraser

H.O
H.O.E
H.O



X






x water
qual.)

X

X

No


X
X
X

X



X
X
X
X

OH EPA

E
E
E


X
X


X
X

X


X

X

No




X










64
Great Lakes Coastal Wetlands Monitoring Plan

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Research Group designations:
Consortium - Great Lakes Coastal Wetlands Consortium - Burton & Uzarski (2003), de Szalay et al (2004), Uzarski
et al (2004), EC & COCA (2003),
REMAP — Regional Environmental Monitoring and Assessment Program - Simon & Stewart (2006)
GLEI - Great Lakes Environmental Indicators Project - Brady et al  (2006), Brazner et al  (2007a,b), Ciborowski et
al (2007)
Chow Fraser - Kostuk & Chow Fraser (2006)
OH EPA - Ohio EPA (I998),Mack (2003), Ohio EPA (2007)

Letters listed for each wetland type summarize the Great Lake for which a proposed (italic face) or existing (normal
face) metric pertains   Superior (S), Michigan (M), Huron (H), St  Clair ( C), Erie (E), Ontario (O)

Sampling types assessed by each research group are indicated by a letter X Samples considered that were assessed and
not recommended are indicated with a small italic A, those for which an IBI has been proposed or is in development
are indicated with a large X

Condition Criterion represents the means by which the degree of anthropogenic disturbance exists at a sampled site
and was assessed during IBI development by each group Use of a criterion is indicated  for a group with a large X
Criteria evaluated and deemed unsuitable are indicated with a small italic \
Sites Stratified  Site selection was based on predefining disturbance gradients and  selecting  wetlands to  reflect the
different degrees and classes of disturbance
Sites Randomly Selected Site selection was random or stratified-random, but selection was based on criteria other than
predefined disturbance gradients
IBI Cross-validated  Were the sites assessed for IBI effectiveness different from those used to develop the IBP

Covanates  represent variables measured  for a sample site that  can  help determine the specific metric to be used
among several alternative formulations developed by a research group
www glc org/wetlonds                                                                                      65

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Lake-specific invertebrate IBIs have been proposed for particular wetland classes by several consortia and individual
workers (Table 4-1) Their metrics may be suitable for monitoring once they have been adequately evaluated across
quantitatively determined stressor gradients and cross-validated with independent data Other invertebrate IBIs
currently  in  development (Kostuk  and Chow Fraser 2006,  Ciborowski et al  2007) may ultimately  apply within
ecoregions that  cross  individual  Great Lakes boundaries Because  aquatic invertebrates are small and  relatively
immobile, communities  also  vary greatly  along relatively  fine-grained environmental  gradients  Therefore,
complementary physical  and chemical environmental data should be collected at  the same time as the invertebrate
samples to help  categorize the type of invertebrate reference community that should be expected at  the sampling
area The IBIs proposed by different workers can use different classification variables to guide selection of the most
appropriate IBI metric Table 4-1 summarizes the covanates deemed important by each of several groups proposing
invertebrate metrics for  Great Lakes coastal wetlands, as well as the associated invertebrate collection methods on
which the metrics are based

IBIs Proposed for Drowned  River Mouth Wetlands from REMAP Assessments

In 1998, a coastal wetland regional monitoring and assessment program (REMAP) was designed to establish reference
conditions and undertake an inventory and classification  of Laurentian Great Lakes coastal  wetlands (Simon and
Stewart 2006) Wetlands in Lake Michigan were sampled during pilot studies in 1999, and other lakes were sampled
in  2000  using  a  stratified-randomly  selected  subset  of all  inventoried  wetlands  (Moffett  et al.  2006)
Macromvertebrate comparative sampling involved using both activity trap (Wilcox et al  1999) and sweep net
sampling  (Burton et al  1999) protocols (Stewart and  Simon 2006) Pairs of activity traps were placed in each
dominant habitat type for 24 hours  Up to 20 O-net sweep samples werre collected within the SOO-m sampling zones
of the same major habitat types as identified by Burton et al (1999) and preserved for sorting and identification in the
laboratory

Although  wetlands selected on the basis of stratified-random sampling provide an unbiased indication of average
condition, such sampling is unlikely to include wetlands that reflect the full range or diversity of anthropogenic stress
(ranging from undisturbed to heavily degraded)  Consequently, attempts to derive IBIs  from  such a dataset can best
be  regarded  as  provisional and to require validation before  their  reliability and effectiveness  can  be assessed
Nevertheless, an activity  trap-based IBI has been proposed for macromvertebrates collected in activity traps  (Stewart
et al 2006a)  Macromvertebrate IBIs have been proposed based on D-net sampling in drowned river mouths of lakes
Michigan  (Stewart et al  2006b), St  Clair (Stewart et  al 2006c),  and Erie (Stewart  et al   2006d)  Variations in
ecological conditions among wetlands in these studies  was  based on best professional judgment and on  patterns
suggested by  simultaneously derived IBIs for fishes and aquatic plants

Activity Trap Sampling  and Comparisons with Dip net ("D-net) Sampling:

Activity traps, which consist of a jar or cylinder into which one or two inverted funnels  are nested,  have been
evaluated  and used by several investigators (Murkm et al  (1983), Wilcox et al  (1999, 2002), de Szalay et al (2004),
Kurtash and Chow Fraser (2004), Stewart and Simon (2006), Ohio  EPA (2007))  Because the traps tend to collect
different relative abundances of aquatic invertebrates than sweep nets or other samplers,  metrics developed for sweep
samples are probably not amenable to use with trap-caught data  Cross-validation of the reliability of sweep net vs
activity trap data when used with a complementary IBI is a significant research need

De Szalay et al  (2004) compared the catches of 24-hour activity trap samples with samples collected by live-picking
up to 150 sweep-netted aquatic invertebrates  in the field or with equivalent samples that were preserved and sorted
and enumerated in the laboratory They found that activity traps collected only about half the total number of taxa as
the sweep net procedures
66                                                                Great Lakes Coastal Wetlands Monitoring Plan

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In contrast, Ohio EPA (2007) found that banks of 10 activity traps collected as many or more taxa than sweep net
samples In inland Ohio wetlands, funnel traps consistently collected an average of 10 more macromvertebrate taxa
than qualitative sampling using dip nets (Mack 2003) Mack (2003) also reported that qualitative dipnet sampling of
all available habitats in a wetland collected somewhat more Mollusca and Chironomidae taxa  than did funnel traps
Consequently, Ohio EPA (2007) developed  a density-based invertebrate community index (DICI) on those data
Stewart and Simon (2006) found that subsamples of 300 invertebrates collected from composite D-net sweep samples
were richer than  subsamples of 300 invertebrates taken from composite activity trap samples

De  Szalay et  al  (2004)  found that mean taxa richness of live-picked samples was not significantly  different  than
richness of laboratory-processed samples, although there was a trend  for more taxa to be found  in lab-processed
samples Lab-processed samples contained 5-15 times as many specimens and required 3 times as long to process as
did field-picked samples These assessments were limited in that no composition-specific  comparisons were made
Nor were certain taxa  identified below nominal  levels (Oligochaeta, Chironomidae,  Hydracanna)  The major
drawback associated with laboratory sorting is the investment of time

Grab and core sampling:

Grab and core samples (including stove-pipe samples) have the desirable property of quantitatively collecting benthic
invertebrates  from a fixed area Furthermore,  some of these samplers can be deployed from a boat to  sample at
depths greater than can be reached by wading Grabs and cores become less effective than sweep netting in vegetated
areas because coarse debris impedes the closing mechanism and the ability of the sampler to penetrate the substrate
Thoma (Ohio EPA 1998) developed  a nearshore benthic IBI  for organisms found in Ponar grab samples collected
from Ohio drowned rivermouths  A multivanate zoobenthic index based on Ponar grabs is also being developed  by
GLEI researchers (Ciborowski et al  in prep)

Artificial substrates:

Benoit et al   (1997) and Thoma (Ohio EPA  1998)  assessed artificial substrates to assess zoobenthic colonization in
coastal wetlands  Thoma studied colonization of  Hester-Dendy multiplate  samplers tied  to concrete  blocks  in
drowned river mouths (which he termed 'lacustuanes') for 6-week periods  Lewis et al  (2001) also used Hester-
Dendy samplers  to evaluate the feasibility of invertebrate IBI development for New England lakes   Although the
technique  was suitable for development of 12 proposed metrics by Lewis et al (2001), Mack  (2003) concluded that
"Hester-Dendy artificial substrate samplers were ineffective for  sampling most wetland  macroinvertebrates, except
oligochaetes,  Chironomidae, and Mollusca"

Benoit et  al  (1997) constructed  artificial substrates from  ceramic tile,  to which they glued commercially  made
"aquarium" plants designed  to mimic Mynophyllum They concluded that tiles left in place  for 8  days collected a
representative suite of macroinvertebrates whose density became stable over this time Leonhardt (2003) found that
such tiles were as effective as D-net sampling in assessing the macromvertebrate communities of constructed wetlands
but required only a fraction  of the processing time. To our knowledge, these types of samplers have  not been used in
Great Lakes coastal wetlands
www glc org/wetlonds                                                                                     67

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Discussion

Reliability of the Invertebrate IBI in a Basinwide Context: Summary of Invertebrate Site
Scores Plotted Along the GLEI "Sum-Rel" Gradient

An overall assessment of human land-use disturbance in the watersheds associated with coastal wetland sites sampled
by all Consortium groups across the Great Lakes basin was calculated as a sum of the relativized measures of several
different classes of disturbance, "Sum-Rel" (Figure 4-1) The Sum-Rel scores were derived from data provided by the
Great Lakes Environmental Indicators (GLEI) project Danz  et al  2005) using a method outlined by Host et al
(200S)  The method is outlined in detail in the Landscape chapter of this document The boundaries of each second-
order or higher  watershed  in the  Great Lakes was delineated using a CIS approach (Hollenhorst et al  2007)  The
relative amount of each  of three classes of human disturbance was then determined for each watershed, scaled from
0 0 (least disturbed watershed in the Great Lakes basin) to I 0 (most disturbed watershed)  The Sum-Rel score for a
wetland site was the sum of the 3  relative disturbance scores pertaining to the watershed in which that site occurred
The Sum-Rel scores were based on integrated landcover, road density and population density information from 1990s
digital land cover data sets (Hollenhorst et al 2007)

The Sum-Rel scores of wetlands sampled by Consortium researchers ranged from a low of 0 0880 to a high of 2 667
Only the wetland suite  sampled by the Marsh Monitoring Program (MMP) covered this full  range of values  The
overall range sampled by MMP researchers was considerably broader than the range observed for the sites that were
sampled for invertebrates  The Sum-Rel scores at invertebrate sites ranged from a minimum value of 0 696 at a Lake
Erie site (Thorofare) on  Long Point to a maximum of 2 444 at a Lake Ontario fringing site (Frenchman's Bay)

It  was counterintuitive  to find that the wetlands with the two lowest Sum-Rel scores (i e ,  the  'least disturbed'
locations) were located  in Lake Erie and were not Lake Superior sites, given our general knowledge of landscape
conditions and relative human disturbance in these regions However, the two low scoring sites on Lake Erie were
both associated with small, undeveloped and protected watersheds on Long Point, Ontario  So, despite the relatively
coarse nature  of the  summary that was done for "Sum-ReF" calculations, the scores  do  seem to reflect relative
disturbance levels  accurately The values observed  for the Long Point,  Lake  Erie sites demonstrate some of the
limitations of  landscape analysis in that small watersheds with associated wetlands immersed in  a "sea" of highly
polluted/disturbed waters (L Erie proper) may reflect disturbed biology even  though the watersheds are relatively
intact (e g  Uzarski et al 2005) Bhagat (2005) observed a similar phenomenon in her attempts to  develop  fish I Bis
for Great Lakes coastal margins  sampled as  part of the GLEI project   She found  that fish  IBI  and community
composition better reflected the condition of entire "segment  sheds" than the condition of the landscape immediately
surrounding the  sampling site  Obviously, the accuracy of an  IBI score will depend on a number of factors (wetland
type, level and type of disturbance etc), but the plant and animal communities at these kinds of sites seem unlikely  to
overcome the broad-scale stress of a highly disturbed system in which they lie, even if the bordering uplands are  in
good condition.

The wetlands in  Lake  Superior and northern Lake Huron and  Lake Michigan that that had Sum-Rel  scores at the low
end of the disturbance scale were most likely to have invertebrate IBI values reflecting the highest ecological integrity
because of the overall health of the lakes/regions in  which they occur However, the  lowest of these Lake Superior
and northern lake  Huron-Michigan scores (1  274, Fig  4-1)  was from a Lake Superior site in Tahquamenon  Bay,
which is only near the midpoint of all Consortium sites that  were scored (see  Fig 4-1, bottom row of points)  If
most "Sum-Rel"  scores accurately  reflect the relative human disturbance in their watersheds, these "Sum-Rel" scores
suggest that the breadth  of the overall gradient sampled for the invertebrate IBI-development study was fairly limited,
and the suite of samples reported  by Uzarski et al  (2004) primarily reflects conditions at the more disturbed end  of
the human  disturbance  scale in  the Great Lakes  The  alternative  and  perhaps  more likely  explanation  for the
68                                                                Great Lakes Coastal Wetlands Monitoring Plan

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Taquamenon site is that local pollution,  including leachates From the campsite toilets and showers from the state
campground at that site, may have resulted in lower invertebrate IBI scores than indicated for Sum-Rel scores based
on watershed landscape analyses This indicates that local sources of pollution should be recorded by Held crews and
considered when a site is an outlier in subsequent analyses


Synopsis  - Current recommendations and future  work

The invertebrate IBIs proposed and tested by Uzarski et al  (2004) seem to be the best developed and most broadly
applicable means of assessing invertebrate community condition currently available for Great Lakes coastal wetlands
They  appear to reflect conditions and effects of anthropogenic stresses in the Scirpus (Schoenoplectus) and wet
meadow  zones of Great Lakes fringing wetlands A modified version of the Typha IBI has been applied to Lake
Ontario fringing wetlands Other metrics are available for additional classes of wetlands, but require data collected by
field methods that differ slightly (D-net sampling with laboratory-based sorting) or substantially (activity traps, Ponar
grab,  coring) from those of Uzarski et al  (2004)  Furthermore,  because these alternative IBIs are  either still  in
development or the testing phase,  or  have  not been quantitatively  assessed  against well-defined gradients  of
anthropogenic disturbance,  it is premature to recommend their use  Nevertheless, the alternative methodologies
could be used to collect data that can be archived until the alternative metrics have been better evaluated

The research required to expand the value of using invertebrates to assess coastal wetland condition includes

      1    comparison of the relative diagnostic value of activity traps vs D-net sampling methods across the full
          gradient of diverse anthropogenic disturbances, as exemplified by the GLEI basinwide CIS-derived
          stressor scores, crosswalking derived values to permit equivalencies to be determined between the
          methods
      2    true cross-validation of IBIs to assess their predictive value with samples independent of those used to
          derive indices In some cases, this could be accomplished through the exchange of existing data  In
          others, it  would  required coordinated, contemporaneous wetlands sampling by each method
      3    Analysis of existing or new data to provide IBIs algorithms that apply to each wetland hydorgeomorphic
          class across the five Great Lakes
www glc org/wetlonds     •                                                                               69

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         Thunder Bay*
 Southern Lake Superior—
         Sagmaw Bay-
 Northern Lake Michigan-
   Northern Lake Huron—
  Lake Ontano Fringing—
            Lake Ene—
E L Mich Dr R Mouths—
   All GLCWC wetlands—


                   0000
                       t    tmt
                                          t t
                                                               t      t
                                                            t       ttt»      t
                                                                 t tt    ft   t
                                                                 11 t  t   tt t t
                                                                              tt
                                                                    t       t
                                                                                      t t      t
                                                                                            t   t
                                                                                     t     t
                                                                           tttt     t  tt
                                               tttimttfj* t    ttirt ttt
                                                                                                   tt t»
      1 000                           2 000

Overall Stressor Score (Sum-Rel)
      Figure 4-1. Consortium invertebrate sampling locations relative to the "Sum_Rel" overall landscape stressor
      scores.
     70
                    Great Lakes Coastal Wetlands Monitoring Plan

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Worksheet for Calculating IBI Scores
IBI use and interpretation of results
An index of biotic integrity (IBI) for fringing Great Lakes Coastal Wetlands  All values should be based on the
median of at least three replicates taken from each zone. When all vegetation zones are present, wetlands
are scored as follows  A total score of 31 to  S3 (0% to 15% of possible score) = "Extremely Degraded ", or "in
comparison to other Lake Huron wetlands, this wetland is amongst the most impacted", total score of >53 to 76
(> 15% to 30% of possible score) = "Degraded" or "the wetland shows obvious signs of anthropogenic disturbance",
total  score of >76 to 106 (>30% to 50% of possible score) = "Moderately Degraded" or "the wetland shows many
obvious signs indicative of anthropogenic disturbance," total score of > 106 to 136 (>50% to 70% of possible score)
= "Moderately Impacted" or "the wetland shows few, but obvious, signs of anthropogenic disturbance," total score of
>136 to 159 (>70% to 85% of possible score) =  "Mildly  Impacted" or "the wetland is beginning to show signs
indicative of anthropogenic disturbance", total score of >  159 to 182 (>8S% to 100% of possible  score) =
"Reference Conditions" or  "the wetland is among the most pristine of Lake Huron "  When only a subset of
vegetation zones  are present, wetland category scores arc adjusted as Follows: Wet Meadow Only = 9
to 14, >14to 19, > 19 to 27, >27 to 34, >34 to 39, >39to45, Inner Scirpus only = 11  to 19, > 19 to 29, >29 to
41,>41 to S3,  >S3 to 62, >62 to 72, Outer Scirpus only = 11 to 18, >18 to 26, >26 to 37, >37 to 48, >48 to 56,
>56  to 65, Wet Meadow and Inner Scirpus = 20 to 33, >33 to 47, >47 to 66, >66 to 84, >84 to 99, >99 to  113,
Wet  Meadow and Outer Scirpus = 20 to 32, >32 to 46, >46  to 64, >64 to 82, >82 to 96; >96 to 110, Inner and
Outer Scirpus = 22 to 38, >38 to 55, >55 to 79, >79 to 102, >102 to  119, >119 to 137,

Table 4-2  Wet Meadow Zone: Dominated by Carex and Calamagrostis
Metric
Odonata taxa richness (Genera).

Relative abundance Odonata (%)

Crustacea plus Mollusca taxa richness (Genera)1

Total Genera richness:

Relative abundance Gastropoda (%):

Relative abundance Sphaenidae (%)•

Evenness.

Shannon diversity index.

Simpson index:

Score 1
0
score= 1
0 to <1
score= 1
<2
score= 1
<10
score= 1
0 to 1
score= 1
0
score= 1
0 to 04
score= 1
0 to 0.4
score= 1
>03
score= 1
Score 3
>0 to
score= 3
>1 to
score= 3
>2 to
score= 3
>10 to
score= 3
>1 to
score= 3
>0 to
score= 3
>0.4 to
score= 3
>04 to
score= 3
>015 to
score= 3

3

5

6

18

25

3

0.7

0.9

03

Score 5
>3
score= 5
>5
score= 5
>6
score= 5
>18
score= 5
>25
score= 5
>3
score= 5
>0.7
score= 5
>09
score= 5
0 to 0.15
score= 5
Table 4-3. Inner Scirpus Zone. Often dense Scirpus mixed with Pontedaria and submergents, protected from
wave action	
Metric
                   Score 0
                      Score 1
            Score 3
              Score 5
            Score 7
Odonata
(Genera):
taxa
richness
0
score= 1
>0   to
score= 3
                                                    <1
1    to   2
score= 5
>2
score= 7
Relative abundance  Odonata
(%):
Crustacea  plus  Mollusca taxa
richness (Genera).
                               0           >0   to   <2   <2  to   7  >7
                               score= 1     score= 3       score= 5    score 7
                               0   to   2  >2   to   4   >4  to   6  >6
                               score= 1     score= 3       score= 5    score= 7
www glc org/wetlands
                                                                                  71

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Total Genera richness:

Relative abundance
Gastropoda (%):
Relative abundance
Sphaeriidae (%)•
Ephemeroptera plus Trichoptera
Taxa richness (Genera)
Relative abundance Crustacea plus
Mollusca (%)•
Relative abundance Isopoda 0
(%): score= 0
Evenness:

Shannon diversity index-

Simpson index.

<10
score= 1
0
score= 1
0
score= 1
0
score= 1
<8
score= 1
0 to 1
score= 1
0 to 0.4
score= 1
0 to 0.4
score= 1
>0.3
score= 1
<10 to 14
score= 3
>0 to 2
score= 3
>0 to 005
score= 3
>0 to 3
score= 3
<8 to 30
score= 3
>1 to 10
score= 3
>0.4 to 0.7
score= 3
>0.4 to 0.9
score= 3
>0.15 to 0.3
score= 3
>14 to 18 >18
score= 5 score= 7
>2 to 4 >4
score= 5 score= 7
>005
score= 5
>3
score= 5
>30
score= 5
>10 to 20 >20
score= 5 score= 7.
>07
score= 5
>09
score= 5
0 to 0.15
score= 5
Relative abundance Amphipoda (%)
If 40 to 60	and total score from Innner Scirpus Zone (metrics 1 through 12) is greater than 41, then subtract 5,
If 40 to 60	and total score from Innner Scirpus Zone (metrics 1 through 12) is less than 41, then add S

Table 4-4. Outer Scirpus Zone: Sometimes relatively sparse, usually monodominant stands, subject to direct
wave action.
Metric
Odonata taxa richness (Genera):

Relative abundance Odonata (%):

Crustacea plus Mollusca taxa richness
(Genera).
Total Genera richness.

Relative abundance Gastropoda (%):

Relative abundance Sphaenidae (%)•

Total number of families:

Relative abundance Crustacea plus Mollusca (%)

Evenness:

Shannon diversity index-

Simpson index:

Score 1
0
score= 1
0
score= 1
0 to 2
score= 1
<8
score= 1
0
score= 1
0
score= 1
0 to 7
score= 1
<8
score= 1
0 to 0.4
score= 1
0 to 0.4
score= 1
>0.3
score= 1
Score 3
>0 to <1
score= 3
>0 to <1
score= 3
>2 to 4
score= 3
>8 to 13
score= 3
>0 to 3
score= 3
>0 to 0.05
score= 3
>7 to 12
score= 3
>8 to 30
score= 3
>0.4 to 0.7
score= 3
>0.4 to 0.9
score= 3
>0.15 to 0.3
score= 3
Score 5
>1 to 2
score= 5
>1 to 2
score= 5
>4 to 5
score= 5
>13 to 17
score= 5
>3 to 5
score= 5
>005
score= 5
>12
score= 5
>30
score= 5
>0.7
score= 5
>0.9
score= 5
0 to 0.15
score= 5
Score 7
>2
score=
>2
score=
>5
score=
>17
score=
>5
score=














7

7

7

7

7












For further reference, see Appendix B (Uzarski et al  2004) at the end of this document
72
Great Lakes Coastal Wetlands Monitoring Plan

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www glc org/wetlands                                                                                                     73

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Murkm, H R , P G Abbott, and J A  Kadlec  1983 A comparison of activity traps and sweep nets for sampling ncktomc invertebrates in
wetlands Freshwater Invertebrate Biology 299-106

Mcrritt, R  W  and K W Cummins (editors)  1996 An introduction to the aquatic insects of North America   Kendall/Hunt Publ Co,
Dubuquc, Iowa 862 pp

Mine, L D 1997  Great Lakes  coastal wetlands an overview of controlling abiotic factors,   regional distribution and species composition
Michigan Natural Features Inventory  Lansing, Mich
74                                                                             Great Lakes Coastal Wetlands Monitoring Plan

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Mine, L D  and D A Alberta  1998 Great Lakes coastal wetlands  abiotic and flonstic charactcn/jtion A summary of reports  Michigan
Natural Features Inventory, Report 1998-05  Lansing, Mich   13pp  + appendices

MofTctt, M F , R L Dufour, andTP  Simon  2006 An inventory and classification of coastal wetlands of the Laurcntian Great Lakes TP
Simon and PM Stewart (editors)  Coastal Wetlands of the Laurcntian Great Lakes Health, Habitat, and Indicators Pp  17-99 AuthorHousc
Publishing, Bloomington, Ind  523 p

Ohio EPA  1998  Development of biological indices using macroinvcrtcbratcs in Ohio ncarshorc waters, harbors, and lucustuancs of Lake Eric
in order to evaluate water quality Ecological Assessment Unit, Division of Surface Water, Columbus, Ohio

Ohio EPA  2007  Density based invertebrate community index (DICI) of Ohio wetlands  Final index report to  Integrated wetland assessment
program Part 8 Initial development of wetland invertebrate community index for Ohio and investigations of invertebrate communities of
wetlands in the Huron/Eric Lake Plains Ecorcgion (2003) and mitigation banks (2004) Ohio EPA Technical Report WET/2007-5

Rankm, E  T (1989)  The Habitat Evaluation Index (QHEI)  Rationale, Methods, and Application, Ohio EPA

Simon, TP  and P M Stewart (editors)  2006  Coastal Wetlands of the Laurcntian Great Lakes  Health, Habitat, and Indicators AuthorHousc
Publishing, Bloomington, Ind  523 p

Stewart, P M , M M  Pilstvzyk and T P  Simon  2006a Development of an activity trap macromvcrtebrate index of biotic integrity for Lake
Michigan coastal wetlands T P Simon and P M  Stewart (editors) Coastal Wetlands of the Laurcntian Great Lakes Health, Habitat, and
Indicators  Pp 321-332 AuthorHousc Publishing, Bloomington, Ind

Stewart, P M , M M  Pilstv/yk and T P  Simon  2006b  Development of a D-nct macromvcrtebrate index of biotic integrity for Lake Michigan
drowned river mouth wetlands TP  Simon and P m  Stewart (editors)  Coastal Wetlands of the Laurentian Great  Lakes  Health, Habitat, and
Indicators  Pp 333-346 AuthorHousc Publishing, Bloomington, Ind

Stewart, P M , M M  Pilstvzyk and T P  Simon  2006c  Development of a D-nct macromvcrtebrate index of biotic integrity for wetlands ol
LakeSt Clair and the connecting channels TP  Simon and Pm Stewart (editors) Coastal Wetlands of the Laurcntian Great Lakes Health,
Habitat, and Indicators  Pp 347-362  AuthorHousc Publishing, Bloomington, Ind

Stewart, P M , M M  Pilstvzyk, R  F Thoma andTP  Simon  2006d Development of a preliminary D-nct macromvcrtebrate index of biotic
integrity for Lake Eric drowned river mouth coastal wetlands  T P Simon and P  m Stewart (editors) Coastal Wetlands of the Laurcntian
Great Lakes Health, Habitat, and Indicators  Pp  363-374 AuthorHousc Publishing,  Bloomington, Ind

Stewart, P M  andTP  Simon  2006  Comparison of ccorcgional discriminative ability and collection cfficicyol D-nct versus activity trap
sampling of macromvcrtebrate assemblages in Great Lake coastal wetlands TP Simon and P m Stewart (editors)  Coastal Wetlands of the
Laurcntian Great Lakes  Health, Habitat, and Indicators Pp 227-237 AuthorHousc Publishing, Bloomington,  Ind

Thoma, R F  1999 Biological monitoring and an index ofbiotic integrity for Lake Enc=s ncarshorc waters TP Simon (cd) Assessing the
Sustamability and Biological Integrity of Water Resources Using Fish Communities Pp 417-461 CRC Press, Boca Raton, Fla

Thorp, ] H  and A P  Covich 1991 Ecology and classification of North American freshwater invertebrates  Academic Press Inc , San Diego,
Calif

Uzarski, D G , Burton,  T M , Cooper,  M ] , Ingram, \ W ,  and Timmcrmans,  S 2005  Fish habitat use within and across wetland classes in
coastal wetlands of the five Great Lakes  development ofa fish-based Index of Biotic Integrity  Jouranl of Great Lakes Research 31(Suppl
1) 171-187

U'/arslu, D G , T M Burton and J A  Genet  2004  Validation and performance of an invertebrate index ofbiotic integrity for Lakes Huron and
Michigan fringing wetlands during a period of lake level decline Aquatic Health and Management 7 269-288

Wilcox, DA.JE Meeker, P L  Hudson, B J Armitage, M G Black, and D G  U/arki  1999 Development of evaluation criteria to assess
and protect the biological integrity of Great Lakes wetlands Unpublished report, U S Geological Survey, Ann Arbor, Mich

Wilcox, D A , Meeker, J  E , Hudson,  P  L , Armitage, B  J  , Black, M  G , and U/.arski,  D  G 2002 Hydrologic variability and the
application of index ofbiotic integrity metrics to wetlands  a Great Lakes evaluation Wetlands 22  588-615
www glc org/wetlands                                                                                                       75

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Appendix 4-1.

                         Field Equipment Checklist
 For invertebrate and accompanying chemical/physical (covariates) sampling
Presamplina checklist:

	Conductivity meter
     _DO meter/Probe/Repair kit


     -Tape

     .Field notebooks

     .2 dip nets

     _Fine-tipped forceps/eyedroppers
     .Invertebrate sample vials (Ethanol-filled)
      and labels+pencil (9 per site)

     _Cooler and ice (depending on temp)

     _ Insect repellent

     _Filter apparatus
     _Metal hand pump/tubing
      bottles
    _ Turbidimeter

    _1  L water sample
     bottles (at least 3 per site)

    .Mechanical pencils

    _Meter stick

    _White enamel pans
     .Alcohol (95%) in 1  L
     bottles and 1 squirt bottle

     Permanent marker
     .Waders or boots

     .Cell phone

     .Filters/forceps

     _250 ml sample
     (at least 3 per site)
In field:

Water samples -> Surface 1 L (1 sample per station)

Invertebrate samples -> 3 per station
76
Great Lakes Coastal Wetlands Monitoring Plan

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                        Chapter 5
         Fish Community Indicators
                       Chapter Authors
                Donald G. Uzarski, Central Michigan University
                Thomas M. Burton, Michigan State University
                  John C. Brazner, Inland Waters Institute
                 JanJ.H. Ciborowski, University of Windsor
www.glc.org/wetlands
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Introduction

Great Lakes coastal wetlands provide critical habitat for more than 80 species of Pish (Jude and Pappas 1992) More
than SO of these species are dependent upon  wetlands while  another 30+ migrate into and out of them during
different periods in their life history (Jude and Pappas 1992, Wilcox  1995,  Wei et al  2004)  An additional 30+
species offish may be occasional visitors to coastal wetlands based on occurrence in adjacent habitats (Jude and Pappas
1992, Wei etal  2004)

As  transitional  systems  between land and  water, coastal wetlands  are  among the first habitats  impacted  by
disturbances  from adjacent uplands and/or pollutants from upstream (Mayer et al  2004) Activities and pollutants
that degrade  wetland habitat may also pose threats to other near-shore and deepwater habitats if allowed to continue
unabated  Since  many pollutants accumulate in  coastal wetlands and land-use changes in adjacent areas tend to affect
them first, coastal wetlands  can  provide  "early warning" of potential threats to the Great Lakes ecosystem  The
governments of Canada and  the  United States recognized this  potential  and  initiated a process to identify and/or
develop indicators of "ecosystem health" for wetlands and other Great Lakes  habitats  at the State  of the Lakes
Ecosystem Conference (SOLEC) held in Buffalo, N  Y  in 1998  Progress was reviewed and potential indicators were
identified  by working group members at SOLEC  2000  in Hamilton, Ontario  Potential  indicators  listed by the
wetlands indicators working group included  indices of biotic integrity (IBIs) based on invertebrates, fish, and plants,
even though no broadly accepted protocol  was available at the time for any of these biotic groups

Great Lakes coastal wetlands occupy a relatively small percentage of the Great Lakes shoreline (e g , about 11  % of
the shoreline of the U S side of Lake Huron (Prince and Flegel 1995) Conversion of wetlands over the last 100 years
has reduced the  area of Great Lakes coastal wetlands by more than 50%, with losses greater than 95% in some areas
such as  western Lake Erie  (Krieger et al  1992)  Sustainable management of the remaining wetlands  and efforts to
restore the large number of wetlands that have been  converted to other land uses are critical to the long-term viability
of the Great  Lakes ecosystem  An important tool needed for the management and restoration of coastal wetlands is a
system of assessment that will allow managers to monitor the health of these and adjacent coastal systems on a routine
basis so that trends in wetland condition can be established and used to identify threats to these ecosystems

Fish have  long been included as key indicators  in assessments of biotic integrity  in streams (e g ,  Karr et al  1986,
Lyons and Wang 1996) and to a lesser degree in lakes (e g ,  Fabrizio et al 1995,  Whittier 1998) and estuaries (e g  ,
Jordan et  al  1991, Deegan et al  1997)  Fish have received  little attention as indicators of wetland conditions, but
recognition of their ecological significance in  Great Lakes  coastal wetlands  (Jude and Pappas 1992) has recently
generated considerable interest in using fish as indicators for these habitats (Wilcox  et al 2002, Timmermans and
Craigie 2003, Environment Canada and Central Lake Ontario Conservation Authority 2004, Uzarski et al 2005)

Minns et al (1994) developed a fish-based  IBI for shallow areas of Great Lakes Areas of Concern that includes metrics
sensitive to  impacts by exotic fishes, water quality changes, physical habitat alterations and  changes in piscivore
abundance related to fishing  pressure and stocking This system has not been extended outside of the limited and
often highly  impacted Areas of Concern  The work of Brazner (1997), Brazner and  Beals (1997),  and Minns  et al
(1994) demonstrated relationships between  fish populations and wetland and/or near-shore habitats that suggested
that development of a fish-based  IBI for coastal wetlands was possible  Recently, Randall  and Minns (2002) used an
IBI to assess habitat productivity of nearshore areas  (including coastal  wetlands) of lakes Erie  and Ontario and
compared results to those obtained using their Habitat  Productivity Index Thoma (1999)  developed a  fish-based IBI
for near-shore waters of Lake Erie More recently, Seilheimer and Chow Fraser (2006) proposed a fish-based IBI that
reflected degradation of the water quality of Great  Lakes coastal wetlands Despite promising results,  Wilcox  et al
(2002)  concluded that development of  wetland  IBIs for  the upper  Great  Lakes using macrophytes,  fish and
micromvertebrates was impractical    Even  though some of their metrics  showed potential,  they concluded that
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natural water level changes from those that existed during data collection were likely to alter communities enough to
invalidate metrics in subsequent years

This problem was overcome when developing an integrity index using invertebrate assemblages in fringing coastal
wetlands in Lake Huron by developing a method based on sampling any  or all of four emergent plant zones,
depending on the number of zones inundated (Burton et al 1999, Uzarski et al 2004)  The IBI scores for a particular
year were calculated by summing scores from each zone that were inundated when  sampling occurred  As water
levels decreased and zones were no longer inundated, the IBI scores changed, but metrics For even a single inundated
zone proved to be effective in describing the condition of fringing wetlands of lakes Huron  and Michigan between
1997 and 2002 — a period during which water levels decreased by more than 1 meter (Uzarski et al , 2004)  Based on
these results, we  hypothesized that fish-based IBI metrics developed using samples from each inundated plant zone,
rather than using combined samples to develop one set of metrics for the entire wetland, would provide the flexibility
needed to make the  IBI useful over a wide range of lake levels This makes our approach different from other recent
efforts, including  the approach used by the REMAP project of U S EPA, where multiple samples collected across the
entire wetland were combined to produce one integrated sample per wetland


Materials and Methods

Various methods exist for sampling fish from coastal margins The most commonly used techniques are various forms
of trap nets (especially fyke nets), seines and electrofishmg Each  method has its strengths  and biases, which  vary
depending  on time  of day,  season, duration and  intensity of sampling, and habitat  Comparative  studies of the
effectiveness of these techniques at describing the fish community and condition of Great Lakes wetlands have been
conducted  by Thoma (1999), Chow  Fraser et al  (2006) and Ruetz et al  (2007) Given  that agencies may have
longstanding  traditions and databases compiled using a particular  type of gear,  it would be desirable  to develop
metrics for each sampling class  Chow Fraser et al (2006) observed that, although electrofishing and fyke netting
each caught 60%-75% of the species present in a wetland, particular species and dominant functional  groups tended
to be gear specific Metric responses to stress could  be developed but patterns of response to particular anthropogenic
pressures  were unique to gear type.  Thoma (2002) argued  that nocturnal electrofishing was  most effective at
summarizing  biodiversity in  Lake  Erie coastal  wetlands and drowned river mouths  However, Chow Fraser et al
(2006) developed an  effective  fish index  from daytime electrofishing only  The most recent sampling efforts of
several groups have  emphasized fyke net methodology (Brazner and Reals 1997, Consortium — Uzarski et  al  2005,
GLEI - Bhagat 200S, REMAP - Simons et al  2006) but since both electrofishing and fyke netting have been used
effectively to characterize fish assemblages from Great Lakes coastal wetlands, details  associated with each  approach
have been included  in this report   However, the IBI metrics reported here have  only been  calibrated with catches
obtained with fyke nets and additional calibration would no doubt be needed  if there is a desire to use electrofishing
data to score the metrics and compute an IBI

Fish Sampling (Fyke Netting)

Fish sampling should be conducted using a minimum of three replicate fyke nets with 4 8-mm mesh in  each dominant
vegetation  zone for one  net-night (Uzarski et al  2005,  Brady et al  2007)  Sampling should correspond to the
maturity of the vegetation in each system The need to be able to identify plant zones will determine the earliest date
at which sampling can be conducted (typically no earlier than mid-June) Sampling should not be conducted after the
end of August as seasonal movements of fish to winter locations may bias estimates of community composition  Only
dominant plant zones  that can be definitively assigned to a dominant plant species  or morphotype (i e visually more
than  75%   composition  by   one  species  or  morphotype)   (Sparganium,  Schoenoplectus,   Nuphar/Nymphaea,
Pontedena/Sagntana/Peltandra, Typha, Zizama, or Eleochans) should be sampled to partition variation due to structure
or habitat type. It is rare to encounter vegetation zones without an obvious dominant If a zone without an obvious
dominant  is  encountered,  it  should  be avoided  Uzarski  et  al 's  (2005) IBI relied  primarily on  bulrush-
www glc org/weflonds                                                                                    79

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(Schoenoplectus),  water  lily  (Nuphar/Njmphaea)  and cattail-(T)pna) dominated zones, and these zones  should  be
sampled if present  Scoenoplectus zones can be divided into outer and inner zones in areas where this zone is more
than 50-100m wide, since the outer edge of this plant zone may only support low stem density while inland zones
may be sheltered enough from wave action by higher stem density to support different Fish species than the outer
zone  In high lake level years, inundated wet meadow zones may also be added as a different habitat

Two sizes of Fyke nets can be used, 0 S-m x 1-m openings and  1-m x 1-m openings  Smaller nets should be set in
water approximately 0 25-0 5 m deep, larger nets are set in water depths > 0 50 m  Leads should be 7 3 m long and
wings should be 1.8 m long The depth of water in each plant zone will dictate net size used since the only difference
between large and small nets is height   The nets should be set so that the top of the cod end is far enough above the
water surface to prevent turtles and other air breathing vertebrates from drowning The location for each net should
be determined randomly/ haphazardly within each vegetation zone and should be set with at least 20 m between nets
if possible  Nets should be placed perpendicular to the vegetation zone of interest, with  leads extending from the
center of the mouth of the net into the vegetation    Therefore,  fishes in the plant zone or moving along the edge of
plant zone are likely to  be caught  Wings should be set at 45° angles to the lead and connected to the outer opening
on each side of the net When a defined boundary or edge of the vegetation type of interest is not found or difficult to
reach,  the nets can be fished lead to lead rather than just individually

Fish Sampling (Electrofishing)

Although electrofishmg data has not been used extensively to generate IBI scores for coastal wetlands (however, see
Environment Canada and  Central  Lake Ontario Conservation  Authority, 2004 for one  exception), the methods
described  here are intended to provide a representative sample of the fish assemblage present at a Great Lakes coastal
wetland and allow relationships among the  assemblage or particular fish species, m-wetland  habitat and  human
disturbance  to be established at a number of spatial scales  The data will be suitable for calculating indices of biotic
integrity, their individual metrics, and function- or species-based indicators of condition, assuming proper calibration
has been completed for the sampling  region and wetland type   These methods have been tested and found to  be
feasible and  effective across the Great Lakes basin (Brazner et al  2007, Trebitz et al  in press) in all of the main Great
Lakes coastal wetland types (e g  , fringing, protected, drowned river mouth, see Keough et al  1999 and Albert et al
2005 for details on types)

Selection of Great Lakes coastal  wetland study sites for electrofishmg will  depend on specific study goals but will be
limited to locations where boat access is feasible, since boat-mounted gear is required to effectively sample most
Great Lakes coastal wetlands  Access is not a trivial problem for electrofishmg coastal wetlands because boat launches
have not been developed for many sites, and many wetlands along high-energy shorelines develop partial or complete
barrier beaches across their mouths, preventing access  from the open lake In addition, the distance  from existing
launches is often prohibitive due to safety concerns associated with travel across the open Great Lakes in small, flat-
bottomed boats

It is recommended that all fish sampling be conducted within  a two-month period during July and August  This
corresponds  with the peak growing season  for aquatic vegetation and is the  season of highest Pish  diversity and
abundance m Great Lakes coastal wetlands (Brazner  1997, Brazner and Beals 1997) It is also a time  of year when
abiotic conditions (water temperature, lake  level,  stream discharge)  are  relatively stable  and when fish  occupying
Great  Lakes  coastal wetlands  are primarily resident species rather than spring or fall migrants  Karr et  al  (1986)
suggested that capture  of primarily resident species  was essential when data were intended to be used m metric
calculations  for indices of biotic integrity

Assuming sites have been selected  by an acceptable methodology and Reid access is deemed  feasible, the first step
once in the  field is to select sampling transects  Since wetland  habitat structure appears to be organized by fluvial
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zones (channel areas, back-bay areas, lacustrine areas - Trebitz et al  2005) and habitat structure appears to structure
Great Lakes coastal wetlands fish assemblages (Brazner and Beals 1997, Uzarski et al  2005), transect selection and
Fish sampling are recommended at the fluvial zone scale  Measures can later be scaled up to the whole wetland scale if
desired for comparisons with whole wetland habitat measures

Samples within fluvial zones should be made along  100-m reaches of shoreline (Trebitz et al in press)  In general,
transects can be treated as replicates to examine differences in fish assemblages within or among fluvial zones or other
withm-wetland factors such as vegetation  type, or aggregated  to the wetland scale by area-weighting or simple
summation

It is also recommended to use seven sampling transects based on field trials (Trebitz et al  , in press). Shocking and
processing the fish at seven transects typically requires about 4-5 hours in the field, an amount of time that typically
allows the field  crew to complete a number of other sampling activities at the same wetland within one day, or
alternatively to sample fish at two different wetlands on the same day  The amount of sampling that can be completed
in a day will depend on a number of factors, including difficulty of access to and movement within the wetland, size
of the wetland, distance between sampling locations and number of fish captured. However, this method has  been
tested and utilized at more than 60 Great Lakes coastal wetlands and the 4-5 hour time to completion estimate was
rarely exceeded

Approximate transect locations can be identified before going out in the field using geographic analysis  of digital
orthophotoquads for each site  On the orthophotoquads, the perimeter of the standing water portion of the wetland is
divided  into seven equal length segments  Sampling locations can be  initially set to correspond with segment
boundaries on the orthophotoquad  In the field, the actual sampling locations should be adjusted as necessary so that
each  100-m  transect falls entirely  within one fluvial zone,  to  accommodate altered water  levels or  wetland
morphology, and to provide the best representation  of the  habitat  types and fluvial zones that are present  This
procedure (approximately equally spaced  transects, with some adjustments in the field) ensures good spatial coverage
of the wetland inundated area (i e , crews not just sampling the closest or most accessible parts), while allowing field
crews to deal with the various contingencies that may arise.

Once transects have been identified and adjusted for habitat representativeness, they should be clearly marked along
the  shoreline  so they  can be  easily located by all  field crews  during any revisits to the  sites   Recording  GPS
coordinates and  other nearby landmarks  are also recommended so that transects can be relocated  even if shoreline
markers have been removed or are not desired by landowners Covanate data (dominant vegetation, depth, substrate
characteristics, other forms of disturbance,  basic water chemistry, turbidity) should be measured at each transect as
time and  resources permit  This information is  often important in selecting the  appropriate metric to apply to a
particular wetland or reach (Table 5-1)

Electrofishing in Great Lakes coastal wetlands is most effectively accomplished from smaller, lighter-weight boats
than are  typically used in larger lake and river environments Smaller boats provide more ready access to the very
shallow waters that predominate in coastal wetland habitats (they can be pushed with an on-board pole in shallow and
densely vegetated  areas where using the  motor  is  impractical)  and are easier to launch at the less-developed boat
landings typical of these sites  A 5-m long, flat-bottomed boat with a shallow v-shaped bow will optimize flat working
space within the boat while minimizing draft and providing  some protection  from waves if travel across the open
Great Lakes is required to access a site  Additionally, a removable front railing on the boat is useful for getting under
low bridges that would otherwise limit access to substantial  portions of some wetlands  It  is recommended that the
boat be equipped with a 1 0-m Wisconsin ring anode fitted with stainless steel droppers mounted on a 3'0-m boom,
but boom length will need to be adjusted to boat size so that the Wisconsin ring is centered approximately 1 5m in
front of the bow  A ring-shaped anode is recommended because it is less likely to become entangled  in emergent
vegetation than other electrode configurations
www glc org/wetlonds                                                                                       81

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A 3-m stainless steel cable suspended from the boat rail is recommended as a cathode This has been found to be a
more effective cathode design for coastal wetland sampling than the more typical use of the boat-bottom surface, but
using the boat bottom surface or a metal  plate  mounted on nonmetallic  hulls would be an acceptable approach as
well. Current should be generated with at least a 5 000'watt generator and voltage adjusted to produce current (m-
water amperage) at a level that will be effective in stunning fish while minimizing potential harmful effects This level
vanes among lakes and between locations within  a lake  depending on conductivity, depth, substrates and other
factors, but is often in the S to 6 amp range This level is considerably higher than what we have found to be effective
in most stream habitats (~  2  amps), but is necessary to be effective in many Great Lakes coastal wetland habitats,
particularly those  with highly organic or  sandy  substrates  Minimizing potential  harmful effects should always be
paramount, so assessment of minimum effective  current will need to be completed at each  site immediately before
sampling begins An output setting of 60-120 pulses per second of direct current  is recommended to achieve these
results  Output setting and effective current delivered to the water should be maintained consistently across all sites

Each transect should be fished an equal time across all wetlands A  total of 10-15 minutes of continuous shocking is
recommended per transect parallel to shore  Although it is not necessary and meaningful data can be obtained
without it, it is recommended that  one weights the time spent fishing in different vegetation zones (e g , emergent,
submergent and open  water,  other) at each transect by the predominance  of each of these habitats at a  particular
transect  Estimating the areal coverage of the different vegetation zones can be done quickly  by visual  estimation
adjacent to the  transect immediately before beginning fishing  Habitat crews can provide a more precise estimate of
this coverage after fishing has  been completed if deemed necessary  The weighting of vegetation zones is particularly
important if certain metrics or indicators are based on fishes associated with particular plant zones (e g ,  Uzarski et al
200S) For example, if 10  minutes has been selected as the total  time for each transect, and 25% of the aquatic
portion of the site is estimated to be occupied by emergent plants, 50% by submergent plants and 25% of the site is
open water habitat (macrophytes not present or  rare), five minutes should be allotted to sampling in the submergent
zone and 2  5 minutes in both the emergent and open water zones  All effort should be spread evenly across the 100 m
transect in each designated zone If weighting time fished by vegetation zones is not incorporated into the design, then
all areas within the transect should be fished as exhaustively as possible within the time frame allotted

Fish from each of the vegetation zones should be  placed  in separate coolers as they are captured and worked up
separately if data  stratification by  vegetation zone  is desired Data can  be aggregated  later if analyses  are being
conducted at the scale of  transects within  wetlands or at the scale of entire  wetlands  Since it is likely  that fish data
will  be analyzed relative to other biotic or abiotic data, some thought should be given to matching the scales at which
abiotic data are sampled to the scale of fish sampling  For example, vegetation cover and  composition are readily
surveyed at spatial scales  matching the  fish transects (Trebitz et al  2005),  and water quality data can be collected
from the midpoint of each transect

At each transect, vegetation zones  should be fished to the middle  of the wetland at each transect not to exceed a
maximum  distance of 100  m from shore   The 100-m limit is recommended because greater  distances create a
sampling transect that is impractical for most field crews to effectively sample, particularly if all seven locations to be
sampled m a wetland are configured in a similar manner  When large open water areas are present, the width of open
water zone fished  should be limited to the greater of the two widths from the emergent and submergent zones. For
example, if the emergent zone was 20 m wide and the submergent zone was 40 m wide, only 40 m of the open water
zone would be fished even  if there was a  much  larger  area of open water present Similarly, if there was 10 m of
emergent zone and 20 m of submergent zone only 20 m of open water would be fished In channel or backwater areas
that are less than  25 m wide, emergent and submergent zones on both sides of the channel /backwater should be
fished if necessary to meet the calculated fishing times for each area
82                                                                  Great Lakes Coastal Wetlands Monitoring Plan

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Fish Enumeration and Identification

Regardless of the capture method, fishes greater than 25 mm should be identified to species and enumerated so that
diversity indices can be calculated  Catch per net per night or per minute of electrofishing should be recorded for
each species caught  Ten to 20 specimens of each species and approximate life stage based on regional size-at-age
relationships (YOY, yearling, adult), should be  chosen  randomly for measurement (total length,  evidence  of
deformities, ectoparasites, lesions or tumors, etc ), these data are not needed here but should be obtained for future
use  Depending on study objectives, all fish or a representative subsample may need to be weighed and measured for
total length before release  If a fish cannot be identified in the field,  specimens should be collected  for later
identification in the lab  Whenever  possible, auxiliary  (covanate) physicochemical data  (water chemistry, depth,
temperature, etc.) should be recorded before and/or after sampling This  information can later be used to explain
variability or anomalies in catch data Recommended covanate measurements are summarized in Table 5-1


Worksheet for Calculating IBI  Scores

/B/ use and interpretation of results

The recommended fish-based index of biotic integrity metrics for Great Lakes coastal wetlands are those of Uzarslci et
al  (2005)  It is important to recognize that the metrics reported here are based on fyke net catches only and will need
to be adapted for  other fish capture methods  Scoring for  each metric is calculated from mean values per  net-night
(Figure 5-1) in Schoenoplectus and Typha  zones when a mean of at least  10 fish are captured per net per vegetation
zone  If fewer  than  10 fish  are captured or a sample  is suspected  to be atypical,  an additional net-night is
recommended  Additional sampling increases sample sizes without altering community composition (Brady et al
2007).
www glc org/wetlands                                                                                    83

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Schoenopfecfus Zone:

1   Mean catch per net-night.
< 10 score = 0          10-30 score = 3        >30 score = 5

2.  Total richness
<5 score =0           5 to <10 score = 3      10 to 14 score = 5       >14 score = 7

3.  Percent non-native richness:
> 12% score = 0         7% to 12% score = 3    <7% score = 5

4.  Percent omnivore abundance:
>70% score = 0         50% to 70% score = 3   <50% score = 5

5.  Percent piscivore richness:
< 15% score = 0         15% to 25% score = 3   >25% score = 5

6.  Percent insectivore abundance:
<20% score = 0         20%-30% score = 3     >30% score = 5

7.  Percent insectivorous Cypnnidae abundance'
<1 % score = 0          l%-2% score = 3        >2% score = 5

8.  Percent carnivore (insectivore+piscivore+zooplanktivore) richness'
<60% score = 0         60%-70% score = 3     >70% score = 5

9.  White sucker (Cafosfomus commerson/) mean abundance per net-night
0 score = 0             >0 to 0 4 score = 3     >0.4 score = 5

10. Black bullhead (Ictalurus me/as) mean catch per net-night'
0 score = 0             >0 to 3 score = 3       >3 score = 5

11. Rock bass (Amb/op//fes rupesfns) mean catch per net-night
0 score = 0             >0 to 4 score = 3       >4 score = 5

12  Alewife (Alosa psuedoharengus) mean catch per net-night-
>11 score = 0          1 to 11 score = 3       <1 score = 5

13  Smallmouth bass (Micropferus dotom/eu) mean catch per net-night'
0 score = 0             >0 to 5 score = 3       >5 score = 5

14. Pugnose shiner (Notropis anogenus) mean catch per net-night'
0 score = 0             >0 to 5 score = 3       >5 score = 5

Figure 5-1. Mean values per net-night for Schoenoplectus zones. For further reference, see Appendix C
(Uzarski, et al. 2003) at the end of this document
84                                                        Great Lakes Coastal Wetlands Monitoring Plan

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Typha Zone:

1.  Percent insectivore catch.
<40% Score = 0         40% to 80% score = 3

2.  Insectivorous Cypnnidae richness1
0 to 1 Score = 0         >lto3score = 3

3.  Percent Centrarchidae abundance1
0-30 score = 0          >30 to 60 score = 3

4.  Centrarchidae richness-
0 to 1 score = 0         >1  to 3 score = 3

5.  Mean Shannon Diversity Index:
<0.2 score = 0          0 2 to 0.7 score = 3
6.  Mean evenness
<0.2 score = 0
0 2 to 0.6 score = 3
>80% score = 5


>3 score = 5


>60 to 80 score 5


>3 score = 5


>0.7 score = 5


>0.6 score = 5
7.  Longnose gar (Lepisosfeus osseus) catch per net-night:
0 score = 0             >0 to 0 5 score = 3      >0.5 to 2 score = 5

8.  Largemouth bass (A/l/cropferus sa/mo;des) abundance per net-night:
0 to 2 score = 0         >2 to 30 score = 3       >30 score = 5

9.  Rock Bass (Amb/op/;fes rupesfns) catch per net-night1
0 to 1 score = 0         >1 to 5 score = 3        >5 score = 5

10 Bluegill (Lepom;s macrochirus) abundance per net-night
0 to 3 score = 0         >3 to 20 score = 3       >20 to 30 score = 5

11. Lepomis catch per net-night.
0 to 5 score = 0         >5 to 20 score = 3       >20 to 50 = 5
                                                    >80 score = 7
                                            >2 score = 7
                                            >30 score = 7
                                            >50 score = 7
Figure 5-2. The IBI of Uzarski et al. 2005 recommend by the GLCWC. Data are collected using fyke nets. For
further reference, see Appendix C (Uzarski, et al. 2003) at the end of this document
www glc org/wetlands
                                                                       85

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Table 5-1. Recommended Landscape and Water Quality Parameters to Record During Field Surveys
Parameter
TP
TN
TSS
Chi a
SRP
TNN
TAN
Temperature
Conductivity
PH
DO
Inorganic SS
Tubidity
Water depth
Net distance from shore

Substrate texture
Organic content
Substrate particle size
Emergent plants (species. % cover, distnb )
Floating plants (species, % cover, distrib.)
Submerged plants (species, % cover, distrib.)
Shoreline features (land use at closest
shoreline)
Wetland hydrogeomorphic type
Adjacent land use
Set time (start)
Strike time (end)
Wave & wind conditions
Air temperature
Ecoregion
Relative water level
Instrument
Water sample
Water sample
Filtered sample
Filtered sample
Water sample
Water sample
Water sample
Multimeter
Multimeter
Multimeter
Multimeter
Filtered sample
Turbidimeter/Secchi
disk
Meter stick
Range finder/tape
measure

Visual estimate
Sediment Sample for
LOI
Sediment sample
(composite)












Consortium
X
X
X
X



X
X

X

X










X






X
GLEI


X




X
X
X
X

X
X
X

X
X
X
X
X
X
X
X

X
X
X


X
FQI
(WQI)
X
X
X
X
X
X
X
X
X
X
X
X
X
X









X
X
X
X
X
X
X
X
86
Great Lakes Coastal Wetlands Monitoring Plan

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Limitations and alternate analyses
The recommended IBI is specific to only two plant zones  However, data should be collected from any/all  plant
zones encountered IBIs will be developed for additional plant zones as data permits The plant species that dominate
in a particular area  are  determined by the habitat and  physico-chemical  Features  of  the  wetland and adjacent
landscape Schoenoplectus zones are typical of coastal wetlands that have sandy substrates, clear  water and relatively
low levels of nutrients  Typha zones tend to have more organic sediments and higher nutrient content. Ordination of
fish IBI scores  for the two plant zones indicate that the IBIs are not universal indicators of generalized anthropogenic
stress The Typha IBI varies in response  to pressures related to increasing population pressure and associated loss of
forest cover and  increased residential and  commercial use  of adjacent land In contrast, the Schoenoplectus IBI is
responsive to increasing intensity of agricultural land use and point source discharges (Bhagat et al  2007) Therefore,
sampling both  vegetation  classes is important for interpreting what types of land use activity may be most responsible
for altered fish community health where  both zones occur

If sampling is conducted in areas or habitats that lack vegetation entirely or have different dominant vegetation — such
as a mixture of floating leafed vegetation including  water  lilies — alternate fyke net-based metrics are  theoretically
available if the appropriate  covanates have been  collected at the time of sampling  The fish  quality  index (FQI,
Seilheimer and Chow  Fraser 2006) relates community  composition to a nutrient-dominated  water quality index
(WQI)   As  mentioned above, the Consortium-developed indices of biotic integrity (Fish-IBI) are based on multiple
metrics for Typha & Schoenoplectus-dommated wetlands in relation to water quality and agricultural/urban land-use
stresses (Uzarski et al  200S)  The Great Lakes Environmental Indicator (GLEI) metrics are derived from multivanate
analyses of Pish species relative abundances ordmated against agricultural and urban development stress gradients
(Bhagat 2005,  Bhagat et al , in prep)

Bhagat (2005, in prep) used a multivanate  approach of fish community assessment to develop  indicators of coastal
margin  condition based  on relative abundances  of species captured in fyke nets  Cluster analysis  was used to
distinguish unique groupings of reference sites based on relative abundances of Pish species A discriminant function
analysis model distinguished the clusters on the basis of ecoregion and seven other environmental variables   Bray-
Curtis ordination was then used to assess changes in fish community across  143 sites sampled  with respect to two
classes of human activity  agriculture and population density  Population density related stress was observed to have
stronger effects than  agriculture-related  stress  Her assessment  included nonvegetated locations (high energy
coastlines and  embayments), as well as coastal wetlands  It was especially noteworthy that species considered  to be
indicators of degraded conditions in cold, nutrient-poor northern ecoregions were found to be indicators of reference
conditions in warmer, more mesotrophic southern ecoregions  This  emphasizes the importance of collecting habitat
and physicochemical data at the time of sampling,  as it provides important information on the reference community
that should be  expected in a particular wetland

Each fyke net-based index still needs validation using data external to that employed in model creation However, the
GLEI-denved  land-use based stressor scores offer  a basmwide, common suite of stressor measures against which to
assess each index because scores exist for the entire U S  Great Lakes  coast Scores for Canada are partially complete
www glc org/wetlonds                                                                                      87

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References

Albert, D A , Wilcox, D A , Ingram, J W , and Thompson, T A  2005  Hydrogcomorphic classification Tor Great Lakes coastal wetlands
Journal of Great Lakes Research 31 (Suppl  1) 129-146

Bhagat, Y 2005 Fish indicators of anthropogenic stress at Great Lakes coastal margins  multimctnc and muluvanatc approaches  M Sc  thesis
University of Windsor, Windsor, Ontario, Canada

Bhagat, Y JjH Ciborowski, L B Johnson, T M Burton,  OG  U/arski, S A Timmermans and M Cooper 2007  Testing a fish index of
biotic integrity for Great Lakes coastal wetlands  stratification by plant /ones Journal of Great Lakes Research 33  In press

Brady,V J , J J H Ciborowski, J  Holland, N Dan/, L  Johnson, D  Brcncman, N P  Dan-/, J D Holland, and J  Gathman  2007 Optimising
fishing time  Oncvs two night fyke net sets in Great Lakes coastal systems Journal of Great Lakes  Research 33  In press

Bra/ner, J C , N P  Dan/, G  J Nicmi, R R Regal, J M Hanowski, C A Johnston, E D  Rcavic,  A S  Trcbity, R W Howe, L B Johnson,
VJ  Brady,JJH  Ciborowski, and G V Sgro 2007 Evaluating geographic, gcomorphic and human influences on Great Lakes wetland
indicators multi assemblage variance partitioning Ecological Indicators  7 610-635

Bra/jicr, J C and E W  Beals  1997  Patterns in Pish assemblages from coastal wetland and beach habitats in Green Bay, Lake Michigan  a
multivanate analysis of abiotic and biotic forcing factors  Canadian Journal of Fish and Aquatic Science 54 1743-1761

Bra/.ncr, J C  1997  Regional, habitat, and human development influences on coastal wetland and beach fish assemblages in Green Bay, Lake
Michigan  Journal of Great Lakes Research 23 36-52

Chow-Frascr, P , K  Kostuk, T Seilheimcr, M  Wcimcr, T  MacDougall, and T Theysmcycr 2006 Effect of wetland quality on sampling bias
associated with  two fish survey methods for coastal wetlands of the lower Great Lakes  Simon, T P  and Stewart, P M (Eds)  Coastal wetlands
of the Laurcntian Great Lakes health, habitat and indicators  Pp 239-262 AuthorHousc, Bloommgton, Ind

Chow-Frascr, P 2006  Development of the Wetland Water Quality Index (WQ1) to assess effects of basmwidc land-use alteration on coastal
marshes of the Laurentian Great Lakes  Simon, T P and Stewart, P M (cds ) Coastal wetlands of the Laurcntian Great Lakes  health, habitat
and indicators  Pp  137-166  AuthorHousc, Bloommgton, Ind

Dccgan, L A , Finn, J T , Ayvasian, S G , and Rydcr-Kicffcr, C A , and Buonaccorsi, J  1997 Development and  validation of an cstuarme
biotic integrity index Estuaries 20 601 -617

Environment Canada and Central Lake Ontario Conservation Authority  2004  Durham Region Coastal Wetland  Monitoring Project Year 2
Technical Report  Downsvicw, Ontario  Environmental Conservation Branch - Ontario Region

Fabn/.io, M C  , Fcrren, C P , and Hanson, M J  1995  Prey fish communities as indicators of ecosystem health in  Lake Michigan National
Biological Service, Project Completion Report, Great Lakes Science Center, Ann Arbor, Mich

Jordan, S J , Vaas, P A , and Uphoff, J 1991  Fish assemblages as indicators of environmental quality in Chesapeake Bay Proceedings of
Biological Criteria  Research and Regulation Symposium  EPA-440/5-91-005 US Environmental Protection Agency, Washington,  D C

Judc, D J , Pappas, J  1992 Fish utili/ation of Great Lakes coastal wetlands Journal of Great Lakes Research 18 651-672

Karr, J R, Fausch, K D , Angcrmcier, P L , Yant, P R  , and Schlosser, I J  1986  Assessment of biological integrity in running waters A
method and its rationale Illinois Natural History Survey Special Publication No 5  Chicago, III

Kcough,  J R , Thompson,  T A Guntcnspcrgcn, G R , and Wilcox, D A  1999
Hydrogcomorphic factors and ecosystem response of wetlands of the Great Lakes Wetlands 19 821-834

Kncgcr,  K A ct al  1992  The Ecology of Invertebrates in Great Lakes Coastal Wetlands Current  Knowledge and Research Needs Journal of
Great Lakes Research Vol  18, No 4, p 634-650

LaPomtc, N R  , D Corkum and N E Mandrak 2006  A Comparison of Methods for Sampling Fish Diversity in Shallow Offshore Waters of
Large Rivers  North American Journal of Fisheries Management 26 503—513

Lyons, J  , and Wang, L  1996  Development and validation of an index of biotic integrity for coldwatcr streams in Wisconsin North American
Journal of Fisheries Management 16 241-256
88                                                                            Great Lakes Coastal Wetlands Monitoring Plan

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Mayer, T  Edsal and M  Munawar  2004 Evolution of coastal Great Lakes wetlands

Minn;,, C K  , V W  Cairns, R G Randall, and J E Moore  1994 An Index of Biotic Intcgnt) (IBI) for Fish Assemblages in the Littoral Zone
of Great Lakes'Areas of Concern  Can J Fish  Aquat Sci  51  1804-1822

Morrison H  A , Minns C  K.KoonccJ F  2001  A methodology for identifying and classifying aquatic biodiversity investment areas
Application in the Great Lakes basin  Aquatic Ecosystem Health & Management '4  1-12

Scilhcimcr.T S and P Chow-Frascr  2006  Development and use of the Wetland Fish Index to assess the quality of coastal wetlands in the
Laurcntian Great Lakes Canadian Journal of Fisheries and Aquatic Science 63  354—366

Seilheimcr, T  and Chow-Frascr, P  2007 Application of the Wetland Fish Index to northern Great Lakes marshes with an emphasis on
Georgian Bay coastal wetlands Journal of Great Lakes Research 33 In press

Ruetz III C R , D G U/arski, D M Krucgcr, and E S Rutherford  2007 Sampling a littoral fish assemblage  Comparing small-mesh fyke
netting and boat clcctrofishing North American Journal of Fisheries Management 27 825-831

State of the Great Lakes Ecosystem Conference, 1998 U S Environmental Protection Agency and Environment Canada, Buflalo, N Y

Thoma, R F  1999 Biological monitoring and an index of biotic integrity for Lake Eric's ncarshorc waters Assessing the sustamability and
biological  integrity of water resources using fish communities, T P Simon, (cd ) pp 417-461  CRC Press, Boca Raton, Fla

Thoma, R F  2002 Correlation between nutrient stimulation and presence of omnivorous fish along the Lake Eric ncarshore Biological
Response Signatures  Indicator Patterns Using Aquatic Communities, T  P  Simon (cd ) pp  187-199 CRC Press Boca Raton, Fla

Thoma, R F  2004  Methods of Assessing Habitat in Lake Eric Shoreline Waters Using the Qualitative  Habitat Evaluation Index (QHEI)
Approach  Ohio Environmental Protection Agency, Division of Surface Water, 401 Section, Columbus, Ohio

Timmcrmans, S  T A, and Craigic, G E 2003 The Great Lakes Coastal Wetlands Consortium Year-One  Pilot Project Research Indicator
Activities  A Technical Report by Bird Studies Canada Marsh Monitoring Program, Bird Studies Canada

Trcbif/, A S , Bra/ncr, J C , Tanner, D K  , Brady, V J  and Axlcr, R  In press  Turbidity tolerances of Great Lakes coastal wetland fishes
North American Journal of Fisheries  Management 27

Trcbif/ A  S  , Morncc, J A , Taylor,  D L , Anderson, R L , West, C W and Kelly, J R 2005 Hydromorphic determinants of aquatic habitat
variability in Lake Superior coastal wetlands  Wetlands 25 505-519

U/jrski, D G , Burton, T M , Cooper, M J , Ingram, J W , and Timmcrmans, S 2005 Fish habitat use within and across wetland classes in
coastal wetlands of the five Great Lakes development of a fish-based Index of Biotic Integrity  Journal of Great Lakes Research 31 (Suppl
1) 171-187

Whitticr,  T H  1999 Development of IBI metrics for lakes in southern New England  In  Simon, T P  (cd ), Assessing the sustamability and
biological  integrity of water resources using fish communities Lewis Publishers, Boca Raton, Fla, pp 563-582

Wilcox, D A , Meeker, J E , Hudson, P L , Armitagc, B J , Black, M  G , and U/arski,  D G  2002  Hydrologic variability and the application
of Index of Biotic Integrity metrics to wetlands  a Great Lakes evaluation Wetlands 22  588-615
www glc org/wetlands                                                                                                        89

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Appendix 5-1. GREAT LAKES COASTAL WETLANDS DATA SHEET - Electrofishing
Page	of.
Date
Wetland
Type Riverine  Protected
Fluvial Zone Channel  Back Bay Lacustrine Mouth
Lake Transect# Lat Lon Gear Boat T
Voltage Amps
L=length(cm),



































I
W
r
i
w
C
i
w
r
i
w
f
i
w
r
i
w
r
i
w
r
i
w
r
i
w
r
i
w
r
i
w
r
i

































7

































# GPP Seconds Fished Total Time Fished (min) ^
W=wei
1

































ght(g), C=condition
4

































S

































a

































7

































Distance Fished - Length
it

































0

































10

































11

































17

































ote Barge
v'eg Zone En
(m) V

n

































14

































icrgen
,'idth (i
is

































Submergent Open Mixed
n)

Pnmmpnte











Anomalies: A=anchor worm, B=black spot, C=leeches, D=deformities, E=eroded fins, F=fungus, l=ich, L=lesions, N=blind, P=other parasites, Y=popeye,
S=emaciated, W=swirled scales, T=tumor, Z=other (H-heavy =>20%, L-light=<20%)

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Appendix 5-2.
                       Field Equipment Checklist
     For fish and accompanying chemical/physical (covariates) sampling
Pre-samplina checklist:

	Conductivity meter

	DO meter/probe/repair kit
     Jape

      Field notebooks
     _6 Fyke nets


     .Permanent marker

     .Cooler and ice (depending on temp)

     _ Insect repellent

     .Filter apparatus

     .Metal hand pump/tubing
      bottles

      Buckets
In field:

Water samples -> surface 1 L (1 sample per station)

Fish samples (nets) -> 3 per station
. Turbidimeter

.1 L water sample
bottles (at least 3/site)

.Mechanicalpencils

.Meter stick

.Fish processing
boards

_Metal conduit (42 pcs.)
.Waders or boots

.Cell phone

.Filters/forceps

.250 ml sample
 (at least 3 per site)

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                        ^^f
                      Chapter 6
  Amphibian Community Indicators
                     Chapter Authors
              Steven T. A. Timmermans, Bird Studies Canada
                 Tara L. Crewe, Bird Studies Canada
                 Greg P. Grabas, Environment Canada
92
Great Lakes Coastal Wetlands Monitoring Plan

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Introduction

Amphibians  rely  heavily on aquatic  environments  for  reproduction  and  other  life sustaining purposes. Most
amphibians inhabit wetland environments during most or part of their life cycle, and among the amphibian class,
anurans generally rely  most heavily on wetland aquatic  systems  Amphibians also are perhaps the most sensitive
vertebrates to aquatic and atmospheric pollution (Blaustem and Wake 1995), and therefore may be deemed highly
useful early warning indicators of wetland pollution and habitat degradation (Crewe and Timmermans 2005, but see
Price et al In Renew) Directly associated with Great Lakes hydrological influences, lacustrine or coastal wetlands are
among the most important wetlands that occur within the  Great Lakes basin  Numerous anuran species are associated
with wetlands of the Great Lakes basin (Mitsch and Gosselmk 1993, Hecnar 2004)

Many  anuran species  have experienced population  declines, likely due  to  historical  and  current  sources of
anthropogenic environmental pollution, and habitat loss and degradation As recently as the 1990s, researchers began
to realize that declining amphibian populations  was a global phenomenon, although the magnitude and geographic
extent of these declines was still uncertain (Alford et al  1999, Carey 2000, Houlahan et al  2000)  Because the
uncertainty surrounding the nature of these declines  was primarily due to lack of extensive, scientifically rigorous,
consistently  collected data, as well  as a lack  of  detailed population  information on localized metapopulations,
researchers and conservationists in Canada and the United  States began to consolidate efforts to report and determine
the sources of these declines (Pechmann et al  1991, Green 1997, Kiesecker et al  2001)

There  were increasing concerns that continued stresses by urban, industrial and agricultural  development were
negatively affecting marsh-dependent wildlife populations and  other  marsh functions,  such as water  quality
improvement  As a result, Bird Studies Canada (BSC) partnered with Environment  Canada to develop the Marsh
Monitoring  Program  (MMP)  in Ontario in  1994   With substantial  financial support from the United States
Environmental Protection Agency's Great Lakes National Program Office and the Great Lakes Protection Fund, the
MMP was launched binationally throughout the Great Lakes basin in 1995 and the program has been growing ever
since

Concern over the  status of anuran communities in the Great Lakes basin was also raised at the State of the Lakes
Ecosystem Conference (SOLEC) in 1998, which provided the impetus for a team of experts and the public to identify
and  begin developing a suite  of ecological indicators based on amphibian communities  SOLEC  indicators were
designed to incorporate all major aquatic and terrestrial habitats of the Great Lakes basin that were deemed important
to human health and society Coastal wetlands were one of these habitats and certain characteristics of the amphibian
community  were adopted  as  a means to assess their overall integrity  through SOLEC indicator  #4504 Species
composition and relative abundance of calling frogs and toads,  based on evening surveys using protocol developed for the Marsh
Monitoring Program (MMP) or modification of MMP protocol

In 2002, the Great Lakes Coastal Wetlands Consortium began to develop indicators based on the condition of Great
Lakes coastal wetland amphibian communities, relying on  MMP data and protocols to design these studies The MMP
had an established  methodology, a network of skilled volunteer surveyors and several years of supporting data  The
next five years were dedicated to collecting data and developing and testing indicators for reporting on the condition
of marsh-dependent amphibian communities in coastal wetlands across the Great Lakes basin

During this time  there was also considerable interest  in assessing and  monitoring the  condition of amphibian
communities at a  regional  scale within the Great  Lakes basin, particularly  within Great Lakes Areas  of Concern
(AOC) For example, when Beneficial Use Impairment # 3 (i e , degraded fish and  wildlife populations) has been
listed as part of a Remedial Action Plan (RAP),  wetland amphibian communities have often been a key factor in the
listings for Canadian AOCs (e g , Bay of Quinte, Niagara River), United States AOCs (e g , Clinton River, Cuyahoga
www glc org/wetlonds                                                                                      93

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River), and all binational AOCs (Timmermans et al  2004, Archer et al 2006,  Environment Canada — Canadian
Wildlife Service (EC-CWS] 2007), see http //www  ijc org/en/actmties/raps htm

Another example where amphibians have been used as  part of regional  monitoring efforts is the Durham Region
Coastal Wetland Monitoring Project (DRCWMP), which focused on IS  wetlands located just east of Toronto  For
the past six years, marsh-dependent amphibian data have  been collected for the DRCWMP through a combination of
paid staff and citizen volunteers participating in the MMP These data have been reported in technical documents and
fact books in an effort to further Great Lakes coastal wetland science, promote regional coastal wetland conservation,
and influence  environmental  policy in Durham Region  (Environment Canada [EC] and the Central  Lake Ontario
Conservation Authority [CLOCA] 2004a, EC and CLOCA 2004b)

Bird Studies Canada personnel who coordinate the MMP have been primary investigators for the Consortium, and
have worked  with EC partners and others to develop marsh-dependent amphibian  monitoring  protocols  and
associated  amphibian  community indicators  specific to  Great Lakes coastal wetland  ecological  indicator  (El)
biomonitormg  These investigators  established monitoring protocols that adequately met all the required criteria
established by the Consortium, and also developed associated amphibian indices of biotic integrity  (IBI) derived from
resulting monitoring data   During the five-year Consortium data collection and indicator development process, the
main collaborators for the amphibian community indicators were BSC and EC-CWS (EC and CLOCA 2004a, Crewe
and Timmermans 2005)

During this same period,  a  similar research project, the Great Lakes  Environmental Indicators (GLEI) project
fhttp X/glei nrri umn edu/default/). concurrently examined use of another method to report on Great Lakes coastal
wetland amphibian  communities with data collected based on the GLEI's amphibian survey methods (Niemi et al
2006)  In the final year of the Consortium work plan, there were efforts to collaborate with the GLEI scientists to
develop an integrated  amphibian community condition indicator, recognizing the inherent differences in both anuran
survey field data collection methods and data analytical procedures used between Consortium and GLEI investigators
Consortium wetland amphibian indicator investigators worked with GLEI investigators to examine the possibility of
integrating certain  data analytical procedures,  called the Index of Ecological Condition (IEC), that were being
developed by GLEI for estimating coastal wetland condition based on amphibians  Unfortunately, time was short and
the benefits of a more timely and thorough collaboration were not fully  realized The methods  and indicators
presented in this  section are a result of the Consortium indicator development process  We hope to continue our
collaboration with GLEI investigators to evaluate the potential of integrating IEC  data analytical methods for  future
Great Lakes coastal  wetland amphibian indicator calculations


Materials and  Methods

Field Protocols

MMP data collection is coordinated through Bird Studies Canada To participate,  surveyors must have received and
be familiar with the current MMP training kit  and instructions The  package contains training audio tapes or compact
discs, station identification tags, an instruction manual and data sheets, and is available from
94                                                                Great Lakes Coastal Wetlands Monitoring Plan

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                                           Bird Studies Canada
                                       Marsh Monitoring Program
                                              11S Front Street
                                                P  O  Box 160
                                   Port Rowan,  Ontario  NOE  1 MO Canada
                                          Toll free 1-888-448-2473
                                             Fax  S19-586-3532
                                        Email aqsurvey@bsc-eoc org

The full protocols are available in Appendix 6-1  A summary of the methodology is below

MMP amphibian surveys use an unlimited distance point count  method  to collect data on amphibian species  These
point counts entail a surveyor standing at a focal point (or survey point) and listening for breeding calls of various frog
and toad (anuran) species that are heard in a  standardized period of time in the defined survey area  MMP amphibian
survey protocol consists  of a semicircular (180 degree radius) survey station  with an unlimited distance  However,
surveyors are asked to indicate whether individuals  or groups of amphibians are heard calling within or beyond a 100-
meter survey radius Survey stations are  separated  by at least 500 meters to ensure independence  between stations
(i e , reduce double counting of breeding calls between adjacent stations)

A route consists of one to eight survey stations established within a site, a site can contain a number of routes  Routes
are established based on the following protocol
       •  Routes occur only in marsh habitat (i  e ,  greater than 50 percent nonwoody emergent plants interspersed
          with shallow open water),
       •  Route survey stations are established along  the shoreline (e g , marsh edge) and/or  within the  interior of a
          marsh,
       •  Survey stations are selected by  program coordinators following a scientifically robust stratified-random
          sample station selection scheme adapted from  Meyer et  al (2006) to best represent the wetland habitats,
       •  Edge survey station direction is positioned to maximize  marsh  area surveyed, interior survey station
          direction is selected via random bearing selection,
       •  Each station is visited three times during  the breeding season (i e , peak vocalization time) and,
       •  Landmarks are established so that distances within the survey area can be accurately estimated

Amphibian surveys are standardized to occur during a specific survey window (three visits, each timed appropriately
for latitudinal region), time  of day  (sunset  to  24  00 hrs [midnight] EST), duration (3 minutes per station), date
(region- and visit-specific), specific weather conditions (visit-specific minimum ambient temperatures), low drizzle or
no precipitation, and gentle wind (less than  19  kilometers per hour) In addition, at least 15  days must  fall between
survey visits

Birds Studies Canada also coordinates  MMP recruitment sessions during late winter and early spring,  and training
sessions  during  spring  Special training  sessions  will  be given in regions  with abundant  or specialized  (i  e ,
implementation of Consortium work plan) interest

Worksheets

Standardized data collection forms are available from BSC in the MMP package
www glc org/weilands                                                                                       95

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Table 6-1. Checklist of supplies needed for the MMP amphibian monitoring protocols.


Required         MMP training and instruction package
                  Material to stake survey stations (e.g.. electrical conduit)
                  Watch or timer
                  Standardized data collection forms
                  Pens/pencils
                  Flashlight
Recommended   GPS and/or compass
                  Canoe, boat or chest waders/boots depending on survey route
                  Clipboard
                  Insect Repellent
                  Thermometer
                  Spare batteries
                  Reflector tape to mark station stakes


Site Selection

Sites should be selected in reference to Chapter 1 of this document on Statistical Design and represent a range of the
Four mam coastal wetland hydrogeomorphic types (See Albert et al  2005) present in the area of interest

Data used for all analyses included all amphibian  observations recorded within the 100-m radius MMP survey area
Using multiple years of MMP data (1995-2003) from 73 sites within Ecoregion 8 of the Great Lakes basin, a power
analysis was performed for a paired t-test using Statist!ca (StatSoft, Inc  2005, power=0 8, alpha=0 05)  The power
analysis helped estimate the number of sites required to detect a statistically significant difference within an  area of
interest (i e , Great Lakes basin, lake basin, state, region, etc ) between two sampling times Sampling frequency can
occur over any time frame  (e g , annual, biennial, for SOLEC years) and will likely depend on available resources
With a paired design, the sampling must be done at the same sites throughout each sampling period  The power
analysis predicted the number of sites required to  detect a statistical difference within the area of interest with various
mean differences between paired sites (Figure 1-2)

Table 6-2. The approximate number of sites required to detect a difference in IBIs within an area of interest
(e g . Great Lakes basin, lake basin, state, region). IBIs are expressed out of 100 with higher scores indicating
amphibian communities in better condition

             Number of sites required       Mean difference in IBI between paired sites
              10                           30
             20                           20
             30                           15
             40                           12

For example, if an agency wanted to detect a mean difference of 20 IBI points in a suite of sites sampled in a particular
region, at least 20 sampling  sites (wetlands) are recommended


Interpretation of Results


Amphibian Groups and Response Variables

Amphibians were categorized into four species guilds  woodland species, disturbance tolerant species, disturbance
intolerant species, basmwide species and total species richness These categories were based on, but refined from,




96                                                             Great Lakes Coastal Wetlands Monitoring Plan

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Crewe and Timmermans (2005) and EC and CLOCA (2004) and using expert opinion (Table 6-3) For each station,
maximum species richness across visits and presence/absence of each amphibian guild were summarized To calculate
the amphibian community coastal wetland IBI, mean richness and probability of detection (proportion of stations with
guild "present") of each guild were calculated for each wetland site

Table 6-3. Classification of Great Lakes amphibian species into community guilds
Species
Code
AMTO
BCFR
BULL
CHFR
FOTO
GRFR
GRTR
MIFR
NLFR
PIFR
SPPE
WOFR
Common Name Woodlc
American toad
Blanchard's cricket frog
Bullfrog
Chorus frog X
Fowler's toad
Green frog
Gray treefrog X
Mink frog
Northern leopard frog
Pickerel frog
Spring peeper X
Wood frog X
. Disturbance Disturbance _ .
ind Tolerant Intolerant Basinwide
X X

X
X

X X
X

X X
X
X X
X X
Using data collected south of the Canadian Shield (i e , within Ecoregion 8), total species richness (rTOT) responded
consistently and significantly (p < 0 20) to the amount of landscape disturbance within  1 kilometer surrounding a
wetland during three of four high water level years (1995-1998), and the response of woodland species richness
(rWOOD) and presence/absence of woodland species (pWOOD) responded significantly to disturbance (p < 0 08)
during all high and low water level years (1995-2003) All three metrics were combined to create an amphibian-based
Great Lakes coastal wetland IB), suitable for wetlands sampled within Ecoregion 8  Methods for development were
based on  a  combination of  metric suitability,  data treatment  and  calculation techniques  used  in  Crewe and
Timmermans (2005) and EC and CLOCA (2004)

Table 6-4 A description of metric codes used in the amphibian-based coastal wetland IBI.

Metric Code     Descnption
rTOT             Mean total species richness across survey stations in a wetland.
rWOOD          Mean species nchness of woodland associated amphibian species across survey
                 stations in a wetland.
pWOOD         Probability of detection of woodland-associated  amphibian species across
                 survey stations in a wetland
www glc org/weilands
97

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Description of amphibian-based coastal wetland IBI calculation

To calculate the amphibian community IBI, data must first be summarized as a mean per station for each of the three
species guilds (rTOT, rWOOD, pWOOD)  The total possible richness of rTOT and rWOOD species guilds must
also be determined for your site by consulting species range  maps  A corrected rTOT and rWOOD score is then
calculated by dividing station richness by the total possible richness at your site

Station data is then  summarized as a mean value across stations at a wetland for each of the three species guilds
(rTOT, rWOOD, pWOOD)  The IBI is then calculated as follows

Step 1: Standardize  species richness and probability of detection metrics to scores out of 10, where 10 indicates the
highest integrity of the amphibian community

           Metric Code     Calculation
           rTOT              If rTOT > 0.41, then the metnc automatically scores a 10
                            If rTOT < 0.41, then multiply the percentage by 24.4

           rWOOD           If rWOOD > 0 5, then the metric automatically scores a 10
                            If rWOOD < 0.5, then multiply the percentage by 20

           pWOOD         If pWOOD = 1, then the metnc automatically scores a 10
                            If pWOOD < 1, then multiply the proportion by 10

Step 2: Combine standardized metrics into an IBI score ranging from 0-100 For each wetland,
this is accomplished by adding standardized metric scores and multiplying the sum by 3 3333

                Example: For Bamsville Bay Wetland in  1995, the station values for rTOT and
                rWOOD were divided by the total possible richness (rTOTpossible = 11
                species, rWOODpossible = 4 species)  The mean across stations of all three
                amphibian community metrics was then calculated  Mean metric scores were as
                follows rTOT = 0 102, rWOOD =  0 0625, pWOOD = 0 25

                According to Step 1  above
                    •    rTOT = 0  102, which is less than 0 41, so the standardized metric is
                         0 102*244 = 2 5
                    •    rWOOD = 0 0625, which is less than 0 5, so the standardized metric is
                         0 0625 * 20 = 1 25
                    •    pWOOD = 0 25, which is less than 0 1, so the standardized metric is
                         025* 10=2 5

                According to Step 2 above
                    •    IBI = (2 5 + 1 2 + 2 5) * 3  3333= 20 8 (out of 100)
98                                                               Great Lakes Coastal Wetlands Monitoring Plan

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Table 6-5  Amphibian community based coastal wetland IBIs (out of 100) for a subset of sites sampled south of the Canadian Shield by MMP
surveyors from 1995-2003. Higher scores indicate amphibian communities in better biotic condition.
Wetland Name
Hay Bay Marsh
Long Point Wetland 7
Presquille Bay Marsh 4
South Bay Marsh
West Saginaw Bay Wetland
Wilmot Rivermouth Wetland
Button Bay
Big Island Marsh
Bayfield Bay Wetland
Presquille Bay Marsh 3
Wye Marsh
Mentor Marsh
Turkey Point Wetland
Hillman Marsh
Upper Canada Migratory Bird
Sanctuary
Indiana Dunes Wetland
White River Wetland
Grand River Mouth Wetlands
Long Point Wetland 5
Long Pond Wetland 1
Wildfowl Bay Wetland
Empire Beach Backshore Basin Forest
East Bay Wetland
Braddock Bay Wetland
East Lake Marsh
Matchedash Bay
Rondeau Bay Wetland 3
East Saginaw Bay Coastal Wetland
Tuscarora Bay Wetland
Port Britain Wetland
Charlottenburgh Marsh
Province/
State
Ontario
Ontario
Ontario
Ontario
Michigan
Ontario
Ontario
Ontario
Ontario
Ontario
Ontario
Ohio
Ontario
Ontario
Ontario

Indiana
Michigan
Ontario
Ontario
Pennsylvani
a
Michigan
Ontario
New York
New York
Ontario
Ontario
Ontario
Michigan
New York
Ontario
Ontario
1995 1996


100




100 76.4

926
1000 951
904


870


759
100

93.2
92.7 95.9
519 963
80.6


92.6
94.4

828

100.0 61 6
1997







100


98.8
933
93.3



893
950
72.2

100
82.6
61.1






785


1998 1999







100 967


88 3 96 3
905 850
833
995


89.3 90.7

80.5 88.9

78.4 75.3
69.6 87.7
963 81.5

799


61.9

622

76 2 76.5
2000







94.8


935


81 2


85.3



824
81.2
81.5

79.9




66.3

67.9
2001







100


79.0


100


857



75.3
74.7
889


51 9
84.3


70.4

72.2
2002 2003
100
100

100
100
100
1000
100 100
94.4

95 1 64 8


82 0 77.5


90 4 72.8


833
728
73.0
88.9 81 5

799
88 9 96.3
61.1 769

76.8
78 7 95.2
75.9

Mean IBI
100
100
100
100
100
100
100
964
944
926
90.1
898
88.3
88.0
870

862
854
854
83.3
825
822
80.9
80.6
799
790
78.7
78.2
76.8
76.3
75.9
757

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Wetland Name
Rondeau Provincial Park 1
Seagull Bar Area Wetland
Big Creek Marsh
Braddock Bay-Cranberry Pond
Wetland
Tobico Marsh Wetland
Little Cataraqui Creek Complex
Waukegan Area Wetland
Point Pelee Marsh
Long Point Wetland 3
Suamico River Area Wetland
Long Point Wetland 1
Rondeau Provincial Park 2
Buckthorn Island Wetland
Illinois Beach State Park Wetland
Belleville Marsh
Port McNicholl Marsh
Cootes Paradise
Long Point Wetland 4
Sawguin Creek Marsh
Harsens Island Area Wetland
Ottawa National Wildlife Refuge
Wetland
Cedar Point National Wildlife Refuge
Cranberry Marsh
Ottawa Wildlife Refuge Wetland
Lake St Clair Marshes
Magee Marsh
RBG- Hendrie Valley { LHW)
Penetang Marsh
Metzger Marsh
Long Point Wetland 2
Bainsville Bay
Hydro Marsh
Oshawa Second Marsh
Corbet* Creek Mouth Marsh
Province/
State
Ontario
Wisconsin
Ontario
New York

Michigan
Ontario
Illinois
Ontario
Ontario
Wisconsin
Ontano
Ontario
New York
Illinois
Ontario
Ontario
Ontario
Ontario
Ontario
Michigan
Ohio

Ohio
Ontario
Ohio
Ontario
Ohio
Ontario
Ontario
Ohio
Ontano
Ontario
Ontario
Ontano
Ontario
1995
487




83.0


698


458

51 5

531

11 4






448

40.0

25.8
324

111
20.8
9.3
24.4

1996
100




870
676
685

380

490
56.9
38.1
51.1
59.0
74.8
147


122


74
419

32.3
36.3
17.5


281
24.4
00
355

1997
777
71 5



787




35.9
48.9

61 4
59.4
435
954
41 2








376

49.5

9.3

467
722
356

1998
747
99.3



663





70.8


72.6

743
46.1



18.6




40.5

38.0

22.6

17.9

25.3

1999
61.5

68.5


45.6
889

680


519

642
584

57.9
384

292

167

74

32.2
34.4

49.4

38.0
296
372

17.4

2000
748

79.2



346

486

33.1
58.3


41 5

19.6
79.3

59.7

12.0

329

24.5
22.7

224

55.1



21.1

2001
67.9
552
77.8





Til


801


343

124
61.1


349
39.4

582

393
65.2

16.3





170

2002
988


72.7


85.9


83.3
78.6
783




138
578
463

764
100

894
99

30.8

34.4


39.4

29.6
23.4
241
2003






731



925
55.6


45.8


760



57.5

472
586
53.7
33.2

593





231

Mean IBI
75.5
753
752
727

72.1
700
68.5
64.8
60.6
60.0
59.9
56.9
53.8
51.9
51.9
497
473
463
44.4
41.2
407

404
388
37.4
374
36.3
34.7
324
31 2
29.8
29.4
27.8
24.8
241
100
Great Lakes Coastal Wetlands Monitoring Plan

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Wetland Name
Ruscom Shores Marsh
Rouge River Marsh
Bronte Creek Marsh
Port Darlington Marsh
Number River Marshes
Van Wagners Marsh
Lynde Creek Marsh
Monroe City Area Wetland
Province/
State
Ontario
Ontario
Ontario
Ontario
Ontario
Ontano
Ontario
Michigan
1995 1996

7.4 0.0
14.8 7.4

9.9
11.6

0.0
1997 1998 1999 2000 2001

324 74


4.9 148
0.0


2002
21.6


19.1
25

5.9

2003



2.5
4.9

2.5

Mean IBI
21.6
11.8
11.1
108
7.4
5.8
4.2
00
www glc org/wetlonds                                                                                   101

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Data Handling and Storage
Data sheets should be returned to Bird Studies Canada as directed in the training and instruction package by July 31 of
the survey year.


Limitations

Geographic

The IBI developed for the Consortium was developed using sites in the Great Lakes basin south of the Canadian Shield
(Ecoregion 8, i e , southern lakes Huron and Michigan, all of lakes Ontario, Erie, St Clair and connecting channels).
Therefore, the IBI described above is applicable only to wetlands within the same geographic area

Water Levels

Craigie et al. (2003), DesGranges et al  (2005), and Steen et al (2006) describe how Great Lakes water levels can
influence attributes of coastal  wetland marsh bird communities Given this, we considered the possibility that water
levels might also influence coastal  wetland amphibian community  attributes, and  examined amphibian attribute
response to disturbance to both high  water (1995-1998) and low water (1999-2003) periods in a similar manner done
for marsh birds  For amphibians, two of the community metrics used to develop the coastal wetland IBI  (rWOOD,
pWOOD) responded significantly to  disturbance during all  years  surveyed  (1995-2003)   Alternatively,  rTOT
responded  significantly to wetland  disturbance during only one of five low water level years (1999-2003)  but
responded  significantly  during all high water level years (1995-1998) When metric scores were averaged across all
years, however, all three metrics responded significantly to disturbance Thus, the IBI described here should be
considered appropriate  for all  water  levels, though amphibian response to disturbance, and therefore the response of
the amphibian IBI to disturbance, will be stronger during high water levels  Additional analysis is recommended to
quantify the effect of changing water  levels on the coastal wetland amphibian community IBI

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References

Albert, D A , Wilcox, D A , Ingram, J W and Thompson, T A  2005  Hydrogeomorphic classification for Great Lakes coastal wetlands
Journal of Great Lakes Research 31 (Supplement 1)  129-146

Alford, Ross A and Richards, Stephen J 1999  Global Amphibian Declines  A Problem in Applied Ecology Annual Review of Ecology and
Systematic; 30 133-65

Archer, R W , Timmcrmans, S T A and Robinson, C L   Monitoring and Assessing Marsh habitats in Great Lakes Areas of Concern, Final
Project Report Bird Studies Canada, Port Rowan, Ontario 302pp

Blaustem, A R , and Wake, D B  1995 The pu/./lc of declining amphibians  Scientific American 272(4) 52-57

Carey, Cynthia, 2000 Infectious Disease and Worldwide Declines of Amphibian Populations, with Comment, on Emerging Diseases in Coral
Reef Organisms and in Humans Environmental Health Perspectives.  !08(Supp  I)  143-150

Craigic, G E , Timmcrmans, S T A  and Ingram, J W  2003  Interactions Between Marsh Bird Population Indices and Great Lakes Water
Levels A Case Study of Lake Ontario Hydrology February 2003  Bird Studies Canada and Environment Canada Port Rowan, Ontario 40pp

Crewc, T L and Timmcrmans, S T A  2005 Assessing Biological Integrity of Great Lakes Coastal Wetlands Using Marsh Bird and Amphibian
Communities March 2005 Bird Studies Canada, Port Rowan, Ontario  89pp

DcsGrangcs, J -L , Ingram, J , Drolct, B , Savage, C , Morm, J , and Borcard, D 2005  Wetland bird response to water level changes in the
Lake Ontario - St Lawrence River hydrosystcm Final report to the International Joint Commission in support of the International Lake
Ontario - St  Lawrence River Water Regulation Review Study  Canadian Wildlife Service, Quebec and Ontario Regions Environment
Canada Unpublished report xiv + 132pp (including 4 enclosures and 14 appendices)

Environment Canada and Central Lake Ontario Conservation Authority  2004a  Durham Region Coastal Wetland Monitoring Project  Year 2
Technical Report Downsvicw, Ontario, Environmental Conservation Branch — Ontario Region

Environment Canada and Central Lake Ontario Conservation Authority  2004b  Baseline Conditions of Durham Region Coastal Wetlands
Preliminary Findings 2002- 2003 Downsvicw, Ontario  Environmental  Conservation Branch - Ontario Region May 2004

Environment Canada - Canada Wildlife Service  2007 Bay of Qumtc Area of Concern  Coastal Wetland Status and Remedial Action Plan
Dclistmg Target Recommendations June 2007 Toronto, Ontario Environment Canada-Canadian Wildlife Service  95pp

Hecnar, S J  2004 Great Lakes wetlands as amphibian habitats  a review Aquatic Ecosystem Health and Management 7(2) 289-303

Houlahan, Jeff E , Fmdlay, C  Scott, Schmidt, Bcncdikt R  , Meyers, Andrea H and Ku/mm, Scrgius L  2000 Quantitative evidence for global
amphibian population declines Nature 404  752-755

Kiesccker, Joseph M , Blaustcin, Andrew R and Bcldcn, Lisa K 2001 Complex causes of amphibian populations  Nature 410 681-684

Meyer, S W , Ingram, J W and Grabas, G P 2006 The Marsh Monitoring Program Evaluating Marsh Bird Survey Protocol Modifications to
Assess Lake Ontario Coastal Wetlands at a Site-level Technical Report Scries 465 Canadian Wildlife Service, Ontario Region, Ontario

Mitsch, WJ and Gossclmk, J G 1993  Wetlands Van Nostrand Remhold, New York

Nicmi, G J , Axlcr,  R , Brady, V , Bra/ncr, J , Brown, T , Ciborowski,  J H  , Dan/., N  , Hanowski, J M , Hollcnhorst,  T  , Howe, R ,
Johnson, L  B , Johnston, C A , Rcavic, E , Simcik,  D , Swackhamer, D  2006 Environmental indicators of the U  S  Great Lakes coastal
region Report NRRI/TR-2006/11 to the U S Environmental Protection Agency STAR Program, vcr I Agreement R82-8675, Washington
DC  Prepared by Great Lakes Environmental Indicators Collaboration, Natural Resources Research Institute, University of Minnesota Duluth,
121 pp + attachments (CD)

Pcchmann,  Joseph H K , Scott, David E , Semlitsch, Raymond D , Caldwcll, Janalcc P , Vitt, Laurie J Gibbons, J Whitficld  1991  Declining
Amphibian  Populations The Problem of Separating Human Impacts from Natural Fluctuations Science 253 892-895

Price, S J , Howe, R W , Hanowski, J , Regal, R  R , Nicmi, G J  and Smith,  C R Arc anurans of Great Lakes coastal wetlands reliable
ecological indicators of environmental condition' Journal of Great Lakes Research In Review
www glc org/wetlonds                                                                                                    103

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Steen, D A , J P Gibbs, and Timmermans, S T A  2006 Assessing the sensitivity of wetland bird communities to hydrological change in the
Eastern Great Lakes basin  Wetlands 26  605-611

Timmermans, S T A , Craigic, G E and Jones,  K  2004 Marsh Monitoring Program Areas of Concern Summary Reports 1995 - 2002 Bird
Studies Canada, Port Rowan, Ontario

Weeber, R C , and Vallianatos, M  (cds ) 2000 The Marsh Monitoring Program 1995 - 1999 Monitoring Great Lakes Wetlands and Their
Amphibian Inhabitants Bird Studies Canada, in cooperation with Environment Canada and the U S  Environmental Protection Agency
104                                                                           Great Lakes Coastal Wetlands Monitoring Plan

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Appendix 6-1.

MMP Amphibian Survey Protocol

The protocol for the amphibian surveys is largely based upon earlier work conducted in Wisconsin and Ontario and is
now being used throughout North America Read these instructions carefully and listen to the amphibian training tape
prior to doing your first survey

Amphibians in the Great Lakes Basin

The amphibian surveys are limited to easily detected species (i e  frogs and toads)  Male frogs and toads defend
territories and advertise their presence to females by singing  Each species has a distinctive call  that can be used in
species identification  In the  Great Lakes basin, there are 13 species of frogs and toads, several of which are widely
distributed  Depending on your location, you will encounter some of the following species
Common Name
American toad
Fowler's toad
Gray (tetraploid) treefrog
Cope's (diploid) gray treefrog
Spring peeper
Chorus frog
Blanchard's cricket frog
Wood frog
Northern leopard frog
Pickerel frog
Green frog
Mink frog
Bullfrog
Species Code
AMTO
FOTO
GRTR
CGTR
SPPE
CHFR
BCFR
WOFR
NLFR
PIFR
GRFR
MIFR
BULL
Latin Name
Bufo amencanus
Bufo woodhousei fowlen
Hyla versicolor
Hyla chrysoscelis
Pseudacns cruafer
P. tnsenata & P. maculata
Acns crepitans blanchardi
Rana sylvatica
Rana pip/ens
Rana pa/usfns
Rana c/am/fans me/anota
Rana sepfenfriona/is
Rano cafesbeiona
American Toad
The American toad is common throughout the Great Lakes basin in a variety of habitats  Call description  Long,
drawn-out, high-pitched, musical trill lasting up to 30 seconds

Fowler's Toad
While similar to the American toad in appearance, the Fowler's toad is restricted to sandy shoreline areas along Lake
Erie and Lake Michigan  Call Description  High-pitched, nasal, nonmusical trill ("wh-a-a-a-ah") lasting two to five
seconds

Gray Treefrog
The gray treefrog is  most easily distinguished from Cope's gray  treefrog by its call  The gray  treefrog occurs
throughout the Great Lakes basin and is more common than Cope's gray treefrog  Call Description  Musical, slow,
bird-like trill, lasting up to 30 seconds The call is slower and more musical than Cope's gray treefrog

Cope's Gray Treefrog
Although identical in appearance to the gray treefrog, Cope's gray treefrog is found only in the southern and western
regions of the basin  in the  United States  In  Ontario,  it is found only in  the Lake-of-the-Woods area   Call
Description  Faster, shorter, and higher-pitched trill than the gray treefrog's call, lasting up to 30 seconds

Spring Peeper
www glc org/wetlands
105

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The spring peeper is common and widespread throughout the basin  Call Description Advertisement call is a short,
loud,  high-pitched peep, repeated every second  The peeper's aggressive call is a short, trill "purrreeek," usually
rising in pitch at the end This call can be confused with the call of the chorus Frog, but can be distinguished as it is
more  of a trill

Chorus Frog
Due to their similar calls, the boreal chorus frog (Pseudacns maculata) and the western chorus frog (P msenata) will be
considered as a single species (chorus frog)  for the purposes of this study  Chorus frogs are commonly found
throughout the basin except for parts of northern lakes Huron, Michigan and Superior Call Description Short,
ascending trill-like "cr-r-e-e-e," resembling a thumb drawn along the teeth of a comb, repeated every couple of
seconds

BlanchartTs Cricket Frog
Blanchard's cricket frog is a highly localized species, found at the southwestern end of Lake Erie and the southern half
of Lake Michigan in the United States  In Canada,  it  is found only on Pelee Island in Lake Erie  Call Description- A
fast, repeated clicking,  like two pebbles  being struck together, increasing in speed then  decreasing,  over a few
seconds.

Wood Frog
The wood frog is common throughout the basin but can only be heard for a short time very early in spring calling in
forested swamps  Call Description Short, subtle chuckle,  like ducks quacking in the distance

Northern Leopard Frog
The leopard frog is common and widespread throughout the basin Call Description  Short,  rattling "snore" followed
by guttural chuckling ("chuck-chuck-chuck"), sounding like  wet hands rubbing a balloon  Although shorter in length,
its snore can be mistaken for that of a pickerel frog

Pickerel Frog
Similar  to  leopard frogs  in  appearance,  pickerel frogs have a smaller range around  the Great Lakes  Though
widespread throughout most of the basin, they are quite localized, and are often found in association with cold-water
streams Call Description  Low-pitched, drawn-out snore, increasing in loudness over a couple of seconds
 106                                                               Great Lakes Coastal Wetlands Monitoring Plan

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Green Frog
The green frog is common throughout the Great Lakes Call Description  The advertisement and territorial call is a
short, throaty "gunk" or "bomk," like the pluck of a loose banjo string, usually given as a single note  It may also give
several stuttering, guttural calls, "ru-u-u-ng," followed by a single staccato "gunk1" The stuttering call can be mistaken
for that of a bullfrog, although the green frog's call is shorter and not as rhythmic nor as deep

Mink Frog
The mink frog is primarily a northern species found around Lake Superior and the northern parts of lakes Michigan
and Huron, although its range does extend east to the St  Lawrence River Call Description Rapid, muffled "cut-cut-
cut," like a hammer striking wood, the chorus sounds like horses' hooves running over cobblestone

Bullfrog
The bullfrog is common and widespread in the basin except for northern Lake Superior  Call Description.  Deep bass,
two syllable "rrr-uum" or "jug-o-rum "
When Should I Do My Amphibian Surveys?

In order to be assured that frogs and toads are actually going to be calling, you need to pay close attention to weather
conditions and choose an appropriate time to survey If it is too cold, dry or windy, calling activity will be greatly
suppressed  Collection  of  the  data  under the proper conditions  is quite  important to ensure a  measure  of
standardization between surveys

       •   Each route is to be surveyed for calling amphibians three times during the spring and early summer
          Surveys should be conducted at least 15 days apart  By conducting three surveys, you should be able to
          detect all species  present The first survey is timed to monitor species that breed very early (e g chorus
          frog, wood frog and spring peeper) The second survey should coincide with "optimum" breeding for
          spring peeper, American toad, northern leopard frog, pickerel frog and, where they occur, Fowler's toad
          and Blanchard's cricket frog  The third survey will monitor gray treefrog, Cope's gray treefrog, mink frog,
          green frog and bullfrog (see charts below)

       •   An amphibian's body temperature changes as the temperature of its environment (e g air and water)
          changes Frogs and toads always require an air temperature greater than S°C (41°F) to elicit calling
          activity  "Late-season" frogs (e g bullfrogs and green frogs) don't begin their calling activity until the
          temperature is even higher Therefore, night-time air temperature should be greater than S°C
          (41°F) for the first survey, 10°C (SO°F) for the second survey and 17°C (63°F) for the third
          survey.

       •   Each station is  surveyed For 3 minutes. Routes are to be surveyed in their entirety, in the same
          station sequence, starting at about the same time, on all visits

       •   In southern and central regions of the Great Lakes basin, surveys can begin one half hour after
          sunset and end before midnight. Because of "longer days" during the summer months in the northern
          regions of the basin, surveys that begin one half hour after sunset could continue beyond midnight1
          Therefore, in northern regions, surveys can start at 2200 h (10 p.m.) m the summer even if it isn't
          dark  then

       •   Because dry air or strong wind dries out an amphibian's skin, frogs will stay under water in such
          conditions, thereby reducing calling activity  Strong winds also interfere with our ability to hear  Do your
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         survey only when the wind strength is Code 0, 1, 2, or 3 on the Beaufort Scale  If the wind is
         strong enough to raise dust or loose paper and move small tree branches, then you should wait for a calmer
         evening Ideally, there should be no wind

      •  You may conduct your survey before or after the dates given below if weather conditions are right  These
         dates are provided only as a guideline  Remember, air temperature and lack of wind are the
         most important factors to pay attention to when deciding when to conduct your surveys

Amphibian Survey Guidelines

South
(south of the 43rd parallel)
Central
(between the 43rd and 47th parallels)
North
(north of the 47th parallel)
Survey # 1
1 - 15 April
15 -30 April
1 - 15 May
Survey #2
1-15 May
15 -30 May
1-15 June
Survey #3
1 - 15 June
15 -30 June
1 -15 July
              General Breeding Periods for Frogs and Toads in the Great Lakes Basin.
MARCH
^

APRIL
CHORUS FR<
^ WOOD FRO
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NORTHERN LEOI
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^ MINK FROG
^ GREEN FROG
^ BULLFROG:

JUNE

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JULY


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          •HtfoeccairgdatwfCT Moo island ontao
 108
Great Lakes Coastal Wetlands Monitoring Plan

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Other Considerations

      •   Nights that are damp, foggy or have light rain Tailing are ideal, especially Tor your first
          survey  Avoid persistent or heavy rainfall  Early in the season, it is best to survey shortly after the first or
          second warm spring shower Later, choose a night with a warm temperature  Watch the local news or
          weather channel, or phone your local airport weather office to get weather forecasts  Ideally, you should
          be prepared to go out on any evening that is suitable  Plan ahead'

      •   Early m the season, weather conditions are unpredictable Nights can cool off quickly to temperatures
          below optimal for calling frogs  If conditions deteriorate during your survey, cancel the survey and repeat
          it on the next suitable night

      •   "Explosive" breeders!  Amphibians take their cues from the environment as to when to start migrating
          to breeding sites and when to initiate breeding  Some species (e.g wood frog) are known as "explosive"
          breeders  In these species, most males are apt to migrate all on one night to breeding ponds as soon as
          conditions are right  Males may call for only a few nights and most breeding is done in one evening  It is
          best to survey on one of the first few suitable evenings during the allotted time, since frog and toad activity
          begins as soon as the weather permits  If you delay too long, you could miss some species

Conducting the Survey

Getting Started
Check to make sure that you have your Amphibian Data Form, a small "mouth size" flashlight  or headlamp (to keep
your hands free), a pen or pencil, watch or timer (preferably one with an alarm), clipboard  (if desired), and mosquito
repellent  If you have already filled in Habitat Description Forms, bring along a copy to help you relocate your
stations. A thermometer,  compass,  spare pens, and this instruction booklet are other useful  items  It's best to be
prepared1  See the Spring Refresher on the inside back cover  for a checklist

Since you  will be conducting these surveys in the dark, you may wish to bring an assistant  along  for company and  to
share in the experience! This person can help you find  the stations, document some kinds of information (such  as
weather conditions) and hold your flashlight  However, your assistant is not to help you identify or tally amphibians'
More than one observer  will bias the results

Before you start the survey, fill in the information required in the top section of the Amphibian Data Form Please use
the format specified in  the sample form as it will minimize data entry errors  Each  survey route should be given a
unique route name that describes the marsh name (or names if a series of marshes are being sampled) and the location
of the route in the marsh (e g  "Maumee Marsh- South") If the marsh does not already have a name, choose one  If
you are conducting marsh bird surveys on the same route, the route name should be consistent for both Stations
should be  labelled in order of sequential coverage from A to H  Record the observer name, date, visit  number (#1,2
or 3), and the time you start your route Please use the 24-hour (military) clock  For example, 5 00 a m is written as
0500 h, whereas 5 00 p m is written as 1700 h (i e  12 plus 5)  Similarly, 6 57 p m is written as  1857 h

All weather information can be easily  estimated Determine the wind speed according to  the  Beaufort scale  Cloud
cover is estimated as covering so many lOths of the sky (e g  if it's completely starry with no cloud cover, 0/10 of the
sky will be covered) If possible,  carry a thermometer and record the air temperature at the start of your survey
Because this program spans two different countries with two different scales of measure, be sure to specify whether
you are recording the temperature in degrees Fahrenheit or Celsius  If you don't have a thermometer, record the air
temperature from a reliable source (e g the  local weather station or an outdoor thermometer at your home)  Use the
Remarks section to record any assistants' names, problems encountered (e g "I heard a call I couldn't identify"), and
www glc org/wetlonds                                                                                    109

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other comments you might think useful (e g  "Lots of activity tonight1")  Use additional pages if necessary All
remarks and comments are welcome

Please Till in all of the blanks at the top of the form - without this information your data may be unusable'
Counting Amphibian Calls
Before going into the field, it is important that you are familiar with the calls of all species of amphibians found in the
Great Lakes basin, not just the ones normally found m your region  The distribution of some amphibians is still not
very well known The Amphibian Training Tape describes how to identify each species' call and instructs you on how
to measure the intensity and number of individuals calling using the call level code and abundance count

Call Level Code  and Abundance Count
The amphibian  survey uses three Call Level Codes to categorize the  intensity of calling activity  For two of these
categories, we also ask that you count or estimate the number of calling amphibians — this is an abundance count
Use the following Call  Level Codes for each species detected during your surveys (see sample Amphibian Data
Form)

      1    Individuals can be counted; calls not simultaneous. Assign this number when individual males
          can be counted, and when the calls of individuals of the same species do not start at the same time For
          the abundance count, record the number of individual frogs of each species calling beside the code

      2   Calls distinguishable; some simultaneous calling  This code is assigned when there are a few
          males of the same species calling simultaneously However, with a little work, individual males can still
          be distinguished In this case, an exact  abundance count can't be tallied, but you are able to reliably
          estimate the number of individuals present, based on their locations and/or by the differences in their
           voices

      3    Full chorus; calls continuous and overlapping This value is assigned when you encounter a full
          chorus  When there are so many males of one species calling that all the calls sound like they are
          overlapping and continuous (like a blur of sound), then you are hearing a full chorus1 There are too many
          overlapping calls to allow for any reasonable count or estimate Hence, there is no need to record an
           abundance count

Mapping and Recording Amphibians
Amphibian surveyors use their best judgement to distinguish whether each species detected is calling from inside the
100 meter (110 yard) sample area, from outside the sample area, or from both inside and outside  We recognize that
the 100 meter  (110 yard) radius sample area cannot be accurately determined at night  Don't worry about not
knowing exactly where the station boundary is — make the best estimate you can

A  separate Amphibian Data Form  is used for each visit to your route  The data form contains an  outline of the
semicircular sample area, with a midpoint arc drawn inside for your reference Record what direction you are facing
in the small box on the map of the sample area (e g "23° NNE," or just "NNE" if you can't take a compass bearing)

At each station, once you have everything ready, wait quietly for at least one minute to allow the frogs to start calling
again after being disturbed by your presence  After this initial  settle-down period,  set your timer, and survey for
three minutes Record on the map all species heard calling within the semicircle in front of you
110                                                              Great Lakes Coastal Wetlands Monitoring Plan

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Using the appropriate four-letter  species code, map the relative position  of each  individual  or chorus on  the
Amphibian Data Form (see the sample data form)  Under each species code, record the call level code  For codes 1
and 2, also record the number of individuals that you count or estimate are calling, using a dash to separate the two
measures of abundance (e  g  "NLFR/2-7" indicates a Call Level  Code of 2 and that you heard seven different frogs
calling)  Recall that you do not need to record an abundance count beside Code 3 since  this code means that there are
too many individuals calling to accurately estimate numbers Using the table to the left of the station diagram on the
data form, enter a checkmark in the In column if a species is calling from inside the station boundary If a species is
calling from outside the station boundary, check the Out column If a species is calling from inside  and outside the
station boundary, check both In and Out columns for that species  Be sure to record the time you finish your route (in
24-hour clock) after you last station is surveyed

The remainder of the Summary Sheet is devoted to your amphibian data from each of the three visits   For each station
and visit, study your mapped observations and determine the highest Call Level  Code for each  species  Enter  this
code beside the species name in the column labelled CC. Next, add up all the individuals counted (inside + outside) for
each species and enter this information  into the adjacent column labelled Count For example, if you heard two
groups of wood frogs (1-1  and 2-8), you  would enter a code of 2 and a count of 9  Don't forget, if you enter a Code
3 then there is  no count to record since there are too many to  count  If a species was only calling from inside the
station boundary, or if a species was calling from inside and outside the station boundary, check the In_column  If a
species was only calling from outside the boundary, leave the In column empty

You'll find it very useful to tick off the mapped observations on your Amphibian Data Forms as you transfer them to
your Route Summary Sheet  This helps ensure that you haven't counted the same observation twice or forgotten to
transcribe a record  Since we  will be key-punching your data directly  from your  Route Summary Sheet, it is
important that you double-check to be sure that your sheets are complete and correct'
www glc org/wetlonds                                                                                     111

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-------
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114
                                   Great Lakes Coastal Wetlands Monitoring Plan

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Summarizing Amphibian Data

Transcribe your data from the Amphibian Data Form to the Amphibian Route Summary Sheet as soon as possible
after completing your survey Don't let this additional paperwork wait too long, it is best done while everything is
fresh in your mind

The sample Route Summary Sheet shows how the data from the sample data form  would be recorded Please study
both of these sample sheets Call us if you have any questions'

One Route Summary Sheet is used to summarize the information from all three visits to your route  First, fill in the
top part of the sheet with your name and address  Each survey  route should be given a unique route name that
describes the marsh name (or names if a series of marshes are being sampled) and the location of the route in the
marsh  (e g  "Maumee  Marsh-South" versus  "Maumee  Marsh-North")   Your amphibian  route  name should  be
consistent with that of your bird survey, if you have conducted  one on the same route Record the nearest town to
your route (pick one that's on a road map so  that we will be able to locate it) and county  Fill in the year and the
number of stations on your route

For each visit, record the date it was conducted, the time you started and finished your route, wind scale number,
your estimate of cloud cover and air temperature  Fill  in the circle below the  station letter of each station you
surveyed during that visit, even if you did not observe any frogs or toads If this circle is not filled in, the scanner will
not read the data in that station's column
www glc org/wetlonds                                                                                   115

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                       Chapter 7
        Bird Community Indicators
                      Chapter Authors
                 Greg P. Grabas, Environment Canada
                  Tara L Crewe, Bird Studies Canada
              Steven T. A. Timmermans, Bird Studies Canada
116
Great Lakes Coastal Wetlands Monitoring Plan

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Introduction

A high proportion of the Great Lakes basin's wildlife species inhabit wetlands during part of their life cycle, and many
species at risk that occur in the basin are associated with wetlands Being directly associated with the Great Lakes
hydrological influences, lacustrine or coastal wetlands are among the most important wetlands that occur within the
Great Lakes basin. Numerous bird species federally listed as threatened or endangered in  the United  States or of
conservation  concern  in Ontario  are associated with wetlands (Mitsch and Gosselmk 1993, Austen et al  1994)
Although much is known about many landbird species of the Great Lakes, the ecology of most marsh-dependent birds
has received much less attention and relatively little is known about rails and other secretive marsh birds (Gibbs et al
1992, Conway 199S, Melvm and Gibbs 1996)  As a group, marsh birds  have experienced population  declines,
believed  partly to  result from historical and current habitat loss and degradation   As  recently as the  1990s, the
magnitude and geographic extent of these declines was still  unclear (Gibbs et al  1992, Conway 1995, Melvm and
Gibbs 1996)  The uncertainty surrounding the nature of these  declines was primarily due to  lack of extensive,
scientifically rigorous, consistently collected data

As a result of the  loss and degradation of marsh  habitats throughout the Great Lakes  basin,  there was increasing
concern  among citizens  and  scientists  that continued stresses,  including  urban,  industrial  and  agricultural
development were negatively  affecting marsh-dependent wildlife populations and  other marsh functions such as water
quality improvement  Consequently,  Bird  Studies  Canada  (BSC),  in  partnership with  Environment Canada,
developed the Marsh Monitoring  Program (MMP) in Ontario in  1994. With substantial financial  support  from the
United States Environmental Protection Agency's  Great Lakes  National  Program Office  and  the Great Lakes
Protection Fund, the MMP was launched bi-nationally throughout  the Great Lakes basin in 1995 and has continued to
operate annually

The importance of marsh  bird communities  in the Great Lakes basin was further recognized by State of the Lakes
Ecosystem Conference (SOLEC) in 1998, when a team of experts and the public identified and began to develop a
suite of ecological  indicators  (See Executive Summary)  SOLEC  indicators were designed to incorporate  all major
aquatic and  terrestrial elements of the Great Lakes basin important  to human health and society  One of these
elements was coastal wetlands and characteristics  of the marsh bird community were adopted as SOLEC  indicator
#4507

    Species composition and  relative abundance of wetland-dependent birds, based on evening sunej-s using protocol developed for
    the Marsh Monitoring Program (MMP) or modification of the MMP protocol

In 2002, the Great Lakes Coastal Wetlands  Consortium (Consortium) began to develop  indicators based  on the
condition of Great Lakes coastal wetland bird communities, relying on MMP data and protocol to design the studies
The MMP had an established methodology, a network of skilled volunteer surveyors, and several years of supporting
data The next five years  were dedicated to collecting data and developing and testing indicators to report on the
condition of marsh bird communities in  coastal wetlands across the Great Lakes basin

During this time there was  also considerable interest  in assessing and  monitoring the condition  of marsh bird
communities at a regional scale within the  Great Lakes basin, particularly within  Great Lakes Areas of Concern
(AOCs)  For example, when  Beneficial Use Impairment # 3 (i e , degraded fish and wildlife populations) has been
listed as part of a Remedial Action Plan (RAP), wetland bird communities have often been a key factor in the listings
for Canadian AOCs (e.g., Bay of Qumte, Hamilton  Harbour), United States AOCs  (e g , Clinton River, Cuyahoga
River), and  all bmational  AOCs (Timmermans et al 2004; Archer et al  2006, Environment Canada -  Canadian
Wildlife            Service          [herein           EC-CWS)           2007,          also            see
http //www.i|c org/rel/boards/annex2/aoc php/bui  targets php^ Another example where birds have been used
as part of regional monitoring efforts is the Durham Region Coastal Wetland Monitoring  Project (DRCWMP), which
www glc org/wetlonds                                                                                     11 7

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focused on 1S wetlands located just east of Toronto  For the past six years, marsh bird data have been collected for
the DRCWMP through a combination of paid staff and citizen volunteers participating in the MMP  These data have
been reported  in technical documents and fact books in an effort  to further Great Lakes coastal wetland science,
promote regional coastal wetland conservation, and influence environmental policy in Durham Region (Environment
Canada and the Central Lake Ontario Conservation Authority [herein EC and  CLOCA] 2004a, EC and CLOCA
2004b)

Bird Studies Canada personnel who coordinate the MMP have been primary investigators for the Consortium, and
have worked with EC partners and others to develop wetland bird monitoring protocols and associated wetland bird
community indicators specific to Great Lakes coastal wetland  ecological  indicator (El) biomonitonng  These
investigators  established monitoring protocols that adequately met all  the  required criteria established by the
Consortium,  and also developed associated wetland bird Indices of Biotic Integrity (IBIs)  derived from the resulting
monitoring data  During  the five-year Consortium  data collection and indicator development process, the main
collaborators for the bird  community indicators  were BSC and EC-CWS (See EC and CLOCA 2004a, Crewe and
Timmermans 2005)

During this same period, a similar research project,  the Great Lakes Environmental  Indicators  (GLEI) project
fhttp-//glei nrri umn edu/default/). concurrently examined use of another method to report on Great Lakes coastal
wetland bird communities with data collected based on the GLEI's bird survey protocols  (Howe et al  2007) In the
final year of the Consortium work plan, there were efforts to collaborate with the GLEI scientists to develop an
integrated bird community condition indicator, recognizing  the  inherent differences  in both bird survey  field
protocols and data analytical procedures used between Consortium and GLEI investigators Consortium wetland bird
indicator  investigators worked with  GLEI  investigators to examine  the possibility  of  integrating  data analytical
procedures being developed by  GLEI for estimating coastal wetland condition based on birds, called the Index of
Ecological Condition  (ICI)  Unfortunately,  time was  short  and the benefits of a  more  timely  and thorough
collaboration were not fully realized  The methods and  indicators  presented  in this section are  a result of the
Consortium indicator  development process  We  hope to continue our collaboration with GLEI investigator to
evaluate the potential of integrating ICI data analytical methods for future Great Lakes coastal wetland bird indicator
calculations


Materials and Methods

Protocols

Field
MMP  data collection is coordinated through Bird Studies Canada  To participate, surveyors must have received and
be familiar with  the current MMP training kit and  instructions The package contains training and broadcast audio
tapes or compact discs, station location identification tags, an instruction manual,  and data  sheets available from

                                           Bird Studies Canada
                                       Marsh Monitoring Program
                                               115 Front Street
                                                PO  Box 160
                                    Port Rowan, Ontario  NOE 1 MO Canada
                                          Toll free  1 888 448 2473
                                              Fax 519 586 3532
                                         Email aqsurvey(5)bsc-eoc org
 ] 18                                                               Greot Lakes Coastal Wetlands Monitoring Plan

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   The full protocols are available in Appendix 7-1  A summary of the methodology is below

   MMP bird surveys use a fixed-distance point count method to collect data on bird species  Fixed-distance point
   counts entail  a  surveyor standing at a focal point (or survey point)  and counting birds seen or  heard in  a
   standardized period of time in a defined survey area  MMP marsh bird survey protocol consists of a semi-circular
   survey station with a 100-meter survey radius  Survey stations are separated by at least 300 meters to ensure
   independence between stations (i e , reduce double counting of birds during a visit due to bird movement)

   A route consists of one to eight survey stations established within a site, a site can contain a  number of routes
   Routes are established based on the following protocol
             O   Routes occur only in marsh habitat (i e , greater than 50 percent non-woody emergent plants
                 interspersed with shallow open water),
             O   Route survey stations are established along the shoreline (e g , marsh edge) and/or within the
                 interior of a marsh,
             O   Survey stations are selected by program coordinators following a scientifically robust strati fied-
                 random sample station selection scheme adapted from Meyer et al  (2006) to best represent the
                 wetland and to maximize detectability of birds in the survey area,
             O   Edge survey station direction is positioned to maximize marsh area surveyed, interior survey station
                 direction is selected via random bearing selection,
             O   Each station is visited at least two times during the breeding season (i e , peak vocalization time)
                 and,
             O   Landmarks are established so that distances within the survey area can be accurately estimated

   Marsh bird surveys are standardized  to occur during a specific survey window (two visits timed appropriately for
   latitudinal region), time of day  (for any given route, either sunrise to end at er before 9 00 hrs EST, or 18 00 hrs
   EST to sunset), duration (15 minutes per station), and during specific weather conditions (good visibility, warm
   temperatures  [greater than 16 °C], no precipitation,  and gentle wind  [less than 19 kilometers per hour])  In
   addition, at least  10 days must fall between survey visits

   Finally, bird surveys consist of five minutes of passive visual and auditory observation, followed by five minutes of
   song broadcasting (for secretive species [Virginia Rail, Sora, Least Bittern, Common Moorhen / American Coot,
   and Pied-billed Grebe]) and visual and auditory observation to elicit responses and increase species detectability,
   followed  by five minutes of post-broadcast passive visual and auditory  observation (see Appendix  7-2 for more
   information about these standardized MMP marsh bird survey protocols)

Birds Studies Canada also coordinates MMP recruitment sessions during late winter  and early spring, and  training
sessions during spring  Special training sessions will be given in regions with abundant  or specialized (i e  ,
implementation of Consortium work plan) interest

Worksheets

Standardized data collection forms are available from BSC in the MMP package
www glc org/wetlands                                                                                       119

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Table 7-1 Checklists
Required         MMP training and instruction package
                  Material to stake survey stations (e.g., electrical conduit)
                  Audio broadcast unit (e.g., cassette, CD, MP3 player) calibrated to 80-90dB at a
                  distance of one meter
                  Binoculars
                  Watch or timer
                  Standardized data collection forms
                  Pens/pencils
Recommended   GPS and/or compass
                  Canoe, boat or chest waders/boots depending on survey route
                  Clipboard
                  Insect Repellent
                  Thermometer
                  Spare batteries
                  Flashlight


Site Selection

Sites should be selected in reference to protocols outlined in Chapter I - Statistical Design - and represent a range of
the four mam coastal wetland hydrogeomorphic types (See Albert et al  200S) present in the area of interest  Sites
should preferably support more than 10 hectares of emergent marsh (see Limitations below)

Using multiple years of MMP data (1995-2003) from 64 sites within  Ecoregion 8 of the Great Lakes basin, a power
analysis was performed for a paired t-test (power=0 8, alpha=0 OS) The power analysis helped estimate the number
of sites required to detect a statistically significant difference within an area of interest (i e ,  Great Lakes basin, lake
basin, State, Region, etc ) between two sampling times Sampling times could be any time frame (e g ,  annual,
biennial,  for SOLEC years) Sampling frequency will likely depend on available resources, but with a paired design
the sampling must be done at the same sites throughout each sampling period  The  power analysis predicted the
number of sites required to detect a statistical difference within the  area of interest with various mean  differences
between paired sites (Table 7-2)

Table 7-2. The approximate number of sites required to detect a difference in IBIs within an area of interest
(e.g.. Great Lakes basin, lake basin. State, Region) IBIs are expressed out of 100 with higher scores
indicating marsh bird communities in better condition.

              Number of sites required       Mean difference in IBI between paired sites
              10                             20
              15                             17
              20                             13
              30                             10
              40                             8
              80                             4

For example, if an agency wanted to detect a mean difference of 20 IBI points in a suite of sites sampled in a particular
region, at least 10 sampling sites (wetlands) are recommended  For a regional coastal wetland project such as the
DRCWMP,  that samples  IS sites, a mean difference of 17 IBI points  could be detected regionally among sampling
periods
120                                                             Great Lakes Coastal Wetlands Monitoring Plan

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Interpretation of Results
Using marsh bird data collected through the MMP, a suite of marsh bird indicator guilds was combined to create a
Great Lakes coastal wetland marsh bird community IBI Methods for development were based on a combination of
metric suitability,  data treatment  and calculation techniques used in Crewe and Timmermans (2005) and EC and
CLOCA (2004)  Several bird guilds (Figure 7-1) were evaluated for their response to wetland disturbance  The
recommended IBI incorporates guilds  that represent disturbance-sensitive marsh-nesting birds  and general marsh
users (Table 7-3)

Table 7-3. A description of metric codes used in the marsh bird IBI.

Metric Code     Description
aNAF            Mean relative abundance (i.e,  proportion) of Non-Anal Foragers for the  survey
                 route
aMNO           Mean relative abundance (i e., proportion) of Marsh  Nesting Obligates for the
                 survey route
rAMNO          Mean species richness of Area-sensitive Marsh Nesting Obligates for the  survey
                 route
Avian Groups and Response Variables

Surveyed birds, or Marsh Users, are categorized into one of two guilds based on marsh use identified from published
literature and expert opinion (Brown and Dmsmore 1986, Naugle et al  2001, Riffell et al  2001, Poole and Gill
[ongoing], Figure 7-1)  Marsh Nesting Birds include birds that nest within marsh  habitat (eg , meadow marsh,
emergent vegetation or hemi-marsh habitat)  This guild was further divided based on species' nesting dependency on
this habitat Marsh Nesting Obligates include bird species that depend  exclusively on emergent or hemi-marsh habitat
for nesting Marsh Nesting Obligates are divided into Area and Non-Area Sensitive species Area Sensitive species are
those species that are known to prefer larger wetland areas, and less likely to be found nesting in smaller wetland
sites, whereas Non-Area Sensitive species are found in similar frequencies among all  marsh sizes and therefore tend
not to be area sensitive in nest site selection Marsh Nesting Generalists include birds that primarily nest within marsh
habitat but can also nest elsewhere Marsh Foragers comprise the second guild, and are divided into Water, Aerial,
and Non-Aerial Foragers based upon species-specific foraging behavior
www glc org/wetlonds                                                                                 121

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1
Marsh Nesting |
Bird J
1
Marsh 1
User J
i

i i i
Marsh Nesting Marsh Nesting Water
Obligate J Generalist J Forager

Area |
"" Sensitive J
Emergent
Nesting

_ Non-Area j
Sensitive J
Emergent
Nesting

1
Marsh 1
Foraging Bird]
1
1
1 Aerial
Forager
t j

i
Non-Aerial
Forager

Figure 7-1. Illustration of marsh user categories for bird species based on marsh use

Each bird  observation was summarized as either a  mapped observation or an aerial forager  Mapped observations
include birds that contacted the vegetation or water during the point count inside the survey radius  Aerial foragers
include birds  actively  foraging overhead inside  the survey radius and no higher than 100 meters  The maximum
number of individuals for each species guild was calculated for each survey station Because point counts provide only
a crude estimate of individual numbers due to differing detection probabilities among days, habitats, weather, etc ,
station counts were divided by total abundance at a  station to obtain a percent of total (relative) abundance for each
guild (Ralph et al  1995)  For analysis, mean values of abundance and species richness across survey stations in a
route/wetland were used for each site

Once data are summarized as a mean per site, the IBI is calculated as follows

Step 1  Standardize the relative abundance and species richness metric scores to values out of 10  (Higher scores out
of 10 indicate better marsh bird community attribute)

        Metric Code     Calculation
        aNAF             If aNAF>76.2%, then the metric automatically scores a 10
                          If aNAF<76.2%, then multiply the percentage by 0.13

        aMNO           If aMNO>33 5%, then the metric automatically scores a 10
                          If aMNO<33.5%, then multiply the percentage by 0 30

        rAMNO           If rAMNO>0.57, then the metric automatically scores a 10
                          If rAMNO<0.57, then multiply the percentage by 17 5

Step 2  Combine the standardized metrics and calculate an IBI out of 100

For the site, add the standardized metrics and multiply the sum by 3 33

Example   For Point Pelee Marsh #2 in Lake Erie in 2001 the mean marsh bird community attributes were aNA =
77 8%, aMNO = 18 9%, rAMNO = 0 42
122
Great Lakes Coastal Wetlands Monitoring Plan

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According to Step 1 above
aNAF = 77 8% which is greater than 76 2% so the standardized metric is 10
aMNO = 18 9% which is less than 33 5%, therefore multiply 18  9 by 0 30 = 5 7
rAMNO = 0 42, which is less than 0 57, therefore multiply 0 42 by 17 5 = 7 4

According to Step 2 above
IBI = (10+S 7 + 74)   3 33
   = 770 (out of 100)
www glc org/wetlands                                                                                   123

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Table 7-4 Coastal wetland marsh bird IBIs (out of 100) for a subset of sites sampled in Ecoregion 8 by MMP surveyors from 1995-2003. Higher scores
indicate marsh bird communities in better biotic condition
 Wetland Name
 Canard River Mouth Marsh
 Algonac Wetland
 Big Creek Marsh
 Black Creek Area Wetland
 Bouvier Bay Wetland
 Cedar Point National Wildlife Refuge Wetland
 Grand River Mouth Wetlands
 Hillman Marsh
 Long Point Wetland 1
 Long Point Wetland 2
 Long Point Wetland 3
 Long Point Wetland 4
 Long Point Wetland 5
 Mentor Marsh
 Metzger Marsh
 Monroe City Area Wetland
 Ottawa National Wildlife Refuge Wetland
 Ottawa Wildlife Refuge Wetland
 Point Pelee Marsh 2
 Rondeau Provincial Park Wetland 1
 Tremblay Beach Marsh
 Colhngwood Shores Wetland 4
 Wye Marsh
 Illinois Beach State Park Wetland #1
 Muskegon River Wetland
 Suamico River Area Wetland
 White River Wetland
 Belleville Marsh 2
 Big Island Marsh
 Blessington Creek Marsh 2
 Braddock Bay Wetland
 Buck Pond
 Carrs Marsh (Peters Rock Marsh)
 Cootes Paradise  1
Lake
Detroit R.
Erie
Erie
Erie
Erie
Erie
Erie
Erie
Ene
Erie
Erie
Erie
Erie
Ene
Erie
Erie
Erie
Ene
Erie
Erie
Ene
Huron
Huron
Michigan
Michigan
Michigan
Michigan
Ontano
Ontano
Ontario
Ontario
Ontano
Ontario
Ontario
1995
11.4
447

932


699

95.2
371








69.6
835


83.0

43.0
931

333

619

64 1

36.5
1996
154



29.8
78.3
589

91 5
698
459

597
238
21.7
23.8


89.0
78.4


93.4

54.8


36.1
54.5


96.0
320
476
1997
9.3







970
79.7
575

741
352




82.3
909


856

510
821
68.6
382
77.0


98.1
551
42.0
1998
41.5







874
87.2
63.4

61 5
301




846
91 1


61 5
26.3
58.9
883


756


842
651
56.5
1999
179






287
600
67.8
533

41 1
246
78.5

34.4
56.0
83.4
640

31 4
64.3
31.7
585
778


473

884
646
650
47.4
2000


31.2


23.8

38.8
40.9

56.4

735



5B.9
62.5
85.1
61 4
47.2
33.3
89.3
33.3
40.7
778


498

848
587
667
53.4
2001


188


159

42.2
81.2

22.9

65.7



39.3
422
77 Q
436

228
88.3

470
636


469


61.9
66.7
31.2
2002


21.3




47.2
721
84.7
53 1
470
67.3



52.1


48.4


87.1


472


627

41 7
603
667
360
2003


39.9




545
400
48.4







63.5

527


54.6

673
76.9


453


546

36.8

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 Corbett Creek Mouth Marsh
 Cranberry Marsh
 Duffins Creek Lakeshore Marsh
 East Bay Wetland
 Frenchman's Bay Marsh
 Hay Bay Marsh 7
 HucyksBay 1
 Number River Marshes
 Hydro Marsh
 Irondequoit Bay Wetland
 Little Cataraqui Creek Complex
 Lynde Creek Marsh
 Oshawa Second Marsh
 Parrott Bay Wetland 2
 Port Darlington Marsh
 Rattray Marsh
 RBG- Hendrie Valley
 Robinson Cove Marsh
 Round Pond
 Sawgum Creek Marsh 1
 Sawguin Creek Marsh 7
 Snake Creek Marsh
 Sodus Bay Wetland
 South Bay Marsh 1
 Tuscarora Bay Wetland
 Van Wagners Marsh
 Westside Beach Marsh
 Lake St. Clair Marshes
 Ruscom Shores Marsh
Ontario
Ontario
Ontario
Ontario
Ontario
Ontario
Ontario
Ontario
Ontario
Ontano
Ontario
Ontario
Ontario
Ontano
Ontario
Ontano
Ontario
Ontario
Ontario
Ontario
Ontario
Ontano
Ontario
Ontario
Ontano
Ontario
Ontano
St Clair
St. Clair

37.9
432

230


144
325



894


443
281

60.0
66.7
57.6



289

134
890
31 5


47.2
481
636


21 0
302
59.9
42.3

90.6


41.8
500

57.4


44.7
52.5

333
38.0
34.5
945
301


21 6

7.8


95

41.6


73.3


47.2
503

44.3


54.5


30.0
31.9
244
943
398


339

30 4 27.9


20.8

41.7 57.2
179

87.0 60 7


54 3 46.9
35 4 27 4

81.2 543








79.2 66 7
32.8 35.9
41.4
64.4


18.9
480
770

172
63.3 62.8 57.6
45.0 78 9
495
62 5 54.8 50 7
538
458

30.6 22 4 38.3
50.3
546 46.1 867




292


54 4 29 9 48.2
708
32 0 30.9 48 3

854
27.1

24.7


23.3

42.6
380
474
619

38.8

31 7
333
530






29.9
55.4

179
www glc org/wetlands
                                                                                      125

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Data Handling and Storage
Data sheets should be returned to Bird Studies Canada as directed in the training and instruction package by July 31"
or the survey year  Once the data are entered into the BSC database and checked by BSC personnel, the data can be
used in support of the Consortium implementation plan (e g , data transferred to Consortium database, metrics/IBI
calculations completed)


Limitations

Geographic

The IBI  developed for the Consortium was developed using sites in the Great Lakes basin within Ecoregion 8 (i e ,
Southern lakes Huron and Michigan, all of lakes Ontario, Erie, St Clair and connecting channels) Therefore, this IBI
should only be used to report on sites within this geographic area

Site Size

Environment Canada (2007) suggests that  IBIs  incorporating a  guild  approach as  recommended in  this  document
might not provide accurate measures of marsh bird community  condition in small sites (<10 hectares of emergent
marsh)  IBI estimates from small sites should be interpreted with caution

Water Levels

Craigie et al  (2003), DesGranges et al  (200S), Steen et al  (2006), and Meyer et al  (2006b) describe how Great
Lakes water levels can influence attributes of coastal wetland marsh bird communities  Great Lakes water levels
during the breeding season might influence  the IBI recommended in this document  Crewe and Timmermans (200S)
considered these potential hydrologic influences and examined their marsh bird IBIs during both low and high water
periods  The metrics used to develop the  marsh bird  IBI in  this  chapter  responded  significantly (p<0 20) to the
amount of disturbance within one kilometer of a coastal wetland during at  least three of four high water level years
(1995-1998), and when scores were averaged  across both high water level period and low water level periods
Although the strength of metric response to disturbance is more limited during low-water levels, we believe that the
marsh bird IBI described here is appropriate for both higher and lower Great Lakes  water levels because the patterns
of metric response,  albeit weaker, are similar during both low water level  and high water level periods  Additional
analysis  is recommended to  improve understanding of the effect  that different hydrologic conditions have on the
coastal wetland bird community IBI

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References

Albert, D A , Wilcox, D A , Ingram, J W , and Thompson, T A  accepted 2005  Hydrogcomorphic classification for Great Lakes coastal
wetlands  Journal of Great Lakes Research

Archer, R W , S T A Timmcrmans, and C L Robinson  Monitoring and Assessing Marsh habitats in Great Lakes Areas of Concern, Final
Project Report  Bird Studies Canada, Port Rowan, Ontario 302 pp

Austen, M J W , M D  Cadman, and R D James 1994 Ontario Birds at Risk  Status and Conservation Needs  Federation of Ontario
Naturalists and Long Point Bird Observatory 165 pp

Brown, M andJJ  Dinsmorc 1986 Implications of marsh si/c and isolation for marsh bird management  Journal of Wildlife Management SO
392-397

Conway,  CJ  199S  Virginia Rail (Rallus limicola) In The Birds of North America No  173 (A  PoolcandF  Gill, cds) The Academy of
Natural Sciences, Philadelphia, and The American Ornithologists' Union, Washington, DC 20 pp

Craigic, G E , S T A Timmcrmans, and J W Ingram  2003 Interactions Between Marsh Bird Population Indices and Great Lakes Water
Levels  A Case Study of Lake Ontario Hydrology  February 2003  Bird Studies Canada and Environment Canada  Port Rowan, Ontario 40
PP

Crewe, T L  and S T A  Timmcrmans, 2005 Assessing Biological Integrity of Great Lakes Coastal Wetlands Using Marsh Bird and Amphibian
Communities  March 2005 Bird Studies Canada, Port Rowan, Ontario  89 pp

DcsGrangcs, J  -L , J Ingram, B Drolct,  C Savage, J  Morm, and D Borcard  2005  Wetland bird response to water level changes in the Lake
Ontario - St  Lawrence River hydrosystcm  Final report to the International Joint Commission in support of the International Lake Ontario —
St Lawrence River Water Regulation Review Study  Canadian Wildlife Service, Quebec and Ontario Regions Environment Canada
Unpublished report xiv + '32pp (including 4 enclosures and 14 appendices)

Environment Canada and Central Lake Ontario Conservation Authority  2004a Durham Region Coastal Wetland Monitoring Project Year 2
Technical Report  Downsvicw, ON Environmental Conservation Branch — Ontario Region  177pp + appendices

Environment Canada and Central Lake Ontario Conservation Authority  2004b  Baseline Conditions of Durham Region Coastal Wetlands
Preliminary Findings 2002- 2003  Downsvicw, ON Environmental Conservation Branch - Ontario Region   May 2004  36 pp

Environment Canada - Canada Wildlife Service 2007  Bay of Qumte Area of Concern  Coastal Wetland Status and Remedial Action Plan
Dchsting Target Recommendations June 2007 Toronto, Ontario Environmental Conservation Branch - Ontario Region 95 pp

Gibbs J P , Reid, F A and S M  Mclvm  1992  Least Bittern (Ixobrychus cxilis) In The Birds of North America, No  17 (A PooleandF Gill,
cds )  The Academy of Natural Sciences,  Philadelphia, and The American Ornithologists' Union, Washington, D C  12pp

Howe, R W ,  R  R Regal, J M  Hanowski, G J  Nicmi, N P Dan/, C R Smith  2007  A new approach to the development of ecological
indicators for coastal wetlands of the Laurcntian Great Lakes Journal of Great Lakes Research  In review

Mclvm SM  andJP Gibbs  1996 Sora (Porana Carolina) In The Birds of North America, No  250 (A  PooleandF Gill, cds ) The
Academy of Natural Sciences, Philadelphia, and The American Ornithologists' Union, Washington,  D C  19pp

Meyer, S W , J W Ingram and G P Grabas 2006a  The Marsh Monitoring Program Evaluating Marsh Bird Survey Protocol Modifications to
Assess Lake Ontario Coastal Wetlands at a Site-level Technical Report Series 465 Canadian Wildlife Service, Ontario Region, Ontario 25pp

Meyer, S,J Ingram, and K Holmes 2006b Chapters  Vulnerability of Marsh Birds in Great Lakes Coastal Wetlands to Climate-Induced
Hydrological Change In L Mortsch, J Ingram, A Hcbb, and S  Doka (cds ), Great Lakes Coastal Wetland Communities  Vulnerability to
Climate Change and Response to Adaptation Strategics, Environment Canada and the Department of Fisheries and Oceans, Toronto, Ontario,
pp  79-100

Mitsch, WJ andJG Gosselmk  1993  Wetlands Van Nostrand Remhold, New York

Naugle, D E ,  R R Johnson, M E  Estey, and K F Higgms 2001 A landscape approach to conserving wetland bird habitat in the prairie
pothole region of eastern South Dakota  Wetlands 21   1-17
 www glc org/wetlands                                                                                                   127

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Poolc, A and F Gill (eds )  Ongoing  The Birds of North America The Academy of Natural Sciences, Philadelphia, PA, and The American
Ornithologists' Union, Washington, D C

Ralph, CJ  , JR  Saucr, and S Orocgc (cds )  1995 Monitoring bird populations by point count Gen Tech  Rep PSW-GTR-149 Albany,
CA  Pacific Southwest Research Station,  Forest Semce, U S  Department of Agriculture

RilTcll, S K , B E  Kcas, andTM Burton  2001 Area and habitat relationships of birds in Great Lakes coastal wet meadow Wetlands 21 492-
S07

StatSoft, Inc 200S STATISTICA (data analysis software system), version 7  1  www.statsnlt.rom

Stccn D A , J P Gibbs, and S T  A Timmcrmans  2006  Assessing the sensitivity of wetland bird communities to hydrologic change in the
eastern Great Lakes basin Wetlands 26  (2) 605-611

Timmermans, S T A , G  E  CraigicandK  Jones  2004- Marsh Monitoring Program Areas Of Concern Summary Reports 1995 - 2002 Bird
Studies Canada, Port Rowan, Ontario
128                                                                           Great Lakes Coastal Wetlands Monitoring Plan

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Appendix 7-1. Members of each guild used in the IBI. This list was developed
from bird species identified during MMP surveys from 1995-2005.
 Guild      CODE
 Non-aerial foragers
           AMCR
           AMGO
           AMRE
           AMRO
           AMWO
           ATSP
           BAOR
           BAWW
           BBCU
           BCCH
           BGGN
           BHCO
           BLCK
           BLJA
           BOBO
           BRBL
           BRTH
           BTNW
           BWWA
           CARW
           CAWA
           CCSP
           CEDW
           CHSP
           CMWA
           COGR
           CORA
           COSN
           COYE
           CSWA
           DOWO
           DUNL
           EABL
           EAME
           EATO
           FISP
           GRSP
           GRYE
           HAWO
           HETH
           HOFI
           HOWR
           INBU
           KILL
           LCSP
Common Name

American Crow
American Goldfinch
American Redstart
American Robin
American Woodcock
American Tree Sparrow
Baltimore Oriole
Black-and-white Warbler
Black-billed Cuckoo
Black-capped Chickadee
Blue-gray Gnatcatcher
Brown-headed Cowbird
Unknown Blackbird
Blue Jay
Bobolink
Brewer's Blackbird
Brown Thrasher
Black-throated Green Warbler
Blue-winged Warbler
Carolina Wren
Canada Warbler
Clay-colored Sparrow
Cedar Waxwing
Chipping Sparrow
Cape May Warbler
Common Crackle
Common Raven
Common Snipe
Common Yellowthroat
Chestnut-sided Warbler
Downy Woodpecker
Dunlin
Eastern Bluebird
Eastern Meadowlark
Eastern Towhee
Field Sparrow
Grasshopper Sparrow
Greater Yellowlegs
Hairy Woodpecker
Hermit Thrush
House Finch
House Wren
Indigo Bunting
Killdeer
Le Conte's Sparrow
Genus species

Con/us brachyrhynchos
Carduelis tnstis
Sefophaga ruhcitta
Turdus migratonus
Sco/opax minor
Sp/ze/to orborea
Icterus ga/bu/a
Mniofi/fo vana
Coccyzus erythropthalmus
Parus atncopillus
Po/iopWa caeru/ea
Molothrus afer

Cyanoc/fta cnsfafa
Dohchonyx oryzivorus
Euphagus cyanocepha/us
Tbxostoma rufum
Dendroica wrens
Verm;vora pinus
Thryothorus ludovicianus
Wilsonia canadensis
Spizella pallida
Bombyalla cedrorum
Spizella passer/no
Dendroica fignna
Quiscalus quiscula
Corvus corax
Ga///nago ga///nago
Geothlypis tnchas
Dendroica pensylvanica
Picoides pubescens
Calidns alpina
Sialia sialis
Sturnella magno
Pipi/o erythrophthalmus
Spizella pusilla
Ammodramus savannarum
Tonga melanoleuca
Picoides villosus
Catharus guttatus
Carpodacus mexicanus
Troglodytes aedon
Passerine cyanea
Charadnus vociferus
Ammodramus leconten
www glc org/wetlands
                                                                                      129

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           LESA         Least Sandpiper
           LEYE         Lesser Yellowlegs
           LISP         Lincoln's Sparrow
           LOWA       Louisiana Waterihrush
           MAWA       Magnolia Warbler
           MAWR       Marsh Wren
           MODO       Mourning Dove
           MOWA       Mourning Warbler
           NAWA       Nashville Warbler
           NOCA       Northern Cardinal
           NOFL        Northern Flicker
           NOMO       Northern Mockingbird
           NOPA       Northern Parula
           NOWA       Northern Waterthrush
           NSTS         Nelson's Sharp-tailed Sparrow
           OROR       Orchard Oriole
           OVEN       Ovenbird
           PAWA       Palm Warbler
           PISI          Pine Siskin
           PIWA        Pine Warbler
           PIWO        Pileated Woodpecker
           PROW       Prothonotary Warbler
           PUFI         Purple Finch
           RBGR        Rose-breasted Grosbeak
           RBNU        Red-breasted Nuthatch
           RBWO       Red-bellied Woodpecker
           RCKI         Ruby-crowned Kinglet
           REVI         Red-eyed Vireo
           RHWO       Red-headed Woodpecker
           RNPH        Ring-necked Pheasant
           RTHU        Ruby-throated Hummingbird
           RUBL        Rusty Blackbird
           RUGR       Ruffed Grouse
           RUTU        Ruddy Turnstone
           RWBL        Red-winged Blackbird
           SAVS        Savannah Sparrow
           SBDO       Short-billed Dowitcher
           SCTA        Scarlet Tanager
           SEPL         Semipalmated Plover
           SEWR        Sedge Wren
           SORA        Sora
           SOSA        Solitary Sandpiper
           SOSP        Song Sparrow
           SPAR        Unknown Sparrow
           SPSA        Spotted Sandpiper
           SWSP        Swamp Sparrow
           SWTH        Swainson's Thrush
           TEWA        Tennessee Warbler
           TUTI         Tufted Titmouse
           VEER        Veery
           VIRA        Virginia Rail
Cahdns minutilla
Tnnga flavipes
Melospiza hncolmi
Seiurus motaalla
Dendroica magnolia
Cistothorus palustns
Zenaida macroura
Oporomis Philadelphia
Vermivora ruficapilla
Cardmalis cardmatis
Colaptes aurafus
A/l/mus po/yg/o/fos
Parula amencana
Seiurus noveboracensis
Ammodramus nelsoni
Icterus spur/us
Seiurus aurocap/Hus
Dendroica palmarum
Carduelis pinus
Dendroica pinus
Dryocopus pileatus
Protonotana citrea
Carpodacus purpureus
Pheucticus ludovicianus
Sitta canadensis
Melanerpes carohnus
Regulus calendula
Vireo olivaceus
Melanerpes erythrocephalus
Phasianus colchicus
Archilochus colubns
Euphagus carohnus
Bonasa umbellus
Arenana interpres
Agelaius phoeniceus
Passercu/us sandwichens/s
L;mnodromus gnseus
Piranga olivacea
Charadnus semipalmatus
Cistothorus platensis
Porzana Carolina
Tnnga solitana
Melospiza melodia

Actitis maculana
Melospiza georgiana
Catharus ustulatus
Vermivora peregnna
Parus bicolor
Catharus fuscescens
Rallus limicola
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   Great Lakes Coastal Wetlands Monitoring Plan

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          WAVI
          WBNU
          WEVI
          WIPH
          WIWR
          WOTH
          WTSP
          YBCH
          YBCU
          YBSA
          YERA
          YHBL
          YTVI
          YWAR

 Marsh Nesting Obligate
          AMBI
          AMCO
          BLTE
          COMO
          COSN
          FOTE
          HOGR
          KIRA
          LEBI
          LIGU
          MAWR
          MOOT
          PBGR
          REDH
          RNDU
          RNGR
          SACR
          SORA
          SWSP
          TRU.S.
          VIRA
          YERA
          YHBL
Warbling Vireo
White-breasted Nuthatch
White-eyed Vireo
Wilson's Phalarope
Winter Wren
Wood Thrush
White-throated Sparrow
Yellow-breasted Chat
Yellow-billed Cuckoo
Yellow-bellied Sapsucker
Yellow Rail
Yellow-headed Blackbird
Yellow-throated Vireo
Yellow Warbler
American Bittern
American Coot
Black Tern
Common Moorhen
Common Snipe
Forster's Tern
Homed Grebe
King Rail
Least Bittern
Little Gull
Marsh Wren
Am Coot/C Moorhen
Pied-billed Grebe
Redhead
Ring-necked Duck
Red-necked Grebe
Sandhill Crane
Sora
Swamp Sparrow
Trumpeter Swan
Virginia Rail
Yellow Rail
Yellow-headed Blackbird
 Area-sensitive Marsh Nesting Obligate
           AMBI       American Bittern
           AMCO      American Coot
           BLTE        Black Tern
           FOTE       Forster's Tern
           KIRA        King Rail
           LEBI        Least Bittern
           REDH       Redhead
           RNGR       Red-necked Grebe
           SACR       Sandhill Crane
           YERA       Yellow Rail
Vireo gilvus
Sitta carolmensis
Vireo gnseus
Phalaropus tricolor
Troglodytes troglodytes
Hylocichla mustelina
Zonotnchia albicollis
Icteria wrens
Coccyzus amencanus
Sphyrapicus vanus
Co f urn/cops noveboracensis
Xanfhocepha/us xanfhocepho/us
Vireo flavifrons
Dendroica petechia
Botaurus lentiginosus
Fulica amencana
Chlidonias niger
Gallmula chloropus
Gallmago gallinago
Sterna forsteri
Podiceps auritus
Rallus elegans
Ixobrychus exihs
Larus minutus
Ostothorus palustns
Fulica amencana/Galinula chloropus
Podifymbus podiceps
Aythya amencana
Aythya collans
Podiceps gnsegena
Grus canadensis
Porzana Carolina
Melospiza georgiana
Cygnus buccinator
Rallus limicola
Cotumicops noveboracensis
Xanfhocepha/us xanfhocepha/us
                                Botaurus lentiginosus
                                Fulica amencana
                                Chlidonias niger
                                Sterna forsten
                                Rallus elegans
                                Ixobrychus exilis
                                Aythya amencana
                                Podiceps gnsegena
                                Grus canadensis
                                Cotumicops noveboracensis
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Appendix 7-2.  MMP Marsh Bird Survey Protocol

This marsh bird survey protocol has been designed to conform to North America-wide  marsh bird  monitoring
standards Please read these instructions carefully and listen to the Training CD prior to conducting your first survey

When Should I Do My Surveys?

       •  Each route is to be surveyed for marsh birds two times each year between May 20 and July 5  Surveys
          must be at least 10 days apart

       •  Surveys at a particular route may be conducted during the morning or the evening, but not both Once
          you begin morning or  evening surveys at a route, that route must always be surveyed during that time
          period for each subsequent survey visit annually  Morning surveys begin at or following sunrise  and end at
          or before 9 00 h (9 00 a m ) Evening surveys begin at or following 18 00 h (6 00 p m ) and must end at
          or before sunset  Routes are to be surveyed in their entirety, in the same station sequence during both
          visits, starting at about the same time of day

       •  Each station is surveyed for 1S minutes  Hence, a typical route of four stations will take you  no more than
          about 2 hours to survey, including the time that it takes you to travel  between stations

       •  Surveys should be undertaken m weather that is conducive to surveying birds good visibility, warm
          temperatures (at least  60°F or 16°C), no precipitation and little or no wind   If the weather should exceed
          these limitations during the survey, you should cancel the survey and  redo it later

       •  Strong wind not only suppresses bird calling activity, it interferes with your ability to hear Do your
          survey only when the wind strength is Code 0, 1, 2 or 3 on the Beaufort Scale  If the wind is strong
          enough to raise dust or loose paper and move small tree branches, then wait for a calmer morning or
          evening

       •  All but the lightest drizzle suppresses bird activity and interferes with your ability to hear, not to mention
          soaking you and your forms, and generally making you miserable1  We want you to find these surveys
          interesting and pleasant, not a burden  Pick a nice morning or evening'

Conducting the Survey

Getting Started

Check to make sure that you have your Marsh Bird Data Form, a  pen or pencil, watch or timer (preferably one with
an alarm), clipboard (if desired), portable CD player with speakers and fresh batteries, the marsh bird broadcast CD,
binoculars, and mosquito repellent  If you have already completed your Habitat Description  Forms,  you can bring
along a copy to help you relocate the stations and their sample areas A compass, thermometer, spare batteries, spare
pen or pencil, and this instruction booklet are other useful items  It's best to be prepared1  See the Spring Refresher
on the inside back cover for a checklist of survey items

You might want to bring an assistant along for company and to share in the experience   This person can help you find
the stations, hold your CD  player and speakers, and document information such as the weather conditions  Your
assistant may even be able to take over for you  in future years  However,  you must find, identify, and count all the
birds unaided More than one observer will bias the results

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Before starting the survey, fill  in the information  required in the top section of the Marsh Bird Data Form (see
example on page 14)   Each survey route should be given a unique route name that describes the marsh name (or
names if a series of marshes are being sampled) and the location of the route in the marsh (e g  "Maumee Marsh-
South"). If the marsh does not  already have a name, choose one   If you are conducting an amphibian survey on the
same route, the route name should be consistent for both   Stations should be labeled in sequential order of coverage
from A to H  Record  the observer name, date, and visit number (eg , #1, #2)

All weather information can be  easily estimated   Determine the wind speed according to the Beaufort Scale  Cloud
cover is estimated as covering so many lOths of the sky (e g  if it's sunny with no cloud cover, 0/10 of the sky will be
covered)  If possible, carry a thermometer and record the air temperature at the start of the survey   Because this
program spans two countries with two different scales of measure, be sure to specify whether you are recording the
temperature in degrees Fahrenheit or Celsius  If you don't have a thermometer, record the air temperature from a
reliable source (e g the local weather station or an outdoor thermometer at your  home)

If you have surveyed your route for more than one year, and the habitat characteristics within any of your stations has
changed in that time, please indicate this  on the Data Form. For example, the marsh area in Station D of your route is
partially dned-up in Survey Year Two, compared to its condition in Survey Year One  If you have questions about
station locations, please contact  Kathy Jones through the contact information provided in this manual

Use the Remarks section  to record the names of any assistants, notes on any other wildlife detected (e g  "2 Bullfrogs
calling"), problems encountered (e g "started to ram"),  and other  comments (e g "10 million mosquitoes, glad I
remembered my repellent1")  Use additional pages if necessary   All remarks and comments are welcome

Prior to surveying each  station, record the  survey start time    Please use the 24-hour ("military") clock   For
example, 5 00 a m is written as OS 00 h, whereas  5 00 p m is written as 17 00 h (i e  12 plus 5)  Similarly, 6 57
p m  would be written as 18 57 h. Also, please  note  the level of background noise present at each of your survey
stations Background  noise categories and codes  are provided on the reverse-side of the Station A  Data  Form  Do
your best to estimate the appropriate noise code

Please Pill in the data form completely - without this information we may not be able to use your data1

Marsh Bird Broadcast CD

Although several species of marsh birds are secretive, they  can often be  coaxed into responding to a recorded
broadcast of their call  In order to ensure data are collected for some important but secretive marsh birds, you have
been provided  with a broadcast CD that contains a S-mmute sequence of call recordings of the following species
Virginia Rail, Sora, Least Bittern, a combination of Common Moorhen/American Coot and Pied-billed Grebe   The
CD player that you use should broadcast loud enough to be heard well at a distance of 100 m (110 yards)   Many  of
the small,  low-cost players can produce enough volume, but the  speakers must also be capable  of attaining the
appropriate loudness   You should test  the  effective broadcast distance beforehand  Recruit a friend to help you
establish that you  can in fact hear the  calls at the appropriate  distance   If you can't,  you should upgrade your
equipment  In some jurisdictions, marsh bird call broadcast units (portable CD players and speakers) are available  to
borrow from  partnering organizations and  MMP  volunteer coordinators  Please contact Kathy Jones for further
information

Caution Please don't play the broadcast CD ant  more than  necessary   Repeated and excessive broadcasting can affect the natural
response and detectabihty of many marsh birds, and might deter them from their established territories

Marsh Bird Data Form
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The primary objective of this survey is to track observations of "focal" marsh bird species, those species that rely on
marsh habitats for one or more stages of their life cycles (see the Marsh Bird Data Form for a list of focal species)
However, "secondary" or non-focal species are also recorded through this protocol Focal and secondary marsh bird
species are tracked and recorded differently on the Marsh Bird Data Form  Focal bird species individuals are tracked
separately and individually throughout the entire  IS-minute survey Each observed focal species individual  is entered
as a separate record (row) in the main  data table of the  Data  Form  For  example, you hear two different  Sora
individuals calling at Station A  You then write "SORA" twice in two separate  rows under the "Focal Species" column
Throughout  the  15-mmute survey, you will  indicate  in which response penod(s) you saw or heard each of these
individuals See below for further information about recording observations during each of the response periods

Focal species are tracked at unlimited distances  For each focal species individual  tracked throughout the entire 15
minutes of the survey period, we ask that you estimate whether that individual occurs either within (distance category
T) or beyond (distance category '2') a 100-m semi-circular distance of where you are standing Distance category
codes are provided on the reverse-side of the Station A Data Form for your reference

Secondary  species are recorded only during the  final  10 minutes of the survey  Secondary  species are  recorded by
mapping species' locations within the survey station area on the Secondary Species Map, located on the Data Form
See below  for information on mapping bird observations  Unlike for focal marsh bird species, only secondary species
observed within  100 m of where you  are standing are recorded during this survey  The exceptions to  this are
secondary species that fly through the sample area (see "Fly-Throughs" section below)

The 15-mmute  MMP marsh bird survey consists of  a  S-mmute silent (passive)  listening  period, a S-minute call
playback period (using the marsh bird broadcast CD), and a final 5-minute  passive listening period, in that order
Press play on your CD player once you arrive at  your  sampling station  A double-tone will mark the start  of the 15-
mmute  survey  The first  5 minutes  of the  broadcast  CD features silence, during  which you  will  record  your
observations of focal species as part of the first (pre-broadcast) passive observation  period  The pre-broadcast passive
period is divided into two  sub-periods of 2 minutes and 3 minutes, respectively When recording observations,  treat
these two sub-periods independently  For example, if you observe a Pied-billed Grebe in your station at  Minute  1,
record it under  the "1" Passive (mm  1-2)" column on the Data  Form  If you observe that  same individual again  at
Minute  3,  record it again under the "1!1 Passive (mm  3-5)" column within the same  PBGR row  A single tone will
mark the beginning of the second (mm  3-5) time  interval of the 5-mmute pre-broadcast  passive period  Because
secondary species observations do not begin until the 5-minute pre-broadcast focal  species passive observation period
is completed, it. is important to remain still and quiet during the pre-broadcast passive period to minimize effects  of
your presence on activity of secondary species (or any species for that matter) Only focal species are recorded during
this entire first 5-mmute period

Following  completion of the 5-mmute pre-broadcast  passive period, the 5-mmute call broadcast period  will begin
with the call broadcast of the  Virginia Rail  The CD  is to be played at full  volume (or no more than  90 decibels,
measured 1 m in front of the speaker), held at chest height and aimed so that it broadcasts in front of you Each of the
five calls plays for 30 seconds, followed by  30 seconds of silence, thereby subdividing the 5-mmute call broadcast
period  into  five  1-minute  time intervals   Treat  each  1-minute time  interval independently  when  recording
observations  For example,  after having broadcast the Virginia Rail call, you hear an immediate response from a
nearby Virginia  Rail during  Minute 6 of the survey  Record your observation for this individual under the "VIRA
(mm 6)" column on the Data Form  Two minutes later, following the Least Bittern call broadcast, you hear the  same
Virginia Rail individual call again. Record your observation for this individual  (in the same VIRA row) again under the
"LEBI (mm  8)" column Record observations for all species seen and/or heard during the call broadcast period, not
just observations for those species whose calls are being broadcast Both focal and secondary species are recorded
during this period  Following the 30-second silent period after the Pied-billed Grebe call broadcast (the last species
call), a single tone will mark the end of the 5-mmule call broadcast period and the beginning of the 5-minute  post-
broadcast passive observation period
134                                                                Great Lakes Coastal Wetlands Monitoring Plan

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Because secretive marsh birds may take several minutes to respond to the call broadcasts, a second (post-broadcast) 5-
minute silent listening (passive) period has been deemed necessary to track these responses  During this period, you
will continue to track and record all  bird species observations  However, the post-broadcast passive period is  not
subdivided into sub-periods as are the previous two 5-mmute periods  During the post-broadcast passive period, for
focal species you will continue to record observations for each separate individual  If you see or hear any  focal species
individual any time during the five minute period, you check the box for that individual under the "2"d Pass  (mm  11 -
IS)" column   For new focal species individuals not  recorded during previous  observation  periods, assign each
individual to a new row on the table and remember to assign each individual a distance category code  For secondary
species, continue to record observations of individuals on the station map, then when the survey is completed count
the total number of individuals observed for each secondary  species in the table next to the station map  Both focal
and secondary species are recorded during this final S-mmute observation period A double-tone will mark the end of
the 1 S-mmute survey

Prior to the official start of the 1 S-mmute  marsh bird survey there  is an observation and recording period called the
"Flush Period"  This period allows surveyors to record observations  of focal species that fly away, or "flush", from the
station area upon the surveyor's arrival, and would otherwise not be counted during the formal survey period  For
example, herons frequently flush once humans approach them The Flush Period is a non-standardized period of time,
consisting of the time it takes you to  reach your survey station focal point until the point at which you begin your
formal timed IS-mmute survey at each station Each focal species individual flushing from approximately within a
100-m semi-circular  distance of your upcoming station focal point during that time is recorded separately in the mam
data table of the Data Form  (as is done for focal species during the  formal  1 S-mmute survey)  Secondary species are
not recorded during the Flush Period

Recording Bird Observations

Focal species individuals that are observed at an unlimited distance from the focal point are recorded in the main data
table of the Marsh Bird Data Form  Individuals  are recorded separately  in this table by creating a row for  each
individual using the species name or four-letter code and placing a  "^" or an "x" under each response period during
which that individual was detected

Secondary species, which are tracked only during  the  last 10 minutes  of the survey, are recorded initially by
"mapping" species'  locations within the survey  station area  on  the  Secondary  Species Map.  The  map  is  a
representation  of the semi-circular sample station area,  showing an outline of the 100-m distance from the focal
point As secondary species are only recorded within 100 m  of the  focal point, the  100-m arc on the map represents
an outer station boundary  for secondary species observation records  You can also use the station map to record
locations of focal species, especially in the case where multiple individuals of any given focal species are  detected  In
such  cases, it  might be helpful to track  each focal species individual by  labeling each individual with numeric
superscript identifiers (e g , VIRA1, VIRA2)  Record what direction you are facing in the small box on the map of
each sample area (e g  "23° NNE,"  or just "NNE" if you can't take a compass bearing)  Species locations within the
sample station area are mapped by writing the appropriate species codes in the corresponding locations on the map.
The four-letter codes for the species most likely to be encountered are provided on the Marsh Bird Route Summary
Sheet  You should familiarize yourself with these codes before your first survey  For secondary species, please count
the number of individuals  observed and recorded on  the map and record these numbers for each species on the
associated Secondary Species Count table  In the frenzy of surveying, it's difficult to be neat, but please try to write
legibly.  Your Data Forms will be proofed by us when we receive them, so we need to be able to read your writing'
Young of the year are not to be counted, even if independent  We are interested in adults only

Aerial foragers are birds seen  actively foraging in the air  within the survey station area, and not otherwise using the
station area Examples of aerial foragers include insect-eaters such as swallows and flycatchers, and fish-eaters such as
Common Tern Some aerial forager species, such as Black Tern, Green Heron and Belted Kingfisher are  focal species,
and as such, observations of these species are recorded  in the mam data table instead of the Aerial Forager  Box
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Actively foraging birds are usually seen flying slowly over the station, occasionally diving to the water's surface or
picking insects from the air, as opposed to birds simply flying through the area (see Fly-Throughs below) Record
each aerial forager species using the appropriate species code  within the  Aerial  Forager Box to the right of the
Secondary Species Map  Because there are often many aerial foragers (swallows in particular), it  helps if you tally
them separately and then produce a summary count at the end of the survey Both focal (e g ,  Black Tern) and
secondary (e g , Tree Swallow)  aerial  forager species are recorded  the same way  However, if  an  aerial forager
species individual lands within the survey station area, record it within the main data table on the  Marsh Bird Data
Form or map it within the Secondary Species Map, depending on whether that individual is a focal or secondary
species, respectively

Fly-Throughs are secondary species birds that fly through the survey station area without landing or foraging during
the  IS-mmute survey  Examples of Fly-Throughs include gulls, crows and  hawks  Simply list each Fly-Through
species within the Fly-Throughs Box to the right of the Secondary Species Map Information about  these species will
help determine simple presence/absence information for the birds occurring in the marsh complex

Be sure that  you record each individual bird in only one of the three categories — Focal Species  Response Period
table/Secondary Species Map observations, Aerial Foragers or Fly-Throughs  In descending order,  our priorities are
focal species birds actually breeding in or visiting the marsh survey station area (recorded in the mam data table of the
form), followed by secondary species birds actually breeding in or visiting the marsh survey station  area (recorded  in
the Secondary Species Map), Aerial Foragers, and then Fly-Throughs   Always choose the highest priority level1

One Marsh Bird Data Form is used for each survey station on your route Therefore, if your route contains 4- stations,
then you will require 8 Data Forms to complete two survey visits

Please try to ensure that there are no species identification errors   While  the Training CD will help you overcome
most identification problems, many calls are difficult to distinguish   Those of the Common Moorhen  and American
Coot can be particularly difficult  If you can't positively identify either species, then use the generic code "MOOT "

Please ensure that you do not double-count bird individuals between stations This is especially true for focal species
For  example, the  call of the American Bittern can travel great distances and could potentially be  heard at multiple
sampling stations  You would only record that American Bittern once as part of the observation data collected at one
of the stations where you heard its call  However, if one of your later stations ends up occurring closer to the calling
individual (thereby giving you a better estimate of its distance from the station focal point), record it  as part of that
station's data and draw a line through that individual's record on the earlier  station's data form

Birders like to coax birds into view by "pishing" or making a variety of other noises   Birds are not to be coaxed in any
way other than using the broadcast CD when you are completing your survey1  If you  have trouble identifying a bird,
you can take time between stations to identify it

The only two species for which you will not record birds of both sexes are Red-winged Blackbird and Yellow-headed
Blackbird  Record male blackbirds of both species only   Both species are polygamous (one male  forms pair bonds
with several different females) and experience has shown there are often too many females to track

Sample Survey

In order to help you understand how to map and record your observations, a sample survey has been provided  The
sample Marsh Bird Data Form demonstrates how the following examples would be  recorded and you should refer to
it as you read through the examples  given below   Now, sit back and imagine that you're approaching Station A on
your route
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Just before you arrive at Station A, you notice two Great Blue Herons fly up from the sample station area and out of
sight  Under the "Focal Species"  column of the Data Form's main data table, you write "GBHE" on two separate
rows, indicating that two individuals were delected  Within each row, you mark a checkmark under the column
"Flush Period"  As it appeared that each heron occurred within 100 m of your upcoming station focal point, you
assign each a distance category code of " 1"

Upon arriving at Station A, you fill in the information on the top of your Data Form  After taking a moment to listen
to the level of background noise, you decide to assign a Background Noise Category code of"l" for this station Ready
to begin, you record the station start time on your form and press "play" on your CD player to begin the IS-mmute
survey A double-tone from the CD player marks the beginning of the survey

As the S-mmute pre-broadcast passive period begins, you keep your eyes and ears open for focal  marsh bird species
You are quickly rewarded as a Pied-billed Grebe swims into view during Minute I of your survey You proceed to
write "PBGR" on anew line on the data table, and place a checkmark under the "1"  Passive (mm 1-2)" column As
this individual is less that 100 m from you, you assign it a distance category code of "1"

Soon after, you hear the tone from the CD to  mark the beginning of the 3-mmute subpenod of the S-mmute pre-
broadcast passive period Still seeing the same Pied-billed Grebe at Minute 3,  you place another checkmark within
that individual's row, this time under the "1"  Passive (mm  3-5)" column

At Minute 4 you hear a Sandhill Crane call in the distance  You write "SACR" on a new row, place a checkmark under
the column "1" Passive (mm  3-5)", and assign it a distance category code of "2" since it is quite distant

The  broadcasted call  of the  Virginia Rail marks  the  end  of the S-minute pre-broadcast passive period  and the
beginning of the 5-mmute  call broadcast period Following the Virginia Rail call broadcast, you  immediately hear a
response from a Virginia Rail only a few meters away from you  You write "VIRA" on a new row under the "Focal
Species" column, place a checkmark under the column "VIRA (mm 6)" and assign it a distance category code of "1"

The Pied-billed Grebe that you recorded earlier is still visible  You place a third checkmark within that  individual's
row under "VIRA (mm 6)"

Now that you are free to record  secondary species observations, you map two  Red-winged Blackbird males that are
calling within 50 m to your right by writing and encircling the four-letter species code (RWBL) for each in  their
approximate station locations within the station on the Secondary Species Map

You map a Swamp Sparrow (SWSP) calling about 40 m to your left

Following the  call  broadcast of the  Least Bittern at Minute 8,  you hear the  Virginia Rail  heard earlier call again
Within that individual's row on the data table, you mark a checkmark under the "LEBI (mm 8)" column

At Minute  9, you see  a pair of Common Yellowthroats to your right   The male calls, and then flies away, landing
somewhere in the  middle of the sample area  You map and tally the  pair (COYE) and note the male's change in
position on the Secondary Species Map

After the 30 seconds of silence following the final (Pied-billed Grebe) call broadcast, you hear a tone from the CD
player to mark the end of the 5-mmute broadcast period and the beginning of the 5-mmute post-broadcast passive
period

You notice a male Red-winged Blackbird singing to your left, near a group of 3 female Red-winged Blackbirds  You
map the male (RWBL) on your data form but you do not map the females
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Five young coots, accompanied by two  adults, emerge from  the vegetation   You record the two adults within
separate rows of the mam data table and place a checkmark under the "2nd Pass (mm  11 -15)" column for each After
estimating their distance to be within 100 m, you assign them each a distance category code of "1"  You then decide
to note in the Remarks section that the entire family group was seen

As you scan the sample area with your binoculars, you spot a Canada Goose sitting on a nest  You map the CAGO
using the symbol to indicate that a nest was located

Two Black Terns are seen circling over an area of the marsh to your left, beyond 100 meters of you  You record both
individuals on the mam data table, and place a checkmark under the "2n
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 Mapping Symbols for MMP Bird Surveys
                  Singing/calling bird.
                  Count as 1 on summary sheet.
SWSP,
          . _..._..  Simultaneous song/different individuals of same species
          [ RWBU  C()unt gs 2
                  Pair together (assumed mated).
                  If RWBL or YHBL, count 1 (male only).
                  All other species count as 2

                  Family group.
                  Count number of adults only
Observed, not singing/calling (e.g , feeding, loafing, landing, flushing)
Count as 1.
                 Change in position.
                 Nest location.
                             Note: For Red-winged Blackbirds (RWBL)
                             and Yellow-headed Blackbirds (YHBL),
                             count males only
   Example Data Sheet - Next Page
   www glc.org/wetlands
                                                          139

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              Marsh Monitoring Program - Marsh Bird Data Form
Observer-
Date (dd-mm-yr)
Beaufort Wind Scale No.
Has the habitat on your route changed from
I Cloud
previous
Route name
Visit No
Cover (1 Oths). I Air Temperature
years'
Yes No Not applicable
(C or F)

Remarks
                                   STATION A
Station Start Time:

Focal
Species























Background Noise Ci
ateaorv:


Response Period
Flush
Period






















1 st Passive
(mm 1-2)






















(mm 3-5)






















VIRA
(mm 6)






















SORA
(mm. 7)






















LEBI
(mm 8)






















MOOT
(mm 9)






















PBGR
(mm 10)






















2nd Pass
(mm 11-15)






















Distance
Category






















 Secondary
Species Tally
Aerial Foragers
                                  Secondary Species Map
Species




Tally




                                                                     Fly-Th roughs
                DOm
  100m

-------
                    Marsh Monitoring Program - Marsh Bird Data Form
                      Return by 31 July to Aquatic Surveys Officer, Bird Studies Canada, PO Box 160
                                   Port Rowan, Ontario, Canada, NOE 1MO
  ,   ^
     GTBH
          Mapping Symbols
                  Singing/calling bird.
                  Simultaneous song/different birds of the same species.
                  Pair together (assumed mated).
                  Family group seen. Include number of observed accompanying
                  adults only beside the symbol. Do not record number of young.
Observed but not calling or singing.  Bird may be simply feeding,
loafing, landing or flushing from the sample area.


Known change in position.
                                                            24-Hour Time
                                                         12-Hour

                                                         1:00 pm
                                                         2:00 pm
                                                         3:00 pm
                                                         4:00 pm
                                                         5:00 pm
                                                         6:00 pm
                                                         7:00 pm
                                                         8:00 pm
                                                         9:00 pm
                                                         10:00 pm
                                                         11:00 pm
                                                         12:00 am
     TRES
                  Nest
Focal Marsh Bird Species

American Bittern (AMBI)
American Coot (AMCO)
Belted Kingfisher (BEKI)
Black-crowned Night Heron (BCNH)
Black Rail (BLRA)
Black Tern (BLTE)
Common Moorhen (COMO)
Forster's Tem (FOTE)
Great Blue Heron (GBHE)
Great Egret (GREG)
Green Heron (GRHE)
King Rail (KIRA)
Least Bittern (LEBI)
Pied-billed Grebe (PBGR)
Sandhill Crane (SACR)
Sara (SORA)
Virginia Rail (VIRA)
Yellow Rail (YERA)
                              Category

                              No Noise

                              Faint Noise
                              Moderate Noise  Can't hear some birds
                                             beyond 100 m
                              Loud Noise
   Can't hear some birds
   beyond 50 m
                              24-Hour

                              13:00
                              14:00
                              15:00
                              16:00
                              17:00
                              18:00
                              19:00
                              20:00
                              21:00
                              22:00
                              23:00
                              24:00
Background Noise Categories

   Definition                 Code

                              0
                              1

                              2
                                             Distance Categories

                                Description                        Code

                                Within 100 m of focal point            1

                                Beyond 100 m of focal point          2
  www glc org/wetlonds
                                                                                          141

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                     Marsh Monitoring Program - Marsh Bird Data Form
Observer. Uv n Ant\er
Date (dd-mm-yr) JL 5 >- i - c t
Beaufort Wind Scale No i

>
ICtoud Cover (10ths)
Has the habitat on your route changed from previous years' Yes
/ J
STATION
Route name
M«. '—••A* r


Visit No • 1
'/ u
No
A
lAir Temperature (C or F). Z<
Not applicable -

^

J'C


Station Start Time: /9 . IS Background Noise Category: /
Focal
Species
t 
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                            Chapter 8

         Landscape-Based  Indicators


                           Chapter Authors
             Laura L. Bourgeau-Chavez. Michigan Tech Research Institute
         Ricardo D. Lopez, U.S. EPA - National Exposure Research Laboratory
              Anett Trebitz, U.S. EPA - Mid-Continent Ecology Division
 Thomas Hollenhorst, University of Minnesota Duluth - Natural Resources Research Institute
   George E. Host, University of Minnesota Duluth - Natural Resources Research Institute
         Brian Huberty, U.S. Fish and Wildlife Service - R-3 Ecological Services
                   Roger L. Gauthier, Great Lakes Commission
                    John Hummer, Great Lakes Commission
www.glc.org/wetlands
                                                                    143

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Introduction

The objectives of this chapter are to define the role of landscape data in wetland monitoring, assess landscape-scale
monitoring methods and identify an operational strategy for making recurring assessments of the extent, composition
and vigor of coastal wetland complexes at a synoptic scale The landscape metrics used are quantifiable measurements
of these wetland attributes, based on data that are spatially explicit and geographically referenced (i e., geospatial)  In
the context of coastal wetland assessment and management, there are several areas where landscape metrics are
useful, these are briefly presented in this introduction and described in  greater detail later in this chapter It is
important that landscape data be linked to field data for both validation and  scaling  Integration of landscape-scale
metrics with ground-level wetland functional assessments is  critical to managing these resources across the Great
Lakes coastal zone

A) Wetland Inventory. A comprehensive assessment of the location and extent of wetland area that exists over the
landscape is typically expressed in a geospatial context as a census of a particular time period (e g , one  year)  A
comprehensive wetland inventory provides a sampling "frame" from which particular sites can be selected for ground-
based assessment and monitoring It also can provide estimates of various types of wetlands and how they may change
over time  A wetland inventory that consists of maps and statistics can also provide a  reference to assist local, state,
tribal and federal  agencies in evaluating projects  for which they  have permitting and oversight responsibilities.  A
census of wetland identification from  ground-based surveys over  the entire Great Lakes coastal zone is impractical
and has never been attempted, instead,  aerial photography and satellite sensors have been used to generate wetland
inventories in the past

B) Wetland Condition:  Many measurements aimed at assessing wetlands conditions are obtained from ground-
based sampling (e  g water quality, biotic assemblages) and are described in other chapters of this report However,
some aspects  of wetland conditions can only be  assessed  using remote sensing For example,  changes in spectral
reflectivity that indicate vegetative stress  can only be  assessed synoptically using remote sensing  In addition, the
prevalence of some invasive or opportunistic  plant taxa can best be assessed comprehensively using remote sensing,
which also provides ideal  tools  for looking at spread over time  Recurring remote sensing assessments  can also
provide a means to monitor wetland loss, hydrologic alterations, changes to physical habitat condition and other types
of wetland change

C) Wetland Setting:  Natural aspects of the landscape in which wetlands exist (e g , hydrology, climate, surface
geology) significantly affect their physical and biotic  characteristics  Responses to anthropogenic activities  in the
landscape (e g , agriculture and  development) are a major cause of wetland loss and degradation  Anthropogenic
stressors are  frequently physically removed  from wetlands, with  influences exerted over relatively  large areas
Information on climate  (e g , temperature, precipitation), surface geology (e g , soils) and watershed characteristics
(flow direction, volume, duration) are often  available  as geospatial data themes  Landscape  data on anthropogenic
stressors are widely available and can be used to assess both the intensity and types of impacts and spatial variability
Adjacent land cover may also  be relevant to  wetland  conditions, as natural lands surrounding wetlands can buffer
their vulnerability to anthropogenic impacts

D) Wetland and landscape spatial configuration:  The spatial  configuration of coastal wetlands (i e , size, shape,
and mterspersion  within the larger landscape) can be important in regulating their function and conditions  Some
questions require  the consideration of wetlands as an interconnected suite rather than in isolation  For example,
wetlands collectively support biodiversity over large areas, a function that is dependent on wetlands'  connectivity and
diversity in size, type and composition  Landscape metrics that  lend  themselves to remote sensing include those
describing connectivity or spacing among wetlands, fragmentation or heterogeneity of land-cover  categories, and
patch size, patch shape,  and patch mterspersion.
 www glc org/wetlands                                                                                     135

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Data needed to compute these types of landscape metrics are either obtained directly from remote sensing (e g , land
use/land cover maps based on interpretation of aerial photographs or classification of satellite imagery), or assembled
via spatial  interpolation of  ground-based surveys (e g , census maps,  soil surveys,  bathymetry)  For individual
wetlands or over  a  small area, these data might be  collected by a specific group  using  limited resources  and
techniques On a broader scale, the cost, effort and technical expertise needed to collect, analyze, and maintain such
spatial datasets are typically beyond the  resources of individual organizations Consistent,  repeatable and broadly
applicable data sets are needed to facilitate assessment of wetland  conditions across the Great Lakes coastal zone
Even  if local-scale  assessments could be universally conducted across the region, a common  protocol for landscape
data would be needed to ensure that such data could be merged to create regional inventories and assess status and
trends  Reliance on  geospatial data and airborne/satellite imagery  obtained  and processed  by collaborating
government entities or commercial enterprises is often the only means for assessing  landscape changes across the
region This chapter summarizes the types of landscape data available from  such sources, the frequency with which
they are updated and reassessed, and the constraints on the type of landscape metrics that can be generated

The techniques  and information in this  chapter should be  used  in conjunction with the field-based indicators
documented elsewhere in this report to determine causal relationships that exist between the broader landscape-level
forcing functions,  such as those associated with  water/soil quality, habitat characteristics,  or wetland ecological
processes Broader landscape conditions include disturbance factors, which  may be particularly difficult to measure
and characterize  in field surveys for  numerous reasons. Remote sensing can provide a repeatable and comprehensive
view of broad spatial characteristics across the Great Lakes coastal zone
Existing Landscape Indicators
This section reviews existing landscape  indicators developed for monitoring wetland conditions across the region
Since these indicators rely on regularly updating landscape data, which all too often does not occur, comments are
provided on how monitoring shortfalls affect indicator reporting


SOLEC Indicators

The State-of-the-Lake Ecosystem  Conferences (SOLEC) report on the condition of the Great Lakes on a biennial
basis  Several SOLEC indicators (most recently summarized in  the 2005 report by Environment Canada and U S
EPA) are intended to address  landscape condition and trends  Although generally useful as  an  aggregation  of a
multitude of methods and results,  several of the SOLEC landscape indicators cannot  be consistently assessed, because
the necessary landscape datasets are lacking, incomplete, inconsistent or not updated frequently  enough at the basm-
wide scale  Several SOLEC landscape indicators have not advanced beyond the proposed stage due in part to a paucity
of suitable  data on adjacent land uses, the  extent and quality of nearshore  natural  land cover, and the quality and
protection  of special  lakeshore habitats (islands, cobble beaches, sand dunes  and  alvars) The Land Cover/Land
Conversion SOLEC indicator was not assessed in the most recent biennial assessment due to  lack of a consistent,
updated basin-wide dataset at a sufficient spatial resolution  The Wetland Area by Type indicator was assessed in the
2005 report, but  could not be  addressed in any  standardized way  The authors of that indicator report noted that
available inventories were static, outdated and  lacked accurate area information  They called for the development of
consistent,  improved, accessible and affordable remote sensing data to complete these assessments on a regular basis
The Extent of Hardened Shoreline indicator has not been reported on  since 2001, due largely  from a lack of updated
basin-wide  digital  shoreline detail since the early 1990s The report suggests a 10-year basin-wide cycle with five-year
assessments in areas where shoreline hardening  is of particular concern
136                                                               Great Lakes Coastal Wetlands Monitoring Plan

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GLEI Indicators

The Great Lakes Environmental Indicators Initiative (GLEI) was a comprehensive effort to develop indicators across a
range of biotic and landscape variables, with a particular focus on hydrogeomorphically defined coastal wetlands, as
well as high-energy shorelines and embayments (Niemi  et al  2007)  One of the important classes of landscape
indicators was the type and degree of land use/land cover (LULC) change, which is an indicator of changing human
demographics,  natural  resource  uses, agricultural technologies,  economic  priorities,  and land tenure systems
Different  land uses  impose different environmental  stresses on natural  plant  and animal communities,  with
consequent  implications for water quality,  climate, ecosystem goods and services, economic welfare, and human
health (Gutman et al 2004)

Both raw Landsat sensor data (1992 & 2001) and existing, Landsat-based, thematic data from various state and federal
sources were used to assemble and quantify LULC data for the U S  portion of the Great Lakes watershed  Because of
some incompatibilities among different temporal images of Landsat, a variety of adjustments were essential to achieve
consistent imagery between the  1992  and 2001  data (Wolter et al  2006)   Wolter et  al  (2006) found  that
approximately 2 5% of the U S Great Lakes watershed underwent LULC transitions, with a 33% increase in low-
intensity development, a 7% increase in road density, and a 2 3% decrease in mature forest area  New development
was concentrated in coastal areas — over one-third of wetland losses occurred within  10 km of the coast, with much
of that in the nearest kilometer

The GLEI landscape study also used multivanate analysis to synthesize a set of 86 spatially delineated variables into
five categories of anthropogenic stress  agriculture (21 variables), atmospheric deposition (11  variables), human
population (five variables), land cover (23 variables), and point source pollutants (26 variables, Danz et al  2007)
Products of this  work include a cumulative index of anthropogenic stress defined for 762 watershed-based  units
across the U S  side of the Great Lakes basin, and for subsequent higher resolution watershed delineations also across
the basin  These demonstrate the strong spatial patterning in landscape-scale stressors, these are currently being
related to variation in  fish, amphibian, bird, water  quality and other indicators to build  landscape-based stress-
response models Subsequent watershed delineations  have a higher resolution, with 3,591 watersheds covering the
U S side  of the Great Lakes Recently, an integrated U S /CA watershed delineation was completed for the basin,
describing 5,890 watersheds across the entire basin More details about the stressor summaries associated with  these
watersheds are provided in the "GLEI Stressor Gradient" section of this report

Landscape Metrics  as Indicators of Coastal Wetland Condition

Interconnected wetland patches function as a network (e g , within a watershed or migratory bird flyway), and have
the cumulative functional capability of all the individual wetlands A collection of wetlands in the landscape may be
particularly  important for providing a vital ecological  unit for some animals,  while other  animals may require a
mixture of wetland  and upland  areas for different  portions of  their life cycle or their daily activities (e g ,
reproduction, resting, and foraging)   The absence of such wetland complexes or integrated upland and wetland
conditions may completely interrupt or degrade the reproduction  rates, survival rates and  overall fitness of  some
plant and animal species  Fragmentation of the  landscape  may result in the isolation of coastal wetlands, with the
remnants  of the formerly larger interconnected wetland complexes being replaced by less heterogeneous landscapes
that are dominated by agriculture, urban or rural human habitations, or industrial land  Such conversions of wetland
to other land-cover types  may reduce the functional capability of coastal wetlands and also increase the likelihood that
remaining wetlands are further affected by new land-use types (Tiner et al , 2002) The capability of coastal wetlands
to continue to function and provide ecological benefits to the residents of the Great Lakes (e  g., improving and
maintaining clean water, providing critical habitat for plants and animals, and shoreline stabilization and protection) is
dependent upon their surrounding landscape
 www glc org/wetlands                                                                                    137

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         at.1
           u-w
           H-n
1 km of Shoreline
    Quantlta
•I
 1 km Of Shoreline
     QuantHe
                                                                                    (b)
Figure 8-1. Mean wetland connectivity, a measure of landscape fragmentation, in a one-kilometer coastal
region of the entire Great Lakes basin. Because these analyses use two differing land cover data sets,
results for (a) U.S. and (b] Canada may not be directly comparable (from Lopez et al., 2005).

Wetland interconnectivity (Figure 8-1) is one way of measuring the fragmentation of coastal wetlands in Great Lakes
coastal regions (Lopez et al.  2005). Figure  8-1 and figures 8-2 to 8-5 are based on U.S. NOAA C-CAP data land
cover (30m spatial resolution ETM+ Landsat based) and Canadian OMNR land cover (30m spatial resolution Landsat
TM-based).A standard and uniform method for measuring wetland interconnectivity in coastal regions (e.g., within
one km of the shoreline) is to determine the probability of a wetland area cell having a neighboring wetland, using a
"moving window" over a GIS data set (e.g., a 9 pixel x 9 pixel  area) to examine the boundaries between all pixel
pairs. Interconnectivity is measured as the number of boundaries  where both pixels are wetland, divided by the total
number of wetland boundaries (regardless of neighbor land-cover type), with high values being better connected than
low values.

The relative percentage of "perforated" wetlands (Figure 8-2) is another  measurement  of ecosystem  fragmentation
(Turner et al., 2001), and is also calculated by using a moving window across the GIS land-cover data set. When the
percent wetland in the window exceeds some threshold (60% in a 9 X 9 pixel square in this example), and is greater
than the window's mean wetland connectivity value,  the wetland cell in the center of the window is categorized as
perforated. The  number of  perforated wetland cells is then  divided by the total  land area  (i.e., excluding cells
classified as water) to derive the percentage of perforated wetland. Perforated wetland generally consists of a patch of
wetland with center upland areas, such as  would occur if small clearings were made within the  wetland, or if an area
of wetland  contained an interior upland region (Lopez et al.,  200S). Perforated wetlands may not provide suitable
interior habitat for some  wetland species, but may provide  suitable habitat  for plants and  animals that  require
fluctuating  wetland conditions and isolated upland  areas.  High  perforation values may be detrimental  for some
ecological functions and species but advantageous for others.
138
                                             Great Lakes Coastal Wetlands Monitoring Plan

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          •*«• • • «•>
                     1 Km Of Shoreline
                         QuantHe
                                                                              (b)
Figure 8-2. Percentage of perforated wetland, a measure of wetland connectivity, in a one-kilometer
coastal region of the Great Lakes basin. Because these analyses use two differing land cover data sets,
results for (a)  U.S. and (b) Canada may not be directly comparable (from Lopez et al., 2005).

Fragmentation of coastal wetlands may lead to increased interwetland distances as other land-use types develop in the
intervening spaces (e.g., farm land or human habitations). Mean distance to the closest like-type wetland (Figure 8-3)
can be used to describe proximity of similar wetland habitat (Lopez et al., 2002); for example, neighboring emergent
wetlands for waterfowl resting and foraging,  or  forest  wetlands for migratory song bird resting and foraging. The
mean distance from each wetland patch to its nearest neighboring wetland patch should be measured from one patch
edge to another patch edge, and may consist of multiple measures, such as the mean distance of three nearest patches
(Lopez et al., 2006).  This metric  is useful  in determining relative  wetland  habitat suitability at scales that are
ecologically meaningful for specific plants and animals; because these are taxa specific, the ecological endpoint(s) of
interest must be established in advance.
                 1 km of Shoreline
                     Quantlte
1 km of Shoreline
    Quantlte
                       (•)                                             (b)
Figure 8-3. Mean minimum distance to closest like-type wetland patch (i.e., emergent-to-emergent,
forested-to-forested, and scrub/shrub-to-scrub/shrub) within each hydrologic unit. Because these analyses
www.glc.org/wetlands
                                                                                                     139

-------
use two differing land-cover data sets, results for (a) U.S. and (b) Canada may not be directly comparable
(from Lopez et al., 2005).

The Shannon-Wiener index and Simpson's Index are two different ways of measuring the diversity and distribution -
and by proxy the interspersion - of land-cover types in the vicinity of Great  Lakes coastal wetlands. The Shannon-
Wiener Index (H) of land cover type diversity is calculated as:
where Pi = the proportion of land-cover type i.
Shannon-Wiener Index values increase  as the number of land-cover/  land-use types  within the reporting  unit
increases, with higher index values having more diverse land cover, often as the result of anthropogenic conversions
of the original land cover types.  Because higher Shannon-Wiener  diversity  in  coastal areas (Figure 8-4) does not
always indicate greater opportunities for species variety (i.e., land-cover diversity includes agriculture and urban),
Simpson's Index can be used to better describe  the distribution of the land  cover in a coastal region (Figure 8-5).
Simpson's Index is a quantitative measure  of the evenness of the distribution of  land-cover classes and  is most
sensitive to the presence of common land-cover types within a reporting unit.  Simpson's Index values range from 0 to
1, with  1  representing perfect evenness of all  land-cover types within a reporting unit. Simpson's Index (C) is
calculated as:
 c = i-   ;p<2
                      where Pi — the proportion of land-cover type i
|04-1*
I I * » •
 1 »-J 1
 J > J I
                     1 km of Shoreline
                         Quantlte
                      Lxid coon dh»*T
Figure 8-4. The Shannon-Wiener Index is one of several ways to measure the diversity of land-cover types
within a specific area of the landscape. The Shannon-Wiener values increase as the number of land-
cover/land-use types within the reporting unit increases. Because these analyses use differing land-cover
data sets, results for the U.S. and Canada are not directly comparable (from Lopez et al., 2005).
140
                                                      Great Lakes Coastal Wetlands Monitoring Plan

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        4
                    1km of Shoreline
                        Quantlto
                                    i    IM   in
!• U • • 11
I 4 11-(II
 • 11 •!•
 4.M-4.4J
I • 4? - «: j
1 km of Shoreline
    Quanta*
                                                                    
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Coastal  wetlands  in the inventory were classified and attributed based on a hierarchical hydrogeomorphic scheme
(detailed in Albert et al  2005)  Wetlands were first divided into three broad hydrogeomorphic types (lacustrine,
riverine, and barrier-protected), and then further subdivided based on physical features and shoreline processes  Each
wetland type is expected to have associated floral and fauna! communities and specific physical attributes related to
sediment type, wave energy, water quality and hydrology  The classification scheme addresses a longstanding interest
in organizing wetland information in order to better understand wetland processes and biologic composition (e.g ,
Herdendorf 1988, Bowes  1989,  Mine  1997, Keough et al   1999),  consistent  with a hydrogeomorphic (HGM)
framework proposed for describing wetlands over a broad range of geographic and geologic conditions (Smith et al
199S)

The  inventory  reports the name, coordinates,  spatial extent, hydrogeomorphic designation and area of coastal
wetlands  The inventory includes both a point and polygon coverage, with associated attributes (available as CIS
shapefiles at http //www glc org/wetlands)  The inventory provides a standard reference for the Great Lakes coastal
wetland  community,  a sampling  frame for  future  assessments and a temporal  snapshot  from which to estimate
wetland area by type

The inventory was built upon the most comprehensive coastal wetlands data available at the time  Although the final
product is seamlessly  integrated across datasets, it represents a mosaic of a number of different products that use
different mapping and protocol standards across a range of time periods The U  S  dataset was assembled from the
National Wetlands Inventory, Wisconsin Wetland  Inventory, Ohio Wetland Inventory, and U S Fish and Wildlife
Service  reports and hard copy maps describing coastal wetlands across the Great Lakes  basin (Herdendorf et al
1981)  The Canadian  dataset  was  built from  "The Ontario Great Lakes Coastal Wetland Atlas" (March 2003), with
spatial  extents  obtained  from the Ontario  Ministry  of Natural Resources (OMNR)  digital Evaluated  Wetlands
polygon  data  Data gaps were filled using air photo interpretation following National Biological Service guidelines
(Owens and Hop 1995) or hydrogeomorphically based digitization/delineation following guidelines described in the
Great Lake Commission's Great Lakes Coastal Wetlands Classification First Revision (July 2003)

The  Consortium  inventory attempted to include all known coastal wetlands of the Great  Lakes and represents the
most spatially complete and comprehensive bmational digital database for the basin Nevertheless, the inventory has
some shortcomings, including the omission  of  wetlands  where data were not available and  insufficiently resolved
classification of large,  multifaceted wetland complexes Many of the omissions and misclassifications reflect the nature
and age of the baseline data sets used, for example, the U S National Wetlands Inventory dates from the 1970s, and
existing inventories are known to be incomplete for the Canadian sides of Lake  Superior and Lake Huron (Ingram et
al 2004, Wei and Chow-Fraser 2006)  Other omissions arise due to designating U S  wetlands as coastal based on a
distance-from-lake rather than elevation-above-lake criteria (Moffett et al 2007)  If the wetlands inventory is to serve
as the sampling "frame" for future assessments in  the  Great Lakes, errors of omission or inadequate classification
would preclude some wetlands from consideration and would bias estimations of wetland area or condition by type
A secondary  inventory classification  attempts to address representation of large wetland  complexes, but a better
eventual solution  would be to subdivide these polygons into smaller units that appear as separate entities

Such issues are  to be expected with any large data-assembly project, and in no way detract from what the  inventory
has accomplished  However, they do highlight the need to make the database expandable and updatable in the future
Rather than being static, the  Consortium Inventory should capture the dynamic  nature of wetlands themselves and
our knowledge about them A mechanism for correcting omissions and misclassifications and expanding attribute data
based on new information acquired by researchers and managers needs to  be developed Wetland inventory efforts
conducted  by others (e g ,  Chow-Fraser 2002,  Wei and Chow-Fraser  2007, Moffett  et al  2007) should be
incorporated where appropriate  The addition of attributes describing ecological function or biological composition,
as well  as those describing geological origins, would serve a wider range of applications  We recommend that an
entity, mechanism and financial support to manage, update and host the database into the  future be identified  We
also recommend finding a way to serve the inventory to the public in some more accessible  formats in addition to the
current GIS shapefiles
 142                                                               Great Lakes Coastal Wetlands Monitoring Plan

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Wetlands and  Landscape Mapping Programs
Several completed or ongoing landscape mapping programs in the Great Lakes serve as sources of landscape data
These programs are described and compared in tabular Format below (Table 8-1)

Table 0-1. Listing of available landscape maps from histoncal and ongoing mapping programs.
Histoncal Wetland Map
U.S. National Wetlands
Inventory (NWI)
www fws.aov/nwi/
National Land Cover
Database (NLCD)
landcover usas.aov/natlland
cover oho
Coastal Change Assessment
Program (C-CAP)
www.csc noaa aov/crs/lca/c
Canadian Wetland Inventory
www.cwi-icth ca/
Minnesota CWAMMS
www pea state mn.us/water/
wetlands/cwamms.html
Wisconsin WWI
www.dnr.state wi.us/ora/wat
er/fho/wetlands/maDDina sht
m
Wisconsin - WISCLAND
dnr wi.aov/maDS/ais/datalan
dcover.html
Michigan Resource
Information System - Current
Use Inventory (MIRIS-CUI)
www.mcai state.mi.us/madl/
?rel=thext&action=thmname
&cid=5&cat=Land+Cover%2F
Use+MIRIS+1978
Resolutio
n
.01-lm
30m
30m
30m
.01-lm
.01-lm
30m
.01-lm
Agency
U.S.FWS
U S. EPA
NOAA
Environment
Canada
Minn DNR &
Pollution
Control
Agency
Wis. DNR
Wis. DNR
Mich. DNR
Era
1970s-
present
2001
2001
2000
2006-
present
1978-
present
1992
1978
Extent
U.S.
Nationwide
US.
Nationwide
U S. Coastal
Basins - Lower
48
Canada
Nationwide
Minnesota
Wisconsin
Wisconsin
Michigan
Base data
Aerial Photos
Landsat
Landsat
Landsat/Radars
at
Aenal Photos
and Satellites
Aenal Photos
Landsat
Aenal Photos
Spatial and Temporal  Monitoring Considerations

Comprehensive Inventories versus Sampling Approaches

Almost all field-based monitoring efforts implemented across large regions require a sample design that allows for
some level of statistical inference  Since the entire population cannot be sampled on the ground, the problem of
selecting "representative" samples to detect trends in the larger population arises, which raises several questions
      •  What is the true target population' (a seemingly obvious question that becomes less obvious as the
         population is defined —"what is a lake?" is a good example)
      •  What level of change should the program be able to detect' (e g  10% change in 10 years — what degree
         ("effect size") is biologically or ecologically relevant')
 www glc org/wetlonds
143

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       •  What is the desired power of the design (i.e. what is the probability of detecting a trend as large as the
          "effect size" when one occurs?)
       •  What is the appropriate balance of statistical power, alpha level, and effect size, and how many samples are
          required to achieve this?

Fortunately, landscape metrics derived from remotely sensed data permit "wall-to-wall"  coverage across  the entire
basin  population,  thus  providing  a basis for identifying target sample  populations  for field-based  monitoring.
Landscape metrics derived from categorized imagery can be calculated across a range of spatial  scales or summary
units, from fine-scale watershed delineations to eight-digit hydrologic unit codes (HUCS). This provides a means of
integrating landscape data with other types of monitoring data. In addition, analysis of temporal sequences of images
provides a whole-basin view of landscape change, making this an important covariate dataset for accounting for trends
in biotic data.  The comprehensive inventories currently  available have  moderate-to-coarse resolution.  Fine-scale
remote-sensing data, such as aerial photography, Quickbird or LIDAR type imagery, have small  spatial extents and
are subject to the sampling design constraints noted above.

Spat/a/ scale: stratification and hierarchical designs for landscape analyses
Identifying the  basic  sampling units  and  the
degree  to which these  units represent a larger
population is a  fundamental  and problematic
issue  in monitoring.  Different  biotic  condition
variables — e.g., birds, fish, herptiles — respond
to environmental  stress  at  different scales,  and
the extent to  which an indicator "represents"
some  area of land is also variable (Brazner, et al.
2007,  Brazner,  et al. in press). In addition, a
landscape  such as  the Great Lakes basin can be
partitioned into different types of land units,  at
scales   ranging   from   ecological    region
classifications  with varying delineation  criteria
(e.g.,   Omernik   1987,   Bailey  1987)    to
watersheds, which also can be defined at varying
sizes.  These spatial stratifications  are important
parts  of the monitoring design, because much of
the variation in biotic communities across  of a
region  of  this   size   can  be   attributed   to
biogeographic   factors     (climate,    regional
landform),  and  any   landscape  stress-biotic
response models need to account for this scale of
variation.
/\/ streams
|^| coastal mterfluve watershed
     sub-catchments
     major watershed boundary
Within  broad-scale ecological  regions,  many
stressors to coastal and  aquatic ecosystems  are
delivered   via   hydrologic   processes.  Nested
watersheds   provide   an   important   spatial
framework  for  interpreting  data  and  allow
landscape  metrics to be summarized at multiple
scales  as   appropriate  for   the  various  biotic
response variables.  The different scales at which  species respond to landscapes has been a confounding issue in
developing monitoring programs, and has contributed to the lack of concordance among agencies implementing these
programs. To date, there have been few attempts to develop a scalable framework that is applicable across different
Figure 8-6. Network connectivity of ArcHydro catchments.
Each stream segment is identified by its unique numerical
label (Hydro ID) and by the identity of the "next
downstream" segment. Figure also shows coastal interfluve
areas (areas of direct overland flow to the lake).
144
                   Great Lakes Coastal Wetlands Monitoring Plan

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environmental indicators. The U S  EPA Science to Achieve Results (STAR) program's Great Lakes Environmental
Initiative (GLEI) project tested several watershed delineation methods that provide a common sampling framework
for investigative teams operating at a range of spatial scales — from point samples of contaminants in sediments to
sequences of 100 m radius plots for breeding bird surveys (Hollenhorst, et al., 2007)  These variable size sample
areas were integrated to define sampling complexes encompassing the total area sampled by all teams visiting a site
These complexes became a basis for summarizing anthropogenic stressors within complex-specific watersheds  This
allowed the development of stressor-response models in which the dependent and  independent variables were at
optimal scales for the indicator of interest

Recent  advances in watershed delineations  have led to the  development of hierarchical  and  scalable watershed
classifications  One of these approaches (ArcHydro model) uses standard digital elevation models (OEMs) to delineate
individual watersheds for each stream segment (reach) between stream confluences (Maidment et al  2002)  Stream
reaches are numbered in sequence so that each is characterized both by its own unique identification label and by the
"next-down" reach into which it flows (Figure 8-6)  Maintaining this network identity allows watersheds to be scaled
by concatenating stream reaches, consequently providing a platform on which to summarize environmental stressors
at multiple spatial scales This system also allows the identification of coastal interfluves (Figure 8-6), which are land
areas between  stream  mouths that dram  directly  to the lake Typically neglected  in watershed analyses, coastal
interfluves account for most of the shoreline length, and are thus important contributors to nearshore environments
of the Great Lakes

Temporal Scale: Providing consistent measurements across the Great Lakes basin
In general, major landscape metrics change slowly, compared with other types of response variables  The average
return intervals for forest harvests, for example,  are about  100 years, which translates to 1% of the landscape
harvested on an annual basis Rates of forest change due to natural disturbances are even lower Typical historic stand
replacing fire return intervals range from 200-400 years  (0 50-0 25% annuahzed landscape change, White and  Host
in review) Human-caused changes to the landscape such  as wetland loss or development occur at greater rates, but
still involve relatively low percentages when landscape area is calculated on a basmwide or regional basis  As a result,
regional  landscapes can be effectively monitored over multiyear time scales — a five-year  revisit  interval is common
for several agencies conducting integrated  monitoring approaches (e g Route  and Elias  2006)  Unlike  natural
disturbances, however, human modification of the landscape  tends to be  spatially concentrated The interface
between urban/agriculture or urban/forest  regions is one example of locations exhibiting rapid rates of land use
change, the Great  Lakes  coasts and  inland  lakes are another  In areas of great human activity,  both the spatial
resolution of the source data and the temporal resolution of sampling frequency should be increased to more precisely
track these changes, in these cases, a biennial revisit schedule may be appropriate


Remote  Sensing and Ancillary Data Sources

Remote sensors work in many regions of the electromagnetic spectrum from optical and ultraviolet to near infrared
to thermal and radar Similarly, the resolutions vary widely among sensors from kilometers (AVHRR and MODIS) to
a few meters (IKONOS)  Some of the data sources are free to users (MODIS) or relatively inexpensive (JERS and
PALSAR-S25 and  $125 per scene), but generally speaking, the finer the resolution  the higher the cost. The sensor
choice depends on the study area, availability of ancillary data, cost, the resolution desired and what features need to
be observed  or monitored  To routinely monitor a large regional area such as  the Great  Lakes basin, moderate
resolution  (e g , 30-meter grid cells or '/i-hectare) would be the best choice  High risk areas should be reviewed
more closely with higher resolution imagery or air photos and field truth Sometimes, there are advantages to using
coarser resolution data with a frequent (1-2  day) repeat, especially when looking for large-scale features (e g  algal
blooms can be seen in  1 km. MODIS and AVHRR data) or more general regional changes due to climate (e g. Leaf
Area Index and FPAR with MODIS products).  Using repeat pass satellite imagery allows  the advantage of multi-
temporal data  analysis  In many  cases, however,  finer-scale but less frequently generated data are  necessary  A
monitoring plan using both high and moderate resolution sensors will provide the greatest amount of information
 www glc org/wetlands                                                                                   145

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Traditionally, optical and IR data have been used for land-cover mapping, including wetlands  However, wetlands
are difficult to map and monitor using this type of data alone, due to the high variability in wetland morphology and
the inability of optical sensors to detect flooding beneath closed tree  canopies  There are additional problems
associated with cloud-cover and obtaining data with optical systems during timely conditions  Some of the  most
promising "new" sensors for mapping and monitoring wetlands include those operating in the thermal and microwave
spectra  Additionally, unlike optical, thermal or IR data, radar data can be collected during day or night and penetrate
clouds so that timely  data may be collected  Systems using LiDAR,  synthetic aperture radar (SAR) and  thermal
infrared  provide information complementary  to optical  sensors  and  will be invaluable  in future  mapping and
monitoring programs

Types and sources of remotely-sensed data are summarized in Table 2, below  We comment  specifically on Landsat
imagery because of its widespread use and concerns about its availability in the future

Landsat Data and the expected future data gap
The Landsat series of optical/IR sensors has been widely used to study land-cover processes However there is much
concern in the scientific community regarding the quality of the current information and availability of future Landsat
data, because of problems with Landsat-7, the age of Landsat-5, and  the distant  proposed launch of the successor
satellite (2011 at the earliest)  The first Landsat sensor was launched in 1972, while the latest sensor, Landsat-7, was
launched in  1999  While Landsat-7 and Landsat-5 are currently operational, Landsat-7 operates with a flawed  scan-
line corrector (SLC) assembly, causing gaps in the imagery that can be problematic for many  applications (25%
missing pixels) Despite this data flaw, Landsat-7 will continue to produce a high-quality data  product providing
global coverage at a  30-m resolution several  times annually for the life of the sensor Currently, the USGS provides a
gap-filled image product that is useful for many applications, and researchers are working on methods to provide
improved products from the acquired data using advanced image processing methods However, Landsat-5 (long past
its expected lifetime) is currently used extensively due to the diminished capability of Landsat-7

Scientists and engineers  from  NASA and  NOAA  are planning  a successor to  the  Landsat  7 satellite mission
(http //Idem usgs gov/LDCMHome php), with an expected launch in 2011  The inadequacies of Landsat-7 and the
expected failure of  Landsat-5 by 2010 due  to  age and fuel  depletion  means there will likely be a 1-5 year gap  in
Landsat coverage The U S  government has  initiated  a  program to provide alternative  non-U S   earth satellite
imagery to current government and nongovernmental U S -based Landsat users  Alternate data sources for this gap
include the  Indian ResourceSat-1, which carries 23-m and 55-m ground resolution sensors, the Chinese/Brazilian
CBERS-2, with several sensors on board ranging from 20- to 80-m resolution, France's SPOT sensors, and the
Japanese ASTER sensor, whose data are comparable to Landsat-TM but at 15-m resolution, and with a  smaller spatial
extent.  The anticipated gap in coverage by Landsat will cause difficulties, but this effort is  meant to provide data
sharing agreements and access to imagery that would otherwise be difficult for many users to obtain The U S DA has
already begun purchasing AWiFS imagery for their crop mapping activities over the United  States These data and
others like it will likely be more available once the Landsat gap actually arrives

Table 8-2, below, provides a comparison of current resources available, but it is not exhaustive  Mention of trade
names  or commercial  products  does  not constitute endorsement  or  recommendation  for use  Reference
www asprs org/news/satelhtes/

Improving Wetland Classification Approaches through Ancillary Data and Processing

Several types of geographic ancillary datasets are useful for wetland mapping, including elevation data and soils maps,
especially in combination with remote sensing data   Some new processing approaches (described  below) can also  be
used to improve wetland mapping accuracy
 146                                                              Great Lakes Coastal Wetlands Monitoring Plan

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Elevation Data
There are typically one or more Digital Elevation Model (DEM) datasets available for Great Lakes coastal wetlands
Canada  DEMS  are  available  from  http //www geobase ca/geobase/en/data/cded/cdedl .html   DEM  utility
depends on the resolution of the model, both in elevation and on the ground  Generally, the 30-m DEM available
from the USGS is too coarse for the fine-scale microrelief that often results in wetland development Interferometnc
SAR and LiDAR are two sources of remote sensing that can produce higher resolution DEMs

Soils
The NRCS has created soils maps with classification of hydnc soils that can be a useful ancillary dataset in mapping
wetlands. There are two U S  soils maps sources  U S  General Soil Map STATSGO available for every state but at
coarser scale (www ncgc nrcs usda gov/products/datasets/statsgo/'> and Soil Survey Geographic SSURGO available
for all states but Alaska (www ncgc nrcs usda gov/products/datasets/ssurgo/mdex html). Canada Soils Maps are
available from http //res.agr ca/cansis/systems/onhne maps html

Processing Approaches
Object-based classification methods, such as those available in  the eCognition image processing software, may be
useful for wetland mapping This type of classification involves two steps 1) spatial objects are formed using a region-
growing segmentation algorithm to merge pixels of homogeneous type, then 2) image classification techniques are
applied using traditional  statistical methods,  a fuzzy logic rule base, or  a combination of both methods. The
segmentation phase provides additional attributes describing the spatial context and morphology of features that can
be used to inform the classification beyond spectral values alone  Moreover, the segmentation phase  can be reiterated
at various scales to capture the range of features contained in the image This also allows heterogeneous wetland types
(e g , wetlands containing some open water pixels mixed with denser canopy) to be grouped or not depending on the
scale of the segmentation  The operator makes the  decision  Gremer et al   (2007) have applied this processing
approach to Landsat/Radarsat mapping in Quebec (Canada) and describe the process and results in detail
 www glc org/wetlands                                                                                   147

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Table 8-2 List of current and historical sensor data available, the spectral regions in which they work, spatial resolution, swath size and revisit time,
period of operation, approximate cost and a link to further information on each sensor and where the data can be obtained.
Sensor
AVHRR
MODIS
Landsat ETM+
Landsat TM
Landsat MSS
AWiFS
LISS-III
ASTER
SPOT
Frequenc
y
MS
MS
Pan/MS
MS
MS
MS
Pan/MS
# Spectral
Bands
4-6
36
04-14.5
pm
8 bands
04-125
pm
7 bands
04-125pm
5 bands
4 bands
052-1 7pm
4 bands
0.52-1 7pm
15 bands
0.5 -12pm
4
Spatial
Resolution
1 1 km
250- 1000m
1 5m pan
30m
60m
thermal
30m
120m
thermal
60m
56m at
nadir
70m at field
edges
235m
ISmVNIR
30m SWIR
90m TIR
1 Om Pan /
20m MS
Size/ revisit
time
2400x6400
km single
swath,
other
options
2,300km
1-2 day
revisit
18 km 5-1 6
day revisit
5 day revisit
737km
swath
24 days
140km
swath
4-1 6 day
revisit,
60km
20 x 20 -60 x
60km
Operation
period
1978-present
2000 - present
1999 -present
1 982-present
1973-1983t
2003-present
2003-present
2000 - present
1986-present
Cost
Free (single scene) -
$ 190 stitched geo-
registered
segments
Free
$425 TM
$700 ETM+
$700/quad
4quads/scene

Free-$170+
$1000-$ 14,000
Source
httD://edc.usas.aov/Droducts/satellite/a
vhrr.htmlttdescription
LPDAC
http-//modi5.asfc nasa.gov/
EROS
http://landsat.asfc.nasa gov/
www.euromap.de/docs/doc 005.html
http //directory.eoportal org/pres_IRSP6lndia
nRemoteSensmgSatellite html
www.euromap de/docs/doc 005 html
http://directory eoportal org/pres_IRSP6lndia
nRemoteSensmgSatellite html
http-//a5terweb.iDl.nasa.aov/
Free (already existing Level 1 B data over the
U S and territories, available through the
LPDAAC Data Pool
www.5potimaae.ff/html/ 167 php
(already existing Level 1 B 20 x 20 km, which
is 1 /8 scene, is 1 ,020 euro or about $1 ,400),
No per km price found
148
Great Lakes Coastal Wetlands Monitoring Plan

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Sensor
IRS
Quickbird/
IKONOS
Aerial Imagery
e.g.
CAESAR™
Air Photos
OrbView 3™
HyMAP
Imaging
Spectrometer™
Fugro
Earthdata
LiDAR
RADARSAT-1
Frequenc
y
Pan/MS
Pan/MS
MS
Pan/
Color/
Color-IR
Pan/MS

Light (350
- 800 nm)
C-band
SAR
# Spectral
Bands
4-6
5 bands
0 45-0.9 pm
12 bands
VIS

4 bands
VIS/NIR
128VISNIR
SWIR

1,57 cm
C-HH
Multiple
modes and
incidence
angles
Spatial
Resolution
6m Pan /
23m MS
0 6m pan
24m
0.5 - 4m
01-1 Om
1m pan
4m
35-10m
35cm
vertical 3m
horizontal
10m (fine
beam
mode),
30m. and
100m
(wideswath
mode)
Size/ revisit
time
148km
3-7 day
revisit
165km
Weather
and flight
logistics
Small
spatial
area/
varies/ as
tasked
< 3 days
Weather
and flight
logistics
As tasked
45-500km
Approx 6
day revisit
50 - 500km
Operation
period
1988 -present
2001 -present

1909-present
airplane
2003


1995-present
Cost
$375/ 10x1 Okm map
sheet
$8/km (IKONOS)
$16/km (Quickbird)
High
High
$10-50/km
$6.000 per 2 3 x
20km scene:
proprietary data
$12.000 per scene

$0-$2.750
Source
Photosat,
httD://rst.asfc.nasa.aov/lntro/Part2 23.ht
ml,
httD://ccrs.nrcan.ac.ca/resource/tutor/f
undam/chdDter2/12 e.oho
www.diaitalalobe.com/

CAESAR was a NATO project that ended in
2005. to be replaced by MAJIIC
htto://edcsns 1 7.cr.usas.aov/airborne/

www.orbimaae.com/corD/orbimaae sv
stem/ov3/.
www.aeoeve.com/whiteDaDers Ddfs/O
V-3 Cataloa.odf
www.hwista.com

http://www.earthdata.com/servicessub
cat.Dhp?subcat=lidar
ASF www asf.alaska.edu/ or MDA
Corporation
htto://as. mdacorDoration.com/

www glc org/wetlands
149

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Sensor
RADARSAT-2
ERS-1 and 2
Envisat
JERS
PALSAR
Airborne Radar
GeoSAR
Frequenc
y
C-band
SAR
C-band
SAR
C-band
SAR
L-band
SAR
L-band
SAR
X-. P-
band
SAR
# Spectral
Bands
4
57cm C-
HH, C-HV,
C-VH, C-VV
1 . 5.7cm.
c-vv
23'
incidence
angle
2, 5.7cm
Any 2
C-VV ,C-
HH. C-VH,
C-HV
Multiple
incidence
angles
1.23cm
L-HH
37
incidence
angle
4, 23cm. L-
HH. L-HV. L-
VH, L-VV
3cm X-VV
86cm P-full
polygon
Spatial
Resolution
3 to 100m
30m
10,30m,
and
100m
(wideswath
mode)
30m
7- 100m
1 25-3m (X)
1 25-5m (P)
Size/ revisit
time
500 km,
daily to 3
days
100km
35 day
revisit
100 -400km
35 day
revisit
70km
40-350km
20km
Operation
period
2007 launch
1991 -present
2002-present
1992-1998
2006-present
2002-present
Cost

$85-$450+
$480 (archive)*
$720 (new)*
$125(ESACAT-1
data grant)
$25
$125

Source
httD://as. mdacorDoration.com/.
www.radarsat2.info/.
www.sDace.ac.ca/asc/ena/satellites/ra
darsat2/innovations.aso

http //earth.esa mt/ers/
Eunmage and ESA
httD://eoDi.esa.int/esa/esa?cmd=aodet
ail&aoname=catl
http //eods nrcan gc ca/ers_e php
Eunmage* and ESA
httD://earth.esa.int/ers
httD://eoDi.esa.int/esa/esa?cmd=aodet
ail&aoname=catl

JAXA's CROSS
httDS-//cross.restec.or.|D/cross/CfcLoain
do?locale=en

ASF
www.oalsar ersdac.or iD/e/index.shtml

httD://southDort.iDl.nasa.aov/html/Droie
cts/aeosar/aeosar.html
www.earthdata com/servicessubcat.Dh
D?subcat=ifsar
150
Great Lakes Coastal Wetlands Monitoring Plan

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Sensor
Airborne Radar
(AIRSAR)
Airborne Radar
Fugro
Earthdata
GeoSAR
Frequenc
y
C-. L-, P -
band
SAR
Also
TOPSAR
(DEM)
X-. P-
band
IFSAR
# Spectral
Bands
4, 5 7cm
C-band full
polygon,
25cm L-
band full
polygon.
68cm P-
band full
polygon
3cm X-VV
86cm P-full
polygon
Spatial
Resolution
2.5 -12m
1.25-3m(XJ
1 25-5m (P)
3-5m DEM
36cm
P Lidar
Night or
day,
through
clouds and
vegetation
Size/ revisit
time
As tasked
12-1 4km
swaths with
up to 1 200
km flight
lines
Revisit as
needed
Operation
period
1988- 2005 not
in operation,
JPL will fly if
commissioned
2002-present
Cost
Free -$750
$30to$170/sq.km
No licensing Clients
free to share and
use as they see fit.
Source
httD://airsar.iDl.nasa.aov/documents/fa
as.htm#D4.
http://airsar jDl.nasa.aov/main htm

httD://southDort.iDl.nasa.aov/html/Droie
cts/aeosar/aeosar.html
www.earthdata.com/servicessubcat.Dh
D2subcat=ifsar

www glc org/wetlands
151

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Innovative Remote Sensing Methods
Canadian Wetlands Inventory Approach

Plans for the Canadian Wetland Inventory (CWI) have been developed to create a consistent map of wetlands in all
areas of Canada using satellite imagery (see www.cwi-icth.ca/). The CWI will use a classification scheme defined in
the Canadian Wetland Classification System: bog,  fen, marsh,  swamp, and shallow water. As with the  National
Wetland Inventory (NWI) of the United  States, it will  not map categories of upland areas. The minimum  mapping
unit planned is one hectare, and the data source planned is 30-m Landsat ETM from circa 2000 and 30-m resolution
Radarsat (12.5-m pixel spacing). Canada contains approximately 25% of all of earth's wetlands, which previously
have not  been comprehensively mapped. Fournier et  al. (2007) concluded that combining Landsat-ETM+ with
Radarsat-1 images will help depict the spatial and temporal variability of wetland classes. Toyra et al.  (2001) and
Toyra and Pietroniro (200S) found that radar  images  may  be critical in many areas to distinguish upland from
wetland, which is often difficult with optical imagery alone. Grenier et  al. (2005 and 2007) as well as others  have also
found that differentiation between swamp and other wetland classes improved with Radarsat-1  images.

Hybrid Multispectral and Imaging Radar for Wetland  Mapping, Inundation Monitoring,
and Change Detection
Wetlands have historically been one
of the most difficult ecosystems  to
classify using remotely sensed data,
partially due to  the high variability
in wetland morphology.  Bourgeau-
Chavez  et  al.  (2004)  developed
unique hybrid Synthetic Aperture
Radar  (SAR)  and  multispectral
imaging methods to monitor Great
Lakes' coastal  and inland ecosystems
and  surrounding  land  uses  that
consist of three elements:  1) SAR
techniques for mapping inundation
extent;   2)   hybrid   SAR-optical
sensor   techniques  for  mapping
wetlands  and  adjacent habitat and
land  use including invasive  species;
and       3)       a       hybrid
radiometric / categorical
multispectral approach for mapping
changes in land  cover and land use
(see
www.glc.orp/wetlands/pdf/GD-
landscapeReport.pdf    for    full
details).
      Upland Forest



  CattaiUScirpus beds


 Wet meadow-sedges
 Phragmites dominant
                          23 6 km
Figure 8-7. Three date false color composite of Radarsat3 , October 1998
(red), JERS 10, August 1998 (green), and JERS 28, March 1995 (blue)
illustrating fine-resolution mapping of wetland plant cover over Lake St.
Clair.
Wetland Mapping
Many techniques focus on using multispectral data, such as Landsat or Aster, alone or in combination with ancillary
data sets such as soils and topography for wetland mapping. Bourgeau-Chavez et  al. (2004) found that SAR and

-------
multispectral sensors complement each other in the classification and monitoring of wetland ecosystems and that SAR
represents one of the most promising sensor types for improving wetland mapping capability While multispectral
data measure spectral reflectance and emittance characteristics of various cover types and wetness in open canopied
ecosystems,  SAR is sensitive to variations in biomass, structure and soil moisture and flood condition of landscapes
including forests and other closed canopy ecosystems Forested wetlands are the most difficult to identify remotely
because of the inability of traditional multispectral sensors to "see" beneath the canopy Radar can not only penetrate
a closed canopy to detect  flooding, but since radars are active  systems, can acquire data acquired independently of
solar illumination and cloud cover conditions   Thus, data can be collected during  specific conditions relevant to
finding seasonally flooded wetlands or seiche-influenced wetlands  These SAR data can be used not only to detect and
define wetlands, but also to monitor extent of inundation and in some cases level of inundation (Bourgeau-Chavez et
al 2005)

Current spaceborne SARs are mainly of a single frequency, but  multiple SAR sensors with different frequencies (and
polarizations) and from multiple dates can be used together to effectively map and monitor a given region The longer
wavelength (lower frequency) SARs allow for mapping and monitoring of high biomass ecosystems such as forests and
tall, dense herbaceous vegetation  (e g L-band  23 cm JERS and PALSAR) while shorter wavelength sensors (higher
frequency)  allow for mapping and monitoring lower biomass,  herbaceous (e g  C-band  5  7 cm  Radarsat,  ERS,
Envisat) ecosystems  Together, two  SAR frequencies allow for a wider range of mapping capability than either
frequency alone  Further, by fusing sensor data  operating in the visible, infrared and microwave (SAR) spectrums in a
CIS, a  robust method for monitoring wetland type,  area!  extent, adjacent land use/land cover, invasive species and
proximity to other anthropogenic stressors can be attained  Methods were evaluated  and developed  for this very
purpose under a pilot study for the Great  Lakes Coastal  Wetlands Consortium The pilot study covered  relatively
small subsets of the Great Lakes basin (Bourgeau-Chavez et al  2004), but encompassed  a range of landscape types
(urban/rural, coniferous/deciduous, and temperate/boreal)

 The most cost-effective, robust and implementable methodology identified created one  categorical map from SAR
and another from  the optical  sensor data,  then merged the categories from these initial maps  Ideally, the initial
categorical maps would be made from data covering  multiple seasons and years to capture the  inter-annual and intra-
annual  trends in plant phenology  and inundation  patterns (since  SAR is sensitive to the  extent  of inundation, care
must be taken when mapping seasonally flooded and tidally influenced coastal wetlands)

A simple maximum likelihood classifier was applied  to the 6 to 12 input SAR bands, and separately to the  18  input
Landsat TM bands  Then the categories from each data set were combined in the CIS, using category  specific rules
Water  is generally well-categorized by Landsat but its location can be validated via SAR (for example, Landsat missed
Scirpus  beds  along the St Clair River delta, labeling them open water) SAR tended to confuse  urban and forested
wetlands, which could be separated via Landsat, while Landsat tended to confuse bare rock with  urban, which could
be separated via SAR For many of the classes, "wetness"  from  the SAR was  used to validate the wetland class from
the Landsat  A finer  range of wetland species types was attainable with the SAR (Tvpha, Phragmites, Scirpus, wet
meadow, etc, see Fig 7), and these were validated with the "wetland" class from the Landsat  Pilot maps resulted in
94% overall accuracy when compared to NWI and 65-72% when compared to  1992 NLCD  and 2001 IFMAP, and
89% accuracy when compared to field truth over a complex of wetland ecosystems
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/Monitoring Extent of Inundation
The  ability  of SAR data to detect and
monitor inundation also provides an ability
to monitor changes  in wetland hydrologic
condition  across  a  landscape.  The pilot
study reviewed  two  methods  to  derive
inundation extent  of  forested wetlands
from   L-band  SAR;   a   thresholding
technique  on an  individual date  JERS
image to include only "bright" pixels that
potentially represent   inundated  woody
wetland areas at a single point in time; and
a  multitemporal  technique  that  utilized
several dates of JERS imagery to produce a
seasonal inundation map. Because  urban
areas   and    row   structured   forests
(plantations)  also appear "bright"  in SAR
imagery, an existing wetland map can be
intersected in a GIS with the SAR-derived
product to eliminate confounding features.
Figure 8-8 shows a multidate SAR-derived
inundation map, where red  areas are  the
extent of inundation for the period of 1992
"scrub-shrub" or "forested" wetland in N WI
   Figure 8-8. SAR-
   derived circa 1992-5
   Extent of inundation in
   woody vegetation
   (red) overlaid on NWI
   for the Mackinac
   study area. (70x70km)
     Forested Wetland
     Shrubby Wetland
     Upland
     Floating Aquatic
     Emergent.Wetland
     Extent of Inundation
Figure 8-9. Two-date Radarsat composite of
wetlands at the St. Clair River Delta. Red- 27
Oct. 1998, Cyan- 3 Oct. 1998. (11 xl 5 km)
-95 overlaid on the NWI. Only those potentially inundated areas labeled
were retained as actual inundated areas.
                                                The launch of ALOS PALSAR (June 2006) allows the use of the
                                                JERS prototype methods for mapping the extent of inunation to
                                                be employed coincident with field verification and validation and
                                                evaluation of lake level data and precipitation patterns. Previous
                                                studies have  also used general changes in hydrology (e.g. lake
                                                levels, precipitation) to validate changes in the inundation extent
                                                maps that were created with SAR (Hess et al. 1995, Townsend
                                                2001, Wang 2004).
                                                C-band data (e.g. Radarsat) may also be used to monitor changes
                                                in inundation.  As an example, a change of 19-cm in the water
                                                level of Lake St. Clair resulted in a significant change in the
                                                backscatter from the Typha /Scirpus beds along the fingers of the
                                                delta (red areas in Figure 8-9) in the Consortium pilot study.
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                                                     Figure 8-10. Hybrid
                                                     change detection
                                                     provides a more accurat
                                                     result than categorical
                                                     change or radiometric
                                                     change techniques alone
Effective Change Detection Technique
Knowing what has changed and when along the coasts
will help resource managers and scientists understand
the timeframe of the imposed stressors (development,
invasive species,  etc)  and evaluate their  effects  on
ecosystems.  Traditional change  detection  techniques
are either 1) categorical, comparing categorizations of
data  collected  on   two  different   dates,   or  2)
radiometric, comparing the radiometric properties of
data collected on two different dates.  The  Hybrid
Change Detection procedure recommended by Jensen,
et al.  (NOAA  1993)  and described  in  Bourgeau-
Chavez, et al. (2004) effectively combines components
of the categorical and radiometric approaches to reduce
both omission and commission  errors  (Figure 8-10,
150x150 km). Errors in categorical change detection
result when a pixel that has not actually changed cover
type is erroneously assigned to a different type,  because
of a lack of perfect radiometric normalization between data sets, and because the signature sets used to categorize the
two data sets are not identical. This type of error can be effectively eliminated by solely accepting a categorical change
when the magnitude  of the associated radiometric change is greater than expected, due  solely  to radiometric
mismatches between the data  sets.  Conversely, the addition of a categorical change test to a radiometric change
detection provides a basis for assigning labels to the types of changes that the radiometrically based change detection
has identified. Changes in  condition_may also be assessed by examining the  nature  of radiometric change within
categorically unchanged cover types. The hybrid change detection procedure was illustrated in the pilot study report
as a cost-effective and timely hybrid change detection procedure  by using existing categorical maps from two time
periods and coincident (month/date-usually mid-summer) multispectral radiometric data from each time period to
detect  change.  The two categorical maps  must first be adjusted to match  labels,  and limitations  are  with the
categorical map with the fewest categories. This method was illustrated using 1FMAP as the current map for northern
Michigan  study sites and NWI,  and MIR1S as the  1970s maps. More than  10%  radiometric change and 4-14%
categorical change was  observed for the study wetlands in northern Michigan, but implementation of the hybrid
procedure reduced the amount of "real" change to 1.3-3.8%. For the nine northern Michigan counties studied, 2,546
-ha were converted from wetland to upland with only 3-ha changing  from upland to  wetland, an  additional 124-ha
went from wetland to open water. Finally, 1,304-ha changed from emergent to woody wetland.

Remote Assessment of Invasive Plants

Some kinds of invasive wetland plants can be effectively assessed remotely. Basin wide assessments can be made using
the sort  of  broad-scale SAR-based  approaches  described in  Bourgeau-Chavez  (2004)  and above,  but  it  is
recommended that these be supplemented with finer scale approaches at specific wetlands of concern. Lopez et al.
(2004) demonstrated the implementation of a  moderate-to-fine scale  protocol (with minimal field activities), using
remote sensing and landscape ecological approaches to determine the presence, distribution and plant-stand structural
characteristics of Phragmites austialis at the Point Mouille Wetland Complex in western Lake Erie.
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Figure 8-11. Results of a Spectral Angle Mapper
classification indicating likely areas of relatively
homogeneous  stands of Phragmites australis
(blue), field-sampled patches of Phragmites (black
arrows) and validated Phragmites, (yellow)
overlaid on a natural-color image of Pointe
Mouillee wetland complex (from Lopez et al.,
2004).
The  technique  applied was a  supervised classification of
PROBE-1  (with  identical  specifications  to the HyMAP
sensor; Table 8-2) airborne hyperspectral data, using the
EN VI  Spectral   Angle  Mapper  (SAM)  algorithm,  a
semiautomated  processing technique for comparing image
spectra  to a  spectral library.  PROBE-1  spectra were
collected from  3x3 pixel (approximately 12m  x 12m)
homogeneous  areas  of Phragmites (as determined from
traditional field  transect  sampling). The SAM algorithm
was  then  used  to determine  the similarity between  the
spectra of homogeneous Phragmites and all other pixels in
the scene  by calculating the spectral angle  between them
over each spectral band. Classified pixel types representing
potentially homogeneous Phragmites stands identified by the
SAM classification  (Figure  8-11)  were   validated   by
comparing their distribution to areas of Phragmites observed
in black and white aerial photos and contemporaneous field
data collections with the  aid of the ENVI Mixture Tuned
Matched Filtering algorithms.

Accuracy  assessment of  any  remote-sensing-derived
landscape  indicator is imperative. A three-tiered approach
to accuracy  assessment of the semi-automated Phragmites
maps was used:  Tier-1) testing  presence/absence  of
Phragmites using a comparison of semiautomated vegetation
maps to recent stereo aerial photographs; Tier-2) testing
presence/absence  of Phragmites using stratified  random
field samples of the mapped areas; and Tier-3) testing of
Phragmites percentage cover and  structure using  random
field samples of mapped areas. At Pointe  Mouillee, Tier-1
accuracy assessment, which compared vegetation maps to
1:15840 scale black  and  white stereo aerial photographs
and  field notes,  indicated that approximately 80% of the
areas mapped  as  Phragmites  are  located within  true
Phragmites stands, while Tier-2 accuracy  assessments  that
compare vegetation  maps  to  field samples resulted in a
91 % accuracy.
Recommendations for Remote Sensing Synthesis Products

An important emerging approach to multiscalar ecological monitoring efforts is the implementation of remote sensing
synthesis products.  To address the  unique logistical and ecological elements of the  Consortium goals for coastal
wetlands basin-wide,  we recommend a synthesis of the previous two methodologies to accurately and  routinely
monitor coastal areas for the presence and change in extent and composition utilizing the hybrid procedure, followed
by targeted wetland  assessments for invasive plant species  in selected wetlands of interest.  The  hyperspectral
approaches discussed above could then be utilized to precisely map the location of plant species (e.g., P. australis, or
other targeted plant species) and the structural characteristics of the plant stands within wetlands of special interest to
stakeholders. The  synthesis of various remote sensing approaches will ensure  that the broad-scale  goals of the
Consortium and the  accuracy requirements  for addressing  the ecological  processes within a  wetland  are  both
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incorporated into map outputs for the Great Lakes. Such synthesis map products will ensure that monitoring of
management practices and restoration success progress is recorded accurately and completely for the Great Lakes
basin.

GLEI Stressor Gradient

As part of the GLEI project, 3,591 watersheds were delineated for coastal areas throughout the U.S. side of the Great
Lakes (Figure 8-12) as summary units for a wide variety of anthropogenic stressors (Hollenhorst et al. 2007).

More than 200 variables in seven categories of anthropogenic stress were summarized for these watersheds. Principal
components analysis (PCA) within seven categories of stress (agriculture, human population,  atmospheric deposition,
point sources, land cover, soils, and shoreline protection) was used to reduce dimensionality and derive overall
stressor gradients (Danz et al.)
Figure 8-12. Watersheds (3,591) delineated for the U.S. side of the Great Lakes basin. (2007).

More recently, this effort has been expanded to include  the  Canadian side of the Great Lakes using compatible
watershed delineations (5,890 watersheds) and integrated stressor summaries focused on the most significant stresses
(initially, land use, population density, and road density). These watershed summaries and derived stressor gradients
provide a framework for selecting wetland monitoring sites stratified across these gradients,  and also a context for
interpreting field data on wetland condition.

The  delineations were accomplished with an ArcHydro data model, which allows for watershed  delineations that
incorporate existing maps of streams to create hydrologically corrected elevation models (Maidment 1997). We used
map data representing connected stream networks of the National Hydrologic Data Base  (http://nhd.usgs.gov)
combined with National Elevation Data (http://ned.usgs.gov). Using ArcHydro,  sinks (areas in the elevation data
that  are  lower in  elevation than their surroundings) were filled  to ensure flow continuity, flow direction was
delineated, and accumulated flow was calculated. Areas with high flow accumulation (defined  as areas receiving flow
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from an upstream area of at least 3,000 30- x 30-meter pixels) were designated as streams, which roughly coincides
with streams mapped at  1:24,000. Catchments were then delineated for stream lengths between stream confluences.
Connected networks of streams flowing to the Great Lakes coast were individually identified, and all the streams and
the catchments within that network were given a network-level identification number. Discrete watersheds flowing
to the coast were then uniquely identified and merged to form a hierarchical network of highly detailed watersheds
flowing to the Great Lakes coast. Polygons representing "coastal interfluves" (the land areas between river mouths
and their watersheds that drain directly to the shorelines Fig. 6) were delineated by intersecting the coastal watershed
boundaries with a polygon representing the terrestrial portion of the Great Lakes basin derived from satellite imagery
(Woltereto;. 2006).

After coastal interfluve polygons and stream watershed polygons were combined  into a single  map layer (creating a
total of 3,591  U.S. Great Lakes stream  watersheds and  interfluves and  5,890  integrated U.S./Canadian stream
watersheds and interfluves), they were ordered and numbered along the coast from the U.S./Canadian border in
western Lake  Superior, counter-clockwise around  all of the  Great Lakes. Watershed  delineations were visually
                                                                assessed for errors, and edited when necessary,
                                                                using  ancillary map  data  including  streams,
                                                                aerial  photos  and USGS scanned cjuad  maps
                                                                (Digital Raster Graphics  1:24 000 and 1:250
                                                                000).  Ordering the  watersheds with sequential
                                                                identification numbers along the coast provided
                                                                a framework for scaling  watersheds and their
                                                                related  stressors along the  entire Great Lakes
                                                                shoreline. Watersheds and associated stressors
                                                                adjacent to  an  area  of interest  are  easily
                                                                identified by  their  consecutive  ID  numbers
                                                                (Figure  8-13),  providing  the   means   to
                                                                summarize and assess the effects of watershed-
                                                                scale   anthropogenic stresses   delivered   to
                  25  23
                                                                specific coastal ecosystems.
Figure 8-13.  Ordered and numbered stream and coastal
interfluve watersheds along the Great Lakes coastline near a
high energy site (HE). Arrows represent direction of
predominant long-shore currents.
                                                                The relative contribution of stress effects from
                                                                adjacent  land  areas  along the  coast  varies
                                                                greatly, based upon seasonal currents,  storm
                                                                and wind events,  near-shore topography and
                                                                other  local  conditions.  Spatial  ordering  of
watersheds provides the means to account for stressor effects contributed from outside  a particular ecosystem's
immediate watershed (for example, by long shore currents; Figure 8-13). As stressor delivery mechanisms are further
understood and mapped, this scalable watershed framework can be used to differentially weight the contributions to a
specific site from nearby watersheds based on proximity and prevailing currents, and to better represent the lake-
ward delivery of sediments, contaminants, and other waterborne stressors to coastal areas. This framework might
also be applied to circulation models for embayments and harbors or large  lakes, providing an  ordered link between
stressors in the watershed and the receiving body of water.
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                                                                         Best
Figure 8-14. Integrated Sum-Rel score for the 3,590 U.S./Canadian Great Lakes watersheds (T. Hollenhorst,
NRRI, University of Minnesota et al. in prep).

For the GLEI Project, U.S._watersheds were delineated and a wide variety of anthropogenic stressor variables were
summarized and  analyzed  as describe above.  For  the  integrated U.S./Canadian watersheds, landcover, human
population density, and  road density were summarized to derive an integrated Sum-Rel score (Figure 8-14; Host  et
al. 2005), calculated per the following steps:

1. Variables transformed:
        proportions: tr-value = arcsin (sqrt(value))
        density: tr-value = In (value 4 minimum non-zero value)
2. Transformed values normalized:
        nr-value — (tr-value - tr-mean) / (stand dev of tr-value)
3. Transformed, normalized variables standardized:
        st-value = (nr-value — min_nr-value) / (max_nr-value — min_nr-value)
4. Standard, normal transformed values (st-value) for each stressor summed:.
        sum-rel = st-value (land cover*) 4 st-value  (popul) 4 st-value(road density)
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Recommended Long-Term  Landscape  Monitoring Protocols

Coastal Wetland Mapping and Monitoring

Needs Tor coastal wetland monitoring exist at the local, county, tribal, state and federal levels. Not all management
levels will be interested in creating a regional  scale map for their specific needs, but following a common protocol
will ensure that maps from different areas can  later be merged to assess larger regional areas or can be compared to
maps from other projects and time periods to determine change Since maps with different classification systems are
difficult to combine later,  we recommend that a common classification  system be used, and the highest category
possible be mapped  To the extent possible, projects should also map the surrounding land cover and land use, due to
their importance as indicators and correlates of wetland condition This approach has already been used in developing
an integrated habitat classification and map of the Lake  Erie basin, partly based on the Consortium classification
system (L Johnson et al  NRRI, Univ of Minnesota Duluth, http//www glc org/enehabitat) (see sections below)

Design
To support Great Lakes coastal wetland assessment  and management into the future, we  recommend a two-tier
wetland mapping system, combining (I) a moderate resolution (15-30 m) satellite-based mapping of the entire basin
every five years, and (II) a  high-resolution (1 m or better) airborne  or satellite-based map of one lake basin per year
on a rotating basis  This two-step  approach allows for a consistent baseline map from synoptic moderate-resolution
data  sources using semi-automated techniques  at the  regional  scale  every five years, together with a fine-resolution
map  allowing more detailed discrimination of wetland boundaries and wetland type  It is not expected that the fine-
resolution maps, which are labor-intensive to produce, can be  created in a single year for the entire basin However,
highly sensitive areas (e g  wetlands in high population areas or areas of rapid land cover/land use change) will need
to be mapped at high resolution with greater frequency

It is recommended that both the moderate- and fine-resolution mapping consist of a combination of data sources from
multiple frequencies to aid m wetland discrimination  and deal with  issues such as cloud cover and changing wetland
inundation and plant phenology Using satellite data allows for multitemporal and multispectral analysis in mapping
wetlands that are dynamic throughout the seasons and allows  automated  change detection techniques to be used to
update existing maps, such as NWI Combining SAR and optical-IR  data, as was described earlier, improves wetland
delineation accuracy, especially for forested wetlands, which are often missed by traditional optical  remote sensing
techniques Multiple sensor approaches allow checks of the data against each other to better define class types  While
such methods have been demonstrated for 30-m satellite data (Bourgeau-Chavez et al  2004, Fourmer et al 2007), it
is realized that fine-scale airborne SAR data are not as readily available as the moderate-resolution satellite data, and
although some satellite sensors offer higher resolution data, it may not be fine enough to be comparable with airborne
optical-IR data  Newly generated maps should be compared to existing maps and  imagery using hybrid radiometnc
and categorical change detection techniques as were described earlier The change detection procedures not  only
provide valuable temporal  information about the wetlands, but also serve as a check on the new  map of whether or
not it is an actual change m type or just a change in condition or categorical error

It    is   recommended   that   the    NWI    classification   system   be   used   for    mapping  wetlands
(http X/vvww fws gov/nwi/Pubs  Reports/ Class Manual/class titlepg  htm^   This system is  hierarchical,   with
levels from systems and subsystems, to classes  (emergent, forested,  scrub-shrub) to subclasses and dominance types
At the very least, U.S  managers should start by updating and improving the existing NWI maps and contributing the
updates to the NWI Master Geodatabase (http //wetlandsfws.er usgs gov/NWl/index html) Surrounding upland
areas should be mapped along with wetland classes It is recommended that they be mapped according to the Land
Use Land Cover Anderson  Level II Classification System (http //landcover.usgs gov/pdf/anderson pdf)
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Data collection and management
In mapping wetlands and adjacent land cover/land use, it is essential that all data sources be calibrated appropriately
prior to analysis  Using data  that have not  been calibrated properly leads to increased  misclassification errors
Information on calibration must be available on the  specific product's web  page.  It is  important  that data be
georeferenced to as high a precision as possible, typically within a pixel  This is especially  important when data are
compiled from multiple seasons and multiple sensor sources  Using data from multiple seasons,  typically spring,
summer and fall, will increase  the number of classes that can be identified with any data source  When using change
detection to update a map, it is  important that anniversary date data be used, which for optical-IR data is typically
during the peak growing season  (July-August for the Great Lakes)  The raw imagery should be  kept along with the
map and change products  This allows  easier updates and comparisons with future maps  All data should be stored
with metadata using the FGDC standard format, and all data should be made publicly available on a website such as
AmencaView (amencaview org)  or GLIN (www.great-lakes net/).

Landscape Monitoring in Coastal Watersheds

Coastal wetlands  are impacted by both local factors and by stressors acting at the watershed scale.  In terms of
assessment and monitoring, it is important  to quantify stressors  operating at both  spatial scales The protocols
described in  this  section are designed to  monitor key landscape indicators that  quantify watershed-scale changes
relevant to coastal wetlands The basic strategy will  be to identify data sources that are updated on a regular basis
across  the  basin,  define watershed-scale spatial  summary units  appropriate for coastal wetlands,  enumerate  key
landscape metrics for these units, and describe a monitoring process that allows the identification  of trends in  key
landscape stressor variables across the basin

Design
The basic design for this monitoring effort is a comprehensive, population-level analysis based on a synoptic data  set,
following criteria  noted below  An  example analysis is given below, using  the extent of a monitoring effort in the
Lake  Superior basin (see Fig 8-6)  Given  the large spatial  extent covered  in  this monitoring effort and  the
comparatively slow rates of change of landscapes (1-3%/yr is typical),  a 2-5-year revisit  design is recommended,
depending upon rates of development among the various regions of the Great Lakes  It needs to be recognized that
many of the data  suggested for this effort are updated on a  periodic or aperiodic basis, and that resampling is  not
always synchronized across state, provincial, or federal levels, consequently,  monitoring will frequently be based on a
"best available data" approach

Watershed-scale landscape metrics will be summarized using a high-resolution, multiscale delineation of U S   and
Canadian Lake Superior watersheds using the ArcHydro data model (Maidment and Morehouse 2002), this product is
currently being developed under funding from the Great Lakes National Program Office, and will be available at the
time monitoring begins

The ArcHydro approach uses standard Digital Elevation Models (OEMs) to  delineate individual  watersheds for each
steam  segment (reach) between stream  confluences  Stream reaches are  numbered in sequence  so that each
catchment includes  a unique identification label and the "next-down" identification of the catchment  into which it
flows (Fig  Arcl)  An important  part of this design is that maintaining this network identity allows watersheds to be
scaled by concatenating stream  reaches, and consequently providing a platform to summarize key  landscape metrics at
multiple spatial scales Equally  important, this system also allows the identification of coastal mterfluves (Fig 6)  land
areas between stream mouths that dram directly to the lake  While small in area, coastal mterfluves account for most
of the shoreline length and many coastal wetlands are associated with mterfluves Moreover, this approach alleviates
problems in quantifying stressors to wetlands which  may not have strong hydrologic connections to adjacent stream
watersheds. Although not immediately imperative,  improved availability of higher resolution terrain  data  and the
utilization of watershed  delineation tools that make use of these finer resolution datasets (e  g , LiDAR) will result in
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improved watershed models, and consequently improve the reliability of watershed model development in lake plain
regions

Source data
 Source data For watershed-scale assessment and monitoring must meet several criteria
    •   Comparable data sets must be available for both the U S and Canadian sides of the Lake Superior basin
    •   They must be collected on a time-relevant scale (5-10) years
    •   They must be well-institutionalized — i e data sets that are critical for ecological, social, or economic
        reasons, and have a highly likelihood of being maintained into the future
    •   They are strong proximal or ultimate drivers of impairments to coastal wetlands

Land Use/Land Cover (LULC) is one of the key data sets, as it quantifies compositional and structural aspects of
landscapes with strong links to the function of coastal ecosystems There are many sensors and mapping products that
quantify LULC over time, with broad variation in classification and spatial resolution Table 3 below, presents a suite
of data sources that  fit the above criteria, and have been used on other ecological  monitoring or assessment efforts
(Danz et al 2007, Host et al  2006)

Table 8-3. List of datasets suitable for ecological monitoring efforts.
DATA SET
Agricultural inputs
Dams
Land Use/Land Cover
Nutrient inputs
Pollution discharge
Population density
Power plants
Transportation
Water intake
Water diversions
U.S. SOURCE
Natural Resource Inventory
National Inventory of Dams
ENHANCED NLCD
SPARROW DATA/Ag data
NPDES
U.S. Census
EGRID2002
U.S. Tiger
Various sources
Various sources
CANADIAN SOURCE
Canada Census of Agriculture
Land Information Ontario
Land Information Ontario
Ag data
CA National Pollution Release Inventory
Canadian Census
Hazards Atlas
Land Information Ontano
Hazards Atlas
Land Information Ontano
Data synthesis and transformation
In terms of linking landscape to the health of aquatic ecosystems, numerous studies have found that relatively simple
classification schemes (Anderson Level II http //landcover usgs gov/pdf/anderson pdf ) show good correlations with
physical  and  chemical properties of aquatic systems (Richards et al  1997, Johnson et al  2006)  Because of the
binational nature of this study, we recommend a classification resolution approximating Anderson Level II (finer-scale
classification can easily be aggregated to this level) There is a broad range of spatial resolution available, given the
extent described above, the moderate spatial resolution available through the National Land Cover Dataset (30m) is
appropriate for this monitoring

Various metrics can be computed  to quantify the composition and spatial structure of the landscape These are
complemented by other point- and line-based data that quantify other key environmental stressors  roads, population
density, hydrological alterations, and a number of point sources such as pollution discharge, dams, and power plants
The following Table 4 lists landscape  metrics that have been used in environmental  indicator and assessment work
which Pit the data criteria, and are relevant toward watershed monitoring
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Table 8-2. List of selected landscape metncs used in environmental indicator and assessment work.
DATA SET
Agricultural inputs
Dams
Land Use/Land Cover
Nutrient inputs
Pollution discharge
Population density
Power plants
Transportation
Water intake
Water diversions
Landscape metrics
PCI
Count density
(dams/unit area)
Percentages of land use types
Patch size descriptors (mean, SD, CV)
Patch density (patches/unit area)
Patch diversity (Shannon H1)
Edge density
Percent impervious surface (via road density or Landsat
model)
PCI
Point source density (count or weighted count per unit area)
Individuals/ km2
Point source density (count or weighted count per unit area)
Road density (km road/ km2)
Density weighed by volume
# diversions per unit area
Once data have been synthesized, there are three useful types of transformations to make the data comparable The
first are normalizing transformations, landscape data often have different levels of skewness, kurtosis or modality that
confound both summary statistics and analysis The arcsme square root transformation is appropriate for proportional
land use/land cover  data  (e g  % agriculture in watershed)  Road density  and point source densities can  be
normalized with  a  natural log  transformation [Ln(value  +  the  minimum  non-zero value)]  A second stage of
transformation involved scaling the data in terms of its variability  [(value — minimum value)/standard deviation]
Finally, to put data on a common scale, landscape data can be rescaled on a 0-1  basis (normalized value — minimum
normalized value)/(max  normalized value - mm  normalized value)  The result of this final step is to give equal
weight to all stressors

Interpretation
The landscape metrics described above comprise a suite of indicators that, from a monitoring perspective, can be used
to illustrate changes over time  These can be interpreted m two ways  First and simplest, the watershed changes
related to individual coastal wetlands can be compared across time periods,  and relative or absolute  changes  in the
metrics quantified The metrics can also be interpreted on a lakewide basis  For example, the above approach will
allow the identification of stressor gradients, including reference watersheds — the upper end of the stressor gradient
that quantifies the least impacted systems, and "at-risk" watersheds — those  occupying the lower end of the gradient
Other watersheds can then be ranked along this stressor gradient, and tracked over time This  gradient  approach
provides a means  to answer the question "Is this watershed moving towards or away from reference condition, and by
how much'"   The ability to understand these changes can be used as a benchmark for  assessing  the success of
restoration activities and identify wetlands which are coming under increased stress
 www glc org/wetlands
163

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Implementation Approaches

Dissemination Strategies, Datasets, and Product Synthesis

The  landscape metrics data  will need to be broadly  disseminated and widely publicized  to maximize utility and
uptake  For those decision makers and researchers whose work depends on timely access to the data, ensuring ease-
of-use and continuity or operations is crucial To this end, the Great Lakes Information Network (GLIN  www great-
lakes net) website will be utilized Since 1993, GLIN has been a recognized information service providing "one-stop
shopping" for Great Lakes-related resources  Owing to its strong network of state, provincial, federal and regional
partner  agencies and organizations, GLIN has become a  necessary component of informed decision making, and a
trusted and reliable source of information for those who live, work or have an interest in the  Great Lakes basin

Dissemination Strategies
The  Maps and CIS  section of the GLIN website (http //gis glm  net) provides a centralized location  to discover,
publish, and acquire geospatial data for areas within the Great Lakes basin  The site has four major components  1) a
portal for viewing and exploring the Great Lakes and associated data layers, 2)  a data portal fGLIN GIS\ through
which GIS and geospatial data for the Great Lakes can be published and acquired, 3) a gallery of downloadable images
depicting Great Lakes geophysical data, and 4) a collection of links and tools intended to connect users to additional
resources relating to Great Lakes datasets

Through the GLIN GIS data portal, geospatial data is made widely available through a multiplicity of file formats (e g
PDF, KML, SHP) and as  OGC  Web services  These data can be downloaded and incorporated into a user's GIS
application (e g  Google  Earth,  uDig,  ArcGIS) or  visualized and interacted with using the site's  integrated  web
mapping applications  FGDC-comphant metadata  accompanies each dataset and  is published  through external
clearinghouse nodes (i e GeoSpatial Onestop) to support data discovery in both the U S and Canada

Datasets
A variety of data sets will be available via  the GLIN GIS data portal  In addition to the existing data sets available
(framework and otherwise), several data sets relating landscape metrics are planned to be offered, including

Wetland inventory
     •    Stressor Gradient(s)
     •    Watersheds
     •    Land cover
     •    Population density
     •    Road density
     •    Other stressors
Biologic data
     •    Species range maps
     •    Exotic species distribution
Monitoring data
     •    Monitoring site selection
     •    Monitoring data

Product Synthesis
In addition to data downloads, data may be uploaded for placement on the GLIN  site  This  will allow for integration
of local  level mapping and monitoring data  as well as regional scale data products created  by individual organizations
] 64                                                              Great Lakes Coastal Wetlands Monitoring Plan

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All data uploaded will require FGDC-comphant metadata, and reports of accuracy assessment   Classification maps
should    be    categorized    using    the     NWI    classification    system     for    mapping    wetlands
(http-//www fws gov/nwi/Pubs  Reports/  Class  Manual/class  titlepg.htm) and the  Land  Use  Land  Cover
Anderson  Level II Classification System (http //landcover usgs gov/pdf/anderson pdf) for  mapping uplands  Data
products   will   be    checked    for    continuity   and    accuracy    before    publication    on    GLIN
www glc org/wetlonds                                                                                    165

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Bailey, R G , 1987, Suggested hierarchy of criteria for multi-scale ecosystem mapping  Landscape and Urban Planning 14, 313-319

Bourgcau-Chavc/, L L , K Riordan, M Nowels, andN Miller  2004  Final Report to the Great Lakes Commission  Remotely Monitoring
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Fournicr, R  M Grcmcr, A Lavoic, R Hclic  2007 Towards a stratcg)  to implement the Canadian Wetland Inventory using satellite remote
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Hcrdcndorf, C E  1 988  Classification of geological features in Great Lakes ncarshorc and coastal areas Protecting Great Lakes Ncarshorc and
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Hollcnhorst, T ,  Brown, T N  , Johnson, L B , Ciborowski, J J H , Host,  G  E 2007  Methods for generating multi-scale watershed
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Host, G,J Schuldt, J Ciborowski, L B Johnson, T Hollcnhorst, C Richards 2005 Use of CIS and remotely sensed data for a priori
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Ingram, J,K Holmes, G Grabas, P  Walton, B Potter, T  Comer, and  N  Stow 2004  Development of a Coastal Wetlands Database for the
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Johnson, L B , C Richards, G E  Host, andj W  Arthur  1997  Landscape influences on water chemistry in Midwestern stream ecosystems
Freshwater Biology  37 193-207

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Fisheries Society Symposium 48 IS1 -173

Kcough, JR.TA  Thompson, G R Guntcnspcrgcn, and D A  Wilcox  1999 Hydrogcomorphic factors and ecosystem response in coastal
wetlands of the Great Lakes Wetlands 9(4)821-834

Lope/., R D , C M  Edmonds, D T Hcggcm, A C Ncalc, K B  Jones, E T Slonccker, E Jaworski, D Garofalo, and D Williams 2004
Accuracy Assessments of Airborne Hypcrspcctral Data for Mapping Opportunistic Plant Species in Freshwater Coastal Wetlands in (R S
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Lope/., R D , C B  Davis, and M S Fcnncssy  2002  Ecological relationships between landscape change and plant guilds in dcprcssional
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Maidmcnt D , S Morchousc, and S  Fncsc 2002  Arc Hydro framework Arc Hydro CIS Tor Water Resources (D Maidmcnt and D  R
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Maidmcnt, D R  1997  AGREE-DEM surface rccondiDonmg system
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Mine, L D 1997 Great Lakes coastal wetlands  an overview of abiotic factors affecting their distribution, form, and species composition
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Niemi, G J, J  Kelly, and J Ciborowski  2007 Ecological indicators for the Great Lakes coastal region a synthesis of results Journal of Great
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TechRpt TR-WRP-DE-9
 www glc org/wetlands                                                                                                    167

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75 162-173

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Wei, A  and Chow-Fraser, P  2007 Use of IKONOS imagery to inventory coastal wctlandsof Georgian Bay Fisheries 32  167-173

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32 607-628
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Landscape-Based  Indicators  Glossary and  Key Terms

Airborne hyperspectral data A remote sensing data type that contains a relatively large number of spectral bands (typically more than 20)
and is acquired by a sensor that resides on an airplane, at cither a low or high altitude
Airborne multispectral data  A remote sensing data type that contains a relatively small number of spectral bands (typically less than 10)
and is acquired by acquired by a sensor that resides on an airplane, at cither a low or high altitude
ANOVA: Analysis of Variance test
Anoxic Condition which lack oxygen, typical of wetland soils
C-CAP The U S National Atmospheric and Occanographic Administration's Coastal Change and Analysis Program
CCRS: Canadian Center Tor Remote Sensing
CWS:  Canadian Wildlife Service
Decision support  A set of software and/or database applications that arc intended to allow users to search large amounts (c g , in a
clearinghouse) of information for specific reporting that can result in making (c g , environmental) management decisions
Ecological processes The How of energy and nutrients (including water) through an ecosystem
Ecosystem  An interacting system consisting of groups of organisms and their nonliving or physical environment, which arc interrelated
Ecosystem approach An approach to perceiving, managing and otherwise living in an ecosystem that rccogm/cs the need to preserve the
ecosystem's biochemical pathways upon which life within the ecosystems depends (c g , biological, social, economic, etc )
Ecological indicator A characteristic of the environment that is measured to provide  evidence of the biological condition of a resource
(Hunsakcr and Carpenter, 1990)  Ecological indicators can be measured at different levels, including organism, population, community, or
ecosystem  The indicators in this volume arc measures of ecosystem level characteristics, at a broad scale (Jones etal, \ 997)
Ecosystem integrity The inherent capability of an ecosystem to organi/.e (c g , its structures, processes, diversity) in the face of
environmental change
Endpomt: Endpomts describe a characteristic of an ecosystem of interest, and should be an ecologically relevant measurement An cndpomt
can be any parameter, from a biochemical state to an ecological community's functional condition
EPA The United States Environmental Protection Agency
Extirpation The elimination or disappearance of a species or subspecies from a particular area, but not from its entire range
Foot 0 305 meters
CIS Geographic Information Systcm(s)
GLNPO U S EPA's Great Lakes National Program Office
Herptile: A jargon term used to refer to both amphibians and reptiles
HGM  Hydrogcomorphic (methodology)
Hyper-eutrophication The undesirable overgrowth of vegetation and algae as a result of high  concentrations of nutrients in wetlands,
cutrophication greater than the typically higher levels of nutrients found in wetland relative to lakes, streams, and rivers
IBI: Index of Biotic integrity
Indicator  In biology/ecology, any biological or ecological entity that charactcn/cs the  presence or absence of specific environmental
conditions, as demonstrated by statistical correlations of ecologically meaningful relationships between the cntity(ics) and the environmental
condition(s)
Kilometer: 0 62 miles
Land cover  A biological and/or physical description of the Earth's surface  It is that which overlays or currently covers the ground  This
description enables various biophysical categories to be distinguished, such as areas of vegetation (trees, bushes, fields, lawns), bare soil, hard
surfaces (rocks, buildings), and wet areas and bodies of water (watercourses, wetlands)
Land use A social or economic description of land cover For example, an "urban" land cover description can be described as a land  use if
particular information about the activities that occur in the urban area can be discerned, such as residential, industrial, or commercial  uses It
may be possible to infer land use from land cover, and the converse, but situations arc often complicated, and the links to land use arc not
always evident, unlike land cover, land use is difficult to infer from remote sensing imagery, or over vast areas of the landscape  For example, it
is often difficult to decide if grasslands arc used or not for agricultural purposes  Distinctions between land use and land  cover and their
definition have impacts on the development of classification systems, data collection, and geographic information systems in general
Landsat The satellite-based U S National Aeronautics and Space Administration project that, in the late 1960s and early 1970s, endeavored
to observe land features from space The program has evolved by the launching of a total  of several satellites to date  Landsat imagery  is used for
a variety of Earth observations
Landscape: A complex concept encompassing several definitions For the purposes of this report, a landscape is an  area containing a mosaic of
land cover "patches," i c , distinct areas that can be defined or mapped  The traits, patterns, and structure of a specific geographic area,
including its biological composiDon, its physical environment, and its anthropogenic or social patterns
Landscape characterization: The process of documenting the traits and patterns of the essential elements of the  landscape
Landscape ecology  The study of the distribution patterns of communities and ecosystems, the ecological
processes that affect those patterns, and changes in pattern and process over time and space
Landscape indicator A measurement of the landscape, calculated from mapped or remotely sensed data, used to describe some other spatial
or temporal pattcm(s) of land use or land cover across a geographic area
www glc org/wetlands                                                                                                   169

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Landscape metrics A measurement of a component or components (e g , patches of forest) within the landscape, which is used to
characterize composition and spatial configuration of the component within the landscape (e g , forest size, fragmentation, proximity to other
land cover types)
Landscape unit: A reference unit (usually of area) that is being measured, mapped, or described
Laser altimeter - An instrument that uses a LiDAR to measure the height of the platform (spacecraft or aircraft) above the surface The height
of the platform with respect to the mean Earth's surface is used to determine the topograph) of the underlying surface
LiDAR - A light detection and ranging sensor that uses a laser (light amplification by stimulated emission of radiation) to transmit a light pulse
and a  receiver with sensitive detectors to measure the backscattcred or reflected light Distance to the object is determined by recording the
time between transmitted and backscattcrcd pulses and by using the speed of light to calculate the distance traveled LiDARs can determine
atmospheric profiles of aerosols, clouds, and other constituents of the atmosphere
Liter  1 057 quarts
Meter 3 28 feet
Metric: Any measurement value
Mile: 1 61 kilometers
Model A representation of reality used to simulate a process, understand a situation, predict an outcome, or analy/e a problem  A model is
structured as a set of rules and procedures, including spatial modeling tools that relate to locations on the Earth's surface (Jones a al, 1997)
MODIS The satellite-based "Moderate Imaging Spcctroradiomctcr " A project undertaken by the U S  National Aeronautics and Space
Administration that endeavored to improve our understanding of global dynamics and processes occurring on the land, in the oceans, and in the
lower atmosphere
ORD: U S  EPA's Office of Research and Development
Patch A discrete land cover unit, for example, a "patch of forest" is a specific 25-hectare wooded area in Monroe County, Michigan
Perforated: The condition of a patch where gaps  in the patch exist, such as a gap in a forest patch, which may contain shrub, grass, or other
nonforest land cover
PRISM : Parameter-elevation  Regressions on Independent Slopes Model
Quantile: Each class contains an approximately equal number (count) of features A quantilc classification is well-suited to linearly distributed
data  Because features arc grouped by the number  within each class, the resulting map can be misleading, in that similar features can be
separated into adjacent classes, or features with widely different values can be lumped into the same class This distortion can be mimmi7cd by
increasing the number of classes
Radar: An active radio detection and ranging sensor that provides its own source of electromagnetic energy  An active radar sensor,  whether
airborne or spacebornc, emits microwave radiation in a scries of pulses from an antenna When the energy  reaches the target, some of the
energy is reflected back toward the sensor  This backscattcrcd microwave  radiation is detected, measured,  and timed  The time required for the
cnerg) to travel to the target and return back to the sensor determines the distance or range to the target
RU.S.LE: Revised Universal Soil Loss Equation
SAR: Synthetic Aperture Radar,  a side-looking imaging radar that sends out its own microwave frequency energy source and measures the
backscattercd energy SAR is a high-resolution ground mapping technique that takes advantage of the forward motion of a vehicle
carrying a pulsed radar to synthesize the effect of a large antenna aperture  In other words, the larger the radar antenna
(aperture),  the higher the radar picture's resolution
Satellite hyperspectral data  A remote sensing data type that contains a relatively large number of spectral bands (typically more than 20)
and is acquired by a sensor that resides on an Earth-orbiting platform
Satellite multispectral data A remote sensing data type that contains a relatively small number of spectral bands (typically less than 10) and
is acquired by a sensor that  resides on an Earth-orbiting platform
Scale: The spatial or temporal dimension over which an object or process can be said to exist as in, for example, the scale of forest habitat This
is an important factor to consider during landscape ecology assessments because measured values often change with the scale of measurement
For example, coarse  scale maps have  less detailed information than fine scale maps and thus exclude some information, relative to fine scale
maps
Seiche: Temporary  displacement of water in a large lake owing to high winds or atmospheric pressure  The short-term water-level oscillations
that result from a seiche arc functionally analogous to ocean tides
SOLEC: State of the Lakes  Ecosystem Conference
Spatial database: A collection of information that contains data on the phenomenon of interest, such as forest condition or stream pollution,
and the location of the phenomenon on the Earth's surface (Jones et al, 1997)
Spatial pattern: Generally, the  way things arc arranged on the Earth's surface, and thus on maps  For example, the pattern of forest patches
can be described by their number, si/c, shape, or proximity to other entities  The spatial pattern exhibited by a map can be described in terms
of its overall texture, complexity, or by other landscape metrics
STATSGO State Soil Geographic (database)
System An assemblage of interrelated elements or components that comprise a unified whole An ecological system (ecosystem) is one type
Thematic map  A map that shows the spatial distribution of one or more specific "data themes" (c g ,  percentage of agriculture or human
population)
U.S.  EPA  United States Environmental Protection Agency
U.S.  FWS: United States Fish & Wildlife Service
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Watershed: A region or area shown in a map as a bounded area that might be actually bounded (on the ground) by ridge lines or other physical
divides, which dram ultimately to a particular watercourse or body of water (Jones a al, 1997)
 www glc org/wetlands                                                                                                  171

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                  Chapter 9
     Cost Analysis for Sampling of
    Great Lakes Coastal Wetlands
                 Chapter Author
              Marci Meixler, Cornell University
172
Great Lakes Coastal Wetlands Monitoring Plan

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Introduction

Great Lakes coastal wetland monitoring  involves many possible costs including paying and training staff, buying
equipment, travel expenses, and processing of samples  Funding availability often determines how much sampling is
feasible, therefore it is important to evaluate cost as a factor in developing a monitoring wetland program

During the course of this project detailed cost  estimates were assembled and analyzed for the following indicators
water chemistry,  plants,  invertebrates, fish, amphibians, birds, and landscape attributes  Cost estimates  for each
indicator included-
    •   the cost for each item of equipment needed to sample each indicator and whether it is likely to already be
        owned, if it is shared by several indicators, and if it is consumable
    •   cost estimates of salaries for technicians and professionals involved in sampling
    •   the length of time it takes each person to sample each wetland for each indicator
    •   the cost and time needed to tram  staff in the protocols  for sampling each indicator
    •   cost estimates for external lab processing of water chemistry and invertebrate samples
    •   the costs  per mile for automobile and boat travel

These cost estimates formed the basis for the  development of the Exccl-based  Wetland Sampling Cost Estimator
Tool  This tool presents cost information in a format most useful for monitoring agencies since it allows them to test
an almost unlimited variety of scenarios and evaluate the relative differences in  cost Members of the Great Lakes
Coastal Wetlands  Consortium evaluated and verified the Cost Estimator Tool and its underlying assumptions and cost
formulas.

Results from the Cost Estimator Tool indicate that total costs for the sampling of one wetland site vary from $1,395
to $5,223 with birds, amphibians and plants the least expensive indicators to sample respectively and invertebrates by
far the most expensive indicator The variable (per wetland) costs of sampling are greatest for invertebrates ($3,241),
landscape attributes ($2,222) and  fish  ($1,029) and lowest for birds ($112) and amphibians ($160) The fixed costs
(startup costs) are highest for water chemistry ($1,609) and invertebrates ($841) and lowest for amphibians ($106)
and birds ($111)  Costs decrease if either water  chemistry or invertebrate samples are sent to external labs

As a way of demonstrating the effectiveness of the tool, we tested and gave results for three scenarios that we titled
minimalist, no-expense-spared and middle-ground cost estimations The middle-ground and likely typical scenario
for the sampling of all indicators in five sites would result in a cost of $99,828  A stripped down sampling program
with only the three least expensive indicators (birds, amphibians and plants) sampled in five sites would cost $6,302
A  sampling regime without regard to cost would run $ 179,777 for  five wetland sites largely  due to the high cost of
training staff in landscape attribute monitoring

The results from this study could be used  to guide monitoring agencies in  the process of making decisions regarding
cost effective implementation of wetland monitoring programs in the Great Lakes
Objectives  and  background
Great Lakes coastal wetland monitoring  involves many possible costs including paying and training staff, buying
equipment, travel expenses, and processing of samples  Funding availability often determines how much sampling is
feasible, therefore it is important to evaluate cost as a factor in developing a monitoring wetland program

During the course of this project detailed cost  estimates were assembled and analyzed for the following indicators
water chemistry, plants, invertebrates, fish, amphibians, birds, and landscape attributes  The people responsible for


www glc org/wetlonds                                                                                    1 73

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writing protocols for each indicator evaluated all of these estimates and provided Feedback and comments  The tasks
involved in creating cost estimates for each indicator included
    •   Determining all equipment needed to sample each indicator and identifying the following for each item  its
        cost, if it is likely to already be owned, if it is shared by several indicators, and if it is consumable,
    •   Developing estimates of salaries for technicians and professionals involved in sampling,
    •   Estimating how long it would take each person to sample each wetland for each indicator,
    •   Approximating the cost and time needed to tram staff in the protocols for sampling each indicator,
    •   Procuring cost estimates for external lab processing of water chemistry and invertebrate samples, and
    •   Calculating costs per mile for automobile and boat travel

These cost estimates formed the  basis for the development of the Excel-based Wetland Sampling Cost  Estimator
Tool  This tool presents cost information in a format most useful for monitoring agencies since it allows them to test
an almost unlimited variety  of scenarios and evaluate the relative differences in cost  The Partners Committee
evaluated  the tool and feedback was  incorporated  The results from this study will be used to guide monitoring
agencies in the process of making decisions regarding cost effective implementation of wetland monitoring programs
in the Great Lakes


Methods

Costs

Cost estimates were developed for each piece of equipment used in the sampling of each of the indicators Costs were
obtained from a variety of sources including reports developed from the 2002 Great Lakes wetlands sampling season,
online research and phone calls  to stores  When possible at least three cost estimates were found for each item  Cost
estimates of equipment needed for each indicator are given in Tables 9-1 through 9-7  Also included in these tables is
information on whether the item is  consumable/non-consumable, generally owned/not owned by  the  sampling
agency, and whether multiple indicators share the item  Table 9-8 includes costs for general  equipment used during
the sampling of all indicators. All  equipment costs were verified by the people responsible for writing  the protocols
for each  indicator namely  Don Uzarski (water chemistry/invertebrates/fish),  Denny  Albert (plants),  Steve
Timmermans (birds/amphibians), and Ric Lopez and Laura Chavez (landscape attributes)
1 74                                                               Great Lakes Coastal Wetlands Monitoring Plan

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Table 9-1 . Cost estimates of equipment needed for the sampling of wetland water chemistry



Equipment
Cooler
Ice packs
Gloves
Whirlpaks
Thermometer (2)
Kimwipes
Goggles
Calibration rack
Sample tubes
Test-tube racks
Nalgene bottles
Standards (nutrients)
Phosver 3
Nitraver 3
Nitraver 5
Volumetnc Flasks
Graduated Cylinders
Filters
Beakers
Pipettes
Pipette tips
Filtenng Unit
Hand pump
Ammonia
Alkalinity
HCI
Nitnc acid
Sulfunc acid
NaOH
Turbidity standard
Conductivity standard
pH standard
Syringes
Syringe filters
GFC filters
Secchi disk
Hydrolab



Cost (US$)
$8
$10
$15
$1
$20
$5
$13
$66
$42
$98
$99
$16
$4
$6
$5
$37
$158
$5
$22
$231
$103
$124
$124
$15
$6
$6
$3
$5
$6
$23
$3
$3
$245
$37
$7
$36
$10,000

Consumable/
nonconsumable
(C/N)
N
N
N
C
N
C
N
N
N
N
N
C
C
C
C
N
N
C
N
N
N
N
N
C
C
C
C
C
C
C
C
C
N
C
C
N
N

Generally
owned/not
owned (O/N)
N
N
N
N
N
N
N
N
N
N
N
N
N
N
N
N
N
N
N
N
N
N
N
N
N
N
N
N
N
N
N
N
N
N
N
N
0
Shared with
other
indicators
(Y/N)
N
N
N
N
N
N
N
N
N
N
N
N
N
N
N
N
N
N
N
N
N
N
N
N
N
N
N
N
N
N
N
N
N
N
N
N
N

Used for field
sampling/onsite lab
processing (F/L)
F
F
F
F
F
L
L
L
L
L
L
L
L
L
L
L
L
F
L
L
L
F
L
L
L
L
L
L
L
L
L
L
L
L
L
F
F
www glc org/wetlands
175

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Table 9-2. Cost estimates of equipment needed for the sampling of wetland plants


Equipment
Plant bags and tags
Plant press and blotters
Rake (2)
Hand lens
Quadrat frame
1/2 inch Conduit
Field guides/taxonomic keys


Cost (US$)
$1
$90
$20
$5
$10
$3
$236
Consumable/
nonconsumable
(C/N)
C
N
N
N
N
N
N
Generally
owned/not owned
(0/N)
N
N
N
N
N
N
N
Shared with
other indicators
(Y/N)
Y
Y
Y
Y
Y
Y
Y
Table 9-3. Cost estimates of equipment needed for the sampling of wetland invertebrates


Consumable/
Generally
nonconsumable owned/not
Equipment
D-frame sweep nets (3)
Shallow pans (3)
Forceps (3)
Eye droppers (3)
Clicker counters (3)
Pipettes (100)
Petn dishes
Scintillation vials (1500)
Invertebrate identification books (2)
Dissecting microscope
Light source for scope
Ethanol
Bottles for bug collection
Squirt bottles
Cost (US$)
$153
$24
$18
$1
$27
$16
$50
$227
$150
S1.201
$289
$22
$9
$24
(C/N)
N
N
N
N
N
N
N
N
N
N
N
C
C
N
owned (O/N)
0
N
N
N
N
N
N
N
N
0
N
N
N
N

Shared with other
indicators (Y/N)
N
N
N
N
N
N
N
N
N
N
N
Y
Y
N

Specific to sweep
nets/lab (S/L)
S
S
S
S
S
S
L
L
L
L
L
-
-

Table 9-4. Cost estimates of equipment needed for the sampling of wetland fish


Equipment
Fyke nets - for 6 nets
Metal conduit (as stakes for fyke net)
Buoys
Rope for attaching buoys
Ethanol
Baking soda for putting out fish
Fish ID books
Buckets for holding fish
Fish measuring boards
Small dip nets (3)
Nalgenes for keeping sample fish
Cable ties


Cost (US$)
$3,366
$60
$5
$2
$3
$1
$60
$20
$15
$5
$15
$1
Consumable/
nonconsumable
(C/N)
N
N
N
C
C
C
N
N
N
N
N
C
Generally
owned/not
owned (O/N)
O
N
N
N
N
N
N
N
N
N
N
N
Shared with
other indicators
(Y/N)
N
N
Y
Y
Y
N
N
N
N
N
Y
N
Specific to
fyke/minnow
(F/NI)
F
F
-
-
-
-
-
-
-
-
•
-
 176
Great Lakes Coastal Wetlands Monitoring Plan

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Table 9-5. Cost estimates of equipment needed for the sampling of wetland amphibians
 Equipment                          Cost (US$)
 Field guides for amphibians                 $47
 Bird call tapes                            $26
 Metal electical conduit including stakes         $56
 Thermometer                            $10
 Consumable/       Generally
nonconsumable   owned/not owned  Shared with other
    (C/N)            (O/N)        indicators (Y/N)
      N               N                N
      N               N                N
      N               N                Y
      N               N                Y
Table 9-6. Cost estimates of equipment needed for the sampling of wetland birds


Consumable/
nonconsumable
Equipment
Binoculars
Field guides for birds
CD player and speakers
Bird call CDs
Metal electical conduit including stakes
Meter and volt-ohm
Thermometer
Cost (US$)
$300
$47
$75
$26
$56
$5
S10
(C/N)
N
N
N
N
N
N
N
Generally


owned/not owned Shared with other
(O/N)
O
N
O
N
N
N
N
indicators
Y
N
N
N
Y
N
Y
(Y/N)







Table 9-7. Cost estimates of equipment needed for the sampling of wetland landscape attributes

                                           Consumable/     Generally
                                          nonconsumable owned/not owned
Equipment
Binoculars
CIS software
Aenal photographs
Airborne remote sensing data
Satellite remote sensing data
Spectre radiometer
Plant bags and tags
Plant press and blotters
Rake (2)
Hand lens
Quadrat frame
1/2 inch Conduit
Field guides/taxonomic keys
Cost (US$)
$300
S18.495
$100
$1,000
$500
$9,000
$1
$90
$20
$5
$10
S3
$236
(C/N)
N
N
N
N
N
N
C
N
N
N
N
N
N
(O/N)
0
O
0
O
O
0
N
N
N
N
N
N
N
Indicators (Y/N)
Y
N
N
N
N
N
Y
Y
Y
Y
Y
Y
Y
CIS/Field (GIF)
F
G
G
G
G
GIF
F
F
F
F
F
F
F
 www glc org/wetlands
                                             177

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Table 9-8. Cost estimates of equipment needed for general wetland sampling. These costs are shared by all
indicators


Consumable/
nonconsumable
Equipment
Boat
14' flat-bottomed boat
9 9 horsepower motor
Boat trailer
Boat sponge
Grease kit
Screwdrivers
Set of wrenches
Boat paddles (2)
Rachel tie down (2)
Anchor
Fire extinguisher
Jerry can
Black auto goop
Canoe
Canoe
Canoe paddles (2)
Canoe blocks
Tie down straps
Motor for canoe
Field equipment
Backpack
GPS unit
Topo maps
Compass
Waders (3)
Depth stick
Tape measure - 100 m
Tool box
Gazetteer
Digital camera
case for digital camera
Rite-m-the-ram paper
Clipboards (2)
Field paperwork organizers
Flagging
Stickers for labeling samples
Tape
Scissors
Rope
China markers
Spare keys
VHP radio
Batteries for field equipment
Sunblock
Bandaids
Aspnn
Antiseptic solution
PFDs (4)
CDs for data storage
Flashlight (2)
Dry bags (2)
Fox 40 whistles (2)
Cowhide gloves (3)
Reflective tape
Safety tape
Duct tape
Insect repellent (3)
Zip loc freezer bags
Pens/pencils
Stop watch
Safety kit
Paper towels
Cost(USS)

$1.321
S2.123
$855
S1
$10
S5
$10
$30
$17
$11
$15
$8
$7

$786
$21
$6
$20
$500

$28
$145
$66
S35
$150
$40
$50
$20
$20
$200
S22
S10
$10
$5
$8
$5
$2
$4
$34
$6
$10
$143
$100
$20
$3
$6
$7
$174
$15
$41
$43
$9
$19
$26
$11
$15
S22
$2
$5
$9
$19
$50
(C/N)

N
N
N
N
C
N
N
N
N
N
N
N
C

N
N
N
N
N

N
N
N
N
N
N
N
N
N
N
N
C
N
N
C
C
C
N
C
C
N
N
C
C
C
C
C
N
C
N
N
N
N
C
C
C
C
C
C
N
N
C

Generally owned/not
owned (O/N)

O
O
O
N
N
N
N
N
N
N
N
N
N

N
N
N
N
N

O
O
N
N
O
N
N
N
N
N
N
N
N
N
N
N
N
N
N
N
N
0
N
N
N
N
N
N
N
N
N
N
N
N
N
N
N
N
N
N
N
N
178
Great Lakes Coastal Wetlands Monitoring Plan

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Table  9-9 shows  total costs with  reductions for  shared items and consumables from Tables 9-1  through 9-7
combined. Table 9-10 shows cost estimates for equipment that might be already owned
Table 9-9. Estimates of total costs and consumables for equipment to sample each indicator
Water chemistry
Plants
Invertebrates
Fish
Amphibians
Birds
Landscape attributes
                                                                  Costs with reductions for
                                                                     shared equipment
                                                                          $1.609
                                                                           $365
                                                                           $841
                                                                           $175
                                                                           $106
                                                                           $111 •
                                                                           $365
Consumables
    $158
     $1
    $31
     $7
     $0
     $0
     $1
Table 9-10. Estimates of costs for equipment possibly owned by agencies	

                                                                                           Indicator affected or
                                                                                            general equipment
                                                                           Costs                category
                                                                           $10,000             water chemistry
                                                                            $153               invertebrates
                                                                           $1,201               invertebrates
                                                                           $3,366                  fish
                                                                            $75              birds/amphibians
                                                                            $300              birds/landscape
                                                                           $18.495               landscape
                                                                           $10,600               landscape
                                                                            $28                  general
                                                                            $145                 general
                                                                            $150                 general
                                                                            $143                 general
                                                                             $0                  canoe
                                                                            $786                 canoe
                                                                            $21                  canoe
                                                                             $6                  canoe
                                                                            $20                  canoe
                                                                           $1,321                  boat
                                                                           $2,123                  boat
                                                                            $855                  boat
                                                                             $1                   boat
                                                                            $10                   boat
                                                                             $5                   boat
                                                                            $10                   boat
                                                                            $30                   boat
                                                                            $17                   boat
                                                                            $11                   boat
                                                                            $15                   boat
                                                                             $8                   boat
                                                                             $7                   boat
Owned equipment values
Hydrolab
D-frame sweep nets (3)
Dissecting microscope
Fyke nets - for 6 nets
CD player with speakers
Binoculars
CIS software
Aenal photographs, airborne and satellite data for sites & spectroradiometer
Backpack
GPS unit
Waders (3)
VHF radio
Canoe
Canoe paddles (2)
Canoe blocks
Tie down straps
Motor for canoe
14' flat-bottomed boat
9 9 horsepower motor
Boat trailer
Boat sponge
Grease kit
Screwdrivers
Set of wrenches
Boat paddles (2)
Rachettiedown(2)
Anchor
Fire extinguisher
Jerry can
Black auto goop
Estimates of the time involved, people needed and training necessary to sample each indicator were developed using
information from the 2002 wetland sampling effort reports  and in consultation with the experts  listed  above
Estimates were tallied of the time required to sample each indicator per wetland per person and whether training was
needed, and if so, how many hours it would take and how much training would cost All of this information  is
presented in Table 9-11
 www glc org/weilonds
                                                                                                           179

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Table ?-11. Estimates of the sampling time, training time and training cost for wetland indicator sampling

Person-time values
Water chemistry w/lab time
Water chemistry w/o lab time
Plants
Invertebrates (sweep netting w/lab time)
Invertebrates (sweep netting w/o lab time)
Fish (fyke nets)
Amphibians
Birds
Landscape (GIS analysis)
Landscape (field based inspections based on habitat)
Landscape (remote sensing analyses)
Time per wetland per
person (in hours)
18
2
12
45
15
32
10
7
5
24
80
Time required to tram
people (in hours)
85
05
4
85
05
05
3
6
16
120
160
Cost for training per
person
SO
SO
SO
SO
SO
SO
$125
$250
$950
$18,000
$2.000
Water chemistry sampling time was calculated as 18 hours including lab time and two hours without lab time  The
time per plant zone per person including field sampling and lab processing was calculated as 4 5 hours and 0 5 hours
without lab time for four plant zones per wetland No replicates are needed since these are covanates thus the spatial
variability is handled by stratifying sites by plant zones Plant sampling time estimates were based on the following  It
will take approximately ten hours/person for two people to perform IS samples per plant zone in two zones per
wetland  Only one visit is necessary  per wetland Air photo interpretation will add an additional hour and  plant
identification another  hour  per person  This averages out to  approximately  twelve hours  per person for  plant
sampling per wetland  Invertebrate sampling using sweep nets time was calculated as 45 hours including lab time and
15 hours without lab time The time per sweep net per person  including lab time was calculated as 3 75 hours and
without lab time as 1 25 hours with three sweeps per plant zone  and four plant zones per wetland  Sampling time per
wetland for fish using fyke nets was calculated as 32 hours This was determined as two hours per net per person with
four nets per plant zone and four plant  zones per wetland  The ten hours  indicated  for the amphibian  survey was
based on the approximate time it takes to complete three survey visits of about three hours each plus one hour  of
survey set-up time  For birds, sampling time per person per wetland was calculated as seven hours This was based on
the approximate time it takes to complete two survey visits of about three hours each (in this case, one MMP  route
consisting of six stations occurring at an  individual wetland site  plus some time to travel between stations) plus one
hour of survey  set-up time Landscape analysis was broken into three categories GIS analysis, field inspections based
on  habitat, and remote sensing  analysis Sampling  time  per wetland per person in hours for GIS analysis was
calculated as  five hours, for field inspections based on habitat as 24 hours and  for remote sensing analysis as 80 hours

Training time and costs vary according to the indicator being sampled  Training is required for both water chemistry
and invertebrate sampling and each takes 8 5 hours  including time  to teach lab processing techniques and only 30
minutes  if no lab training is needed  (Dr  Donald Uzarski,  Central Michigan University, personal communication
2007) All training for both water chemistry and invertebrate sampling can be done  at no cost  Likewise,  wetland
plant and fish sampling can be done at no cost with plants requiring four hours in the field and fish, 30 minutes in the
field (Dr  Dennis Albert, Michigan State University, personal communication 2007; Dr  Donald  Uzarski, Central
Michigan University, personal communication 2007) Amphibian and bird sampling will require six and  three  hours
of training at  a cost  of  $250 and  $125, respectively (Dr  Steve Timmermans,  Bird Studies  Canada, personal
communication 2007)  Training  in ArcGIS can be  accomplished via a 16 hour course  taken through ESRI, the
developers of ArcGIS software, for $950 (ESRI 2007) Field based inspections based on habitat could be accomplished
through  a  120  hour training for $18,000 and remote sensing training would take 160 hours and cost $2,000 (Dr
Ricardo Lopez,  U S  EPA/ORD/NERL/ESD, personal communication 2007)

Per hour wages were  determined for geographic information systems (GIS) professionals, biological  technicians
(hereafter referred to as technicians),  and environmental scientists for the state government (hereafter referred to as
180
Great Lakes Coastal Wetlands Monitoring Plan

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professionals)  The average salary of someone with five years of CIS experience across all Great Lakes states and
provinces is 544,656 U S ($22 32 per hour, GlSjobs com 2007). This is from a web survey with an average response
rate of 649 for each state/province in the Great Lakes  Median hourly earnings for biological technicians, according
to the U.S  Bureau of Labor Statistics Office of Occupational Statistics and Employment Projections, as of May 2004
were $ 15 97/hour and for environmental scientists $23 43 ($46,850 per year, U S Bureau of Labor Statistics 2007)

Sample processing for water chemistry and invertebrate samples can be done in house or the samples can be sent to an
external  lab  Costs per water chemistry sample for off-premises processing  are SlO/sample per parameter and
generally four parameters are processed (three nutrients and alkalinity) and four plant zones are sampled  Therefore,
total costs for external lab processing of water chemistry samples per wetland are $ 160 (Dr Donald Uzarski, Central
Michigan University, personal communication 2007)  External lab processing of invertebrate samples to the lowest
identifiable taxonomic group is $185 per sample for  10  or more samples. Generally,  nine sweep net  samples are
collected per wetland so the total costs for external lab processing of invertebrate samples per wetland are $ 1,665
(GEI consultants 2007)

Travel distances to and from sampling sites  vary considerably, however costs can be approximated given estimated
average travel distances and estimated average costs  per  mile  Costs per mile  include fuel, maintenance,  tires,
insurance, license/registration/fees, depreciation and finance for a large sedan in 2007 are $ 742/mile (AAA 2007)
Travel distances are estimated by the sampling agencies in the Cost Estimator Tool

Indicator sampling may be performed using either a canoe with a motor or a flat-bottomed motor boat  In either case,
if the sampling agency does not own the necessary equipment, it will need to purchase it  Costs are given for canoe
and motor boat purchase and  accessories in Table 8  If a canoe is used with a motor  or a motor boat is  used,
operational costs will also be incurred The motor will require gas and oil  The number of gallons consumed per hour
can be estimated by multiplying horsepower used by 0 100 Thus, a 9 9 horsepower engine requires one gallon per
hour (Boatsafe com 2007)  Assuming a gas oil mixture of 50 1, one gallon of gas  requires 2 56 oz of oil (computer
support group, Inc 2007) Using prices from June 2007 for gas  ($2 957/gallon) and oil ($3 99/16 oz), this relates to
a combined cost of $3  60 to run the boat engine for one hour. For estimation purposes, we assumed that  it takes two
trips to and from a site by boat to complete all sampling at that site

Cost  estimator too/

Many decisions need to be made in the  course of determining  costs for indicator sampling in Great Lakes wetlands
We decided that the easiest way to provide the most information to sampling agencies was to create a Cost Estimator
Tool (Figure 9-1) in Excel that would allow agencies  to make decisions regarding indicators sampled,  equipment,
personnel, training, travel, sample processing, and number of sites to sample and  see how those changes impact the
startup costs, maintenance costs (per wetland costs) and total costs for indicator sampling  This tool was  verified and
tested by the members of the Partners Committee
www glc org/wetlands                                                                                    181

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Wetland Sampling Cost Estimator Tool
Personnel
How many people will be sent into the Uncheck if # of It of How many will
field to perform the following not sampling professionals technicians need training?
Water chemistry l~ M.ll I'Zl I'-lJ
Plants r |i^j |ijj |ijd
Invertebrates r I'zJ !3-lJ !3-lJ
F,sh f ra ra ra
Amphibians T |o^| |i^| |ijj
Birds 1" I»J I'-lJ I'^J
Landscape altributes 1" \2^j [T*] |z^j

Equipment
Check all items that can be made available for wetland sampling
Binoculars P
CIS software P
D-frame sweep nets (3) f?
Fyke nets (E) 17
CD player with speakers r7
Backpack F7
GPS unit P
Waders (3) P
VHP radio r7
Dissecting microscope P
Hydrolab or YSI meters for lemp. DO. pH. conductmly & redo> P
Aenal photographs, airborne and satellite data for sites & speclroiadiometer P
Will you use an outside lab 10 process water chemistry samples? IHO »|
Will you use an outside lab to process invertebrate samples? INO H
Will you sample with a canoe or a boat or both? (Both _»J
Do you own a boat .motor and trailer' JYes »l
Do you own a canoe, paddles and motor? |YB »l

Travel
Can you estimate how many miles you will travel on average (one-way) to a typical site? 20 — ; — |
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Startup wetland for all
costs costs wetlands
Water Chemistry H) SO SO
Plants SO SO SO
Invertebrates SO SO SO
Fish S184 $1.268 S12JB55
Amphibians SO SO SO
Birds SO SO SO
Landscape allnbules SO SO SO
General startup + travel + boat (1 ,563
Total cost S14439
Note Resuia include equipment, salaries, training lor
personnel, end travel. All values m USt




Figure 9-1. Example of the Cost Estimator Tool in Excel.

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Assumptions and  limitations
Many assumptions were necessary in the course of estimating costs to sample each indicator  We assumed that other
than major pieces of equipment (those marked as owned in Tables 1-8), sampling agencies did not own equipment
needed to monitor wetlands This includes all consumables none of which are considered owned by sampling agencies
at the start of the project  This may result in an overestimation of the startup costs involved in purchasing needed
equipment All  consumables are on a per site  basis, meaning each site will require an additional cost to buy more
consumables, except general consumables, which are on a per season basis

Costs were not included for meals or overnight stays  Instead,  we are assuming that all sampling sites are close
enough to enable driving out and back in one day  Similarly, we are assuming that the sampling agency owns a vehicle
to travel to and  from the sampling site and thus we are including no costs for car rental or purchase  In terms of travel
costs, we  also assume  that the sampling agency will be traveling to each individual site from  their  home base (thus,
not combining several  sites into one trip)  In terms of water transportation, we assume that agencies will either own a
canoe or boat or buy one or both but not rent either

Since the exchange rate changes daily, all costs are presented in U S dollars  Costs gathered from reports written in
2002 were converted to U S  dollars using the June  2007 exchange rate  This was done  to  reflect the current
similarity in currency though might result in a slight overestimation of some costs

In terms of indicator sampling  itself, we are assuming that if a sampling agency is sampling invertebrates, they will
only be using sweep nets Similarly, if the agency is sampling for fish, they will only be using  fyke nets However, if
they are doing a landscape analysis, they will use both field and CIS methodologies

The number  of personnel needed  does  not change for water chemistry and invertebrate sampling regardless of
whether the work is in the lab or the field  If personnel need training in any type of indicator  sampling, they will
receive pay during that training  However, so as not to have to differentiate whether professionals or technicians are
receiving the training,  we are calculating their pay as an average of the professional and technician's wages

In terms  of limitations, the cost tool will begin to lose effectiveness over time as costs for equipment
and gas change and the tool is not updated with their inflation adjusted  values. Similarly, salaries will
increase  and those will begin to be dated in the cost tool as well.

Another limitation is the need to lump some things that may not in reality always be lumped For instance, for the
purposes of the tool, we asked  for the total number of people that would be needed to  sample water chemistry and
invertebrates  There is no space to  change that number depending on  whether this is  referring to labwork  or
fieldwork  therefore  the total number of personnel is used to calculate costs for both  This likely results in an inflated
value for personnel costs

Similarly,  it is difficult to  decide how many sites will  be visited in the course of the same day so travel costs are
calculated as if only  one site will be visited per day with no overnight stays This limitation in the model may serve to
increase travel costs

Overall, the cost tool  was designed to be overly conservative and produce higher values than might be  reasonably
expected if cost cutting measures were taken (combining sites in one trip, using staff time wisely, sharing equipment,
etc)

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Results
Experts stated that the number of professionals and technicians needed to sample each of the
indicators are as follows: water chemistry - 1 professional, 1 technician; plants - 1 professional, 1
technician; invertebrates - 1 professional, 3 technicians; fish - 2 technicians; amphibians - 1
technician; birds - 1 technician; landscape attributes - 2 professionals, 2 technicians. Given these
assumptions and without taking training into consideration and holding all other costs constant, the
total cost for sampling each of the indicators are given in Table 9-12.
Table 9-12. Estimates of startup, per wetland and total costs for the sampling of each indicator at one site
and ten sites all ten miles away.
Indicator




Water chemistry
Plants
Invertebrates
Fish
Amphibians
Birds
Landscape attributes
Startup
costs



$1,609
$365
$841
$175
$106
$111
$365
Per wetland
costs



$867
$474
$3,241
$1,029
$160
$112
$2,222
Total costs
for all
wetlands


$2,318
$838
$4,051
$1,197
$266
$223
$2,586
Total costs
(including
general
startup + travel
+ boat) for 1 site
$3,490
$2,010
$5,223
$2,368
$1,438
$1,395
$3,758
Total costs
(including
general



startup + travel
+ boat) for
$6,855
$6,537
$34,658
$11,893
$3,138
$2,664
$24,023
10 sites







Results show that water chemistry has the highest startup costs at $1,609 with invertebrates also quite
high at $841. The rest of the indicators have startup costs ranging from $106 for amphibians to $365
for plants and landscape attributes. Per wetland costs for the indicators vary considerably from $112
for birds to $3,241 for invertebrates. Invertebrate per wetland costs are high due to the cost of
invertebrate sampling processing. This scenario assumes that sample processing will be done in
house. Per wetland costs would drop to $2,766 if samples are sent to an external lab. The high cost of
the in house sample processing is due to the salaries that must be paid to trained staff for the time
involved in invertebrate identification. Water chemistry samples are also assumed to be processed in
house with a per wetland cost of $867. These costs would drop to $397 if samples are instead sent to
an outside lab. This scenario assumes just one wetland site is being sampled so total costs for all
wetlands are calculated as just the startup costs added to the per wetland cost. Total costs vary from
$223 for bird sampling to $4,051  for invertebrate sampling.  General startup costs plus the cost of boat
maintenance and travel (assuming 10 miles to the site) total $1,172 and this value was held constant
during assessment of indicator costs. Total costs, which include general startup costs, boat
maintenance and travel, vary from $1,395 to $5,223 with birds being the least expensive indicator to
sample and invertebrates the most expensive indicator.
184
Great Lakes Coastal Wetlands Monitoring Plan

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Increasing the number of sites being sampled from  one to ten has a minimal impact on the cost of sampling birds,
amphibians and plants  The cost of sampling invertebrates is still the highest at $34,658 and landscape attributes is still
the second highest at $24,023 However, the cost of sampling Pish increases from the fourth highest cost for one site
to the third  highest cost for ten sites  ($ 11,893) and  water  chemistry, which was formerly the third  highest cost,
becomes the fourth highest when sampling ten sites  ($6,855)  This change happens because the variable costs of
sampling are greater for fish than for water chemistry


Case studies

Many scenarios are possible with the cost estimator tool Therefore, we picked three case studies to represent the
three most likely scenarios encountered by agency staff  One is the minimalist scenario in which only the three least
expensive indicators (birds, amphibians and  plants) were sampled, only technicians were trained, all items were
borrowed from other agencies or otherwise made available  without having to make specific purchases, lab samples
were processed in house, and a canoe was purchased instead of a boat (Figure 9-2) A no-expense-spared scenario was
also modeled in which in all indicators were sampled,  everyone received training, many items were bought new, all
lab samples were sent out for processing, and a new boat was purchased (Figure 9-3) The third scenario involved a
combination of the two scenarios  described above to  arrive  at  possibly the  most realistic scenario  in which all
indicators were sampled, only technicians received training,  a combination of new and used items were used, some
indicator  samples were processed in house  (invertebrates) while others (water chemistry) were sent out for
processing, and a previously owned  boat was used (Figure 9-4)
www glc org/wetlands                                                                                    185

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How many people will be sent into the Uncheckif #of #of How many will
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Binoculars P
CIS software P
0-frame sweep nets (3) P
Fyke nets (B) (f
CD player wilh speakers P
Backpack P.
GPS unit . P
Waders (3) P
VHP radio P
Dissecting microscope P
Hydrolab or YSI meters for temp, DO. pH. conductivity & redoi Pi
Aenal photographs, airborne and satellite data for sites & speclroradiomeler r?
Will you use an outside lab to process water chemistry samples' |NO »|
Will you use an outside lab to process invertebrate samples? IMP H
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Startup wetland for all
costs costs wetlands
Water Chemistry 10 10 R)
Plants $444 $474 (2.812
Invertebrates SO $0 $0
Fish $0 $0 $0
Amphibians $290 $160 H.089
Buds $479 $112 H.038
Landscape attnbutes $0 $0 $0
General startup + travel * boat (1^63
Total cost (6.302
Note Results include equipment, salanes, naming for
personnel, and Havel, All values m US$
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Fish * 173 [73 173
Amphibians P 173 173 173
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D-frame sweep nets (3) r
Fyke nets (5) f~
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Will you use an outside lab to process water chemistry samples? IYB "\
Will you use an outside lab to process invertebrate samples? |ves^J
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Per costs
Startup wetland for all
costs costs wetlands
Water Chemistry $1544 $397 $3770
Plants $523 $474 $2.691
Invertebrates 11 £64 $2.766 $15.463
Fish $3560 1 1.029 $8.699
Amphibians $290 $160 $1.089
Birds $854 $112 $1.413
Landscape attnbules $129J099 $2.222 $140.210
General startup + travel + boat $6,243
Tolal cost $179.777
Mole ResuSi include equipment, salines, training lor
personnel, ant travel, Att values in US}

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How many people will be sent into the Uncheckif #of #of How many will
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Equipment
Check all items that can be made available for wetland sampling
Binoculars P
CIS software P
D-frame sweep nets (3) r
Fyke nets (5) P
CD player with speakers P
Backpack F
GPS unit F
Waders p) r
VHP radio P
Dissecting microscope P
Hydrolab or YSI meters for temp. DO. pH. conductivity & redox P
Aerial photograph:, airborne and satellite data for sites & speetroradlometer P
Will you use an outside lab to process water chemistry samples' I Yes H
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costs costs wetlands
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Plants (444 (474 S2JB12
Invertebrates (1.496 $3241 $17572
Fish $194 $1.029 $5333
Amphibians $290 $160 1 1,089
Birds $479 $112 11.038 '
Landscape attributes $55.484 $2222 $66595
General startup + trawl + boat II^GB
Tola! cost $99.828
/Vole Resuia include equipment, salaries, training for
personnel, and travel All values m USt






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188
Great Lakes Coastal Wetlands Monitoring Plan

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All three scenarios assumed that five sites were sampled and that all  were 20 miles From the sampling agency  The
results show that the costs For sampling under the minimal scenario were estimated at ($6,302), no-expense-spared
scenario ($179,777) and middle-ground scenario ($99,828)

Under the minimalist scenario, just the three least expensive indicators were sampled (birds, amphibians, and plants)
The startup costs Tor each of the indicators were minimal (birds $479, amphibians  $290, plants $444) and the costs
for consumables were minor (birds and amphibians $0, plants  $ 1) Few people were needed and most of the work
could be performed by  technicians without the  help  of professionals  (I  technician  for birds and  amphibians,  1
professional and 1 technician for plants) Further, none of the typically owned equipment needed to be purchased by
the sampling agencies  All of these factors helped to minimize costs

The no-expense-spared scenario presented a very different story In this scenario all indicators were sampled and very
little equipment was  assumed to  already be owned (only the dissecting  microscope,  hydrolab  or related water
chemistry sampling equipment,  and aerial photographs) resulting in higher startup costs  ranging from  $290 for
amphibians to $129,099 for  landscape attributes This high landscape attribute cost is largely the result of the training
needed for professional /technical staff ($110,239)  Landscape attribute startup costs  fall to $365 when  calculated
without training It was also assumed that a boat would need to be purchased adding $4,414 to the general startup
costs

The middle-ground scenario is approximately half the cost of the no-expense-spared scenario with many of the same
benefits as it also includes the sampling of all indicators  The most substantial cost ($55,484) in this scenario is that of
training technicians in landscape attribute sampling, a cost which is buried m the startup costs for that indicator  This
scenario represents the most likely real circumstances as agencies will most  likely have  access to much of the needed
equipment including a boat and some staff will most likely already have some form  of training or can  take advantage
of on-the-job training
Summary
This project attempted to produce a tool that could be used by monitoring agencies to estimate costs for sampling
wetlands using a variety of indicators  The tool allows agencies to make decisions regarding the indicators sampled,
equipment, personnel, training, travel, sample processing, and number of sites to sample and see how those changes
impact the startup costs, maintenance costs (per wetland costs) and total costs in a wetland monitoring program The
indicators researched included  water chemistry,  plants, invertebrates,  fish, amphibians,  birds, and landscape
attributes This user-friendly tool allows monitoring agencies to enter a variety of scenarios and choose the most cost-
effective combination of wetland indicators given their financial means

Our results showed  that total costs for the sampling of one wetland site would vary from $1,395 to $5,223 with
birds, amphibians and plants the least expensive indicators to sample respectively and invertebrates by far the most
expensive indicator .The variable (per  wetland) costs of sampling are greatest  for invertebrates ($3,241), landscape
attributes ($2,222) and  fish ($1,029)  and lowest for birds ($112) and amphibians ($160)  The fixed costs (startup
costs) are highest for water chemistry ($1,609) and invertebrates ($841) and lowest for amphibians ($106) and birds
($111)  Costs decrease if either water chemistry or invertebrate samples are sent to external labs

As a way of demonstrating the effectiveness of the tool, we tested and gave results for three scenarios that we titled
minimalist, no-expense-spared and middle-ground cost estimations  The middle-ground and  likely typical  scenario
for  the sampling of all indicators in five sites would result in a cost of $99,828  A stripped down sampling program
with only the three least expensive indicators (birds, amphibians and plants) sampled in five sites would cost $6,302
A sampling regime without regard to cost would run $179,777 for five wetland sites largely due to the high cost of
training staff in landscape attribute monitoring

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References

AAA "Your Driving Costs" 29 June 2007, www aaacxchangc com/Assets/Files/20073261133+60 YourDnvmgCosts2007 pdf

CSG, Computer Support Group, Inc "Marine Gas Oil Mixture Ratio Calculator" 29 June 2007,
www.csqnctworic.com/marineoilfuclcalc html

ESRI "ESRI Training and Education  Course Catalog" 29 June 2007,
httn. //traimnp csri com/pate way/index cfm ?fa—search, rcsults&searchtcrm—&*»oftwaretvnc=ArcGIS"t'9&traininpforinat— 1 &canncdscarch—0
&sorthy=dcfault&oldScarchTcrm

GEI consultant  "Fee schedule and payment terms" July 31  2007, www.chadv. icklahoratory.com/in\crtchraieproccssing html

GISjobs com, LLC "GlSjobs com Salary Survey " 29 June 2007, www giijohs com/survcj/

Nautical Know How, Inc "Everything You Ever Wanted to Know about Fuel" 29 June 2007,  www.hnat-afc.rom/nauticalknowhnw/rurl.htm

U S Bureau of Labor Statistics "Environmental Scientist!, and Hydrologists  Earnings" 29 June 2007,
www.bis pov/ocQ/ocosOSO htm#carnmps>
190                                                                       Great Lakes Coastal Wetlands Monitoring Plan

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Appendix 9-1. Wetland Sampling Cost Estimator Tool

The Wetland Sampling Cost Estimator Tool is intended to give users maximum flexibility in making decisions
regarding the development of a cost-effective wetland sampling monitoring program The costs used in this tool are
based on the use of Consortium protocols only The tool is available in Microsoft Excel format only and is accessible
via the Internet  where this document is posted
 www glc org/wetlands                                                                            191

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                     Chapter 10
        Data Management System
                     Chapter Authors
                Stuart Eddy, Great Lakes Commission
               Richard D. Garcia, Great Lakes Commission
192
Great Lakes Coastal Wetlands Monitoring Plan

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Introduction

Purpose of the Data Management System  within the Great Lakes Coastal  Wetlands
Consortium

The Great Lakes Coastal Wetlands Consortium has worked for several years to evaluate select State of the Lakes
Ecosystem Conference (SOLEC)  indicators  as  tools  for the  long-term  monitoring of coastal wetland  health
throughout the Great Lakes The final result is a set of protocols for gathering and assessing data related to aspects of
coastal wetlands ecosystems  Because of the variety of topics being considered, the geographic extent of the region
and the number of organizations involved, the Consortium recognized the need for a data-sharing mechanism for use
by its members

The Consortium was seeking a standardized approach that could be applied across the region, allowing data gathered
by any of its members to be easily shared, compared and  integrated into analytical  processes A  centralized, online
data management system (D.MS) was chosen  as the approach to handle this need  The DMS was conceived as  an
Internet-based application housed on the Consortium's website and open to the research community  Data gathered
in the Held and from laboratory processes would be recorded in standardized formats and uploaded to  a data archive
These  data files  would  be indexed by site, date and protocol  They could  then  be  retrieved using the same
parameters

Status of the System
The first  iteration of the Consortium's DMS consists of 1)  an online database for indexing and archiving data files, 2)
an online user interface that includes tools for submitting data files to the archive and for locating and  retrieving files
that are already stored there, and  3) a data template that will allow field  measurement results to be prepared and
submitted in a uniform format  The data template was considered an  important component for  the current system
because it allows researchers and field personnel to record data in a variety of settings, while ensuring that data will
be readily useable by others  The template has been designed as a stand-alone document and was formatted for use
with Microsoft Excel and other compatible spreadsheet software

Data  providers are required to  register before they can  upload  files   Active  members of the   Consortium's
development committees were registered as users when the system was created  New data providers will have to
submit a  registration request and be approved by Consortium staff before they will be allowed to upload  files Data
users will be asked to register as  a means of tracking the system's audience, but  access to  the data files will  not
otherwise be restricted

As of this report,  the DMS contains only sample data files  Registered users can download and view them as part of
orienting themselves to the system  and to the data  template The system is ready to accept files containing actual data
at any time

Summary of Resources

The DMS consists of 1) a PHP/mySQL database connected to a data file archive on the Great Lakes Coastal Wetlands
Consortium  web site (http.X/www glc org/wetlands/cwc/),  2) online data file submission and retrieval  forms and
3) an Excel-based data file  template for use by investigators as they prepare their data for submission  (see Appendix
I) The system is essentially self-contained and could be moved to another server with only limited modification
 www glc org/wetlands                                                                                  193

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System  Design

Internet Software

The  file archiving database behind  the  DMS was built using PHP and mySQL and is published  using an Apache
webserver This is an industry standard, widely supported software configuration that can be readily maintained and
updated It is currently housed on an Apache server managed by the Great Lakes Commission Users connect to the
database via the Internet using a standard web browser The web interface allows the user to search the repository
database and locate files, which can then  be downloaded to the user's local computer

Data Handling Design  and Software

The data archived in the DMS  are stored as Microsoft Excel files Once downloaded, the data files can be opened and
manipulated using Microsoft Excel or other compatible spreadsheet software on the user's personal computer A file
archive approach was chosen  by  the DMS design team because it allowed  field personnel to record data at their
convenience and  in a  format that would  be readily useable during other monitoring,  analysis and reporting phases  It
also allowed the DMS design team to match the protocol development timeline used by the Consortium's  Scientific
Committee

Data Fife Temp/ate
A template for storing field data was developed based on protocols  for each of the  wetland characteristics being
measured  The template consists  of an Excel  spreadsheet containing worksheets for each of 20 wetland assessment
methods or indicator characteristics Field teams will use Consortium protocols to  measure indicators for the sites
they investigate,  record their results, then submit the  completed file for any given investigation event to the DMS
The files will be stored with critical metadata to allow the database to be searched by date, site, wetland type and/or
protocols used Template parameters can be found in Appendix 1

The Microsoft Excel workbook was chosen as the data input software for the first iteration of the DMS because it is a
standard application  The  software is available for Microsoft Windows-based laptops and Macintosh computers, and
the file format can be  used in Linux-based software   Data can be entered  at the  investigator's convenience, then
uploaded to the DMS using a standard web browser at any time that internet access is available

Data retrieval  takes place through an online search of the DMS which returns Excel Piles for the selected  sites and
dates For multisite comparisons or temporal analyses, the investigator is required to process the individual files  to
meet his or her needs
System  Inputs  and  Outputs
DMS Website
The   DMS   is   accessed   through   the   Great   Lakes   Coastal   Wetlands   Consortium   website   at
http-//www glc org/wetlands/cwc/mdex html Users are offered background information about the Consortium
and the DMS, and links to the system's various components
194                                                              Great Lakes Coastal Wetlands Monitoring Plan

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Who we are
The Great Lakes Coastal wetlands Consortium consists of scientific and pobcy experts
drawn from key u S and Canadian federal agencies, state and provincial agencies,
non- governmental organizations, and other merest groups with responsibility for
coastal wetlands monitoring Approximately two dozen agencies, organizations and
nsbtubons have been brought nto the Consortium as Project Management Team
members This is an unprecedented assembly of coastal wetlands expertise In addition,
other members are brought n as smaO project teams are formed to address discrete
project elements and pdot studies The Consortium n coordmated by staff at me Great
Lakes Commission (GLC) in Arm Arbor, Michigan and has been funded by the u S EPA
Great Lakes National Program Office in Chicago, IDnoa
What is the purpose of the Consortium?
The Consortium's purpose is to design an nnplementable, long-term program to monitor
Great Lakes coastal wetlands This is being accomplished through the development of
indicators to assess the condition of Great Lakes coastal wetlands The selected
indicators were selected through the State of the lake Ecosystem Conference (SOLEC)
process The Consortium wiD provide scientific support for this monitoring program.
create a database that is pubbcly accessible, recruit the leadership required to
implement the long- teim monitoring program, and develop a network of (under* and
agencies who wfl support the Great Lakes coastal wetlands monitoring program
» more about the Consortium
» download the Consortium Factsheet (PDF)
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Data Uploads
Data Hies are uploaded to the DMS through an interactive web page  This form requires investigators to provide basic
reference information at the time the file is uploaded  The mandatory file characteristics that must be entered serve as
metadata within the DMS, allowing searches based on the date that  a  given site visit took place,  the specific site
location, either by  name or  by  geographic coordinates,  the type of wetland  being  investigated and/or the
investigations carried out at that site

Data Downloads
Data files are retrieved through an interactive web page  This form requests characteristics about the site (name or
geographic location), protocol and/or date of interest and then returns the archived  Excel files that match the search
parameters
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Appendix  10-1.  Data File Template
Data are stored in the Coastal Wetlands DMS as preformatted Excel workbooks  A template is provided on the Great
Lakes Coastal Wetlands Consortium website, http //www glc.org/wetlands/cwc/index html  The Excel workbook
template contains spreadsheets for each of the procedures specified by the Consortium's protocols so that data for a
given site and sampling date can be stored in a single Pile

The template structure is diagrammed below
Template Worksheet Name
SITE








NEW_ELECTRO_SAMPLING


















Template Worksheet Fields
Site name
Site ID
Sample date
Wetland classification
Associated waterbody
Latitude
Longitude
Projection
Comments
Site name
Site ID
Plant community
Fluvial zone
Vegetation zone
Gear
Voltage
Amps
GPP seconds fished
Total time fished (minutes)
Length fished (meters)
Width fished (meters)
Start time (EOT)
% fish captured
Species
Length (cm)
Weight (g)
Condition
Comments
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SWEEP NETTING






Site name
Site ID
Plant community
Date
Picking method
Sample ID
Comments
ACTIVITY TRAPS








HESTER-DENDY







UV LIGHT TRAPS







FYKE NETS









Site name
Site ID
Plant community
Trap#
Set depth
Set date
Clear date
Sample ID
Comments
Site name
Site ID
Plant community
Set depth
Set date
Clear date
Sample ID
Comments
Site name
Site ID
Plant community
Trap#
Set date
Clear date
Sample ID
Comments
Site name
Site ID
Plant community
Trap #.
Net size
Set depth
Set date
Clear date
Species
Length
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Weight (g)
DELT
Comments
MINNOW TRAPS











ELECTROFISHING











GILL NETS












Site name
Site ID
Plant community
Trap*
Set depth
Set date
Clear date
Species
Length
Weight [g)
DELT
Comments
Site name
Site ID
Plant community
Buoy #
Start time (EOT)
Sampling effort (min)
% fish captured
Species
Length
Weight (g)
DELT
Comments
Site name
Site ID
Plant community
Net set number
Net size
Set depth
Set time
Clear time
Species
Length
Weight (g)
DELT
Comments
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NEW FYKE SAMPLING












VEGETATION















BIRDS













Site name
Site ID
Plant community
Trap#
Net size
Set depth
Set date
Clear date
Species
Length
Weight (g)
DELT
Comments
Site name
Site ID
Plant community
Quadrat #
Sample #
Date
Water depth (m)
Sediment
OM depth
Sampling point location
Distance from point (m)
Degrees from point
Dimensions
Sampling time
Species
% Species cover
Site name
Site ID
Plant community
Route ID
Route name
Date
Visit
Station
Species
Count
Outfly
Indicator species
Presence
Birdair
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AMPHIBIANS











LANDSCAPE ALTERATION































Site name
Site ID
Plant community
Route ID
Route name
Date
Visit
Station
Species
Count
In
Indicator species
Site name
Site ID
Project
Date
Crew
Plant zone
Dewatenng in or near wetland
Point source inlet
Installed outlet, weir
Ditch inlet
Tile inlet
Unnatural connection to other waters
Presence of bamers (dams, waterfalls)
Tree removal
Tree plantations
Mowing or grazing
Shrub removal
Coarse woody debns removal
Removal or emergent vegetation
Presence of livestock hooves
Presence of vehicle use
Presence of grading/bulldozing
Presence of filling
Presence of dredging
Sediment input (from inflow or erosional)
Areas of land in high public use
Proximity to navigable channels (m)
Proximity to recreational boating activity (m)
Proximity to roadways that receive regular traffic (m)
# of dwellings
# of industries
# of other buildings
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CONTAMINATED SEDIMENTS


























# of boat docks
# of paved parking lots
# of dirt parking lots
# of boat launches
% hardened shoreline
% eroding shoreline
% shoreline containing a visible dirt road
% shoreline containing a visible paved road
Habitat types adjacent to wetland (est. %. groundtruthing)
Land-use classes adjacent to wetland (est %,
groundtruthing)
Note construction sites or obvious sedimentation
Note highway, rail, levees, berms, boardwalks or other such
structures built in or around wetland including whether or not
the structure appears to restrict hydrological connection
Categorical degree and type of direct human activity -
categories number coded in sequence with increasing
activity
Comments
Site
Vegetation zone
Plant type
Sample
Log number
Date sampled
% solids
%TOC
Naphthalene (mg/kg)
Acenaphthylene (mg/kg)
Acenaphthene (mg/kg)
Fluorene (mg/kg)
Phenanthrene (mg/kg)
Anthracene (mg/kg)
Fluoranthene (mg/kg)
Pyrene (mg/kg)
Benzofajanthracene (mg/kg)
Chrysene (mg/kg)
Benzo(b)fluoranthene (mg/kg)
Benzo(k)fluoranthene (mg/kg)
Benzo(a)pyrene (mg/kg)
lndeno(l,2,3-cd)pyrene (mg/kg)
Dibenzo(a,h)anthracene (mg/kg)
Benzo(g,h,i)perylene (mg/kg)
Total PAH Compounds (mg/kg)
ODD lug/kg')
DDE (ug/kg*)
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WATER QUALITY




















PICTURES





CREW





DDT (ug/kg*)
Total PCBs |ug/kg*)
Ammonia (mg/kg)
Chromium (mg/kg)
Lead (mg/kg)
Cadmium (mg/kg)
Mercury (mg/kg)
Site name
Site ID
Plant community
Date
Time
Sample #
Sample date
Volume of water
Water depth (cm)
Secchi depth (m)
Turbidity (NTU)
Water temp, (deg C)
Air temp (deg C)
pH field
Dissolved oxygen (mg/L)
Chlorophyll a (mg/L)
Redox potential (mohms)
Conductivity field (?S/cm)
Total dissolved solids (ppm)
Salinity (PSS)
Comments
Roll#
Picture #
Site name
Site ID
Date
Description
Date
Site name
Site ID
Crew
Weather
Description of day's activities
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                      Chapter 11
   Partnerships for Implementation
                      Chapter Authors
          Tracy Collin, Michigan Department of Environmental Quality
         Krista Holmes, Environment Canada - Canadian Wildlife Service
                John Hummer, Great Lakes Commission
                  Ryan Archer, Bird Studies Canada
www.glc.org/wellonds
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Partnerships for Implementation
The Great Lakes Coastal Wetlands Consortium (Consortium) was Formed in 2000 through funding From the U S
Environmental Protection Agency (U S EPA), with the goal of producing a cohesive, long-term program to monitor
Great Lakes coastal wetlands Staff from the Great Lakes Commission served as coordinator and secretariat for  the
Consortium and more than 50 partners contributed to the development of the plan from the initial pilot studies
through the drafting of the final monitoring protocols

In 2002,  initial stakeholder meetings  were coordinated on both sides of the border to raise  awareness of  the
Consortium's intention of developing a science-based,  binational coastal wetland monitoring protocol for the Great
Lakes  Presentations and discussion groups were used  to begin partner  engagement Since the initial outreach,  the
Consortium has been a  significant presence at the State of the Lakes Ecosystem  Conferences  (SOLEC), where
representatives from a variety of agencies and organizations from around the basin meet to discuss Great Lakes issues
and science  The  biennial  SOLEC  conferences have  offered  a venue for  presentation  of Consortium protocol
developments  and  results  from  pilot  investigations  From the beginning,  it has been  clear  that agencies and
organizations wishing to adopt Consortium protocols would need assistance in implementing the monitoring plan and
forming partnerships to optimize staff, funding and equipment resources

The Consortium's Partnerships for  Implementation Committee (PIC) was formed to aid interested agencies and
organizations in implementing the protocols outlined  in  this document The first task of the PIC was to identify
various  agencies and organizations  that are currently conducting coastal  wetland monitoring or other wetland
monitoring  programs  To do  so,  the committee utilized the Great Lakes Commission's  2006 report  titled
Environmental Monitoring Inventory of the  Great Lakes Basin, which assessed gaps and overlaps in observing systems and
monitoring programs throughout the  basin The gap analysis summarized monitoring efforts for 21  areas, highlighted
potential gaps in monitoring coverage, and provided recommendations for improvement

A  second  task  of the  PIC was to  identify agencies and organizations that  might benefit from adoption of  the
Consortium basmwide,  standardized monitoring protocols and to analyze whether these  entities would have  the
capacity to conduct this monitoring This task was accomplished through discussion and through a telephone survey to
collect information from agency and  organization contacts Survey questions addressed aspects of current or former
coastal wetland monitoring activities, staff or  volunteer expertise, available equipment, funding mechanisms, and
protocol training requirements

Finally, the PIC was assigned the responsibility of suggesting an implementation strategy to interested agencies, so the
process of possibly adopting (or adapting) these protocols would be less daunting for organizations that already lack
sufficient  resources for existing tasks The implementation strategy presented in this chapter is  based  on existing
coastal wetland monitoring efforts in the  Great Lakes basin and adaptive  management strategies to make it  more
readily implementable  This chapter highlights the findings of the PIC


The  Need for Partnership

Over the  last two decades, Great Lakes coastal wetlands have received increasing attention regarding the need for a
system, and associated indicators, to effectively monitor coastal wetland quantity and quality, as well  as loss and
degradation Although many institutions and organizations devote resources to monitoring and/or restoring specific
Great  Lakes coastal wetlands, no  single  organization  has overarching,  basmwide responsibility for collecting,
interpreting and disseminating  monitoring information for wetlands Biological,  chemical, physical and landscape
information is highly fragmented   across federal, state, provincial, tribal/First  Nations  and  local  agencies,
organizations and governments  For example, encroachment by human development and by aggressive invasive plant


204                                                               Great Lakes Coastal Wetlands Monitoring Plan

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species has substantially  transformed  natural coastal wetlands, but  the  magnitude of these changes cannot be
quantitatively assessed  because  of the  lack of comprehensive  data throughout  the basin (Great Lakes  Regional
Collaboration,  200S)  Data  fragmentation  severely compromises  science-based  water  resources  management
decisions for  the basin  In  September 2004, the U S Government Accountability Office, a group charged  with
oversight of congressional decisions, responded by issuing a report entitled Great  Lakes Organizational Leadership and
Restoration  Goals  Need  to be  Better Defined for  Monitoring Restoration  Progress (GAO-04-1024), which identified
coordination of restoration and monitoring activities as a key challenge facing Great Lakes leaders

Common protocols for the monitoring of Great Lakes ecosystem  components have, prior to this effort,  not  been
established  between the U S and Canada or between the states  and provinces Consistency in monitoring protocols
and coordination of activities will  considerably enhance  the quality of the information base for development and
reporting of indicators  Indicators are the gauges that provide information on the state of the Great Lakes to citizens,
resource managers and stakeholders Indicators detail the conditions at a particular point in time, allow us to monitor
changes over time, provide a basis for management decisions, and allow us to track the success of actions intended to
restore the  ecosystem When appropriately formulated and implemented, indicators should be an integral part of the
decision-making process regarding the Great Lakes system  Indicators build  significantly on observing and monitoring
programs by integrating the information produced  by these programs with our understanding of the ecosystem to
provide information regarding the  past, current and future response of the system to stressors  When  built  upon a
firm scientific basis, a comprehensive suite of indicators can help explain observed changes in the  ecosystem and may
lend some predictive ability  regarding future changes (Great Lakes Regional  Collaboration, 2005)

Partnerships among agencies will be imperative to ensure the success of implementing a Great Lakes coastal wetlands
monitoring program and  its associated  indicators and monitoring  protocols  Federal, state, provincial, tribal/First
Nation and local governments,  agencies and organizations are already responsible for satisfying  various monitoring
mandates  For example,  the U  S  federal Clean Water Act  requires  that states and tribes monitor and report on the
condition of all waters of the United States,  including jurisdictional wetlands  Similarly, the Canadian Clean Water Act
requires  all provinces  to report  and measure actions  taken  to  protect drinking  water sources    Coordinated
monitoring efforts are also essential to the success of binational efforts such as Lakewide  Management Plans (LaMPs)
and the Great Lakes Water Quality Agreement (GLWQA) The  establishment and success of the Consortium is proof
that partnerships already  exist, and that multiple diverse agencies can work closely together to achieve the common
goal of monitoring Great  Lakes coastal wetlands.


Existing and  Historical Great Lakes  Coastal Wetland Monitoring

In 2006, the Great Lakes  Commission developed a report based  on its inventory of Great Lakes monitoring activities
that assessed gaps and  overlaps  in observing systems   and monitoring  programs The report included policy
recommendations to address gaps and improve effectiveness of monitoring  efforts (Great Lakes Commission, 2006)
The gap analysis compared results from  the monitoring inventory to monitoring needs identified through the SOLEC
indicator process, and summarized monitoring efforts for 21 resource areas

In order to identify current monitoring efforts, the PIC  reviewed the gap analysis and found that the majority of
sampling programs are conducted at the state/provincial level, followed by federal governments, local governments,
universities,  nongovernmental  organizations and,  finally, private  organizations  Overall,  wetland  monitoring
programs in general, and  specifically coastal wetland monitoring programs, were severely lacking, even though both
the  United States and Canada  have identified the  need for wetland monitoring  Reviewing  the gap analysis in
conjunction with a review of U  S  and Canadian monitoring policies revealed a number  of existing federal  programs
that would benefit and mandates  that  would be better met through the establishment  of a consistent Great  Lakes
coastal wetland monitoring program Consortium protocols would be an excellent jump start to such a program
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In the United States, land-use permit decisions are affected by both federal and state legislation and policy  The U.S
Army Corps of Engineers (Corps), under Section 404 of the Clean Water Act (U S CWA), has federal authority to
issue permits for activities in wetlands  Most states utilize the Corps' authority in this regard, but a few states (e.g
Michigan) have adopted their own legislation for wetlands permitting and protection  Many water quality monitoring
efforts are based on the requirements of the U S. CWA  Wetlands are included as waters of the U S  (40 CFR 122 2,
40 CFR 230 3, and 40 CFR  232 2, U S  CWA Section 502(7))  However, these monitoring programs are often
poorly and inconsistently funded or are improperly designed and carried out, making it difficult to collect a sufficient
number of samples over time and  space to identify  changes in system condition, or to estimate average conditions
with statistical rigor (U S. EPA, 2002)

Existing water  quality monitoring programs based on the requirements of the U S  CWA,  outlined below, would
benefit from the addition of a wetland monitoring component
       •  Water Quality Standards U  S  CWA Section 303
          States are required to establish water quality standards defining specific goals for all waters of the United
          States States must identify each waterbody's designated uses (recreation, water supply, aquatic life,
          agriculture), develop criteria to protect those uses, develop anti-degradation policies, and address
          implementation issues (e g., low flows, mixing zones)  Wetlands are often assigned the same designated
          uses and criteria of adjacent rivers or lakes, which may be ecologically  inappropriate  Water quality
          standards could be specifically tailored to coastal wetlands, providing a consistent basis for the
          development of policies and  technical procedures for managing activities that impact wetlands (U S EPA,
          2001)

       •  Tracking and reporting conditions US  CWA Section 305 (b)
          Under U.S CWA Section 305(b), states and  tribes are required to report on the quality of all U.S waters
          States must determine if a waterbody satisfies the criteria associated with each of its designated uses The
          reporting requirement also has the practical aspect of offering individuals and public officials an
          opportunity to better understand the implications of their decisionmaking on the condition of their state's
          water resources (U S EPA,  2001)  The addition of wetland data to these reports may thus influence
          federal, state and local permitting and other policies

       •  Identifying impaired waters and total maximum daily load implementation plans U S CWA Section
          303(d)
          U S CWA Section 303(d) requires states and tribes to identify impaired waters and develop total
          maximum daily loads (TMDLs) for  those waters The addition of wetland monitoring to these monitoring
          programs would provide information on whether wetlands need to be  added to or removed from the list
          of impaired waters  In addition, wetland monitoring would support the development of restoration plans
          for waters that do not meet TMDL standards, thus aiding in the recovery of impaired waters (U S EPA,
          2001)

       •  Influencing federal  permits and licenses US  CWA Section 401
          U S CWA Section 401 water quality certification gives states and tribes broad authority to certify,
          condition, or deny any federal permit or license that would violate the slate's established water quality
          standards  Wetland monitoring would provide more information on the condition of water bodies that
          could be impacted by federal decisions, and would allow for better analysis of permit applications (U S
          EPA,2001)

       •  Evaluating effectiveness of nonpomt source controls, restoration, and Best Management  Practices  U S
          CWA Section 319
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          Many federal, state, and local programs attempt to restore wetlands and require best management
          practices to reduce the amount and impact of nonpomt source pollution Few programs evaluate the
          impact of these activities on the overall ecological condition of wetlands Monitoring wetlands would
          allow evaluation of the effectiveness of restoration and best management practices designed to improve the
          condition of wetlands (US  EPA, 2001)

Recognizing the need for guidance on implementation of wetland monitoring  programs, the U S  EPA released
Elements of a State Water Monitoring and Assessment Program for Wetlands in April 2006 The report indicates that a state's
progress in  developing  a  comprehensive wetland monitoring program will serve many federal, state, and local
program goals, including the need to

       •  Establish a baseline of wetland condition and/or report changes in wetland condition,
       •  Evaluate the environmental consequences of a federal action or group of actions, including the
          effectiveness of compensatory wetland mitigation,
       •  Evaluate the performance of wetland restoration projects,
       •  Evaluate the cumulative effects of wetland loss and/or restoration, and develop watershed plans for the
          recovery of impaired water bodies that are listed pursuant to U S  CWA Section 303(d), and
       •  Refine or create wetland-specific water quality standards pursuant to U S CWA Section 303, including
          identification of appropriate reference conditions

To accomplish these goals, the U S  EPA recommends that states use a three-tiered approach to wetland monitoring
Level  1 involves assessing landscapes  and watersheds using remote  sensing to create  a broad view  of wetland
condition  Level 2 involves  creation of a Rapid Assessment Method (RAM) which uses simple Held indicators to
analyze the general condition of individual  wetlands Level 3 is based on intensive site investigations, and typically
includes using Indices of Biological Integrity (IBI) or conducting a hydrogeomorphic function analysis This final level
is meant to evaluate the success of wetland restoration, or to provide a more detailed assessment of wetland condition
for other purposes

Since the  release of the U S  EPA's guidelines, a number  of slates have developed monitoring plans  utilizing the
three-tiered system In order to comply with U S  CWA guidelines, all states will eventually need to establish a long-
term wetlands monitoring program The Great Lakes states are all in various stages of developing and implementing
monitoring strategies  Because Consortium  protocols would fit into the level 3 analysis suggested by U  S EPA,  it is
likely the protocols could be relatively easily incorporated into most states' strategies

In Canada, land-use decisions are affected by both federal  and provincial legislation and policy  However, while both
the federal and  provincial governments have wetland policies,  neither has legislation specifically directed  to  the
protection of wetlands  Ontario's wetland policy must  be regarded  by local governments through  the  Provincial
Planning Act. The  Canadian  federal government  delivers on its commitment to Great  Lakes protection through
domestic policies and legislation as well as through partnerships formed primarily with binational programs and local
organizations

For example,  Environment  Canada (EC) has taken a role as the lead  federal agency  participating in the Lakewide
Management Plan (LaMP) process  The agency also coordinates provincial and local governments and stakeholders to
meet Canada's  commitments to  ecosystem goals  and  in the monitoring  of progress to achieve  those goals
Partnerships are key to the success of the LaMP program  As such, EC has formed relationships with partners such as
the Department of Fisheries  and Oceans (DFO), which collects  information on fish population and fish  toxicity, the
Ontario Ministry of the Environment (OMOE), which collects water quality, clarity and nutrient input information
for the Great Lakes and  tributaries, and the local Conservation Authorities (watershed  management agencies), which
collect information on  local watershed natural resources  Coastal  wetland  monitoring contributes to the LaMP
www glc org/wetlonds                                                                                     207

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biennial reporting requirement, but La.MP priorities have previously focused more on protection and rehabilitation of
wetland habitats  than  monitoring wetlands  Monitoring coastal  wetlands  would allow LaMP partners to begin to
assess the biological and ecological outcomes of protection and rehabilitation efforts and to evaluate the role of such
actions in improving the overall health of wetland ecosystems

The Canadian  federal  government  is  also involved with  monitoring programs  through its commitment to  the
GLWQA  The GLWQA is implemented and expanded upon though the Canada-Ontario Agreement  Respecting the Great
Lakes Basin Ecosystem, which obligates the provincial and federal governments to coordinate resources and work with
stakeholders to protect water quality and the health of the Great Lakes ecosystem  The Canada-Ontario Agreement
also calls for studies assessing the potential impacts of climate change on the Great  Lakes and protection of the Great
Lakes as a source of drinking  water Some researchers believe that climate change may cause significant drops in
Great Lakes water levels Since water level cycles are a major driver affecting coastal wetland function, persistent low
water levels could have impacts on the diversity of current wetland plant and wildlife communities (Mortsch et  al ,
2006)  At the same time,  if water levels continue to drop, the  role wetlands play in recharging aquifers, filtering
pollutants, and trapping sediments will  be even more important to the protection of the water supply for millions of
people  The linkage between  wetland functions  and   emerging global environmental impacts and  trends further
supports the need for a long-term coastal wetland monitoring program

Wetland  monitoring   in Canada  is  also  accomplished through  other reporting  methods established for specific
conservation targets  For example, the Migratory Birds Convention Act of 1994 aims to protect migratory birds and their
habitats Many of these birds utilize and depend  on healthy wetland habitats for components of their lifecycles Thus,
bird monitoring  activities  can contribute to  assessments of wetland habitat Adaptation of Consortium protocols
would improve both bird and wetland monitoring in an efficient manner Without wetland-specific drivers, wetland
monitoring programs in Canada have historically been implemented as a series of localized, short-term efforts, geared
at answering specific research questions  This does not provide for a broader ecosystem picture of the status of, or
processes within  the Great Lakes environment  A commitment  by local agencies to  use Consortium protocols for
meeting specific targets would vastly increase the amount of reliable data available to satisfy legislative mandates such
as those outlined  in the Migratory Bird Convention Act

As part of GLWQA commitments, both  the Canada and the United States have committed to developing Remedial
Action Plans (RAP) for restoring Areas of Concern (AOC), the most degraded waterways in the  Great Lakes basin
The restoration and rehabilitation of wetlands have been  identified within RAPs as crucial to  the restoration of
beneficial uses  in AOCs Wetland monitoring in the AOCs has been predominantly priority-based and is indirectly
implemented through consolidating and assessing related datasets  Coastal wetland monitoring is essential in AOCs to
determine RAP success, and the program  would greatly benefit from utilization of Consortium protocols

Based on  the PIC's review of existing  monitoring efforts,  it appears that both the  United States  and Canada have a
variety of programs that could adapt or  adopt Consortium protocols, thus helping to satisfy the needs of the programs
described above  Coastal wetlands monitoring may be separated into three types of mdictors biological, physical  and
chemical, and landscape indicators

Biological Indicators

Currently, a number of programs monitor the biological characteristics of coastal wetlands m the  Great Lakes basin
Some programs,  such  as the Durham Region Coastal Wetland Monitoring (Durham project) in Ontario and the Critical
Trends Assessment  Program in Illinois,  are tracking several biological  indicators for a small  group of wetlands  Other
programs, such as Ohio's Wetland Bioassesstnent Program, are more inclusive and seek to develop measures and assess
the health and integrity of wetlands across several biological  indicators Ohio's program specifically uses IBIs for
plant, invertebrate, fish and amphibian communities, which are similar to those  methods specified  in the SOLEC
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Coastal Wetland Plant Community Health, Coastal Wetland Invertebrate Community Health, Coastal Wetland Fish
Community Health, and Coastal Wetland Amphibian Diversity and Abundance indicators (SOLEC indicator numbers
4862, 4501, 4502, 4504, and 4862, respectively)

In Canada, the Durham project was established to assess coastal wetland biological communities and habitat in AOCs
The project is a partnership between the Central Lake Ontario Conservation Authority and Environment Canada —
Canadian Wildlife Service  (EC-CWS)  The project was initiated to organize and consolidate regional indicators of
coastal wetland health and to field-test monitoring protocols, which were developed for the goal  of establishing a
regional monitoring program on  Lake  Ontario  A number of IBIs were developed  for this program in  order to
incorporate an assessment of biological  community indicators, such as submerged aquatic  vegetation, aquatic
macromvertebrates, Pish, amphibians and breeding  birds  Use  of the IBIs allows the EC-CWS to conduct an
assessment  of coastal wetland ecosystem health in  the Durham Region  (Environment Canada and the  Central Lake
Ontario Conservation  Authority, 2004a, and 2004b)  Implementation of the  program requires a partnership
approach,  where science and  implementation committees are created to assist program implementation on a local
level  The Durham project was developed in support of the Consortium  and is intended to be a prototype framework
for the long-term, binational monitoring program in the Great Lakes basin  The Durham project framework for
coastal wetland monitoring has been adopted in other regions of the Great Lakes basin in Canada,  and use of these
protocols is likely to aid in the delistmg of a number of AOCs

Basmwide biological data sets for  Great Lakes coastal wetlands appear to be limited to data collected by the Marsh
Monitoring Program (MMP), which  was developed by the EC-CWS and Bird Studies Canada (BSC) This program is a
binational, basin wide, long- term monitoring  program that coordinates the skills and interests of hundreds of citizens
across the Great Lakes basin to help understand, monitor and conserve the basin's wetlands and their anuran and bird
inhabitants  (SOLEC indicator #4507)  The  MMP was initiated in  1994, and has been developed and  expanded
through the additional  support of the  U S EPA and the Great  Lakes  Protection  Fund  The MMP protocols  have
contributed to the binational assessment of Great Lakes AOCs (Timmermans et al   2004, Archer et al 2006) and are
currently incorporated into the Consortium monitoring plan Over ten years of data have been collected through the
MMP These  data are being used to support and help guide the management and remediation of marshes in Ontario
and the Great Lakes (e g , see Timmermans and McCracken, 2004)  Several U S programs, such as the Michigan Frog
and Toad Survey and Frogwatch USA use methods similar to those used for the MMP for surveying amphibians

Data  collection for other types of biological  indicators is not being conducted consistently  across the basin  The
Consortium protocols outlined in other chapters of this document offer a solution to address this gap

Physical  and Chemical Process Indicators

Few programs are  currently using chemical and physical indicators  such as nutrient loads,  sedimentation,  and
existence of contaminants in the assessment of wetland health and integrity Several  short-term studies have examined
the effects  of nutrients and sediments on wetlands, and the Durham project includes assessment of water quality,
sediment quality and watershed land use  However, a program to systematically track nutrient or sediment loads to
coastal wetlands does not  exist  Local  sediment and  chemical conditions in streams  are frequently monitored but
these programs rarely,  if ever, extend to wetlands Nutrient concentrations such as phosphorus and nitrogen levels
(SOLEC indicator #4860)  and sediment flowing into coastal wetlands (SOLEC indicator #4516) change rapidly over
time, which could be one reason why programs do not exist to consistently track these indicators.

Many gaps exist in monitoring of physical parameters of Great  Lakes coastal wetlands as well  Great Lakes water
levels are  monitored with lake level gauges  maintained by the National Oceanic  and Atmospheric Administration
(NOAA) in the United States and Canada's DFO, but there are currently no programs addressing the effects of water
level fluctuation on coastal wetlands (SOLEC indicator #4861)  Similarly, contaminants are infrequently monitored
 www glc org/wetlonds                                                                                   209

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The EC-CWS administers a program to study contaminants in snapping turtle eggs (SOLEC indicator #4506), which
focuses primarily on Canadian and binational AOCs  There is no comparable U S  program

Landscape Indicators

Several  SOLEC indicators  cover large-scale ecosystem monitoring, which are efforts  typically conducted using
remote  sensing tools such as satellite or aerial imagery and interpretation  Currently, an inventory effort to track
changes over time does not exist  The Ontario Ministry  of Natural Resources  (OMNR) has recently developed a
detailed land cover map for southern  Ontario which  will be useful in  providing a landscape  context to coastal
wetlands  Land use changes are tracked as part of NO A A's Coastal Charge Analysis Program, but wetland classification
at this coarse scale can include only four types The program revisits the Great Lakes every five years and tracks
coarse-scale wetland area and land cover adjacent to coastal  wetlands (SOLEC  indicator #4863)  Fine- scale land
cover and land use maps are also generated by each of the Great Lakes states and provinces, while the U S  Geological
Survey (USGS)  maintains the National Land Cover Dataset at a course scale for the entire U S These map products can
be used  to assess land use change adjacent to wetlands

One of the most  critical  indicators for  wetland management  is the  measure of coastal wetland area extent by type
(SOLEC indicator #4510) Several ongoing efforts to map wetland areas exist throughout  the Great Lakes basin The
U S  Fish and Wildlife Service (U S FWS) operates the National Wetlands Inventory project, which  delineates wetland
polygons from aerial photographs for all U S  wetlands (coastal and inland), except those in the state of Wisconsin,
which has developed its own classification scheme Several other states, including  Ohio and Michigan, have developed
additional inventories to supplement National Wetlands  Inventory maps In Canada, the OMNR developed the Ontario
Great  Lakes Coastal Wetland Atlas, a consolidation of all field evaluated  wetlands inventories that  have delineated
wetland extent using similar methods, but with a different classification scheme  from the U S inventories  In order
to eliminate confusion for those who adopt Consortium  protocols, the Consortium  compiled all coastal wetlands
inventories into a unified Great Lakes Coastal Wetland Inventory (see the Landscape-Based Indicators chapter of this
document) with a single wetland classification system
Framework  for  Implementation
As emphasized above, implementation of Consortium protocols  will require ongoing partnerships among many
agencies in order to successfully result in a basmwide data set The  PIC attempted to identify agencies that would be
candidates for adopting all or some of the Consortium-recommended monitoring protocols for various portions of
the Great Lakes basin

U.S. Framework  for Implementation

Federal Partners
The  following U S federal  agencies already have developed programs that could be modified to include certain
Consortium protocols Although it is  not expected that any one of these agencies could take full responsibility for
implementing this  monitoring strategy, each entity has responsibilities and programs that would benefit from the
adoption of the protocols, and/or each has the  ability to serve as a  useful partner to those that choose to implement
them

       •    US Fish and Wildlife Service (U S FWS)
           The U S FWS is responsible for coordinating the compilation of wetland status and trends reports on a
           biennial  basis The  agency is  also responsible  for  developing and  updating the  National  Wetlands
           Inventory


210                                                               Great Lakes Coastal Wetlands Monitoring Plan

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       •  US Army Corps of Engineers (U S ACE)
          The U S  ACE  provides  technical  and engineering support to the International  Joint Commission, a
          binational organization established to advise the U S  and Canada on the use and quality of Great Lakes
          waters. This support is particularly important For matters dealing with lake level regulation and impact
          assessments of proposed projects seeking permits  The agency also administers various  programs that
          support state and  local habitat restoration and protection projects. These  activities  frequently require
          monitoring, and could lend themselves to use of Consortium protocols  Finally, the  U S ACE administers
          Section 404 of  the  U S  CWA which provides  authority for  permitting changes  within  coastal zones
          adjacent to navigable waterways, including protection of wetland resources

       •  US Environmental Protection Agency (U S EPA)
          The U  S   EPA  is the  major federal  agency  supporting the  GLWQA and  the  agency  also manages
          development, implementation and reporting of SOLEC indicators and  LaMPs The agency also manages
          cleanup and restoration efforts within the 30 U S AOCs, including monitoring the progress of restored
          beneficial uses

       •  National Oceanic and Atmospheric Administration (NOAA)
          NOAA's National Estuary Restoration  Program and Coastal Zone Management Program provide funding
          for the purchase of ecologically important coastal properties Both programs have distinct requirements
          for coastal  wetlands  landscape monitoring and could likely partner with agencies that adopt Consortium
          protocols

       •  US National Park Service (U S NPS)
          The U S  NPS monitors wetlands within park boundaries both adjacent to and within the Great Lakes
          watershed  Some parks may have wetlands that could be monitored using Consortium protocols  If the
          agency chooses to implement this plan, it could provide great incentive to other property owners such as
          states and local governments, to monitor their coastal parks as well

       •  US Natural Resources Conservation Service (NRCS)
          NRCS conducts soil  surveys and conservation needs assessments This agency also maintains the National
          Resources  Inventory to provide a basis for resource conservation planning activities, and to provide an
          assessment of the condition of private lands  NRCS programs designed to restore  or enhance wetlands,
          such as the Wetland Reserve Program, have resulted in reduced wetland losses across the country

       •  US Geological Survey  (USCS)
          The USGS Great Lakes Science Center is heavily involved in research on coastal ecology and  processes
          Currently the center is sponsoring research on the effects of low water levels on coastal wetlands and the
          effects  of  global  climate  change  on dune and swale  complexes  The  USGS  also has operational
          requirements for assessing hydrologic characteristics of streams, rivers and near shore waters of the Great
          Lakes  The agency also participates in conducting specialized  research  investigations on groundwater,
          overland flow, bacterial contamination of beaches and other water quality conditions  It is possible that
          scientists with USGS funding could implement Consortium  protocols as a substitution for or along with
          their own methods for assessing biological indicators, thus allowing information to be collected for their
          own projects and for the benefit of anyone interested in Consortium data.

State Partners
In order to determine the  capacities of each Great Lakes state for coastal  wetlands monitoring, the PIC conducted
telephone surveys with each state agency that would be most likely to conduct monitoring projects Tables 10-1  and
www glc org/wetlonds                                                                                     211

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10-2 summarize the responses to the survey, and identify wetland monitoring efforts for each state Agencies queried
for the survey were based on Great Lakes Commission contacts and the initial expressions of interest state agencies
made during the formative stage of the Consortium  It should be noted that the PIC did not survey every state agency
that may participate in wetland monitoring, but only those that would be expected to take a lead role in a coastal
wetland monitoring effort  It is likely that the lead agency in each state would work with other state agencies and a
number of partners, including the federal agencies listed above, nonprofit organizations, colleges and universities,
local governments, and other state agencies to carry out the Consortium monitoring protocols efficiently

The agencies identified in Table 10-1 all appear to have the ability to conduct a long-term monitoring program,
though some agencies may  be more  likely to  implement  this plan since  adopting Consortium protocols would
coincide with their current monitoring mandates  Although availability of staff and equipment are limiting factors, it
appears that each state  has  effective  resources  to  conduct at least a portion of the recommended monitoring
protocols   Table  10-2  displays information regarding each Great Lakes  state's  current  staffing  and equipment
availability, as well as a description of the types of training that will likely be necessary

Gaps  in staff and equipment capacities  could likely be addressed through  coordination with  other agencies  For
example, the Land and Water Management Division of the Michigan Department of Environmental Quality, which is
the wetlands regulatory  agency for the state, does not possess fyke nets or macromvertebrate survey equipment
However, representatives from the agency indicated  that they could work with the Michigan Department of Natural
Resources Fisheries Division to coordinate monitoring efforts and  share equipment Other survey participants also
indicated that a good working relationship exists among natural resource agencies in their state Coordination among
these groups will allow easier implementation of the Consortium protocols  Even so, some initial funds to purchase
equipment may be needed for implementation of these protocols  This funding could include contributions from a
combination of federal and state sources  with perhaps some contributions from  other funding entities  such as state
trust funds and  foundations
212                                                                Great Lakes Coastal Wetlands Monitoring Plan

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Table 11-1. Results from Consortium Phone Survey Current Agency Monitoring Efforts and Partnerships.
State


Illinnic
Illinois




Indiana





Michigan



Minnesota



New York

Agency


Illinois Natural History
Survey




Indiana Department of
Environmental Management





Michigan Department of
Environmental Quality
(MDEQ), Land and Water
Management Division



Minnesota Department of
Natural Resources,
Minnesota Pollution Control
Agency

New York Department of
Environmental Conservation
(DEC), Division of Fish,
Wildlife and Marine
Resources
Coastal Monitoring
Description
The Critical Trends
Assessment Program
(CTAP) has monitored some
coastal areas as part of the
program's random sampling
protocol


Currently no monitoring
based on coastal wetlands
alnnp
aiuiic




Currently no monitoring
based on coastal wetlands
alone


Some plots of the state's
random sampling protocol
fall in coastal areas, but
currently no monitoring
based on coastal wetlands
alone

Currently no monitoring
based on coastal wetlands
alone

Other Wetland
Monitoring

CTAP monitors wetland
condition throughout the
state on public and private
land

Environmental Protection
Agency (EPA) based
momtonng strategy has
been developed, on the
ground monitoring has not
yet begun National Wetland
Inventory (NWI) maps are
being updated
Currently field testing
Michigan Rapid Assessment
Method (RAM), and planning
to use indices of biological
integrity (IBIs) in coastal and
inland wetlands as part of a
three tiered monitoring plan
NWI Maps are being
updated

Random wetland sampling
using IBIs and Minnesota
RAM
r\rtivi

Currently no wetland
monitoring program has
been developed The states
has been surveying streams
for 20 to 30 years
Partners

The Nature Conservancy,
University of Illinois, Illinois
Department of Natural
Resources



Indiana University, Ducks
Unlimited





Michigan Department of
Natural Resources (MDNR),
MDEQ Water Bureau, Ducks
Unlimited



Other state agencies



DEC Freshwater Wetlands
Regulatory Program

 www glc org/wetlands
213

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State
Ohio
Pennsylvania
Wisconsin
Agency
Ohio EPA
Pennsylvania Department
of Environmental Protection
(PDEP), Pennsylvania
Game Commission
Wisconsin Department of
Natural Resources
Coastal Monitoring
Description
Near shore fish and
macromvertebrate IBIs
used in coastal areas,
some plots of the state's
random sampling protocol
fall in coastal areas
Gannon University has
been monitoring chemistry
and habitat at Presque Isle
for 20 years PDEP has
monitored coastal wetlands
in the past as part of its
three tiered random
sampling monitoring plan
Working with Ontario to
conduct a Marsh Monitoring
program, which focuses on
birds and amphibians
Other Wetland
Monitoring
Ohio RAM used to sample
throughout the state,
Random sampling of inland
and coastal wetlands is
conducted Currently using
NWI to develop detailed
functional assessments of
random wetlands
Currently involved in a
number of grant funded
monitoring projects
focusing on specific
locations The state has
developed a wetland
monitoring strategy and a
Wisconsin RAM
Partners
Midwest Biodiversity
Institute, Kenyon College,
Ohio State University
Pennsylvania Fish and Boat
Commission, Pennsylvania
Department of
Conservation
Ontario Marsh Monitoring,
University of Wisconsin,
Northland College, Great
Lakes Indian Fish and
Wildlife Commission
214
Great Lakes Coastal Wetlands Monitonng Plan

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Table 11 -2. Results from Consortium Phone Survey - State agency staffing and available equipment for each Consortium indicator and
anticipated training needs.
State
Illinois
Indiana
Michigan
Minnesota
New York
Macroinvertebrates
staff
In house
expertise
In house
expertise
Expertise
available
within other
divisions
In house
expertise
In house
expertise
equipment
Accessible
Accessible
Accessible
through other
divisions
Accessible
Accessible
Fish
staff
In house
expertise
In house
expertise
for stream
fish
Expertise
available
within
other
divisions
In house
expertise
No staff
currently
available
equipment
Accessible
No current
access to fyke
nets
Accessible
through MDNR
Accessible
No current
access to
equipment
Plants
staff
In house
expertise
In house
expertise
In house
expertise
In house
expertise
No staff
currently
available
equipment
Accessible
Accessible
Accessible
*- ,
Accessible
Birds and Amphibians
staff
In house
expertise
No staff
currently
available
No staff
currently
available
In house
expertise
In house
expertise
equipment
Accessible
bird and frog
song CDs
Accessible
Accessible
Accessible
Landscape features
staff
In house
expertise
In house
expertise
In house
expertise
In house
expertise
In house
expertise,
limited by
funding
equipment
ArcMap
Arclnfo
ArcView3
ArcMap, ESRI
ArcView92
Training needs
Limited training on
specific protocols may be
needed
If new staff are hired,
extensive training would
be needed.
Training on birds and
amphibians would be
needed as well as
general training on use of
specific protocols
Depends on abilities of
new hires.
Depends on abilities of
new hires

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State




Ohio

Pennsylvania




Wisconsin


Macroinvertebrates

staff



In house
expertise

Expertise
available
within other
«tatp

agencies

Collection In
house
expertise
Identification
outside lab


equipment



Accessible

Accessible




Accessible


Fish

staff



In house
expertise

Expertise
available
within other
slalp

agencies


In house
expertise



equipme
nt



No current
access to
fyke nets

Accessible




Accessible


Plants

staff



In house
expertise

In house
expertise




In house
expertise



equip
ment



Accessib
le

Accessib
le




Accessib
le


Birds and Amphibians

staff



In house expertise

No staff currently
available




In house expertise


m
equi
pme
nt

CD
player
with
speak
ers
Acces
sible




Acces
sible


Landscape features

staff



In house expertise

In house expertise




In house expertise


eq
uip
me

nt
Arc
Vie
w
92

Arc
1
and
2

Arc
9.2
and
Erd
as
Ima
gme

Training needs



New staff would need
extensive training
Existing staff would need
limited training on
protocols
Some training may be
needed, but contractors
would likely be hired to
collect data



Staff would need training
on using specific
protocols


216
Great Lakes Coastal Wetlands Monitoring Plan

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Tribal Partners
Tribal governments were not included among the survey participants  It is expected that tribes, like the states, are in
various points in the development of monitoring strategies  At this time, no tribe is known to have a fully developed
wetland monitoring program  However, several tribes throughout  the basin may have the ability to implement
Consortium protocols  Many tribes are interested in the condition of coastal and other wetlands that  support wild
rice or specific wildlife such as turtles   Monitoring of these  interests could be  accomplished, in  part, by tribal
implementation of the protocols Tribes could also consider becoming a part of existing monitoring programs, such as
the MMP,  in order to begin implementation of a coastal  wetlands monitoring  program  Again, coordination and
funding will be the most important aspects of the tribes' abilities to participate

Local Partners
Local partners in the U S. include  various  universities, colleges, nonprofit organizations, local governments and
conservation groups Thousands of these groups exist throughout the Great Lakes basin, thus the PIC did not evaluate
each to determine their potential for participation in Consortium monitoring strategy  However, groups such as the
Nature Conservancy  and Ducks Unlimited have a vested  interest  in maintaining wetland functions  and many
universities have academic and research programs that focus on coastal ecology  These organizations could further
their goals of promoting a strong, viable coastal ecology in the region by implementing all or a portion of Consortium
protocols   In addition,  these groups may  be able to use  this  methodology to  answer  specific research questions
pertaining  to  coastal  wetlands  Although cost and properly  trained staff will be  a limiting factor for local
governments,  it  may be possible  for interested municipalities to  partner  with each other  or  with  various
nongovernmental organizations to implement Consortium protocols for  the purpose of assessing the health of
important wetland resources in their communities

Canadian Framework for Implementation

Federal Partners
Canada may choose to follow a previously  established framework for implementation of Consortium protocols  The
Great Lakes Wetlands Conservation Action  Plan (GLWCAP) is an effort  that has been  highly successful  at forging
partnerships among government and nongovernmental interest groups with the goal of preventing further losses of
wetlands in the Great  Lakes basin  Through the GLWCAP,  wetland conservation and monitoring  activities are
coordinated and priorities focused so that entities with limited resources and capacity can operate in a more efficient
and effective manner  The GLWCAP provides the opportunity  for government and interest groups to develop tools
for use in  wetland conservation  and monitoring. Through this partnership these  organizations have the means to
promote the use and broader applicability  of such tools throughout the Great Lakes basin  The GLWCAP has well-
developed partnerships among wetland experts which will be extremely helpful in the implementation of Consortium
protocols

The following federal agencies are valuable potential partners of the Consortium due to their extensive  expertise and
relevant mandates
Environment Canada — Canadian Wildlife Service CEC-
EC-CWS is mandated  to protect migratory birds and their habitats (Migratory Birds Act (1994)), and to identify
critical  habitat on federal  lands for species considered "at risk" according to the Committee  on the Status of
Endangered Species in Canada, and implement plans for their recovery,  in accordance to the  Species at  Risk  Act
(2002)  The EC-CWS  has the wetland ecology expertise, excellent CIS capacity and most equipment necessary to
carry out Consortium monitoring protocols in designated National Wildlife Areas that contain coastal wetlands.

A number of other federal  monitoring programs have linkages to coastal wetland health and may  have potential for
future integration with a coastal wetland  monitoring program

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          Ecological Monitoring and Assessment Network (EMAN)
          EMAN coordinates organizations and individuals involved in ecological monitoring, especially those who
          actively conduct long-term monitoring  EMAN  also fosters collaboration to improve the effectiveness of
          ecosystem  monitoring and to better detect, describe and report on ecosystem changes  EMAN works to
          coordinate efforts through use of standardized protocols  in study design, sampling procedures, data
          analyses and  reporting,  and provides  a  database  for community-based  monitoring  groups to share
          information and collection protocols  This system is an excellent example of the types of partnerships that
          could be used m GLCWC monitoring plan implementation

          Water Survey of Canada
          This national hydrometric program provides real-time,  long-term,  surface water  quantity data and
          information, including information about the Great  Lakes and its tributaries.  Wetland diversity and
          function is directly related  to natural water level fluctuations, with coastal wetlands influenced by both
          lake levels and stream flow or discharge

          National Wildlife Toxicity Program (NWTP)
          The National  Wildlife Toxicity  Program aims to establish cause-effect  relationships between toxic
          substances in the environment and wildlife Monitoring and evaluation studies occur throughout the Great
          Lakes basin and sites often include coastal wetlands  Integrating monitoring  sites between the Consortium
          monitoring program and the NWTP could provide opportunities for resource and knowledge sharing

          Parks Canada Agency (PCA)
          Parks Canada Agency is mandated to monitor and report on the ecological integrity of national parks in
          fulfillment of its responsibilities to the Canada National Parks Act (2001) (Zorn et al  2006) Ecological
          integrity is determined through analysis  of various indicators,  one of which  is a wetland ecosystem
          indicator  Among seven "measures" constituting the wetland ecosystem indicator, PCA selected the Bird
          Studies Canada (BSC)  MMP/Consortium marsh bird and anuran monitoring protocols  due to their
          potential value to inform wetland ecological integrity BSC partnered with PCA in 2007 to oversee aspects
          of  preparation  for  MMP/Consortium  protocol application  among each  of PCA's  five  Great  Lakes
          bioregion parks Most of these parks contain varying amounts of coastal wetland habitat, especially Point
          Pelee National Park and  St  Lawrence Islands National Park  Therefore, MMP/Consortium marsh bird
          and anuran monitoring protocols will be utilized at several  of these  wetland sites  Additionally, following
          its  methodology selection process, PCA selected the  Consortium  aquatic  vegetation sampling protocol
          (Zorn  et al  2006)   Consequently, PCA  is  a  potential partner  to contribute marsh  bird, anuran and
          wetland vegetation monitoring and assessment data to the Consortium data management system

          Department of Fisheries and Oceans(DFO)
          The DFO is responsible,  in part, for ensuring the existence of healthy and productive aquatic ecosystems
          within  Canada's marine  and  freshwater environments  As an agency  engaged  in LaMPs,  the DFO is
          committed to research, conserve and protect Great Lakes aquatic habitats and the aquatic species that
          depend on them As  such, the DFO has  engaged in several fish and habitat-related research initiatives on
          the Great Lakes, some of which encompass coastal wetland habitats  The DFO could greatly benefit from
          being engaged as a partner of the Consortium to incorporate recommended fish monitoring protocols as
          part of sampling studies conducted within coastal wetland habitats
218                                                               Great Lakes Coastal Wetlands Monitoring Plan

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Provincial Partners
The entire length of the Canadian shoreline of the Great Lakes lies within the province of Ontario Thus, provincial
programs  and partnerships will be essential to successful implementation of the Consortium monitoring plan The
following agencies have programs and mandates that may benefit from adoption of Consortium protocols

       •  Ontario Ministry of the Environment(OMOE)
          The OMOE monitors and assesses water quality on the Great Lakes as a partner of the LaMPs to deliver
          on the COA and the GLWQA  OMOE also coordinates water quality and quantity information for inland
          lakes and streams, including two, long-term, volunteer-based monitoring programs that may be of interest
          to a coastal wetland monitoring program  One is the Lake  Partner  Program,  where citizens collect
          information about water clarity and nutrient inputs  A second is the Provincial Groundwater Monitoring
          Network, which, in partnership with all Conservation Authorities and several municipalities, collects and
          manages ambient groundwater level and quality  information of  key  aquifers located across Southern
          Ontario, including  the lower  Great Lakes  Both of these programs  provide key information  toward
          building better hydrologic models for the Great Lakes and are very useful to monitor how lake hydrologic
          inputs are influenced by land use and water use to identify trends and emerging issues

       •  Ontario Ministry of Natural  Resources(OMNR)
          OMNR's primary objective  is to protect and manage Ontario's natural resources, including several coastal
          wetland  habitats  In particular,  the OMNR  Lake  Erie Management  Unit (LEMU)  has  been actively
          involved in  wetland monitoring  Beginning in  2007, the OMNR is  engaging in a three-year,  multi-
          component ecological assessment study of Long Point Bay  This study will include fish  community
          assessments, water quality monitoring, macromvertebrate surveys,  marsh bird and  amphibian monitoring,
          and aquatic vegetation surveys, among other assessments  Preliminary discussions between BSC, EC-CWS
          and OMNR-LEMU staff have indicated that MMP/Consortium protocols will likely be utilized to meet
          marsh bird and anuran monitoring objectives  OMNR-LEMU  will be utilizing the Consortium aquatic
          macromvertebrate and, possibly, fish survey protocols  OMNR will  continue their role as a willing and
          enthusiastic partner of the  Consortium by  submitting data generated  through use of any Consortium-
          recommended protocols  that  they have adopted  for  their own purposes The  OMNR has also been
          involved m a number of remote wetland mapping initiatives  Their research and development expertise in
          these  technologies will be an asset to the monitoring of landscape indicators

First Not/on Partners
The  First  Nations have a  close connection with the environment and a vested  interest in the management and
conservation  of the Great Lakes resource There are at least 20 First  Nations communities  along the Great Lakes
shoreline  that have been identified  as containing coastal wetland  habitat  Many  First Nations communities have
contributed to or implemented a number of natural resource  programs and ecosystem  management plans to protect
and restore coastal  wetlands  Building partnerships with First Nation peoples and communities in the science and
monitoring of coastal wetlands and finding ways to link traditional knowledge  and values with current environmental
challenges will continue to be an important part of partner engagement for wetland conservation decision making

Nongovernmental Partners
In Canada, wetland monitoring programs have historically been implemented as  a series of localized, specific and
short-term efforts  Although these  programs have been effective in meeting priority  needs, differing scientific
questions and protocols among constituent program members limits coastal wetland data integration

Bird Studies Canada (BSC)
BSC's MMP marsh bird and amphibian monitoring protocols  have been adopted by the GLCWC for use to provide
long-term marsh bird and anuran monitoring  BSC is well positioned to provide much data in  this regard through use
www glc org/wetlands                                                                                    219

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of its extensive volunteer monitoring network  Queries of the MMP database will identify those monitoring routes
which occur at coastal marsh-type wetlands, and resulting data will be submitted through the appropriate channels
BSC staff periodically conduct coastal wetland assessments as part of various special projects, which may include
MMP marsh bird and  amphibian surveys, and associated habitat characterizations, physical/chemical water quality
measurements,  aquatic   macromvertebrate  community  assemblage   assessments,  landscape  feature/land   use
descriptions, and fish surveys  As such, BSC staff have expertise and access to various equipment required to conduct
these activities

Conservation Authorities
Conservation Authorities (CA) are generally the best equipped local organizations to implement Consortium coastal
wetland monitoring protocols CAs are local watershed management agencies that deliver services and programs that
protect and manage water and other natural  resources in partnership with government,  landowners and other
organizations  Many  CAs are mandated to monitor and assess  ecological condition and integrity within their
watersheds  These  mandates are  often  related to CA  responsibilities to  oversee watershed-level protection of
constituent municipalities' drinking water sources, as required by the Government  of Ontario's  Clean Water Act
(2006)  Since many CA jurisdictions include coastal areas or their major interconnecting waterways, several already
engage in coastal wetland  monitoring or assessment activities for various parameters and in various intensities  In
many cases, these coastal wetland sampling activities are components of larger, watershed-wide ecological assessment
or inventory projects

CAs participating in monitoring projects can be considered current and natural partners of the Consortium for
protocol implementation  In an effort to assess the current monitoring roles of various CAs and to gauge the potential
of each CA's involvement in implementation of Consortium protocols, the PIC included many of Ontario's CAs in
the phone survey The results of the survey are summarized below and in Tables 10-3 and 10-4

Among those  CAs whose  representatives responded  to inquiries,  Credit Valley Conservation Authority (CVCA),
Grand  River Conservation Authority (GrRCA),  Niagara  Peninsula  Conservation Authority (NPCA)  and Raisin
Region Conservation  Authority (RRCA) are all involved in some degree of coastal wetland  monitoring. A primary
coastal wetland sampling focus for these CAs is  wetland vegetation  monitoring,  which  in some  cases occurs in
conjunction with similar sampling at inland wetlands  Anuran monitoring has also occurred at  CVC, GrRCA,  and
NPCA coastal wetland sites, the latter two of which use the MMP/Consortium protocol

The St  Clair Region Conservation Authority and Qumte Conservation are not currently conducting coastal wetland
monitoring activities, but may be able to in the future, provided funding is available Each has most of the in-house
expertise and equipment necessary to implement Consortium protocols, although staff training would be required
Qumte Conservation, in  particular, has formerly  partnered  with CWS to  monitor coastal wetland habitats using
Consortium protocols, and  currently partners with  BSC to  deliver local MMP volunteer training workshops
Cataraqui Region Conservation Authority (CRCA), encompassing the Kingston, Ontario region, is another example
of  an   organization  with  several  coastal   wetlands with  its  jurisdiction,  but currently  lacking  a wetland
monitoring/assessment initiative  CRCA also chairs the Kingston Wetlands  Working Group, a coalition committed
to protecting  and restoring  wetland ecosystems in  the  Kingston  area  Lakehead Region Conservation Authority,
within the Lake Superior watershed, currently has no dedicated biological monitoring staff and little in-house
expertise required to adopt Consortium protocols  However, much coastal monitoring potential exists in this region
given the large extent of coastal wetland habitat, provided  that adequate funding sources can be secured. There is a
good possibility that these organizations will be supportive of the Consortium's coastal wetland monitoring plan and
should be engaged and explored further

Other Localized 'Nongovernmental Organizations
Aside  from  CAs,  other  potential  Canadian  local  partners  include nongovernmental  and  nonprofit research
organizations  One example is the St  Lawrence  River Institute of  Environmental  Sciences  (SLRIES), based in


220                                                                Great Lakes Coastal Wetlands Monitoring Plan

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Cornwall, Ontario, which has a mandate to conduct research and promote community action relating to large river
systems, with a focus on the St  Lawrence River The SLRIES has been involved with water quality monitoring and
fish and macromvertebrate sampling within the St Lawrence River and its surrounding coastal wetland habitats  The
Royal Botanical Gardens (RBG), located within Hamilton and Burlington, Ontario, has a research arm that is involved
with significant biotic and abiotic monitoring activities within Cootes Paradise Marsh, a marsh complex located at the
western end of Lake Ontario. In  conjunction with local partners, the RBG tests water quality, conducts wetland
vegetation surveys, summer fish surveys, annual marsh bird and anuran monitoring, migratory bird surveys, turtle
surveys and CIS-based wetland land cover assessments The RBG is currently utilizing MMP/Consortium marsh bird
and anuran monitoring protocols, carried out by staff and local MMP volunteers

All contacted organizational representatives were receptive, and in many cases, enthusiastic about the objectives of
the Consortium There is common interest among these organizations to adopt Great Lakes basmwide standardized
coastal  wetland monitoring protocols  Providing that  issues of funding  can be adequately  addressed to offset
implementation costs, CAs and the nonprofit groups listed above represent ideal  and likely partners for protocol
implementation.
 www glc org/wetlands                                                                                     221

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Table 11-3. Current coastal wetland monitoring efforts and partnerships among potential Canadian Consortium partners who responded to
information inquiries.
Organization
Bird Studies Canada
Central Lake Ontano
Conservation Authority
Credit Valley Conservation
Ganaraska Region
Conservation Authority
Grand River Conservation
Authority
Jurisdiction
Great Lakes basin
Encompasses 15
watersheds within the
municipalities of Oshawa,
Pickering, Uxbndge.
Clanngton, Ajax and Whitby
Credit River watershed
Ganaraska River watershed
Grand River watershed
Great Lake Basin
N/A
Lake Ontano
Lake Ontario
Lake Ontano
Lake Erie
Coastal Monitoring Description
Venous coastal wetlands are monitored by
volunteers using Marsh Monitonng Program
protocols as part of larger monitoring
network, and by staff Penodic water quality
assessments conducted by staff and some
volunteers
Leads Durham Region Coastal Wetland
Monitonng Project activities
Wetland vegetation surveys and anuran
surveys currently ongoing
Contnbutes to Durham Region Coastal
Wetland Monitonng Project activities
Primarily vegetation monitoring at Dunnville
Marsh on Lake Ene
Partners
Vanous Conservation Authorities.
Environment Canada, U S Environmental
Protection Agency, St Lawrence River
Institute of Environmental Sciences, Area of
Concern Remedial Action Plan committees,
vanous community volunteer monitonng
groups, Marsh Monitonng Program volunteer
participants
Canadian Wildlife Service. Ganaraska
Region Conservation Authority, Toronto and
Region Conservation Authority
University of Guelph, local naturalist clubs
and community groups
Canadian Wildlife Service, Central Lake
Ontano Conservation Authority, Toronto and
Region Conservation Authonty
Ontano Ministry of Natural Resources,
University of Waterloo

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Table 11-3. (Continued)
Organization
Niagara Peninsula
Conservation Authority
Quinte Conservation
Raisin Region Conservation
Authority
Royal Botanical Gardens
St Clair Region
Conservation Authority
Toronto and Region
Conservation Authority
Jurisdiction
Ontario and Lake Erie
portion of the Niagara River
watershed
Moira, Napanee and
Salmon River watersheds,
and Pnnce Edward County
Raisin River watershed and
surrounding smaller
watersheds
Cootes Paradise Marsh and
surrounding tributaries,
located at western end of
Lake Ontano
Ontano portion of the St
Clair River watershed
Watersheds located within
theCityofTorofflbvw9
Great Lake Basin
Lake Ontario/Lake Ene
Lake Ontano
St Lawrence River
Lake Ontano
Lake Ene
c orgMflterQfetano
Coastal Monitoring Description
Currently engaged in anuran monitonng at
two marsh locations
None currently, have worked with Canadian
Wildlife Service to implement coastal wetland
monitonng and assessment activities for
vanous biotic and abiotic parameters
Pnmanly vegetation mapping and fish habitat
monitonng within St Lawrence River
shoreline marshes
Monitionng and assessment activities of
vanous biotic and abiotic parameters within
Cootes Paradise Marsh and surrounding
tnbutanes
None currently
Contributes to Durham Region Coastal
Wetland Monitonng Project activities
Partners
Ontano Ministry of Natural Resources
Bird Studies Canada
None for coastal wetland
monitonng/assessment activities
McMaster University, Bay Area Restoration
Council, vanous other community volunteer
groups
N/A
Canadian Wildlife Service, Central Lake
Ontano Conservation Authority, Ganaraska
Region Conservation Authority
                                                                                                                           223

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Table 11-4. Expertise and equipment availability, and training requirements for each Consortium indicator, among potential Canadian
Consortium partners who responded to information inquiries.
Organization
Bird Studies Canada
Central Lake Ontario
Conservation Authority
Credit Valley Conservation
GanarasKa Region
Conservation Authority
Grand River Conservation
Authonty
Macroinvertebrates
staff
In-house expertise
In-house expertise
In-house expertise
In-house expertise
In-house expertise
equipment
Accessible
Accessible
—
Accessible
Accessible
Fish
staff
In-house expertise
In-house expertise
In-house expertise
In-house expertise
In-house expertise
equipment
Accessible
—
Accessible
Accessible
Accessible
Plants
staff
No current in-
house expertise
In-house expertise
In-house expertise
In-house expertise
In-house expertise
equipment
None currently
available
Accessible
Accessible
Accessible
Accessible
Birds and Amphibians
staff
In-house expertise
In-house expertise
In-house expertise
(or anuran surveys
only
In-house expertise
In-house expertise
equipment
Accessible
Accessible
Accessible
Accessible
Accessible
Landscape features
staff
In-house expertise
In-house expertise
In-house expertise
In-house expertise
In-house expertise
equipment
ArcView

ArcView. ArcGIS
ArcView
ArcView, online
CIS mapping
Training needs
Staff training to conduct
wetland plant surveys would
be required

Staff would need training to
use specific protocols
Funding required to hire a
staff member trained to
conduct bird surveys
Further staff training would
be required to implement
macromvertebrate surveys
and bird and amphibian
monitonng
Staff would need training to
use specific protocols
224
Greot Lakes Coastal Wetlands Monitoring Plan

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Table 11 -4. (continued)
Organization
Niagara Peninsula
Conservation Authonly
Qumte Conservation
Raisin Region Conservation
Authority
Royal Botanical Gardens
SI Clair Region
Conservation Authority
Toronto and Region
Conservation Authonly
Macrolnvertebrates
staff
In-house expertise
No current in-
house expertise
In-house expertise
In-house expertise
In-house expertise
In-house expertise
equipment
Accessible
Accessible
—
Accessible
Accessible
Accessible
Fish
staff
In-house expertise
In-house expertise
In-house expertise
In-house expertise
In-house expertise
In-house expertise
equipment
No current BCCOSS
to fyke nets
No current access
to tyke nets
No current access
to fyke nets
No current access
to fyke nets
No current access
to fyke nets
Accessible
Plants
staff
In-house expertise
In-house expertise
In-house expertise
In-house expertise
In-house expertise
In-house expertise
equipment
Accessible
Accessible
Accessible
Accessible
—
Accessible
Birds and Amphibians
staff
In-house expertise
In-house expertise
In-house expertise
In-house expertise
In-house expertise
In-house expertise
equipment
Accessible
Accessible
Accessible
Accessible
Accessible
Accessible
Landscape features
staff
In-house expertise
In-house expertise
In-house expertise
No staff currently
available
In-house expertise
In-house expertise
equipment
ArcGIS
AicGIS
ArcView

Arc view

Training needs
Further staff training would
be required to implement
macroinvertebrate, fish and
vegetation surveys
Further staff training would
be required to implement
fish, plant surveys and bud,
amphibian monitonng Staff
training required for
invertebrate sampling
Further staff training would
be required to implement
macroinvertebrate surveys
and bird and amphibian
monitonng
Further staff (raining would
be required to implement
macroinvertebrate surveys
Further staff training would
be required to implement
wetland vegetation sampling
and bird and amphibian
monitonng

                                   www glc org/wetlands
225

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Implementation Strategy
In order for implementation of this plan to be successful an organization such as the Great Lakes Commission
(possibly via the Consortium or similar entity) will be essential to coordinate monitoring initiation, data collection
and communication among partners As part of the implementation process, a series of workshops will be necessary
to tram state, provincial, and other partners in the various aspects of this coastal wetlands monitoring plan Training
workshops would likely take place in most Great Lakes jurisdictions, with the possibility of combining entities (such
as Illinois and Indiana) that do not have  a large number of coastal  wetlands in their jurisdiction to monitor  The
purpose of such workshops will  be to engage prospective partners, discuss the monitoring protocols and identify
plausible frameworks for implementing this Great Lakes coastal wetlands monitoring plan

From its inception,  the Consortium has been a partnership of federal, state, provincial, university, nonprofit and
other stakeholders  from  both the U S   and Canada  Communication among the various  partners was essential
throughout all phases of the development of this plan — from the original pilot  studies where monitoring protocols
were tested through the drafting of final protocols

Due to the Great Lakes basmwide nature of the monitoring called for in this  plan, communication will continue to be
an essential aspect throughout the plan's implementation  Field personnel will not only need to report their data and
findings to their respective agency or organization, but will also be charged with sharing their monitoring data and
information with field partners across the basin  and their respective agencies This will facilitate the comparison of
data and results necessary for the development of periodic basmwide monitoring reports

In addition, a  central data hub will be needed  to coordinate communication and serve  as a  data storage  and
information center  The entity housing this hub will be charged with producing periodic updates on the health, status
and trends of Great Lakes coastal wetlands based on the data submitted by all agencies and organizations who conduct
the  monitoring These reports  will be  circulated widely  throughout the Great Lakes via  a wide spectrum of
communication channels, including a web site serving as the  clearinghouse of information on Great Lakes coastal
wetlands  Other means of communicating these reports include various listservs, newsletters, and presentations at
meetings  and conferences across the Great Lakes basin,  including  the  biennial  State of  the  Lakes  Ecosystem
Conference See Chapter  10 titled "Great Lakes Coastal Wetlands  Consortium Data Management System" for more
on the Consortium data sharing process

A second essential part of Consortium monitoring implementation  will be a dedicated source of funding for each
entity wishing to adopt these protocols This is, perhaps, the greatest obstacle potential partners will face in adopting
this  plan  or a  portion  thereof  Most agencies  and organizations described above  receive  only periodic funding
allocations directed toward  wetland  monitoring  and  assessment  tasks,  or larger watershed-scale studies  that
incorporate wetland sampling activity  In  the U  S, only Illinois and Minnesota have funds that are annually allocated
to wetland monitoring, and these sources are rarely enough to carry out an intensive monitoring program  Other
states must rely solely on periodic streams of federal funding and grants,  which creates a "patchwork" of wetland
monitoring over space and time On the Canadian side, Conservation Authorities also must contend with various and
limited funding resources

Hence,  monitoring  coordinators should strive to identify and  procure  dedicated funding  sources that  can be
earmarked for  Great Lakes  coastal wetland monitoring  Especially during the infancy stages of implementation,
intense efforts on the part of all partners will be required to secure funding   Optimally, a dedicated source of funding
for the program should be procured, and a portion of the  funds should be  used as "seed  money" to engage partner
jurisdictions in  implementation of this plan  It is  expected that partners will  utilize their own resources to the  extent
possible, with funding targeted to help fill gaps in personnel,  equipment and other essential needs  For nonfederal
partners a logical place to start would be federal programs — eg,  the CWA Section 106 water pollution control

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grant program, or other U S EPA and EC program grants, etc — which should consider giving preference to projects
using Consortium monitoring protocols as a "best practice" or standard  A variety of potential funding sources are also
listed below.

Funding in the United States

The following sources, though not directly  targeted  toward coastal wetland monitoring, may allow states and tribes
to identify funding to implement the Consortium monitoring plan, at least in the short term

       •  US C WA Section 106 Water Pollution Control Grant Program
          This program provides grants to states, tribes, and interstate agencies to develop and  implement water
          monitoring programs,  including wetlands  These funds can be used  for a wide  range of water quality
          activities including restoration and water quality surveys

       •  EPA Wetland Program Development Grants
          This federal source of funds helps states, tribes and local governments develop new monitoring programs
          or improve existing programs  States may be able to use this program to fund pilot programs or to develop
          a comprehensive wetland monitoring strategy that includes Consortium protocols However, this source is
          currently limited to development, rather  than implementation, of programs and will likely be insufficient
          to fuel monitoring programs to a significant degree

       •  US CWA Section 104(b)(3)  State Wetlands Grant Program
          This  program  makes  grants available  to  states, tribes,  local governments,  and  nongovernmental
          organizations to conduct  wetlands  projects These wetlands projects emphasize the development  of a
          comprehensive monitoring and  assessment program, as well as refining  the  protection of vulnerable
          wetlands  and aquatic  resources  These  grants  may  also  be used  to conduct surveys,  studies  and
          investigations related to causes, effects, prevention and extent of pollution

       •  NOAA State Sea Grant Offices
          Each Sea Grant state office offers a variety of funding opportunities for Great Lakes research  While most
          of this funding is focused towards new and specific Great Lakes research questions, it is possible that funds
          could be obtained if Consortium protocols were  being utilized by a university to study a particular aspect
          of coastal wetlands

       •  NOAA Coastal Zone Management Grants
          NOAA annually allocates  funds  to coastal states for a variety of coastal projects, including research and
          monitoring

       •  U.S EPA Great Lakes National Program Office
          Funding opportunities are  periodically available to conduct monitoring in the Great Lakes basin

       •  US. ACE — Estuary Restoration Act of 2000  (Estuaries are defined  under the  Act  to include the Great
          Lakes)
          The purpose of the Act is to promote the restoration  of estuary habitat, to develop a national  Estuary
          Habitat Restoration Strategy for creating and maintaining effective  partnerships within the federal
          government and with the private  sector, to provide federal assistance for and to promote efficient
          financing of estuary habitat restoration projects, and to develop and enhance monitoring, data sharing, and
          research capabilities
www glc org/wetlonds                                                                                     227

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       •  USGS National Water Quality Assessment Program (NAWQA)
          USGS  maintains and operates a monitoring network of surface  water gauging stations on streams and
          rivers draining to the Great Lakes  Data from this multi-state monitoring network provides the USGS and
          its many collaborators with information on surface water flows, quantity of available water, and water
          quality characteristics The goal of the NAWQA program is to develop is to develop long-term consistent
          and  comparable information on streams, ground water, and  aquatic ecosystems to  support  sound
          management and policy decisions  Although this program is not geared specifically towards coastal wetland
          monitoring, there  is potential to  build Consortium protocols into various aspects  of restoration and/or
          monitoring work conducted with this funding

       •  US  Fish and Wildlife Service
          The  U S  FWS administers  several wetland and  habitat  restoration programs including the  National
          Coastal Wetlands Conservation Grant Program,  the Coastal Program, the Partners for Fish and Wildlife
          Program, and the  Fisheries  and  Habitat Conservation Program  Again,  it may be possible  to  build
          Consortium protocols into monitoring components of projects funded by these grants

       •  Private Foundations and Consorua
          An array of private charitable organizations exists across the region  Many have explicit funding programs
          to promote sustainable ecological principles that rely upon  fully functional coastal wetland complexes
          Included in this category are  endowments such as the multi-state  Great Lakes Protection Fund and Great
          Lakes Fisheries Trust

Funding in Canada

Environment Canada makes funding, incentives,  rebates and other financial programs available to  individuals and
organizations to support activities that foster environmental sustamability in Canada Although most of these incentive
programs will  not support the long-term^ implementation of a coastal wetland monitoring program, they could
provide opportunities  to  target  restoration activities, based on the results of a monitoring program,  and the
monitoring protocols advocated in this document may be applicable to some of the monitoring requirements of these
programs

       •  EcoAction Community Funding Program
          EcoAction provides financial support to  community groups for projects that have measurable, positive
          impacts on the environment  Funding  can be  requested  for projects  that focus on  improving the
          environment and increasing environmental awareness and capacity in the community

       •  Great Lakes Sustamability Fund
          This program provides technical  and financial  support to  projects that implement and help advance the
          RAPs that have been developed for Canada's AOCs  Priority funding areas include fish and wildlife habitat
          rehabilitation and stewardship,  contaminated  sediment  assessment  and  remediation,  and innovative
          approaches to improve municipal wastewater  effluent quality  Some pilot programs in Canada's AOCs
          have already successfully  implemented Consortium protocols

       •  Habitat Stewardship Program for Species at Risk
          Funding from this program supports projects that contribute to the recovery of endangered, threatened
          and  other species at risk, and to  prevent other  species from becoming a conservation concern  Coastal
228                                                               Great Lakes Coastal Wetlands Monitoring Plan

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          wetlands provide habitat to many species at risk and Consortium protocols could potentially be used to
          monitor recovery projects or existing habitat

       •   Funding Technologies for the Environment
          This group helps broker innovative technology solutions that address Canada's environmental priorities In
          terms of the Consortium, this could include implementing the techniques outlined in the "Landscape Based
          Indicators" chapter of this document
       •   Remote sensing technologies could be used to monitor fish and wildlife habitat or changes in land use in
          the basin

Using Adaptive Management as an Implementation  Strategy

The task of implementing a new program can be daunting and frustrating to agencies that are already overburdened
with responsibilities and stretched thin by funding limitations  When considering whether or not to undertake the
challenge of adopting  Consortium protocols, it is important to convey to agencies and organizations the potential
benefits to Great Lakes programs that could come about as a result  of focused, consistent resource monitoring at a
basmwide level  It is also important  for existing Consortium leaders to be responsive to the monitoring needs and
existing programs of potential partners, and develop and adapt  implementation approaches to recognize those needs
and qualities The Consortium recognizes that agencies will need an implementation strategy in order to successfully
negotiate the challenges that are inherent in adopting or adapting new programs

Adaptive management is a  formal, systematic, and rigorous approach to learning from the outcomes of management
actions, accommodating change and improving management  It involves synthesizing existing knowledge, exploring
alternative actions and making explicit forecasts about their outcomes Adaptive management was developed in the
1970s  by  C S  Hollmg and co-workers  at the University of British Columbia and the International Institute for
Applied Systems Analysis  Since then, it has been applied to a range of specific  issues, including rehabilitation of
salmon stocks  in the  Columbia River Basin, management of acid ram,  and water management  in the  Florida
Everglades (Nyberg, J B.  1998)  Its application to  other  natural resource  activities is now receiving increasing
attention

Coastal wetlands are complex and dynamic.  As a result, our understanding of ecosystems and our ability to predict
how they will respond to management actions is limited These knowledge gaps lead to uncertainty over how best to
manage Great  Lakes coastal wetlands  Despite these uncertainties, wetland managers must make decisions and
implement plans Adaptive management is a way for wetland managers to proceed  with this responsibly in the face of
such uncertainty   It provides  a sound  alternative  to either  "charging ahead blindly" or  "being paralyzed  by
indecision",  both of which can foreclose management options, and have social, economic  and  ecological impacts
Thus, the Consortium believes adaptive  management may be  the ideal  implementation method for agencies who
adopt any of the protocols outlined in this document

The application of adaptive management includes six main steps, as outlined below  The framework formed by these
six steps is intended to encourage a more thoughtful, disciplined approach to management, without constraining the
creativity that is vital to dealing effectively with uncertainty and change (Nyberg, J B  1998)

Step 1  (problem assessment) is often completed in facilitated  workshops   Participants define the scope of the
management problem, synthesize existing knowledge about the system,  and explore  the potential  outcomes of
alternative management actions. Explicit forecasts are made about outcomes, in  order to assess which actions are
most likely to help the agency meet management objectives  During this exploration and forecasting process, key gaps
in understanding of the system (i e , those that limit the ability to predict  outcomes) are identified  Managers may be
faced with questions such as How do I implement the plan in a way  that  will meet management  objectives' How do
www glc org/wetlonds                                                                                   229

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we adjust our current monitoring program to include monitoring of coastal wetlands' Which of several possible
actions should we implement'

Thus, during step 1, it will  be important that agencies discuss the advantages  and disadvantages of implementing
Consortium protocols and what it means to them, as well as to overall monitoring efforts within the Great Lakes
basin This step  may be essential to formulating cohesive grant applications and  for presenting program adoption to
management or  decision makers within  the organization  This step is also essential to identify the ways in  which
implementation  of Consortium protocols will  aid the agency in achieving its Great Lakes and wetland  management
goals

Step 2 (design)  involves designing a management plan and monitoring program that will provide reliable feedback
about the effectiveness of the chosen actions  Ideally, the plan should also be designed to yield information that will
fill the key gaps identified in Step 1  It is useful to evaluate one or more proposed plans or designs, on the basis of
costs, risks,  mformativeness and ability  to meet management  objectives To complete  step  2,  agencies should
complete a written strategy detailing how Consortium protocols will be implemented. Such a strategy should include
the following information
       •  Details of partnerships that will be pursued to optimize available equipment and personnel
       •  Potential funding options
       •  A list of sites where monitoring will occur
       •  A list of dates when monitoring should occur and be completed
       •  A list of personnel who will conduct the monitoring
       •  An outline of information that will be included in monitoring reports
       •  An analysis of costs that will be incurred as a result of implementing this program  (see cost analysis chapter
          of this document)

                             FRAMEWORK FOR ADAPTIVE MANAGEMENT
Figure 11-1. Framework for Adaptive Management

In Step 3  (implementation), the above plan should put into practice, meaning monitoring using Consortium
protocols  will begin  In Step  4 (monitoring),  the agency  must evaluate  the  effectiveness of  implementing
Consortium  protocols in meeting the objectives set forth in step 1  Step S (evaluation) involves comparing the
actual outcomes to forecasts and interpreting the reasons underlying any differences  In other words, managers must
evaluate their monitoring program and determine if the proper protocols were  chosen, whether the protocols have
been valuable to the overall monitoring program,  how monitoring can be improved to better meet the agency's
monitoring objectives and whether new partnerships can be initiated to further enhance program potential
230
Great Lakes Coastal Wetlands Monitoring Plan

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Finally, step 6 (adjustment) involves correcting the design created in step 2 to reflect the new understanding gained
from the monitoring and evaluation steps  Understanding gained in each of these six steps may lead to reassessment of
coastal wetland management strategies,  new questions, and new options to try in a continual cycle of improvement
In each new monitoring cycle, all 6 steps should be repeated to ensure continuous improvement  Spending a small
amount of time each year completing the steps can ensure the agency continues to make the best decisions for  its
staff, the public, and the resources it seeks to protect

In reality, some of the steps outlined will overlap, some will  have  to be revisited, and some  may be need to  be
completed in more detail than others However, all six steps are essential Omission  of one or more will hamper the
ability to learn  from management actions   In  addition,  documenting  the  key  elements  of each step, and
communicating results are crucial to building a "legacy of knowledge", especially for  projects that extend over a long
time  For example, state, provincial and tribal/First Nation monitoring personnel should communicate with one
another and  share successes, problems and lessons  learned  Likewise, state,  provincial,  and  tribal/First Nation
agencies should communicate with federal agencies  Finally, all feedback loops should return to a central coordinator,
in this case, the Consortium communication hub, which will serve as a clearinghouse of information
 www glc org/wetlands                                                                                    231

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References

Archer, R W , S T A Timmermans, and C L  Robinson Monitoring and Assessing Marsh Habitats in Great Lakes Areas of Concern  Final
Project Report  Bird Studies Canada, Port Rowan, Ontario 302 pp

Canadian Wildlife Service and Central Lake Ontario Conservation Authority 2004  Durham Region Coastal Wetland Monitoring Project  Year
2 Technical Report

Environment Canada and Central Lake Ontario Conservation Authority  2004a Durham Region Coastal Wetland Monitoring Project  Year 2
Technical Report  Downsview, ON  ECB-OR  I77pp + appendices

Environment Canada and Central Lake Ontario Conservation Authority  2004b Baseline Conditions of Durham Region Coastal Wetlands
Preliminary Findings 2002- 2003 Downsview, ON ECB-OR  May 2004 36 pp

Environment Canada - Canada Wildlife Service 2007  Bay of Qumte Area of Concern  Coastal Wetland Status and Remedial Action Plan
Dchsnng Target Recommendations  June 2007 Toronto, Ontario EC-CWS 95 pp

Environment Canada and Ontario Ministry of Natural Resources  2003 The Ontario Great Lakes Coastal Wetland Atlas A Summary of
Information (198 3-1997)

Great Lakes Commission 2006 Environmental Monitoring Inventory of the Great Lakes Basin  Ann Arbor, Michigan

Great Lakes Regional Collaboration  2005 Great Lakes Regional  Collaboration Strategy Near Term Action Plan and Long Term
Recommendations to Restore and Protect the Great Lakes

Loftus, K K  , Smardon, R C and Potter, B A  2004 Strategics for the Stewardship and Conservation of Great Lakes Coastal Wetlands
Aquatic Ecosystem Health & Management, 7(2) 305-330

Mortsch, L ,J Ingram, A  Hcbb, and S  Doka(eds ) 2006  Great  Lakes Coastal Wetland Communities Vulnerability to Climate Change and
Response Adaptation Strategies  Final report submitted to the Climate Change Adaptation Program, Natural Resources Canada  Environment
Canada and the Department of Fisheries and Oceans, Toronto,  Ontario  251pp + appendices

N'ybcrg, J  B  1999  An Introductory Guide to Adaptive Management for Project Leaders and Participants, Forest Practices Branch, B C Forest
Service

Timmermans, S T A , G E  Craigic and K  Jones  2004 Marsh Monitoring Program Areas of Concern Summary Reports 1995 — 2002  Bird
Studies Canada, Port Rowan, Ontario

Timmermans, S T A and J McCrackcn  2004 Marsh Havens  Improving Marsh Habitats for  Birds in the Great Lakes Basin Bird Studies
Canada, Port Rowan, Ontario  15 pp

US  Environmental Protection Agency  2006  Elements of a State Water Monitoring and Assessment Program for Wetlands  Washington,
D C  Office of Wetlands, Oceans and Watersheds

U S  Environmental Protection Agency  2002  Methods for Evaluating Wetland Condition  #4 Study Design for Monitoring Wetlands
Washington, D C   Office of Water, EPA 822-R-02-OIS

US  Environmental Protection Agency  2001  Wetland Monitoring and  Assessment Washington, D C Office of Water, Office of Wetlands,
Oceans and Watersheds, EAP 843-F-OI-002g

Zorn, P ctal 2006 Parks Canada/EMAN Selecting a Suite of Wetland Ecosystem Monitoring Protocols Draft Report Parks Canada
Ontario Service Centre, Ecosystem Conservation Section, Ottawa, Ontario
232                                                                          Great Lakes Coastal Wetlands Monitoring Plan

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         Monitoring Great Lakes
            Coastal Wetlands:
  Summary Recommendations
               Chapter Author
         Thomas M. Burton, Michigan State University
www.glc.org/wetlands
233

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Introduction

In previous chapters,  Consortium scientists — with input from Great Lakes Environmental Indicator (GLEI) project scientists — have
recommended multiple biological metrics For monitoring the condition of Great Lakes coastal wetlands for plants, invertebrates, fish,
amphibians and birds  Also recommended is a design for sampling Great Lakes coastal wetlands that allows users to monitor condition
of these wetlands on an annual basis With a combination of repeated site visits and random sampling of other marshes on an annual
basis, users can establish status and trends (positive, negative, no change) of wetland condition for a given site, region or for all Great
Lakes coastal wetlands

The objective of this chapter is to provide an overview of how these protocols can be integrated into a standardized sampling regime
that can be used by local, state, provincial, tribal/First Nation, federal, and international agencies and nongovernmental organizations
from  the  United States and Canada The goal is to standardize the procedures  so that status and trends  data from  several local,
provincial, state and tribal agencies can be shared with and used by federal and international organizations and reporting entities (e g ,
GLC, GLFC, Environment Canada, U S  EPA, U S ACE, SOLEC) to track status and trends for the entire Great Lakes basin and/or
for each of the Great Lakes (e g , Lakewide Management Plans)

A program to obtain a database on changes in landscape, chemical and physical parameters from year to year is also recommended  Such
a database will enable users to independently monitor changes temporally while providing data that will  enable scientists and managers
to quantitatively measure changes in biotic indicators and relate them to changes in landscape (e g , land use/land cover/roads, wetland
area) and physical/chemical indicators (e g , lake level, wetland chemistry)


An  Overview of the Monitoring Program

The  ideal monitoring program  should  allow governmental  agencies and NGOs to assemble one  or more  teams of investigators to
monitor and analyze status and trends  data from  Great Lakes  marshes in their jurisdiction and make these  data available for use  by
organizations that need to monitor status and trends at regional, individual lake and Great Lakes basin  levels Such a program would
need to employ staff or contract with consulting firms and/or universities, or use trained volunteers to monitor status and trends at
local to international scales

Composition of the team assigned to  wetland sampling

Ideally, each team would have specialists who  would have the expertise  and training to carry out the proposed sampling design in a
timely manner and collect, enter and analyze data on landscape, physical, chemical and biotic indicators The team members should also
have the  appropriate background in statistics and use of databases to enter collected data and the ability to quantitatively analyze and
integrate the data into graphs, tables and reports on status and trends The team should include individuals with expertise in collecting
and using GIS/landscape,  plant, invertebrate,  fish, amphibian, bird and physio-chemical data  The team should also include persons
with enough background in experimental design and quantitative analyses to analyze those data It might be possible to reduce the staff
members needed on such a team to three individuals who could be trained to accomplish and/or supervise all of the needed tasks with
help from seasonal workers or volunteers A team would likely need to include a plant ecologist, an invertebrate/fish ecologist, and an
amphibian/bird ecologist with one or more of these staff members having sufficient training in use of GIS/GPS systems, chemical and
physical data collection  and analyses and experimental design/statistical treatment of data  to perform the needed tasks  Each team
member would have the ultimate responsibility in their area of expertise but would have to be willing to  work together as an integrated
team to obtain needed samples and data for metrics

Many agencies already have the expertise on staff or may be able to obtain it from other sources Since these staff members already have
responsibilities, recruitment and training of team members may be necessary  Thus, a series of training  sessions are likely to  be
necessary initially and, perhaps annually, to share experiences in implementing Consortium monitoring protocols and agree on  any
changes that might be needed from year to year One team member could be designated as the overall team coordinator/manager  For
states or provinces such as Michigan or Ontario with wetlands located on most or all of the Great Lakes, more than one team may have
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to be assembled to cover the large number of coastal wetlands in their jurisdiction  There would be a need to coordinate activities for
multiple teams if that is required

Schedule of Team Activities

Prior to the field season, team members would obtain or check to be sure that all  supplies and  equipment would be available and
functional when needed  They would also have to plan for and schedule time to obtain data on all indicators and activities for each of the
following

1) Randomly select the marshes to be sampled in the upcoming field season using  a list of Great Lakes coastal wetlands within state,
regional, tribal or provincial jurisdiction and responsibility An initial inventory of Great Lakes coastal wetlands is available on the
Consortium web site

2) Obtain permission to sample selected marshes from the private, nongovernmental or public agency that owns/manages the marsh   If
access to  the site cannot be obtained, or if the  site cannot be accessed  from shore or by boat,  randomly select another site as a
replacement

3) Amphibian sampling  The schedule for amphibian sampling is likely to begin in April and extend into June, but timing is  dependent
on temperature and other weather conditions during frog and toad breeding season (see chapter on amphibian indicators and guidelines
established for frog and toad calling surveys)  Frog and toad calling surveys require working at night so compensatory time off during
the day is likely to be needed  for staff involved in these surveys  Many states and  provinces already collect such data, and it may be
possible to obtain data on Great  Lakes coastal wetlands from the coordinators of these surveys and/or from the Bird Studies Canada
coordinator  It is likely, however, that many of the marshes  selected in Steps 1 and 2 will have to be sampled by members of the
monitoring team and supplemented by volunteer survey data where such data are available  NOTE  It should be possible to recruit a
team member with a vertebrate biology background to be in charge of amphibian and bird surveys

4) Bird sampling  Surveys should be done during active breeding season which tends to be from May through  early July (See Chapter 7
on bird indicators for details ) The lead  staff person for this task could be the  same person responsible for amphibian surveys or two
separate team members would need to be assigned responsibility for amphibian and bird sampling

5) Invertebrate sampling should be scheduled in July and August since this is the time when most invertebrates are present as mid- to
late-mstars (See Chapter 4  on invertebrate indicators for details ) NOTE  A second team  member with experience in invertebrate and
fish  biology  should be recruited for invertebrate/fish sampling, sample processing,  and data analyses or  two individuals could  be
assigned as leaders of these tasks

6) Fish Sampling  should be scheduled from mid-June through mid-September  Ideally, sampling should be  conducted in late July or
early August, after emergent vegetation nears peak biomass, but metrics do perform well slightly outside of this time period  Since fish
are to be identified in the  field and released, an expert taxonomist should be present  Some species are more difficult to identify
Therefore, specimens may occasionally have to be obtained and returned to the lab for identification under a dissecting microscope.

7) Plant sampling should occur after dominant marsh plants are near peak  biomass and in bloom or putting on seed  For most Great
Lakes wetlands, this occurs  from  early- to mid-July through senescence in mid-September A plant ecologist who has the ability, or can
be trained, to identify dominant plants on sight and use field guides and taxonomic keys to identify >90 % of plants in marshes within
agency jurisdiction should  be the third member  of the team if the agency plans to have only  a three-member team assigned to
bioassessment of Great Lakes wetlands

8) At least one of the team  members should have some background in  interpretation of aerial/satellite imagery and enough knowledge
with manipulation of CIS databases to determine land use/land cover data for  all  marshes sampled Many students in environmental
biology, ecology, and fisheries and wildlife now have GIS/GPS training included as part of their curriculum
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9) Between field seasons, team members supplemented with student or temporary helpers should be able to process samples taken
during the field season (e g , sort, identify and enumerate invertebrates and analyze chemical samples), enter all data using approved
quality control procedures, obtain all imagery for the marshes and/or their watersheds, and — using the imagery, field notes and data on
water quality, water levels, etc  from various sources  — independently calculate the position of each of the sampled marshes along
physical/chemical disturbance gradients. The database compiled by the GLEI project at the segment-shed level would be a useful source
for such data initially once each site is placed in the appropriate segment-shed

10)  Prepare the annual summary  report including data on biotic indicators in comparison  to  physical/chemical  indicators and
interpretation of data collected during the field season


Recommended Indicators and  Procedures

Experimental Design/Wetland Selection

The  statistical design  recommended for the  project is from  N  S  Urquhart, S G  Paulsen  and D P  Larsen  (1998)  It calls for a
combination of randomly selecting and sampling 14 wetlands within a region or a percentage of these within a state's or other agency's
jurisdiction  each year  Additional wetlands will be randomly selected each year to establish status, this is coupled with resampling a
subset of these wetlands each year to establish trends (See Chapter 1 on statistical design for details )

Plant Indicators

Nine plant indicators  were recommended using the following procedures (1) Using aerial photos, map wet meadow and emergent
plant zones  and, with  photos or GPS units in field, map patches of invasives, (2) Overlay a random grid in each zone or select three
transects that will cross typical areas of each dominant plant zone, and (3) Sample 15 randomly selected 1 0 m~^ quadrats in each zone
or along the transects, sample dry  and flooded parts of each plant zone  Based on data obtained from these quadrats, calculate the
following eight metrics (See Chapter 3 on plant indicators for further details )

     1)  Invasive Plant Cover for Entire Site,
     2)  Invasive Plant Cover for Wet Meadow and Dry Emergent Zones,
     3)  Invasive Plant Cover for Submergent and Emergent Flooded Zones Invasive Frequency for Entire Site,
     4)  Invasive Frequency for Wet Meadow and Dry Emergent Zones,
     5)  Invasive Frequency for Submergent and Emergent Flooded Zones,
     6)  Mean Conservatism (Native Species)* for Entire Site,
     7)  Mean Conservatism (Native Species)* for Wet Meadow and Dry Emergent Zones, and
     8)  Mean Conservatism (Native Species)* for Submergent and Emergent Flooded Zones

     * Calculate mean conservatism using values and procedures from the Flonstic Quality Index for Michigan

Invertebrate Indicators

Invertebrate indicators have only been developed for lacustrine (fringing or lake edge) wetlands Data should be collected from riverine
and drowned river mouth wetlands as well (submerged, water lily, emergent zones, etc ), since indicators are being developed and may
be available for them soon  Invertebrates should be sampled from each dominant plant zone present in lacustrine wetlands including the
wet  meadow zone if flooded,  the inner emergent zone (Schoenoplectus and/or Typha) zone, and outer emergent zone  Collection of
three replicates per zone is required (See Chapter 4 on invertebrate  indicators for details  )

Metrics used in each plant zone include:

     1)  Odonata (Dragon and Damselflies) richness (number of taxa collected that are dragon flies and damsel flies),
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    2)  Percent of total numbers of invertebrates caught that are Odonates,
    3)  Crustacea plus Mollusca richness (total number of taxa of amphipods, isopods, crayfish, shrimp, total snails, limpets and clams
        caught),
    4)  Total genera richness (number of genera present) in entire sample,
    S)  Percent of total numbers of invertebrates caught that were Gastropods (snails),
    6)  Percent of total numbers of invertebrates caught that were Sphaerudae (finger nail clams),
    7)  Total number of taxa in the entire sample (= richness),
    8)  Evenness index, and
    9)  Shannon index

Additional metrics are available for inner and outer emergent zones  (See Chapter 4 on invertebrate indicators for details )

Fish Indicators

Fish indicators have been developed based on fyke net sampling of each wetland for one net night per plant zone using a minimum of
three fyke nets  per plant zone Alternative methods of sampling such as electrofishmg are also likely to work but additional work to
cross  validate those sample devices  with fyke nets used to sample Great Lakes coastal wetlands will be needed before they can be used
routinely. Fourteen fish indicator metrics for bulrush (Schoenoplectus) dominated  wetlands are recommended,  11  metrics for cattail
(Typha) dominated wetlands are also available and  have been published  (See  Chapter 5 on fish indicators for details of what these
metrics are and  how to calculate them )

Amphibian Indicators

Amphibian community metrics were developed by Bird  Studies Canada and Environment Canada from nine years of data collected
through Bird Studies Canada by trained volunteers Frog and toad call survey data spanned 60 Great Lakes wetlands in the United States
and Canada  (See Chapter 6 on amphibian indicators for recommended protocols)  The possibility of this being done using existing frog
and toad surveys within individual states or provinces exists but would need to be cross-validated with some preliminary studies

The amphibian community index of biotic integrity (IBI) includes three metrics:

    1)  Total species richness,
    2)  Species richness of woodland species, and
    3)  Probability of detecting a woodland species within a wetland
Bird Indicators

The marsh bird community IBI was developed by Bird Studies Canada and Environment Canada using data on wetlands collected by
trained volunteers  These surveys  were conducted in the evening from 6-10 p m  from routes consisting of 1-8  points per route
Monitoring at each point along the  route consisted of five minutes of passive recording of birds present within 100 meters of the point
using visual and auditory observations, followed by five minutes of playback recordings of the calls of secretive birds such  as rails,
followed by an additional five minutes of recording birds observed visually or from calls  Surveys are conducted three times during
breeding season  (See Chapter 7 on bird indicators for details ) A major difference between Consortium and GLEI scientists was use of
early  morning surveys  by GLEI researchers versus evening surveys conducted by Consortium scientists  The evening surveys can be
more easily combined with amphibian surveys using the Consortium protocols recommended here, but many ornithologists tend to use
morning surveys  Data suggest that either morning or evening surveys can be used  The IBI incorporated bird guilds that represented
disturbance-sensitive marsh-nesting birds and general marsh-users

The bird community IBI includes three metrics-.
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     1)   Abundance of non-aerial foragers,
     2)   Abundance of marsh nesting obligates, and
     3)   Species richness of area-sensitive marsh nesting obligates
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Appendix A. Great Lakes Coastal Wetlands Classification
                                                                Great Lakes Coastal Wetlands Classification
                                                                                 First Revision (July 2003)

                                                        D. A. Albert, J. Ingram, T. Thompson, D. Wilcox,
                                                on behalf of the Great Lakes Coastal Wetland Consortium
                                                                                           (GLCWC)
Great Lakes coastal wetlands can be separated into three specific systems based on their dominant hydrologic
source and current hydrologic connectivity to the lake. These systems are different than those defined by the
National Wetlands Inventory (NWI) (Santos and Gauster 1993).  NWI defines three systems, Lacustrine,
Riverine, and Palustrine. All of these NWI systems can have classes (Aquatic bed or Emergent) that are
included within our wetland classification, but many of the classes are not wetland classes but hydrologic or
substrate classes, such as rock bottom, unconsolidated bottom,  unconsolidated shore, or open water.

Each wetland polygon mapped for the GLCWC will be given a four character code. The first character (—) will
be for the hydrologic system  The second character (—) will be for the geomorphic type  The third and fourth
characters (—) are further geomorphic modifiers.

1.  Lacustrine (L—) system wetlands are controlled directly by waters of the Great Lakes and are strongly
    affected by lake-level fluctuations, nearshore currents, seiches and ice scour. Geomorphic features along
    the shoreline provide varying degrees of protection from coastal processes.  Lacustrine, as defined by
    NWI, would also include dammed river channels and topographic depressions not related to Great Lakes.
    NWI does not consider wetlands with trees, shrubs, persistent emergents, emergent mosses or lichens
    with greater than 30% cover. In contrast, we consider these vegetation cover classes to be included within
    our lacustrine wetlands, focusing our classification on the lacustrine formation process.  NWI  only
    considers wetlands larger than 8 hectares (20 acres), while we include smaller wetlands.  NWI will include
    wetlands smaller than 8 hectares if a) a wave formed or bedrock features forms  part or all of the shoreline
    or has a low water depth greater than 2 meters in the deepest part of the basin.

2.  Riverine (R—) system wetlands occur in rivers and creeks that flow into or between the Great Lakes. The
    water quality, flow rate and sediment input are  controlled in large part by their individual drainages.
    However, water levels and fluvial processes in  these wetlands are influenced by coastal processes
    because lake waters flood back into the lower portions of the drainage system. Protection from wave
    attack is provided in the river channels by bars and channel morphology. Riverine wetlands within the
    Great Lakes also include those wetlands found along large connecting channels  between the Great Lakes
    with very different dynamics than smaller tributary rivers and streams. NWI excludes palustrine wetlands,
    which they define as dominated by trees, shrubs, persistent emergents, and emergent mosses or lichens,
    from riverine systems. In contrast, we include all of these types of vegetation within our riverine system.

3.  Barrier-Protected (B—) system wetlands have originated from either coastal or fluvial processes.
    However, due to coastal processes the wetlands have become separated from the Great Lakes by a
    barrier beach or other barrier feature. These wetlands are protected from wave action but may be
    connected directly to the lake by a channel crossing the barrier. When connected to the lake, water levels
    in these wetlands are determined by lake levels, but during seiche related water-level fluctuations, wetland
    water levels are tempered by the rate of flow through the inlet  During isolation from the lake, groundwater
    and surface drainage to the basin of the individual wetland provides the dominant source of water input,


             www glc org/wetlands                                                                    239

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   although lake level may influence groundwater flow and, hence, wetland water levels. Inlets to protected
   wetlands may be permanent or ephemeral. Nearshore processes can close off the inlet from the lake. The
   ability of the nearshore processes to close the inlet is related to the rate of sediment supply to the
   shoreline, grain size and sorting of sediment, type and duration of nearshore processes, lake level
   elevation and rate of change, and discharge rate of water exiting the inlet. The greater part of most of
   these wetlands would be classified by NWI as palustrine system, with small water bodies or streams within
   the wetland possible being classified as inclusions of either lacustrine or riverine system.

Within these hydrologically based systems, Great Lakes coastal wetlands can be further classified based on
their geomorphic features and shoreline processes.

1) Lacustrine System (L—)

Open Lacustrine (LQ-)
These lake-based wetlands are directly
exposed to nearshore processes with
little or no physical protection by
geomorphic features. This exposure
results in little accumulation of
sediment vegetation development to
relatively narrow nearshore bands.
Exposure to nearshore processes
results in little to no organic sediment
accumulation, and variable bathymetry,
ranging from relatively steep profiles to
more shallow sloping beaches.

       Open Shoreline. (LOS-) These
       wetlands are typically characterized by an erosion-resistant substrate  of either rock or clay, with
       occasional patches of mobile substrate. The resultant expanse of shallow water serves to dampen
       waves which may result in sand bar development at some sites. There is almost no organic sediment
       accumulation in this type of environment. Vegetation development is limited to narrow fringes of
       emergent vegetation extending offshore to the limits imposed by wave climate. Some smaller
       embayments also fit into this class due to exposure to prevailing winds.  Most of these  have relatively
       narrow vegetation zones of 100 meters or less. Examples  include Epoufette Bay and wetlands in the
       Bay of Quinte on Lake Ontario.  Mapping of open shoreline wetlands will be restricted to those
       identified by either Herdendorf et al. (1981a-f) or NWI.  Many open shorelines do not have large enough
       areas of aquatic plants to be identified from aerial photography.

       Open Embayment. (LOE-) This can occur on gravel, sand,  and clay (fine) substrate. The embayments
       are often quite large - large enough to be subject to storm-generated waves and surges and to have
       established nearshore circulation systems.  Most bays greater than three or four kilometers in diameter
       fit into this class. These embayments typically support wetlands 100 to 500 meters wide over wide
       expanses of shoreline. Most of these wetlands accumulate only narrow organic sediments near their
       shoreline edge. Saginaw Bay, St. Martin Bay, Little Bay de Noc, Green Bay,  and Black River  Bay all fit
       in this category.
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