vvEPA
             United States
             Environmental Protection
             Agency
             Environmental Sciences Research
             Laboratory
             Research Triangle Park NC 27711
EPA-600 4-80-OOT~
January 1980
             Research and Development
Synoptic
Meteorology and
Air Quality
Patterns in the
St. Louis  RAPS
Program

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                RESEARCH REPORTING SERIES

Research reports of the Office of Research and Development, U S Environmental
Protection Agency, have been grouped into nine series These nine broad cate-
gories were established to facilitate further development and application of en-
vironmental technology  Elimination of traditional grouping  was consciously
planned to foster technology transfer and a maximum interface in related fields.
The nine series are

      1   Environmental  Health Effects Research
      2   Environmental  Protection Technology
      3   Ecological Research
      4.  Environmental  Monitoring
      5   Socioeconomic Environmental Studies
      6   Scientific and Technical Assessment Reports (STAR)
      7   Interagency Energy-Environment Research and Development
      8.  "Special" Reports
      9   Miscellaneous Reports

This  report has been assigned to the ENVIRONMENTAL MONITORING series
This  series describes research conducted to develop new or improved methods
and  instrumentation for the identification and quantification of  environmental
pollutants at the lowest conceivably significant concentrations. It also includes
studies to determine the ambient concentrations of pollutants in the environment
and/or the variance of pollutants as a function of time or meteorological factors.
This document is available to the public through the National Technical Informa-
tion Service, Springfield, Virginia  22161

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                                             EPA-600/4-80-001
                                             January  1980
     SYNOPTIC METEOROLOGY AND AIR QUALITY
    PATTERNS IN THE ST.  LOUIS RAPS PROGRAM
                      by
                Elmer Robinson
               Richard J.  Boyle
        Air Pollution Research Section
       Chemical  Engineering Department
         Washington State  University
          Pullman,  Washington 99164
            EPA Grant No.  805142010
                Project Officer

                 Thomas R.  Karl
                      and
               Gerard A. DeMarrais
    Meteorology and  Assessment  Division
 Environmental  Sciences Research Laboratory
Research Triangle Park, North Carolina 27711
 ENVIRONMENTAL SCIENCES RESEARCH LABORATORY
     OFFICE OF RESEARCH AND DEVELOPMENT
    U.S. ENVIRONMENTAL PROTECTION AGENCY
RESEARCH TRIANGLE PARK, NORTH CAROLINA 27711

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                                   DISCLAIMER
     This report has been reviewed by the Environmental  Sciences Research
Laboratory, U.S. Environmental  Protection Agency, and approved for publica-
tion.  Approval does not signify that the contents necessarily reflect the
views and policies of the U.S.  Environmental  Protection Agency, nor does men-
tion of trade names or commercial  products constitute endorsement or recommen-
dation for use.

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                                   ABSTRACT
     An objective, statistical  synoptic weather map classification  scheme  de-
veloped by Lund to stratify map patterns for further study was  used to  type
regional weather patterns.   The investigation extended over a 500-mile  radius
of the greater St. Louis area and was intended for subsequent application  to
air pollution studies.   This analysis correlated sea level  pressure data at
21 selected National  Weather Service stations at a specified time on a  given
day, with sea level  pressures for these same stations on  each of the other
days in the four-year period 1973 through 1976.

     A total  of 52 separate weather map types were identified with  12 map
types in the winter season, 13 map types in the spring season,  13 map types in
the summer season, and  14 map types in the autumn season.

     To illustrate the  potential  usefulness of this method to air quality  and
synoptic weather relationships, this paper also contains  a preliminary  compar-
ison of the weather typing  system to air quality data.  The data include total
suspended particles and carbon monoxide concentrations sampled  in the Regional
Air Monitoring System of the Environmental  Protection Agency, for a period of
approximately a year and a  half during 1975-1976.

     Results indicate that  the typing program is able to  show that  synoptic-
scale weather does affect relative pollution levels in the St.  Louis region,
if definitive synoptic  model  types are carefully chosen prior to application
to pollutant concentration  levels.

     Continued research is  expected to indicate clearly not only how air pol-
lution levels in the St. Louis area depend on prevailing  synoptic weather  pat-
terns in general, but also  how mesometeorological  variables act as  diffusion
parameters.

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                                  CONTENTS


ABSTRACT	iii

FIGURES	iv

TABLES	v

ACKNOWLEDGEMENTS	vi
   1.  Introduction 	  1
         Historical  Background	1
         Application of Ueather Types to Air Quality 	  2
         Study Objectives	3

   2.  Research Techniques and Results	5
         Synoptic Weather Map Typing Technique	5
         Synoptic Map Typing Results	10
         Air Quality Application	15
           Air Quality Data Analysis	17
           Total  Suspended Particle Comparisons	17
           Carbon Monoxide	22

   3.  Summary and Conclusions	26
References	28

Appendix - Synoptic Map Types Inventory 	  30

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                                 FIGURES
Number                                                                 Page

  1    National  Weather Service  stations  used  for weather map typing
          program	6

  2    Correlation between  network  sea  level pressures on June 1, 1973,
          summer Type A base map and June 7, 1973, another summer Type A
          map	9

  3    St. Louis Regional Air Pollution Study  air monitoring network,
          1975-1976	16
                                    VI

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                                 TABLES


Number                                                                   Page

  1     Stations Used in this Study	7

  2    Summary of Seasonal  Synoptic Map Types St.  Louis  Regional  Study,
          1973-1976	12

  3    Daily Map Type Assignments	13,14

  4    Seasonal  Map Types Ranked by Total  Suspended  Particle
          Concentrations Averaged for Stations 103,  105,  106  and  108.  .  .  18

  5    Results of Statistical  Test for TSP Concentrations by  Map
          Type Pairs	21

  6    Seasonal  Map Types Ranked by Carbon Monoxide  Concentrations
          Averaged for Stations 103, 105,  106 and  108	23

  7    Results of Statistical  Test for CO  Concentrations  by Map Type
          Pairs	25

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                               ACKNOWLEDGEMENTS
     This report represents the efforts of a number of the Air Pollution
Research Section staff in addition to the named authors.  Special  recognition
should be given to Mr. F. Lee Bamesberger, Associate Chemist, who  provided
programming and computer services as well as data handling advice.   The assis-
tance of Mr. R. J. Valente and Mr. Mark Vuono in various data processing
chores is also appreciated.

     In the WSU Statistical Services group the frequent and informative con-
sultations of Dr. R. B. Bendel were important aids in accomplishing the pro-  .
gram.

     The assistance of our EPA Project Officer, Thomas Karl and his replace-
ment Gerard A. DeMarrais were vital  assistants to our program.   They were
timely in response to our requests for assistance and patient with us as we
carried through with the program.

     Finally, the senior author wishes to point out that this report is to a
significant degree the thesis research program carried out by Mr.  Boyle during
his program of study toward the Master of Science degree in Engineering, and
a large part of Mr. Boyle's thesis is used directly in this final  report.
                                     vm

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                                   SECTION 1

                                  INTRODUCTION
     Air quality, as characterized by air pollutant  concentrations,  is  con-
trolled to a significant degree by the prevailing weather conditions from the
time of the initial  pollutant emission to the time of sampling  and measurement
of the atmospheric concentrations.  Although the meteorological  factors af-
fecting such pollutant dispersal  exhibit a wide range of size and time  scales,
the dispersion field is strongly linked to the synoptic  scale of atmospheric
motion as a prime feature of the dispersion.  The impact of  synoptic weather
patterns, in this regard, is not new and has been treated widely in  numerous
books and articles in both the fields of air pollution and meteorology.
Recently, synoptic influences have figured prominently in studies of urban
plumes, ozone transport via an anticyclonic model, and general  "air  mass
transport".


HISTORICAL BACKGROUND

     Accounts dating back to about 300 B.C., such as De  Ventis  by Theophrastus
of ancient Greece, (Coutant and Eichenlaub, 1975), clearly demonstrate  man's
early attempts to characterize the weather in two easily recognizable patterns.
Through the following centuries observant scientists were able  to describe
various storm models and typical  types of weather systems.  Modern synoptic
meteorology moved ahead rapidly after the development of the polar front storm
models.  As extended range forecasting techniques were developed in  the 1930's
and 1940's there was considerable interest in methods to organize weather pat-
terns into sets of synoptic types.  The results of these procedures  could
serve as valuable forecast aids and as a surrogate for the memory of the fore-
caster.

     Rigorous attempts to classify synoptic weather  by types, especially in
the three decades prior to 1950, have been discussed at  some length  by  Elliott
(1951).  A six-day North'American weather type scheme was developed  by  Elliott
and Krick during the 1930's wherein each identifiable type covered a sequence
of days characterized by easily identifiable quasi permanent  meteorological
factors.   Further refinement of this technique resulted  in the  California
Institute of Technology catalogue of synoptic weather types  of  North America
which contained some 20 to 30 distinct types (Krick  and  Elliott, 1940).

     As machine methods moved onto the scientific scene  during  the 1950's, the
arts and skills of forecasting were integrated with  the  computerized meteor-
ological  statistical  method of forecasting and analysis.  Thus,  it was  through

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a natural  progression of events  that  investigators tried computerized statis-
tical  methods in developing weather types  of generalized synoptic situations.
Typical  pressure patterns lend themselves  to numberical analysis which then
can be readily programmed into a computer  system.

     Application of simple linear correlation statistical  procedures, augment-
ed by computer programming, resulted  in  a  workable scheme  by Lund (1963) of
synotic weather classification which  is  the  major basis for the experimental
procedures described in this report.   Basically, Lund's technique involved
correlating sea level  pressure values at 22  northwestern United States weather
stations by statistical  means to describe  recurrent  synoptic map patterns.  He
developed a catalogue of map types which he  believed would be most useful in
identifying reappearing map patterns  and stratifying situations for further
study.  Since publication of his technique in 1963,  several additional invest-
igators have used modifications  of his method.  For  example, Singh, et. al.,
(1978) have employed a qualification  of  Lund's  style in analyzing synoptic
cl imatology.

     Although Lund considers this map typing scheme  to be  objective, in a 1971
study relating 850 mb data correlations  with areal precipitation patterns for
California and the eastern United States,  he admits  that it is difficult to
arrange types in a meaningful  order with regard to a particular weather event.
For example, a meteorological  model to estimate the  probability of precipita-
tion has not been developed as yet.   On  a  smaller or mesometeorological scale,
Christensen and Bryson (1966) employed a variation of a weather typing mathe-
matical  modeling procedure, which they called component analysis (factor ana-
lysis), that reduced a sample of data for Madison, Wisconsin, to the number
of variables needed to describe  each  day (type) meteorologically.  They then
compared these variables with the synoptic situation for that day to determine
whether the models with certain  meteorological  factors formed a reasonable
synoptic pattern.  The results were then grouped, after some manipulations,
into synoptic types by the Lund  technique.  Several  papers written by foreign
investigators such as Zdravko (1968), Fliri  and Schuepp  (1968) and Bardin
(1971) also refer to Lund's method in their  particular development of weather
types using additional meteorological parameters of  temperature, precipita-
tion, duration of sunshine and cloudiness.


APPLICATION OF WEATHER TYPES TO  AIR QUALITY

     Although air pollution patterns  are generally considered to be influenced
to a significant degree by local meteorological conditions, they are also
greatly affected by regional and large-scale synoptic weather systems that
move through the area.  For example,  a quasi-stationary antic/Ionic circula-
tion and in the summer season usually correlates positively with high or even
episodic air pollutant concentrations.  Conversely,  cyclonic circulation
is conducive typically to good dispersion  and low concentrations of air pollu-
tants.  There are many possible  variations in the area of  air pollution and
synoptic weather as shown by the fact that spring time trough situations,
quasi-stationary low pressure systems, and weak frontal systems were found to
correlate with significantly elevated 2,4-D  concentrations by Peckenpaugh,

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et. al. (1974) in their investigation of long distance atmospheric  transport
of the organic herbicide in central  Washington State.

     During the summer of 1974, Westberg, et. al.  (1978) conducted  a 24-day
experiment in Canton, Ohio, involving a vertical  and horizontal  profile  study
of ozone concentrations.  As a result of their observations of ozone behavior,
an ozone transport model was developed which logically explains long-range
ozone transport dispositions occurring in a quasi-stationary high pressure
situation through the eastern region of the United States.   Subsequently, us-
ing a mesoscale approach, relationships between sea breeze  effects  and  ambient
ozone concentrations were examined by Westberg, et. al.   (1975)  along the
New England coastline.  It was found that this phenomenon could  either moder-
ate or enhance pollution levels in the Boston area.  However, in the Groton,
Connecticut region, high concentrations of ozone usually coincided  with  the
sea breeze effects, and aircraft measurements over the ocean indicated that
these high concentrations were part of a large urban plume  from  the New  York
City - New Jersey area.  Since synoptic weather patterns greatly influence
this type of atmospheric effect, a map typing classification method should
also have practical applications in these cases.

     In trying to establish causal  relationships between precipitation pat-
terns and the industrial effects of producing steel near Dunaujvaros in  cen-
tral  Hungary, Lowry and Probald (1978) concluded that  there is a need for
both statistical  testing of temporal  differences,  i.e.,  the pre-industrial
period (1934-43)  versus the post-industrial  period (1961-70), and a synoptic
classification method, in exploring definitive anthropogenic effects of  pre-
cipitation using  standard cl imatological  data.

     Traditionally, meteorological  forecasters have incorporated, consciously
or subconsciously, synoptic weather types of significant atmospheric trends
into their analysis and prognosis procedures.  It  is necessary for  meteorolo-
gists to scrutinize more closely the effects on air quality of definitive
weather patterns  and for weather forecasters to appreciate  the implications
involved in this  process.   As mentioned earlier,  we believe that it is  ex-
tremely important in conducting efficient air pollution  control  strategy pro-
grams that synoptic weather patterns be given consideration as a major influ-
ence in the dispersion region.


STUDY OBJECTIVES

     One of the primary goals of this research was to  identify synoptic  weath-
er types by using Lund's objective technique of correlating sea  level pres-
sures.  Thus a set of seasonal weather map types was developed for  application
to an experimental area around St.  Louis for the time  period covered by  the
Regional  Air Pollution Study (RAPS)  program.

     An additional aim of the study  was to begin to understand the  relation-
ships of synoptic weather patterns to ambient air  pollutants in  the St.  Louis
area.  For this purpose, total suspended particles (TSP) and carbon monoxide
(CO) data from the EPA St. Louis RAPS program were compiled and  analyzed.
These particular  pollutants were selected mainly because they are relatively

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inert and easily analyzed.   The actual  air monitoring  data  were  collected by
the Regional  Air Monitoring Study (RAMS)  which was  one part of the  overall
RAPS program.

     In our weather typing  research,  a  tentative analysis of the Greater
St. Louis area air quality, as related  to synoptic  weather, was  undertaken  as
a first step in stratifying air pollution concentration levels into more homo-
geneous meteorological  classifications.   It is expected that this library of
weather types can be generally useful  in  assessing  air pollution, mesoscale
precipitation, and other weather related  factors in the St. Louis area.

     The results of this research on  regional  weather  systems should  provide
other investigators working with RAPS data with an  objective classification
of the prevailing weather systems.   Emphasis of synoptic influences on RAPS
air pollution situations should increase  the realization of the  importance
of this phenomenon so that  more reliable  evaluations can be made of air pollu-
tion in the St. Louis area.  The research program at WSU is continuing with
additional  and more detailed analyses.

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                                  SECTION 2

                       RESEARCH TECHNIQUES AND RESULTS
SYNOPTIC WEATHER MAP TYPING TECHNIQUE

     Weather typing processes in the recent  past  have been  limited mostly to
subjective applications and techniques by individual  meteorologists.

     The advent of computers has not only made possible much more objective
synoptic typing systems, but has enhanced the development of large scale dy-
namic modeling procedures that are more highly sophisticated and useful than
the older typing techniques.  In this regard, statistical computerized map
typing is particularly useful  for some specialized  situations.  Lund  (1963)
has clearly demonstrated how a simple linear correlation technique can be ap-
plied on a mesoscale to develop such a system of  synoptic map types.   In his
study identifying maximum linear correlations between precipitation and the
850 mb surface level, Lund (1971) illustrated the usefulness of map typing in
understanding the occurrences of precipitation and  cloudiness in the  region
that was being analyzed.  Additionally, regional  and  hemispheric circulation
patterns have been examined in a study by Arai (1964) in which he classified
ten years of daily winter 500 mb patterns into fundamental  and subsidiary
weather types.  Methods of weather typing were also used by Halter (1976) in
an assessment of weather conditions affecting the Pacific Northwest coast.

     As stated previously, the synoptic map  typing  program  described  in this
study used the statistical or pressure correlation  method developed by Lund
(1963).   Specifically, the area included in  the typing program was the region
of approximately 500 miles (800 km) radius centered on St.  Louis, Missouri.
The weather data for the typing process were obtained from  21 first-order
National  Weather Service stations distributed more  or less  uniformly  over the
region.   Figure 1  shows the network of stations and the region covered by the
sea level  pressure analysis used in the program.  Table 1 identifies  the sta-
tions according to their National Weather Service call  letter identifiers.
Data for the map classification process covered the four-year period, 1973-
1976.  For this analysis, the sea level pressures at  0000 GMT (6 PM CST) were
used in the map typing program.  This specific time was chosen to avoid early
morning radiation stability influences and to include to the maximum  extent
possible the full  impact of the daily synoptic weather situation on the pollu-
tants under investigation.

     The total number of synoptic weather stations  employed in this type
of appraisal  is a compromise between the technical  value of a very dense net-
work and the costs of accumulating, handling, and processing the data file.
Lund's (1963) initial study used a set of 22 stations over  the area along the

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Figure 1.   National  Weather Service stations used for weather map
           typing program.

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                    TABLE 1.  STATIONS USED IN THIS STUDY^
        Call  Letters                              Name of Station

           ALO                                    Waterloo,  Iowa
           ATL                                    Atlanta, Georgia
           BNA                                    Nashville,  Tnnessee
           DDC                                    Dodge City, Kansas
           DET                                    Detroit, Michigan
                                                  (Wayne County)
           DSM                                    Des Moines, Iowa
           FSD                                    Sioux Falls,  South Dakota
           GRI                                    Grand Isle, Nebraska
           HTS                                    Huntington, West Virginia
           IND                                    Indianapolis,  Indiana
           JAN                                    Jackson, Mississippi
           MEI                                    Meridian,  Mississippi
           MEM                                    Memphis, Tennessee
           MKC                                    Kansas City,  Missouri
           MSP                                    Minneapolis,  Minnesota
           OKC                                    Oklahoma City,  Oklahoma
           ORD                                    Chicago, Illinois
                                                  (O'Hare Int'l.)
           SGF                                    Springfield,  Missouri
           SHV                                    Shreveport, Louisanna
           STL                                    St. Louis,  Missouri
           TVC                                    Traverse City,  Michigan

*A11  stations are hourly-reporting National  Weather Service  Stations.

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northeast coast of the United States from Virginia  to  Maine  and  west to
Detroit and Sault Ste. Marie.  Halter's (1976)  typing  program  of the Pacific
Northwest also used a set of 22 stations covering the  area bordered roughly
by Quillayute, Washington; Great Falls, Montana; Bryce Canyon, Utah; and
Oakland,  California.  Because about 20 stations have provided  a  useful typing
program,  the present study around St.  Louis used a  total  of  21 first-order
National  Weather Service stations over an area  borderd by the  neighborhoods
of Minneapolis, Minnesota; Huntington, West Virginia;  Atlanta, Georgia;
Shreveport, Louisiana; and Dodge City, Kansas.

     The  prior analysis by Lund (1963) was based on five  years of winter  sea-
son data  incorporating the months of December through  March.   Halter (1976)
used four full years of data, 1970 through 1973, divided  into  a  winter half,
November  through April, and a summer half, May  through October.  In order to
insure that the selection of months for each season coincided  with the natural
mean seasonal  temperature pattern for the St. Louis area, an actual tempera-
ture plot covering the four-year time period of this study was made to deter-
mine if the lowest temperature actually occurred in December,  January and
February  and if the highest temperatures occurred in June, July  and August.
This proved to be the case, and it was concluded that  the season groups sel-
lected for this investigation were compatible with  expected  seasonal tempera-
ture cycles.

     A map type is a group of weather maps with a sea  level  pressure pattern
distinctive enough to be classified separately  from other weather patterns.
In terms  of identified map types, Lund (1963) had ten  types  with 398 out  of a
total of  445,  or 89% being successfully typed.   Halter (1976)  was able to type
92% of his winter seasons into ten types and 94% of his summer season maps in-
to eight  types.  As will  be discussed, the St.  Louis typing  study had compar-
able results and typed between 89% and 91% of the seasonal maps  into 12 to 14
different types.  Thus, the St. Louis program produced results that are gener-
ally equivalent to those of similar studies.

     The  simple linear correlation procedure of Lund  (1963)  is based on the
statistical interdependence between the sea level pressures  at a given set of
stations  on one day and the pressures at the same stations on  a  second day.
For example, in the St. Louis program, if the X-axis  (abscissa)  is used to
plot station pressures for day 1 and the Y-axis (ordinate) the pressures  for
day 2, the pressure data from 21 stations will  define  a corresponding set of
21 points in the X-Y field.  Standard statistical techniques can then be  used
to determine the correlation between station pressures on day  1  versus those
on day 2.  It  is assumed, then, that a "good" correlation between station
pressures on the two days is indicative of similar  synoptic  map  patterns  on
the two days.   In Figure 2, the correlation coefficient is 0.81  between June
1, 1973 and June 7, 1973 data.

     Previous  statistical typing by Lund (1963) and by Halter  (1976) were
based on  weather types being identified by correlations of 0.70  or greater be-
tween each map date within the type and the identified base  map. The choice
of magnitude of the lowest acceptable correlation for  determining a type
classification was examined in detail  by Lund (1963).   He determined that the
same key  or base maps would be identified with  the  use of either 0.90 or  0.80

                                       8

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              SEA LEVEL  PRESSURE(mb)  JUNE 7,1973
                o

                o
o

Ol
o
INi
o
  8-
  Ol
CO
m
m
<
m
m
CO
co  •
c
30
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co o.
C_
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m  .

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instead of 0.70.   The major impact  of  the  choice  of a value for the lowest
acceptable correlation was  in number of cases  falling into each type and the
number of untyped maps.   The higher the limiting  correlation the fewer the
number of maps in each case, but  not much  difference in the identified types,
and the larger the number of untyped maps.   After a careful consideration of
the limiting correlation value Lund (1963)  chose  0.70 as his lowest acceptable
correlation.  With this correlation limit  he was  able to type 89% of his map
file.   Halter (1976)  also used 0.70 as a lowest acceptable correlation and
typed  more than 92% of his  map file.   In the present study a value of 0.70 was
also used for the lowest acceptable correlation coefficient for type identifi-
cation.

     Following Lund's guidelines, the  St.  Louis regional synoptic map types
were determined by the following  steps:

     1.  Correlate the 0000 GMT sea level  pressures for each day of the sel-
         ected season with  the corresponding pressure on every other day of
         the season over the four-year test period.

     2.  Identify the day which has the most other days related to it by a
         correlation coefficient  of 0.70 or greater.  Designate this day as
         the base map for Type A  and the maps  correlated with it (r _> 0.70)
         as belonging to the Type A classification.

     3.  Remove all Type A  maps from the map file and then identify the date
         in the remaining maps which now has the  most maps suitably correlated
         (r _> 0.70) with it.  This  is  the  base map for Type B and the maps
         correlated with it make  up the Type B classification.

     4.  Remove all Type A and Type B  maps  from the file and proceed to ident-
         ify the Type C base map  and the maps  in  the Type C classification, as
         was done for B.

     5.  Repeat the typing  process  until most  (about 90% or more) of the maps
         have been typed.

     6.  Since a given map  may be well  correlated with more than one type,
         review all calculated correlations relating each map and the several
         base maps.  Determine that the map type  assigned by the first cor-
         relation check was the type that  had  the highest correlation.  If
         the given map is not assigned to  the  base map type having the high-
         est correlation, move the  test map to the map type which is most
         highly correlated.

     7.  Continue the map typing  process until each of the four seasons has
         been completed.


SYNOPTIC MAP TYPING RESULTS
     In this study, the WSU AMDAHL 470V/6-II  computer  system was  used for the
correlation analysis of daily station  pressures.   The  four years  of data,

                                      10

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1973-1976, were separated into the four conventional  seasons:   Winter:
December, January, February; Spring:   March,  April,  May; Summer:   June,  July,
August; Autumn:  September, October,  November.

     When this correlation-typing procedure was carried out  on  a  seasonal
basis for the region around St. Louis, the result  was the identification of
12 winter map types, A(W) through L(W); 13 spring  map types,  A(SP)  through
M(SP); 13 summer map types, A(S) through M(S);  and 14 autumn  map  types,  A(A)
through N(A).  Thus, there were a total of 52 map  types, although similar map
types may occur in more than one season.  Those maps  in each  season not  sign-
ificantly correlated with any identified type were classified in  a miscellan-
eous group designated 0.

     Some of the specific results of  this statistical  correlation typing pro-
cess are shown in Table 2 which lists the assigned map type,  the  date of the
major synoptic pressure system which  was the  base  map of highest  correlation
factor for the type, and the number of other  maps  that were most  highly  corre-
lated with the base map.  Typically,  the number of maps in a  given  class de-
creases from a maximum for Type A, but there  are some cases  such  as the  spring
(SP) types after F where this does not occur.  This is caused by  the shifting
of maps to the type class with which  they show the maximum correlation (see
Step 6 in the above typing process and Lund (1963),  (Table 3).

     The synoptic map types for each  season on  a daily basis  are  shown in
Table 3, Daily Map Type Assignments,  for the  four-year test  period,  1973-1976.
The map types marked with an asterisk are the base or primary map types  with
the highest correlation factor of a particular season.  There is  only one
date, July 31, 1975, for which there  was no map type.   This was due to missing
sea level pressure data.  The file of 52 seasonal  base or key map types  re-
sulting from this study are reproduced in Appendix A.

     The maps presented in Appendix A are the NOAA/NWS United States surface
analysis for 0000 Z.  As such they cover a larger  area and present  more  data
items than was used in the present computer typing system.   This  was done for
the convenience of the meteorologist  using this map type file and who would
probably be interested in the relationship of the  St.  Louis regional weather
type to the synoptic situation over a larger  area.  This area around St.  Louis
that was used in this typing study is indicated by the large circle centered
on St. Louis.  The individual stations used in  the typing process can be
identified by referring to Figure 1.

     Persistence of flow patterns is  another  useful factor identified by this
map typing scheme.  For example, in the autumn  season, the most frequently
persistent weather situation over the four-year period involved map Type A,
which has 14 cases of a two-day persistence,  four  cases of a threeday persis-
tence, two cases of a four-day persistence, and one case of a seven-day  per-
sistence.  Two other map types, B and C, also have many combinations of  per-
sistence in this same autumn season grouping.  It  is  easy to  use  the synoptic
map typing classification to determine persistence and to predict potential
stagnation periods by the judicious application of Lund's synoptic  weather
classification technique.
                                     11

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                     TABLE 3.  DAILY MAP TYPE ASSIGNMENTS

Year
Month
Day 1
2
3
4
5
6
7
8
9
10
11
12
13
14
15
16
17
18
19
20
21
22
23
24
25
26
27
28
29
30
31
Winter
D J F
H B D
A H B
0 C F
OBJ
C E I
B G G
H*G E
H E G
B B 0
F C H
A B H
J*A D
0 C I
D C B
E A B
GAG*
D A H
D C A
E L*C
B D*F
A J B
A C C
D C F
D F D
A 0 I
0 0 G
F E H
K B A
B F
E A
E D
1973
Spring
MAM
A E B
J*C C
L G C
D C*A
ABA
J B A
0 G E
D G E*
D C E
A E E
E B M
ADC
A A M
BAG
G B E
C E C
I A 0
A A B
DAG
D A A
H*B A
ABO
A 0 0
J D 0
G D A
0 G A
A C F
0 A C
G A C
DAE
F B
Summer
J J A
A*A*D*
A C D
A A H
0 D M
K A A
C A A
A A A
C A C
H I*C
ADC
C B F
J C 0
B E 0
ADO
A G*L
C B B
A M A
L A A
K F*0
K J*D
E J B
H B M
C M J
M A A
M K*A
C K A
E E A
E 0 A
F M A
A 0 M
D A
Fall
SON
A A I
A A B
ADD
0 B D
B J H
DAE
E A M
E A B
D A H
0 A A
BAA
D A C
D G C
H C I
D B B
DBA
B F A
J A 0
I 0 A
E E A
A A C
I A M
A A A
A F 0
A C A
M D A
D B B
0 B G*
0 0 C
0 C L
G
Winter
D J F
0 G I
BEE
GOG
H 0 A
A L D
D B E
B D G
B I*F
F G F
C E B
0 B A
A H C
0 A 0
J C D
C F 0
B C B
L D A
J E K
0 D F
0 C D
F L I
ABB
I 0 I
E 0 B
F A F
A C A*
F 0 A
AFC
B A
D A
B G
1974
Spring Summer
MAM J J A
B E J
BAB
B F D
E C D
B I C
B B H
A 0 A
A 0 0
G A H
D A A
0AM
D B I
H F A
A C G
MCA*
COB
ABA
K A A
D A A
G A A
E B 0
K*C 0
G L K
H H L
BAD
A A D
ABA
ABB
0 K F
I C B
A G
G A 0
M A K
M C E
A E 0
ABO
A A B
A A L
F A A
CCA
E A M
E B C
H M C
A H B
C E B
EGA
D B 0
C A 0
A C 0
C I A
C B M
I 0 L
GOO
G B G
G L B
G L*M
B 0 C
B 0 J
A E 0
C D E
C 0 C
F F
Fall
SON
D D A
H E 0
H*A B
E A 0
E I B
E B J
E J N
0 0 A
A J A
A A 0
1*1 G
B D G
H A B
F B C
0 J C
F F A
G H N
FDA
L D K*
BEG
H A 0
E I A
A A K
F C B
F B E
F N 0
I A C
K A B
GAD
B A 0
X

Type "0" is miscellaneous map type
*Primary map type
X no map type (data missing)

(continued)
                                     13

-------
                           TABLE 3.   (continued)

Year
Month
Day 1
2
3
4
5
6
7
8
9
10
11
12
13
14
15
16
17
18
19
20
21
22
23
24
25
26
27
28
29
30
31
Winter
D J F
A B G
LAG
A C D
A F I
K*J B
GAB
0 J C
E 0 E*
F D H
A C A
I B I
D B B
A B D
K A D
0 K E
E 0 I
BAB
F C B
C E F
E A A
H E 0
ONE
G A 0
D A C
0 C C
B L B
D I A
DAB
0 B
H D
0 E
1975
Spring
MAM
G D H
L C A
I I*C
B H A
B H A
AHA
C A J
L J D
ADD
D G D
J G 0
G 0 L
D A 0
I H M
A A G
HAH
ABO
0 E B
E E B
A H B
F*A B
A A A
0 B B
E A A
L H A
A A C
J A H
OBJ
C B F
B 0 C
F C
Summer
J J A
0 B K
A 0 0
A E 0
COO
K C G
E E B
GOB
B D M
BOA
0 D C
K D A
C D A
C 0 F
0 A J
C M 0
A A C
C A F
A C F
A C*B
A E*M*
M 0 A
A A M
A C A
B D A
B G 0
L 0 F
B E B
B*B A
B B F
B B 0
0 H
Fall
SON
0 H I
E J*I
L F M*
DAM
B C A
J E A
0 A C
E A I
E 0 0
AON*
B A F
HAG
JAG
A I C
ABC
EDA
AHA
0 H A
K C A
G C K
0 I G
HAG
H A 0
H K B
H J D
A A 0
A I I
ABA*
A H I
BAG
A
Winter
D J F
CAB
D B 0
0 B*K
OLE
DAE
E K B
G E C
A B F*
A A A
E J C
OFF
B A C
H B G
CCA
B C C
C B C
F G J
A A C
BCD
BCD
ABB
C*A B
F 0 A
ADA
B E C
F B F
C H K
B C A
A F 0
E G
B C
1976
Spring
MAM
A E E
F B C
L C I
FOB
COB
E H G*
L*D D
D D 0
0 A B
0 B E
A D*H
C A J
B A F
K B D
D B 0
I B C
BBC
B*B 0
BAB
E F B
L E H
0 0 D
BAD
BOD
A G H
OHO
A H J
A D J
F 0 A
C M*F
E F
Summer
J J A
G F G
G F G
B G B
B G A
B G J
0 H G
H C B
H*A B
H M M
ACM
A E A
M 0 C
A H F
A C F
K E B
A E B
M H B
E A B
DAB
H C M
A I M
A A B
A E B
KGB
A M M
A C A
A A 0
C C D
E A B
D I M
G 0
Fall
SON
D 0 A
AEG
I A G
L*M B
E*B C
A D B
A H B
B 0 F
B G G
FAB
A A H
A K B
A G N
L C J
D B*N
D H F*
L E C
A E C
B B B
B G B
B G G
A A G
D A C*
E B C
E H I
B D*0
H H B
0 F H
0 0 C
F G A
H

indicates the base map  for this  season  and type
"0" indicates untyped maps
                                    14

-------
    In addition to determining persistence, an examination was made of the
transiting patterns of charts in a season into other types to determine if
there was any regular evolution from one type to another.   To make this deter-
mination, a method used by Singh, et. al.  (1978), in their investigation of
synoptic climatology during the summer monsoon season in India, was employed.
Within each season, a simple Chi Square statistic was computed to determine
if observed frequencies of occurrence of one map type were greater than the
frequency of occurrence expected by chance for that type.   Results of the
test in this study indicated that there were significant differences between
observed frequencies and expected frequencies for some pairs of map types.
Accordingly, the map type file could be used to determine  the more probable
transitions by map types based, and the result might have  obvious synoptic
forecasting applications.

     One would normally expect more intra-seasonal  transitions between types
in spring and autumn.  Although the Chi Square test for all  seasons is not
included in this study, all seasons were tested and more predictable or non-
random transitions between map types occurred in autumn and spring than in the
summer and winter seasons.  This might be expected on the  basis of the general
persistence of major weather systems in summer and winter  and the more rapid
system developments in spring and autumn.


AIR QUALITY APPLICATION

     Direct and indirect effects of synoptic weather systems on air pollution
intensity have been reported for many years by air quality meteorologists,
scientists and engineers.  Continuing efforts are being directed to improve
both simple and sophisticated mathematical air quality models for use in
nationwide pollution control  strategy programs.  As part of this general
attempt to better understand local  and regional air pollution conditions, an
additional  objective in this study was to find relationships between synoptic
map types and specific air pollution concentrations over a given time inter-
val.  In order to test the validity of this objective in the St. Louis area,
data from the St. Louis RAPS/RAMS network for total suspended particles (TSP)
and carbon monoxide (CO) were analyzed by synoptic map type.  Pooler (1974)
EPA, described the criteria, modeling, and objectives of the RAPS program in
detail  in his paper on the RAPS network siting requirements.  The RAPS network
of 25 stations was arranged in an expanding pattern of four concentric circles
originating from the downtown St. Louis Arch at radial  intervals of 4, 10,  20
and 40 kilometers, as shown in Figure 3.

     The selection of TSP and CO concentration data to determine possible re-
lationships with weather types was made for several reasons.  First, essen-
tially non-reactive pollutants were assumed to provide a situation uncompli-
cated by photochemistry and other rapid reaction systems.   Second, the pollu-
tant sources for both pollutants should be widely distributed but with differ-
ent source patterns.   Third, and obviously, the data should have been reported
by the RAPS monitoring network.  In addition both TSP and  CO are important
urban area and regional pollutants and a correlation between these measure-
ments and weather types could be useful, directly, in increasing the under-
standing of air pollution problems in the St. Louis area.

                                      15

-------
                                                         • RAPS CENTRAL

                                                         • RAMS STATIONS
Figure 3.   St.  Louis Regional  Air Pollution Study  air monitoring network,
            1975-1976.
                                       16

-------
     In our study, we concluded that from the  network  the  four  centrally  lo-
cated sites—numbers 103, 105, 106 and 108--were the most  likely  to  show  how
synoptic weather might influence TSP and CO pollution  concentrations.   These
four RAMS stations provide an indication of the  average levels  of TSP  and  CO
across the central part of the St. Louis commercial  and industrial area.   It
was expected that changes in synoptic weather, as indicated  by  weather types,
would give the optimum relationship between the  synoptic influence in  this
part of the city and the levels of concentration of  these  pollutants.


Air Quality Data Analysis

     In the RAPS program, air quality data were  collected  on both TSP  and  CO
for 22 months during the period from January 1975 through  December 1976.
Sampling for TSP was done every third day and  was the  usual  24-hour  average
Hi Vol  sample collection.  Sampling for CO was the usual continuous  non-
dispersive IR recording instrumental  observation. This sampling  pattern
resulted in an approximate three-fold difference in  the total number of daily
average values obtained between TSP and CO.   One factor that influenced the
selection of station data for analysis was the fact  that not all  air quality
measurements were taken at all  of the RAMS/RAPS  stations.  Thus some type  of
preliminary data screening and station selection was necessary  to determine
a suitable procedure for correlating St. Louis air quality with the  synoptic
weather types.  Several  combinations of stations were  tried, including net-
work averages, and it was decided to use an average  of the four central RAPS/
RAMS network stations previously mentioned, numbers  103, 105, 106 and  108, see
Figure 3.

     The next step was to relate air quality concentrations  for TSP  and CO by
date with the seasonal map type for the same date.   After  seasonal geometric
means, variances, standard deviations, and coefficients of variance  had been
computed for averages of the four selected RAMS  stations 103, 105, 106 and
108, the data were analyzed statistically.  The  geometric  mean was chosen  to
insure greater sensitivity throughout the statistical  population.  Indications
of significance between map types was sought.  The first test performed on the
data was an analysis of variance and an F test.   Uhen  the  results of this  pro-
cedure indicated that there were differences between map types within  each
season, a more powerful  statistical  procedure, the Duncan's  new multiple range
test (Steel  and Torrie, 1960) was employed to  determine more conclusively  air
quality differences between pairs of synoptic  types.   The  WSU computer sys-
tems, which incorporated the Statistical Analysis System (SAS)  algorithm,  was
applied to these data.


Total Suspended Particle Comparisons

     The tabular ranking of seasonal  maps by high to low TSP concentrations,
map types, number of cases, and average concentration  values measured  in
yg/m3,  for RAMS stations 103, 105, 106 and 108,  is given in  Table 4.   It
should be noted that the National  Ambient Air  Quality  Standard for TSP is
260 yg/m3 averaged over 24 hours.   None of the averaged St.  Louis data
                                      17

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approached this level.   As shown by the  seasonal  columns  in  Table  4, each
classification has, at  least qualitatively,  three concentration categories of
map types.  There is a  group at the upper end  of  the  distribution,  one  at the
low concentration end,  and a group that  is intermediate between these two.
For example, there are  four autumn map types with concentrations >100  yg/m3,
five map types with concentrations between 60  and 100 yg/m3,  and two map types
with concentrations <60 yg/m3.   In order to  examine this  phenomenon more
clearly, each season was reviewed separately by map type  and  TSP concentration
and with reference to the data  in Table  4.

     (A)  Winter - an examination of the five  winter  weather  types  L, E, F, A,
     and B with TSP concentration levels which exceed 85  yg/m3 indicated simi-
     lar wind flow patterns over the St. Louis area,  predominantly  from the
     western quadrants.  Additionally, map types  A, F, and E, with  the  highest
     concentration levels, that is TSP concentrations of  85  yg/m3  or higher,
     were significantly different from the two map types  H and G with the low-
     est concentration  levels,  i.e., TSP concentrations of 65 yg/m3 and below.
     In the winter group of map types with concentrations between  75 yg/m3 and
     85 yg/m3, there was no pattern or much  variation of  actual TSP concentra-
     tions.  This was substantiated by the statistical non-significant  results
     of the Duncan's test comparing map  types  K,  C, D, I, and J.

          From a meteorological  synoptic standpoint winter weather  can  include
     both stable, stagnant weather situations  that favor  pollutant  accumula-
     tion and storm situations  that provide  excellent pollutant dilution.
     With regard to TSP concentrations precipitation  and  wet  ground would tend
     to reduce ambient  concentrations and surface sources of  fugitive dust.

     (B)  Spring - This season  is typically  unstable  with rapidly moving,
     active weather systems. The map types, with their overall lower TSP con-
     centrations when compared  generally to  the other seasons, support this
     contention.  Despite the seasonal tendency for dynamic  instability, map
     types G, K, and C  had concentrations of 90 yg/m3 or  higher and two in
     this group with the largest number  of cases,  C and K, were significantly
     different from types A, B,  D, and E, whose concentrations were below
     65 yg/m3.  The weather patterns of  the  map types with the higher concen-
     trations, e.g., 90 yg/m3 or higher, had wind flow from the west, south-
     west and northwest sectors.   The remaining weather map types had active
     synoptic situations where  frontal activity was either just approaching
     or just receding from the  St. Louis area, within the previous  six-hour
     period.

     (C)  Summer - Traditionally, air pollution episodes  are  associated with
     strongly modified  or quasi-stationary systems of high pressure.  When
     this situation becomes widespread,  air  pollution episodes similar to the
     ones described by  Lynn, et  al.  (1964) and a  number of other investigators
     can occur.  Accumulation of particulate pollutants leading to  wide spread
     visible haze has been observed to be highest generally in the  western or
     southwestern sector of anticyclones moving slowly across the US midwest
     and east coast from northwest to southeast,  particularly if there is a
     frontal system or  trough behind the high  that brings in  upper  air clouds
                                     19

-------
     which tend to limit  mixing  and  dispersion of pollutants.  This western
     sector of these modified  continental  polar  anticyclones is frequently
     identified as the "backside"  of the  High.   Map type M  (summer) is an ex-
     ample of this type of phenomenon  where  St.  Louis is on the westside of an
     anticyclone centered in West  Virginia and shows a high cloud layer, at a
     reported 25,000 feet on the August 20,  1975 base map, due to a trailing
     front to the northwest.  The  average TSP concentration of 161 yg/m3 asso-
     ciated with this map type exceeds the 150 yg/m3 secondary National Air
     Quality Standard for a 24-hour  maximum  concentration.

          Although only two map  types, 0  and M,  corresponded to daily TSP con-
     centrations that were >115  yg/m3, they  both were significantly different
     than map types F, L, and  I  which  had the lowest concentrations in this
     season, i.e., <65 yg/m3.

     (D)  Autumn - Although this season is normally transitional with frequent
     unstable weather conditions,  stable  conditions are also frequent and
     average pollution concentrations  were generally higher than in the spring
     season.

          Four map types, M, A,  F, and C,  had TSP concentrations of over
     100 yg/m3, and they  were  significantly  different than map types G and L
     associated with TSP  concentrations of <60 yg/m3, the lowest concentra
     tions in this seasonal  grouping.  Wind  flow for these  four high concen-
     tration map types, which  were dominated by  strong high pressure cells,
     ranged from 4 to 10 kts,  while  those with the lowest concentrations had
     velocities from 12 to 16  kts, generally characteristic of good dispersion
     characteristics.

     As a result of these analyses,  it is has been concluded that the various
map classifications by the Lund  (1963) statistical technique, used in conjunc-
tion with related TSP concentrations,  generally  identify synoptic weather pat-
terns with specific pollution  concentrations that may be classed as high, med-
ium and low level s.

     Table 5 lists the results of  comparing  the  average concentrations by map
type and indicates whether or  not  the  differences between TSP concentrations
for pairs of map types were statistically significant (S) or non-significant
(N).  Map types in Table 5 having  statistical  significance  for  TSP concentra-
tions, designated S, are generally similar to those map types identified qual-
itatively by ranking in Table  4.   Subsequent discussion examines the situation
in more detail.  In the winter group of Table 4  map types A, E, and F showed a
significant difference from map  types  G and  H, which correlated with the win-
ter group in Table 4.  However,  map  type  L,  which has only three cases, did
not show statistical significance, although  its  average concentration level
was high.  This is an example  of a common statistical problem in dealing with
small sample numbers and  significance  testing.   In the spring season, map
types C and K were significantly different from  map types A, B, D, and E which
correlated with the ranking by concentration of  these map types.  Map type G,
with the highest concentration and lowest number of cases, again did not mani-
fest statistical significance  in this  group.  In the summer group map types J
and M were significantly  different from map  types F, L, and I, which agreed

                                      20

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TABLE 5.  RESULTS OF STATISTICAL SIGNIFICANCE TESTS FOR TSP CONCENTRATION
	DIFFERENCES BETWEEN MAP TYPE PAIRS	


          Statistical Significance Noted by S, Non-significance by N
                  WINTER                                   SPRING*

         ABCDEFGHIJKL                   ABCDEFGIHKL
         ANNNNNSSNNNN                   ANSNNNNNNNN
         B   NNNNNNNNNN                   B   SNNNNNNSN
         C     NNNNNNNNN                   C     SSNNNNNS
         D       NNNNNNNN                   D       NNNNNSN
         E         NSSNNNN                   E         NNNNSN
         F           SSNNNN                   F           NNNNN
         G             NNNNN                   G             NNNN
         H               NNNN                   I               NNN
         I                 NNN                   J                 N N
         J                   N N                   K                   S
                  SUMMER**                                 AUTUMN***
A B
A N
B
C
D
E
F
G
H
I
J
L
C D
N N
N N
N








E F G
NNN
NNN
NNN
NNN
N N
N





H I J
N S N
N S N
N S N
N S N
N S N
N N S
N S N
S N
S


L
N
N
N
N
N
N
N
N
N
S

M
S
S
N
S
S
S
N
S
S
S
S
A B
A S
B
C
D
E
F
G
H
K
L

C D
N N
N N
N








E
N
N
N
N







F G H
N S N
NNN
N S N
NNN
NNN
S N
N




K
N
N
N
N
N
N
N
N



L M
S S
N S
S N
N N
N N
S N
N S
N N
N N
S


*  Map type H missing, no data
** Map types K and M missing, no data
***Map types I, J, M, and N missing, no data
                                      21

-------
with the ranking by concentration  of these map types.  However, in this in-
stance, map type M, with the lowest number of cases, did indicate statistical
significance.   Finally,  in  the  autumn  season, map types M, A, F, and C were
significantly different  from map types  G  and L which also corresponded to the
ranking by concentration for this  group of maps.  The number of cases in this
autumn group was fairly  high, i.e., nine  or more.

     In this study, Duncan's test  proved  to be a valid procedure for determin-
ing the statistical significance between  map type pairs and their correspond-
ing levels of TSP.   Not  unexpectedly,  it  appears that when the number of cases
involved in the statistical  computations  was much less than 10, it was usually
not possible to demonstrate significance.  Although the one case in the summer
group involving map type M  was  an  exception to this pattern, the especially
high concentration average  of 161.0 yg/nr was probably a contributing factor.


Carbon Monoxide

     Carbon monoxide concentrations and weather type relationships were also
examined qualitatively by concentration ranking and statistically using the
Duncan's multi pi e-range  test.  Two methods of data averaging, a total daily
basis and by peak traffic periods, were used in this phase of the study.

     First, seasonal  tabulations of simple daily averages from the four cen-
tral area RAMS stations  (103, 105, 106  and 108) were sorted according to map
seasonal type.   The map  types were then ranked according to average CO con-
centrations.  The results are shown in  Table 6.  The indicated number of ob-
servations, N,  is the number of daily  average station values for CO.  At
least 13 hourly averages from a given  station were considered necessary to
produce a daily average  value from that station.  In a second data file the
CO data were averaged to include observations made during the morning (0600 to
1000) and evening (1600  to  2000) traffic  periods.  This would tend to identify
maximum local  concentration situations.   Neither of these two groupings of the
CO data, the 24-hour daily  average or  the morning plus evening peak traffic
average, correspond to the  specifications of the National Ambient Air Quality
Standards for CO.  These are 9  ppm for a  8-hour average and 35 ppm for a 1-
hour average, neither to be exceeded more than once per year.

     The daily average CO concentrations  shown in Table 6 indicate variations
by factors of two to three  between maximum and minimum 24-hour average values
by map types, intra-seasonally. As with  the TSP values, the differences be-
tween the seasonal  map types having the highest and lowest concentrations
tested statistically significant at the 5% level.  A comparison of the rank-
ings of map type by pollutant concentration shown for TSP in Table 4 and for
CO in Table 6 indicates  that there is  generally a different order of map types
for each of these two pollutants.  Except for the map types discussed below,
there is little similarity  between the  order of intraseasonal ranking between
map types for TSP and CO when the  higher  and lower concentration categories
are considered.  For example, in the autumn when TSP values were generally
higher than in  the other seasons,  map types M, A, and F had the highest aver-
age TSP concentrations.   For CO concentrations, these same map types ranked
fifth, seventh, and second, with only  type F in both lists.  The three highest

                                     22

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TABLE 6.  SEASONAL MAP TYPES RANKED BY CARBON  MONOXIDE  CONCENTRATIONS AVERAGED
          FOR STATIONS 103,  105,  106,  and 108

Winter Spring Summer Autumn
Rank Type N Cone (ppm) Type N Cone (ppm) Type N Cone (ppm) Type N Cone (ppm)
1
2
3
4
5
6
7
8
9
10
11
12
13
14
N
F
J
C
E
L
A
K
D
M
B
G
H
I
8
25
18
29
37
14
139
8
28
10
86
53
52
35
1.081
1.050
.823
.674
.636
.617
.556
.505
.490
.472
.449
.419
.324
.300
I
J
F
L
E
H
D
A
G
C
B
K


14
13
33
9
51
20
42
98
25
79
99
19


2.260
1.277
1.045
.962
.960
.934
.893
.838
.772
.736
.718
.705


M
K
A
J
F
I
E
D
B
H
L
C
G

7
4
107
26
30
19
39
68
106
53
24
49
20

.768
.542
.471
.447
.416
.408
.397
.391
.382
.370
.341
.320
.309

H
F
L
B
M
C
A
K
J
G
D
E
I

29
30
8
105
49
66
136
11
4
45
30
36
7

.572
.509
.477
.459
.436
.388
.383
.376
.360
.357
.339
.320
.213


*n = number of daily station  averages  where  a minimum of 13 hourly averages
    are required to calculate a  daily  average.
                                     23

-------
concentration CO maps in the autumn  were  H,  F,  and  L; for TSP these types
ranked eighth, third, and eleventh.   The  other  seasons  show a similar lack of
close correlation between the concentration  ranking of  these two pollutants
and given map types.   An explanation for  this situation is not readily appar-
ent, and this is an area for research in  future investigations.

     In the compilation of CO concentration  on  the  basis of averages over the
two, four-hour peak traffic periods  for our  4-station data set, there seemed
to be a strong bias toward the winter season and toward some relatively high
individual  concentration levels within some  of  the  wintertime synoptic weather
situations.  There were, in all, seven map types with relatively high traffic
period CO.   Six of these were winter map  types, A,  C, I, J, K, and L, with
concentrations ranging from a low of 6.4  ppm to a high  of 35.2 ppm.  There
was one summer map type, M, which had a relatively  high concentration of 11.3
ppm.  These seven were the only types during the RAPS period of 1975 and 1976
which could be classed as potentially significant in terms of CO air quality
standard, 9 ppb for a continuous eight-hour  average.  The winter season ap-
pears to have the most frequently occurring  weather that is conducive to
occasional  local carbon monoxide buildup.  There was one characteristic that
was common to five of the six winter map  types:  a  southerly wind flow with a
moderate speed of 10 to 12 mph.   The one  winter type that differed from this
pattern, L (W), had a northwesterly  flow  at  about 10 mph.  During the summer
season, the one significant map type, M(S),  had a southerly flow.  Generally,
wind flows from the south resulted in higher concentration levels of pollu-
tants in most instances.

     The application of the weather  typing concept  to include the local, peak
traffic situations does not appear to be  productive.  It is likely that local-
or short-term weather factors, such  as wintertime urban stability conditions,
might be difficult to categorize on  the basis of larger scale weather systems.
Additionally, local effects in the vicinity  of  the  sampling sites due to traf-
fic peaks, day of the week, traffic  changes, and industrial operations might
be creating enough interference to mask detectable  synoptic weather influences
Some station location and sampling problems  that were encountered in the RAPS
CO monitoring program have been examined  by  McClenny and Chaney  (1978).

     An analysis for statistical significance by the Duncan's test similar to
that discussed above for TSP was performed for  the  daily average carbon mon-
oxide concentrations.  The results are tabulated in Table 7 where "S" indi-
cates a statistically significant difference between the map type pair and,
"N" indicates non-significance.   In  the winter  season,  the two highest CO con-
centration map types, N and F, were  significantly different from the two low-
est CO concentration map types H and I.   Both the high  and low concentration
categories were significantly different from the intermediate map types B and
D.  The third highest winter type, J, showed a  significant difference from map
types B, G, H and I, but not from D.  The number of cases that were available
in each category was important in the statistical outcome of the Duncan's test
in the CO comparison as it was in the TSP analysis. This is particularly ap-
parent in the summer map types M and K with  7 and 4 cases, respectively, where
only minimum significance could be established.
                                     24

-------
TABLE 7.  RESULTS OF STATISTICAL SIGNIFICANCE TESTS FOR
          DIFFERENCES BETWEEN MAP TYPE PAIRS
         :0 CONCENTRATION
          Statistical Significance Noted by S, Non-significance by N
            WINTER
ABC
ANN
B S
C
D
E
F
G
H
I
K
L
M

ABC
A N S
B N
C
D
E
F
G
H
I
J
K
L
DEFGHIJKLMN
NNSNSSNNNNN
NNSNSSSNNNS
NNNSSSNNNNN
NSNNSNNNNS
SSSSNNNNN
SSSNNNSN
N N S N N N S
N S N S N S
S N S N S
N N N N
N N N
N
SUMMER
DEFGHIJKLM
NNNNNNNNNN
NNNNNNNNNN
NNNNNNNNNS
NNNNNNNNN
NNNNNNNN
N N N N N N N
N N N N N S
N N N N N
N N N N
N N N
N N
N
         SPRING

ABCDEFGHIJKL
ANNNNNNNSNNN
B
C
D
E
F
G
H
I
J
K
N N N
N N
N







N
N
N
N






N
N
N
N
N





N
N
N
N
N
N




S
S
S
S
S
S
S



S
S
N
N
N
N
N
S


N
N
N
N
N
N
N
S
N

N
N
N
N
N
N
N
S
N
N
                                                        AUTUMN
                                               ABCDEFGHIJKL
                                               A
                                               B
                                               C
                                               D
                                               E
                                               F
                                               G
                                               H
                                               I
                                               J
                                               K
  NNNNNNSNNNN
    NNSNNNSNNN
      NNNNNNNNN
        N N N
          N N
N N N N
N N N N
            N N S N N N
              S N N N N
                S N N N
                  N N N
                    N N
                      N
                                      25

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                                  SECTION 3

                           SUMMARY AND CONCLUSIONS
     The statistical  map classification process  developed  by  Lund  (1963) was
used to compile a comprehensive set of synoptic  weather map types  for the
St. Louis, Missouri,  region on a seasonal  basis  for the four-year  period 1973-
1976.  This covered the 1975-76 operational  period  of the  EPA Regional Air
Pollution Study centered in St. Louis.   The  map  types were used  along with av-
erage TSP and CO concentration data from the central  area  of  the St. Louis
RAPS network to assess average TSP and CO pollutant concentrations on the bas-
is of seasonal  synoptic weather types.

     Statistical  methods including analysis  of variance and Duncan's multiple-
range test were used  to test the differences between the pollutant means cal-
culated for the various seasonal  synoptic weather types.   The analysis concen-
trated on conditions  measured at four central  St. Louis RAPS  stations, numbers
103, 105, 106,  and 108.

     As would be expected from considerable  prior information synoptic scale
weather, when expressed as weather types, influences the pollutant concentra-
tions of both TSP and CO, sometimes to a significant degree.   For  example, the
TSP map types may be  easily categorized into three  pollutant  concentration
categories of high, medium, and low relative to  the seasonal  average.  One
summer map classification, type M, with an average  4-station  concentration of
161 yg/m^ can be compared to the "classical" summer anticyclonic model which
is noted for its high levels of pollutant concentrations.  The general wind
directions in the St. Louis area as related  to the  synoptic situations, par-
ticularly in the spring season, also appear  to play an important role in the
observed concentrations of pollution.

     The differences  between carbon monoxide concentrations for  selected map
types were also significant.  However, there was a  different  set of map types
associated with high  concentrations of carbon monoxide than with high TSP lev-
els.  Future research should investigate this aspect.

     Although there have been difficulties mentioned in this  report with re-
gard to the statistical treatment of the data file, the results  of this inves-
tigation comparing selected weather classifications with air  quality should
provide a reasonable  basis for evaluating the RAPS  data and for  further re-
search.  The tabulation of daily weather by  an objective weather typing tech-
nique should have applications to other research in the modeling of air pollu-
tion conditions in the St. Louis area.   This research program is continuing
with the particular goal  of developing, if possible, objective weather typing


                                      26

-------
systems that are more closely related  to  air  pollutant concentration patterns
than the 1963 sea level  pressure pattern  correlation  system of Lund used in
this report.
                                      27

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                                  REFERENCES
 1.    Air Pollution Research Section,  Department of Chemical  Engineering,
      College of Engineering, Washington State University,  Pullman,  Washington.
      Atmospheric Drift of 2,4-D in the Lower Yakima Valley 1974,  1975,  1976,
      1977, and 1978.

 2.    Arai, Y.  Classification of 500  mb Patterns Related to the Abnormal,
      January, 1963.   Papers in Meteorology and Geophysics  15:93-114,  1964.

 3.    Bardin, G. I.  Typification of Pressure Fields According  to  Their  Nat-
      ural Orthogonal  Functions.   Problemz Arktiki  i Antarkitiki,  Leningrad
      (32):52-61, 1969.  (See:  Meteorological  and  Geoastrophysical  Abstracts
      22(4)231, April  1971.)

 4.    Christensen, W.  I., Jr., and R.  A. Bryson.  An Investigation of  the  Po-
      tential of Component Analysis for Weather Classification.  Monthly
      Weather Review 94(12):697-709, December 1966.

 5.    Theophrastus.  DeVentis, edited  by V. Coutant and V.  L.  Eichenlaub,
      University of Notre Dame Press,  1975.

 6.    Elliott, R. D.   Extended-range Forecasting by Weather Types, edited  by
      T. F. Mai one, Compendium Meteorology, American Meteorological  Society,
      Boston, MA, 1951.  pp. 834-840.

 7.    Fliri, F and M.  Schuepp.  International  Congress on Alpine Meteorology,
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      Abhandlungen, Zurich, 1967.  Meteorological Geoastrophysical Abstracts
      19(15):215-229,  May 1968.

 8.    Halter, B.  Site Evaluation Research for NOAA/GMCC Program.  Thesis,
      Washington State University, Environmental Science Program,  February,
      1976.

 9.    Krick, I. P. and R. D. Elliott.   Synoptic Weather Types of North
      America, Meteorology Department, California Institute of Technology,
      Pasadena, CA, December 1943.

10.    Lowry, W. P. and F. Probald.  An Attempt to Detect the Effects of  a
      Steelworks on Precipitation Amounts in Central Hungary.   Journal  of
      Applied Meteorology 17(7):964-975, July 1978.
                                      28

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11.   Lund, I. A.  Map-pattern Classification by Statistical Methods.  Journal
      of Applied Meteorology 2:56-65, February 1963.

12.   Lund, I. A.  Correlations Between Area! Precipitation and 850-millibar
      Geopotential Height.  Monthly Weather Review 99:691-697, September 1971.

13.   Lynn, D. A., B. J. Steigerwald, and J. H. Ludwig.  The November-December
      1962 Air Pollution Episode in the Eastern United States.  U.S. Depart-
      ment of Health, Education, and Welfare, Division of Air Pollution,
      Cincinnati, OH, September 1964.

14.   McClenny, W. A. and L. W. Chaney.  Pollutant Variability in the Regional
      Air Pollution Study.  Journal of Air Pollution Control Association, 28
      (7):693-696, July 1978.

15.   Peckenpaugh, J. A., L. M. Reisinger, and E.  Robinson.  Long-Distant
      Atmospheric Transport of 2,4-D.  Paper No. 1974-12 presented at the
      Pacific Northwest International Sec'tion, Air Pollution Control Associa-
      tion, Boise, Idaho, November 17, 1974.

16.   Pooler, F., Jr.  Network Requirements for the St. Louis Regional  Air
      Pollution Study.  Journal of Air Pollution Control  Association, 24(3):
      228-231, March 1974.

17.   Singh, S. V., D. A. Mooley, and R.  H. Kripalani.  Synoptic Climatology
      of the Daily 700 mb Summer Monsoon Flow Patterns Over India.  Monthly
      Weather Review, (4):510-525, September 1971.

18.   Steel, R. G. D. and J. H. Torri.  Principles and Procedures of Statis-
      tics.  Chapter 7, McGraw-Hill Book Company,  Inc., 1960.   pp. 99-131.

19.   Westberg, H., E. Robinson, D. Elias, and K.  All wine.   Studies of Oxidant
      Transport Beyond Urban Areas, New England and Sea Breeze - 1975.   EPA-
      600/3-77-055, June 1977.

20..   Westberg, H., K. All wine, E. Robinson, and P. Zimmerman.  Light Hydro-
      carbon and Transport Studies in Ohio - 1974.  EPA-600/3-78-007, January
      1978.

21.   P. Zdravko.  Weather in Slovenia and its Development  by Regional  Weather
      Types for the Five-year Period 1955-59.  Drustvo Meteorology Slovenije,
      Ljubljana,  Raszprave, 8:31-60, 1967.
                                      29

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       Appendix
Base Maps for Synoptic
  Weather Map Types
  Section 1  Winter
  Section 2  Spring
  Section 3  Summer
  Section 4  Autumn
         30

-------
Appendix A - Section 1



   Winter Map Types
          31

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-------
33

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                                        34

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Appendix A - Section 2



   Spring Map Types
         44

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                                    43

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Appendix A - Section 3



   Summer Map Types
          58

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70

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Appendix A - Section 4



   Autumn Map Types
          72

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                                   TECHNICAL REPORT DATA
                            (Please read Instructions on the reverse before completing)
 1 REPORT NO.
  EPA-600/4-80-001
                                                           3. RECIPIENT'S ACCESSION-NO.
4. TITLE AND SUBTITLE
   SYNOPTIC METEOROLOGY AND AIR  QUALITY' PATTERNS IN THE
   ST. LOUIS RAPS PROGRAM
                                                           5. REPORT DATE
                January  1980
             6. PERFORMING ORGANIZATION CODE
7 AUTHOR(S)

   Elmer Robinson and Richard J.  Boyle
                                                           8. PERFORMING ORGANIZATION REPORT NO.
9. PERFORMING ORGANIZATION NAME AND ADDRESS

   Washington State University
   Pullman,  Washington 99164
             10. PROGRAM ELEMENT NO.

               1AA603  AE-006  (FY-79)
             11. CONTRACT/GRANT NO.
                                                             805142
 12. SPONSORING AGENCY NAME AND ADDRESS
                                                           13. TYPE OF REPORT AND PERIOD COVERED
   Environmental  Sciences Research  Laboratory - RTP, NC
   Office of Research and Development
   U.S.  Environmental Protection  Agency
   Research Triangle Park, North  Carolina 27711
                Final   5/77 - 10/79
             14. SPONSORING AGENCY CODE
                EPA/600/09
 15. SUPPLEMENTARY NOTES
 16. ABSTRACT
        An objective, statistical  synoptic weather map classification  scheme developed
   by Lund to stratify map patterns  for further study was used  to  type regional
   weather patterns.  The investigation extended over a 500-mile radius of the greater
   St.  Louis area and was intended for subsequent application to air pollution studies.
   This analysis correlated  sea  level  pressure data at 21 selected National  Weather
   Service stations at a specified time on a given day, with sea level  pressures for
   these same stations on each of  the  other days in the four-year  period 1973 through
   1976.  A total of 52 separate weather map types were identified with 12 map types in
   the winter season, 13 map  types in  the spring season, 13 map types  in the summer
   season, and 14 map types  in the autumn season.

        To illustrate the potential  usefulness of this method to air quality and
   synoptic weather relationships, a preliminary comparison of  the weather typing
   system to suspended particles and carbon monoxide concentrations was also made.

        Results indicate that the  typing program is able to show that  synoptic-scale
   weather does affect relative  pollution levels in the St. Louis  region,  if definitive
   synoptic model types are  carefully  chosen prior to application  to pollutatn con-
   centration levels.
17.
                               KEY WORDS AND DOCUMENT ANALYSIS
                  DESCRIPTORS
                                              b.IDENTIFIERS/OPEN ENDED TERMS
                          c.  COS AT I Field/Group
     Air pollution
   * Synoptic meteorology
   * Meteorological charts
   * Atmospheric pressure
  St.  Louis,  MO
      13B
      04B
      08B
13. DISTRIBUTION STATEMENT
                        RELEASE  TO PUBLIC
19. SECURITY CLASS (ThisReport)

      UNCLASSIFIED
21. NO. OF PAGES

      95
                                              20 SECURITY CLASS (Thispage)
                                                   UNCLASSIFIED
                                                                        22. PRICE
EPA Form 2220-1 (9-73)
                                            37

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