PREDICTING THE EFFECTIVENESS OF




CHEMICAL-PROTECTIVE CLOTHING:MODEL




    AND TEST METHOD DEVELOPMENT

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PREDICTING THE EFFECTIVENESS OF CHEMICAL-PROTECTIVE CLOTHING
              MODEL AND TEST METHOD DEVELOPMENT
                              by

                       Abhoyjit S. Shown
                     Elizabeth F. Philpot
                       Donald P. Segers
                         Gary D. Sides
                       Ralph B. Spafford

                 Southern Research Institute
                  Birmingham, Alabama 35255
                   Contract No. 68-03-3113
                       Project Officer

                       Michael D. Royer
                   Releases Control Branch
       Hazardous Waste Engineering Research Laboratory
                  Edison, New Jersey  08837
                  This study was conducted
                   under subcontract with
                        JRB Associates
                   McLean, Virginia  22102
           WATER ENGINEERING RESEARCH LABORATORY
             OFFICE OF RESEARCH AND DEVELOPMENT
            U.S. ENVIRONMENTAL PROTECTION AGENCY
                   CINCINNATI, OHIO  45268

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                               DISCLAIMER
The information in this document has been funded wholly or in part hy
the United States Environmental  Protection Agency under Contract
No. 6R-D3-3113 to JRB Associates/SAIC.  It has been subject to the
Agency's peer and administrative review, and it has been approved for
publication as an EPA document.   Mention of trade names or commercial
products does not constitute endorsement or recommendation for use.
                                   ii

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                                   FOREWORD
    The U.S. Environmental Protection Agency is charged by Congress with
protecting the Nation's land, air, and water systems.  Under a mandate of
national environmental laws, the agency strives to formulate and imple-
ment actions leading to a compatible balance between human activities and
the ability of natural systems to support and nurture life.  The Clean
Water Act, the Safe Drinking Water Act, and the Toxic Substances Control
Act are three of the major congressional laws that provide the framework
for restoring and maintaining the integrity of our Nation's water, for
preserving and enhancing the water we drink, and for protecting the
environment from toxic substances.  These laws direct the EPA to perform
research to define our environmental problems, measure the impacts, and
search for solutions.

    The Water Engineering Research Laboratory is that component of EPA's
Research and Development program concerned with preventing, treating, and
managing municipal and industrial wastewater discharges; establishing
practices to control and remove contaminants from drinking water and to
prevent its deterioration during storage and distribution; and assessing
the nature and controllability of releases of toxic substances to the air,
water, and land from manufacturing processes and subsequent product uses.
This publication is one of the products of that research and provides a
vital communication link between the researcher and the user community.

    As part of the Premanufacture Notification (PMN) program, which is
mandated by the Toxic Substances Control Act (TSCA), EPA's Office of Toxic
Substances evaluates the potential hazards posed by the manufacture of new
chemicals.  In support of the PMN program, the current work was undertaken
to develop improved methodologies for assessing the effectiveness of
chemical protective clothing for preventing harmful exposures to new chemi-
cal substances.
                                      Francis T. Mayo, Hi rector
                                      Water Engineering Research Laboratory
                                    iii

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                                   ABblRACT
    A predictive model and test method were developed for determining the
chemical resistance of protective polymeric gloves exposed to liquid
organic chemicals (solvents).  The prediction of permeation through protec-
tive gloves by solvents was emphasized.

    Several theoretical models and test methods applicable to estimating
permeation-related properties were identified during a literature review
and were evaluated in light of permeation tests performed during this study.
The models and test methods chosen were based on theories of the solution
thermodynamics of polymer/solvent systems and the diffusion of solvents in
polymers (as opposed to being based on empirical approaches).  These models
and test methods were further developed to estimate the solubility, S, and
the diffusion coefficient, D, for a solvent in a glove polymer.  Riven S and
D, the permeation of a glove by a solvent can be predicted for various
exposure conditions using analytical  or numerical solutions to Pick's laws.

    The model developed for estimating solubility is based on Universal
Quasichemical Functional-group Activity Coefficient for Polymers (UNIFAP)
theory, which is an extension of the Universal Quasichemical Functional-
group Activity Coefficient (UNIFAC) method for predicting phase equilibria.
The model recommended for estimating diffusion coefficients versus concen-
tration is the Paul  model, which is based on free-volume theory.  The pre-
dictive test method developed is a liquid-immersion adsorption/desorption
method that provides estimates of S and n.  The models and test method chosen
were incorporated into an algorithm for evaluating protective gloves recom-
mended (in Premanufacture Notification [PMNl suhmittals to EPA) for use with
new chemicals.

    Finally, limited confirmation of the developed models and test method was
secured by comparing estimated values of S and n with reported experimental
data and by using the estimated values to predict instantaneous permeation
rates, breakthrough times, and steady-state permeation rates for comparison
with experimental permeation data.

    This report was submitted in fulfillment of Contract No. fift-03-3113 by
Southern Research Institute under the sponsorship of the U.S. Environmental
Protection Agency.  The study was conducted under subcontract with JRR
Associates, McLean, Virginia 22102.  This report covers the period January
1985 to September 1985, and work was completed as of September
                                     iv

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                                    CONTENTS
Abstract .	   iv
Tables	   vi
Figures	.  .  .  . viii
Acknowledgments. . 	    x

    1.  Introduction  	    1
    2.  Conclusions and Recommendations	    4
    3.  Literature Review	    7
             Chemical-protective gloves	    7
             Chemical-resistance data	    8
             Permeation data for polymers	   15
             Diffusion theory	   22
             Predictive models 	   29
             Predictive test methods	'	   30
    A.  General Approach to the Development of Predictive Models
        and Test Methods	   36
    5.  Predictive Models for Solubility 	   38
             Flory-Hugging theory	   38
             UN1FAP theory 	   47
    6.  Predictive Models for the Diffusion Coefficient	   60
             Vrentas-Duda model	   60
             Paul model	   61
    7.  Predictive Test Methods for Solubility and
        the Diffusion Coefficient	   67
             Selection of predictive test methods	   67
             Immersion absorption/desorption tests 	  .  .   68
             Vapor absorption tests	   77
             Permeation test data	   81
    8.  Predictive Algorithms	   83
             Specific algorithm requirements 	   83
             Approach to the algorithm	   83
             Input to the algorithm-.	   84
             Calculations of fundamental parameters	   86
             Calculation of cumulative permeation or permeation rate  ...   86
             Evaluation of protection criteria 	   87
             Output or evaluation report 	   90
             Confirmation	   90

References	   97
Appendices

    A.  Summary of Test Methods for Evaluating Protective Materials.  .  .  .  105
    B.  The Derivation of the Modified Paul Model and a Computer
        Program	110
    C.  Numerical Methods for Solving Diffusion Problems . . 	  121
    D.  Summary of Liquid-Immersion Absorption Data and Permeation- -
        Test Results	125

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                                   TABLES
                                                                         Page
     Typical Formulations for Natural-Rubber, Neoprene-Rubber,
       and Nitrile-Rubber Chemical-Protective Gloves  	
 2   Typical Formulations for Poly(Vinyl Chloride) Chemical-Protective
       Gloves	   10

 3   Types of Data Reported in Twenty-Five Journal Articles Describing
       Glove-Permeation Experiments.	'	   14

 4   Chemicals for which Permeation Data for Natural-Rubber Gloves Exist
       in the Scientific Literature	   16

 5   Solubilities of Selected Organic Liquids in Polymers	   18

 6   Diffusion Coefficients for Selected Organic Liquids in Natural
       Rubber	   21

 7   Standard Test Methods for the Evaluation of Chemical-Protective
       Materials	   32

 8   Values OF A, A', and A" for Selected Solvents and Natural Rubber.  .   41

 9   Solubilities Calculated for Various Solvents in Natural Rubber
       (Based on Flory-Huggins Theory and Solubility Parameters) ....   43

10   Solvent Data Used in UNIFAP Calculations	   51

11   Solubilities Calculated for Various Solvents in Natural Rubber
       (Based on "Vapor/Liquid" UNIFAP Theory) 	   53

12   Solubilities Calculated for Various Solvents in Natural Rubber
       (Based on "Liquid/Liquid" UNIFAP Theory)	   57

13   Identification of Glove Materials Used in Liquid-Immersion
       Absorption and Desorption Tests 	   70

14   Summary of the Types of Liquid-Immersion Tests Conducted	   73

15   Summary of Average Liquid-Immersion Absorption Test Data	   74

16   Average Solubilities and Diffusion Coefficients Calculated from
       Liquid-Immersion Absorption and Desorption Test Data	   75

17   Vapor Absorption Data Obtained for Nitrile Rubber and Acetone ...   80

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                                     TABLES
Number                                                                     Page

  18   Summary of Average Permeation-Test Data ..............   82

  19   Comparison of Solubilities Calculated Using the UNIFAP Model or
         Obtained Experimentally with Manufacturers' Chemical-Resistance
         Guidelines ............................   89

  20   Comparison of Measured .Breakthrough Times and Steady-State
         Permeation Rates with Those Predicted from Immersion Test Data.  .   96

  21   Viscosity and Specific Volume of Benzene as a Function of
         Temperature ...........................
  22   Other Parameters Used in the Calculation of Diffusion Coefficients
         for Benzene in Natural Rubber ..................  115

  23   Viscosity and Specific Volume of n-Heptane as a Function of
         Temperature ...........................  116

  24   Other Parameters Used in the Calculation of Diffusion
         Coefficients for _n -Heptane in Natural Rubber ...........  117

  25   Permeation Rate Versus Time Calculated Using the Crank-Nicolson
         Method ..............................  122

  26   Summary of Liquid-Immersion Absorption Test Data ..........  126

  27   Summary of Individual Permeation-Test Results ...........  131
                                      Vll

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                                    FIGURES
Number                                                                     Page

   1   Comparison of solubilities calculated using Flory-Huggins
         theory, Cj, with experimental solubilities, Cfi	   44

   2   Comparison of solubilities calculated using Flory-Ruggins
         theory, Cj, with experimental solubilities, Cg     	   45

   3   Comparison of solubilities, calculated using Flory-Huggins
         theory, C'j, with experimental solubilities, Cg     	   46

   4   Comparison of solubilities calculated using vapor/liquid UNIFAP,
         C  • , with experimental solutilibi.es, Cg   	   55

   5   Diffusion coefficient of benzene in natural rubber as a function of
         volume fraction 	   63

   6   Diffusion coefficient of n-heptane in natural rubber as a function
         of volume fraction	   64

   7   Diagram of vapor sorption apparatus ... 	 ...   79

   8   Comparison of predicted and experimental permeation-rate curves
         for benzene through natural rubber	   92

   9   Comparison of predicted and experimental permeation-rate curves for
         acetone through nitrile rubber  	   94

  10   Comparison of predicted and experimental permeation-rate curves for
         acetone through nitrile rubber  	   95

  11   Absorption and desorption curves for cyclohexane in butyl rubber.  .  132

  12   Absorption and desorption curves for toluene in buytyl rubber . .  .  133

  13   Absorption and desorption curves for cyclohexane in natural
         rubber	134

  14   Absorption and desorption curves for toluene in natural rubber. .  .  135

  15   Absorption and desorption curves for cyclohexane in neoprene
         rubber	  136

                                  (continued)
                                      vin

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                              FIGURES (continued)








Number                                                                     Page




  16   Absorption and desorption curves for toluene in neoprene rubber.  .  137




  17   Absorption and desorption curves for acetone in nitrile rubber  .  .  138




  18   Absorption and desorption curves for toluene in nitrile rubber  .  .  139

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                                ACKNOWLEDGMENTS
     The authors are indebted to Mr. John W. Gibson for his helpful discussions
concerning diffusion theory and polymers.  The authors also gratefully
acknowledge the experimental work and data reduction performed by
Mr. William J. Jessen and Mr. Richard F. Collison.  Others contributing to the
project were Ms. B. Lynn Reaves, Mr. James P. English, Mr. M. Dean Howard,
Dr. Herbert C. Miller, and Dr. Richard L. Dunn.

     The authors are also thankful for the support provided by the
Environmental Protection Agency under Contract 68-03-3113 through Subcontract
33-956-02 with JRB Associates and to Dr. Kin F. Wong of the Office of Toxic
Substances (U.S. Environmental Protection Agency, Washington, DC).
                             LABORATORY NOTEBOOKS


     The work described in this report is documented in the following Institute
laboratory notebooks:  D0107, D0220, D0265 and D0301.

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                                   SECTION 1

                                 INTRODUCTION


     Section 5 of the Toxic Substances Control Act  (Public Law 94-469) requires
prospective manufacturers of new chemicals to submit Premanufacture
Notifications (PMNs), which are reviewed by the U.S. Environmental Protection
Agency's Office of Toxic Substances (OTS).  PMN submittals often propose
specific chemical-protective clothing to limit the  dermal exposure of workers
to toxic chemicals.  Because OTS has only 90 days to complete each PMN review
and because testing by the manufacturer must be kept to a minimum, the
development of reliable models for predicting the performance of protective
clothing is desirable.  Thus, the purpose of Task I under the contract was to
develop predictive models applicable to the evaluation of the chemical
resistance of protective clothing exposed to liquid organic chemicals.

     No matter how sophisticated the models developed under this contract or in
future efforts, it is likely that there may often be insufficient data
available to allow a given model to make predictions as accurate as  those
requested in the statement of work for the contract (±50% for permeation rate
and ±20% for breakthrough time).  Thus, predictive  test methods are  also needed
that will allow the estimation of the permeation of chemical-protective
clothing under expected exposure conditions.  The purpose of Task II of the
contract was to develop such methods (either by recommending the use of
existing test methods or by developing new ones).

     The completion of Tasks I and II, as defined above, would have  been
impossible within the six-month period allowed for  the performance of the
technical effort without guidelines to limit the scope of the effort.  The
primary guidelines developed for the current work were:

          •    This work emphasized the prediction  of permeation through
               polymeric barrier materials, especially protective gloves.

          •    Predictive models or test methods that would have required
               significantly more experimental data or effort to execute than
               permeation tests were eliminated from further consideration.

          •    The models (and test methods) developed were based as much as
               possible on theory (as opposed to empirical approaches).

          •    The technical effort emphasized the  development of algorithms or
               approaches rather than computer programs.

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 Each  of  these  guidelines  is  discussed  briefly below.

      Permeation  through polymeric  barrier materials.   The  dermal  exposure of
 workers  who  are  wearing protective clothing  to toxic  organic  liquids may occur
 primarily by two mechanisms:   permeation  and penetration.   Penetration is a
 physical process that  involves  the macroscopic flow or transport  of liquid
 through  openings in  the protective material.   These openings  may  be natural
 (for  example,  the  open structure  in fabrics),  or  they may  be  caused by wear
 (due  to, for example,  abrasion  or  punctures)  or by chemical degradation.
 Because  penetration  cannot be  readily  modeled  and  because  ASTM methods exist or
 are currently  being  developed  to measure  the  resistance  of protective materials
 to penetration,  the  current  work emphasized  permeation,  that  is,  the diffusion
 of chemicals through materials.

      Simple  predictive models  and  test methods.   If a predictive  model requires
 data  that are  not  commonly available or easy to determine  experimentally,  then
 the model would  be of  little practical value.   In  other  words,  if permeation
 tests were simpler to  complete  (that is,  less  time-consuming,  safer, less
 expensive, and so  forth)  than experiments  to  generate the  data  needed to use a.
 given model, then  it is likely  that most manufacturers would  choose instead  to
 perform  permeation tests.  The  same general  statements may be made in the
 comparison of  predictive  test methods  with permeation tests.

     Theoretical basis of models and test  methods.  Because the contract
 required quantitative  predictions  (for example, breakthrough  times and
 permeation rates) rather  than qualitative  predictions (such as  good, fair,
 poor, and so forth), it was  necessary  to  base  the  predictive  models and test
 methods  developed as much as possible  on  theory,  that is,  on  the  development of
 rigorous mathematical  expressions.  Given  a mathematical expression for
 permeation rate  versus time, it is  simple  to calculate,  for example, a
 breakthrough time (given  its definition) or  the cumulative permeation at a
 given time.  With an empirical  approach, however,  the transformation from one
measure  of protection  (such  as  breakthrough  time)  to  another  (for example,
 steady-state permeation rate) is usually not possible.

     Emphasis  on algorithms.  Prior to the development of  "user-friendly"
computer programs (which will be required  for  utilization  of  the  predictive
models in the  PMN review process), algorithms  or approaches to  predicting
 permeation using models or test methods must be developed.  After these
algorithms have  been defined, the  programming  effort  is  relatively simple.
Thus, although some  programming was completed,  this work emphasized the
development  of algorithms.

     After the guidelines outlined above were  developed, the  work was  completed
 in essentially the same order presented in this report.  First, a  review of  the
 existing literature  on predictive models and test methods, as well  as  diffusion
 theory, was  conducted.  This review included collecting information on
chemical-protective-clothing formulations, studying chemical-resistance
 literature published by manufacturers  of protective clothing, evaluating
chemical-protective  information published  in scientific journals  and" reports,
and obtaining  solubility and diffusivity data  for polymers used to formulate

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protective clothing.  (As shown by  the discussion  beginning  on  page  23,
solubility and diffusivity data allow permeation  to be  predicted.)

     Following the literature review, a general approach  to  the  development  of
predictive models and test methods  was  formulated.  This  approach incorporated
the guidelines presented above as well as considered  information collected
during the literature review.

     After the formulation of a general approach  to the study,  predictive
models for the determination of solubilities  were  developed.   This  work  was
conducted concurrently with the selection and  evaluation  of  predictive models
for determining diffusivities (that is, diffusion  coefficients).  Also,  test
methods that resulted in solubility and diffusivity data  were  evaluated.

     Once the work described above  was completed,  algorithms  for the evaluation
of protective polymeric barriers  (such as gloves)  were  outlined.  These
algorithms comprise Che predictive  model developed under  the  contract.  At  this
stage of  the work, the distinction  between  predictive models and predictive
test methods became unimportant.  That  is,  the predictive algorithms functioned
on the basis of the data available, whether from  a model  or  from a test.

     After the predictive model (a  set of algorithms) was developed, it  was
used to make a limited number of  predictions  of breakthrough times and
permeation-rate curves, and these predictions were compared  to experimental
data and  manufacturers' recommendations.

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                                   SECTION 2

                        CONCLUSIONS AND RECOMMENDATIONS
     Models that have been developed for Che prediction of  the  permeation of
organic compounds through protective-glove polymers have often  been  based on
empirical approaches with little emphasis on diffusion theory.  The  current
work has demonstrated that predictive models and predictive  test methods that
yield diffusion coefficients and solubilities may be used to  estimate
permeation data such as breakthrough times (for a given definition),
»teady-state permeation rates, and permeation-rate curves.  These  fundamental
parameters may be estimated using the theoretical models or the simple  test
methods described in this report.  Only relatively simple diffusion  theory and
mathematical methods are required to calculate permeation data  from  diffusion
coefficients and solubilities.  These permeation data may then  be  used  to
estimate the protection afforded by polymeric gloves recommended in  PMN
submittals.

     This work has shown the potential of theoretical methods for  estimating
solubilities and diffusion coefficients of organic compounds  in polymers used
in the manufacture of chemical-protective gloves.  Theoretical models for
predicting these fundamental parameters are especially useful for  new chemicals
because the models require only Limited physicochemical data, such as density
and viscosity as a function of temperature.  For example, a model  based on
UNIFAP theory needs only the densities of the organic compound  and the polymer
at the temperature of interest to estimate the solubility of  the compound in
the polymer (given, of course, the structure of the polymer and of the organic
compound and other limited information).

     Because even limited physicochemical data may not be available  for the
organic compound and polymeric glove of interest, it may frequently  be
necessary to conduct experiments to determine the resistance  of the  glove to
permeation.  The traditional method of determining the chemical resistance of  a
protective-glove material is to conduct a permeation test.  However, such tests
generally require the initial purchase of expensive analytical  instrumentation,
such as gas chromatographs, and they must be performed by well-trained
technical personnel.  The current research effort has resulted  in  the
application of a simple liquid-immersion test to the determination of data that
can be used to estimate solubilities and diffusion coefficients for  organic
compounds in protective-glove polymers.  This test method requires only the
purchase of a simple and relatively inexpensive analytical balance.  Also,
personnel with' limited technical backgrounds can easily perform immersion
tests.

     The liquid-immersion test described in this report may be used  to estimate
permeation-rate curves (and, thus, parameters such as breakthrough times) even
when the identity and composition of the polymeric glove material  and the
identity of the organic liquid are unknown.  This predictive  test method would
prove especially useful if a manufacturer recommends a protective  glove based
on a proprietary polymer formulation. It could also be used for evaluating

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protective gloves with  complex  formulations  that  could not  be modeled using
theoretical methods or  when  the  physicochemical data  necessary to use
theoretical methods are unavailable.

     The work described in this  report  was a  feasibility  study.   Although
models and test methods for  the  prediction of permeation  data are presented,
the brief confirmation  studies described were conducted only for unsupported
glove formulations.  There is a  need  to extend the  research effort to a wider
range of protective-glove formulations  and organic  chemicals.  For example,
neither the theoretical models nor  the  immersion  test can currently generate
data sufficient to allow the quantitative prediction  of permeation rates for
organic chemicals through PVC-based protective gloves.

     Most of the limited confirmation work conducted  under  this  contract was
performed "manually."   That  is,  although computers  were used to  model polymer/
solvent systems, to perform curve fits  of experimental data, and to predict
permeation-rate data, the computer  programs written were  not integrated into  a
single software package and  they were not made "user  friendly."   Thus,  work
under the confirmation  task was  tedious and  time-consuming.  For this reason,
it was not possible to  evaluate  all of  the experimental immersion and
permeation data obtained under this contract, and the Paul  model was used to
predict diffusion coefficients for only two polymer/solvent systems.

     The limited development of  integrated computer software during the current
feasibility study should not be  considered unusual, particularly because this
study emphasized the identification and preliminary investigation of predictive
models and test methods.  Thus, much  of the effort  consisted of  reviewing the
literature and completing mathematical  derivations.

     Any continued research effort based on the work  described here, however,
should begin with the consolidation of  the programs written into a single
software package.  This  package  should  also include the predictive algorithms
outlined in Section 8 of this report.  Thus,  future confirmation work should,
to a large extent, begin to resemble  the preparation  and  evaluation of  PMN-
submittal-review software.

     The predictive algorithms described in Section 8 emphasize  diffusion
theory; thus, time-dependent permeation (or  immersion) data are  necessary to
confirm the algorithms.  Because of the general lack  of such data in the
chemical-resistance literature,  the initial confirmation  work under a future
contract should emphasize the use of  the experimental data  presented in the
separate data volume accompanying this  report. However,  additional
time-dependent permeation and immersion test  data should  be generated for a
variety of polymeric glove materials  and organic  chemicals.

     It may also be possible to  use semiquantitative  data bases  such as those
represented by manufacturers' chemical-resistance brochures or permeation
databases to assist in  the confirmation of predictive algorithms.  However,
such semiquantitative data bases should not strongly  influence the development
of predictive algorithms, because these data  bases  often  contain information  on
the chemical-resistance of protective gloves  of unknown origin and parameters
such as breakthrough times may not be properly defined.

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     Future efforts to continue the work described here  should  include  the
identification and use of computerized data bases of  physicochemical  data that
are needed to make predictions of diffusion coefficients  and  solubilities
[using, for example, the Paul model or Universal Quasichemical  Functional-group
Activity Coefficients for Polymers (UNIFAP) theory].  Also, work  should include
addressing the limitations of the UNIFAP theory and the modified  Paul model
described in this report.  In addition, the consideration of  other  theoretical
models should be encouraged.

     Perhaps the major recommendation to result from  the  current  study  is that
there should continue to be a strong emphasis on the  development  of predictive
algorithms that are based as much as possible on the  rigorous interpretation  of
diffusion theory.  This approach will allow permeation-rate and cumulative-
permeation curves to be calculated as desired; other  permeation-related
parameters (for example, breakthrough times) can be determined  from these
curves.  It should be noted that rigorous predictive  algorithms can always be
modified to yield simple correlations; however, the extension of  an algorithm
based on empirical correlations to the calculation of quantitative  data is
often difficult if not impossible.

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                                  SECTION 3

                               LITERATURE REVIEW
     A literature review was conducted Co develop a broad-based understanding
of the current state of knowledge concerning chemical-protective clothing and
to collect permeation data that could be used to evaluate predictive models
and test methods.  The review included collecting and evaluating information
about chemical-protective-glove formulations, chemical-resistance data  for
gloves, and solubility and diffusivity data for polymers commonly used  in
fabricating protective clothing.  In addition, the fundamentals of diffusion
theory were reviewed, and information on predictive models and test methods was
collected and evaluated.

     The information collected during the literature review was obtained from a
number of sources, including journal articles, manufacturers' literature,
Government reports, and discussions with experts on diffusion in polymers and
protective clothing.

     The key information collected during the literature review was summarized
in the monthly and quarterly reports prepared under this contract, and  most of
this information is repeated in this report.  In addition, copies of about
70 articles of particular relevance were provided to EPA during the contract
period.

     One of the early key findings of the literature survey was that almost all
of the published chemical-resistance data concerns polymeric gloves.  Thus,
because of the need for experimental data with which to evaluate predictive
models and test methods, the emphasis throughout the remainder of the contract
was placed on gloves.
CHEMICAL-PROTECTIVE GLOVES

     The development of predictive permeation models (Task  I) and  test methods
(Task II) depended on an understanding of chemical-protective gloves.  Thus,
a survey was conducted to identify glove manufacturers, construction and
manufacturing processes used by them, and glove styles and  formulations.  The
information obtained in the survey was based on the experience of  Institute
staff in the manufacture of protective gloves, on manufacturers' literature,
and on references such as Waterman (I) and Blackley (_2) .

     The information obtained in the survey of protective-glove  literature
showed that seven glove formulations account for almost all of the commercial
market.  These are poly(vinyl chloride), natural rubber, neoprene  rubber,
nitrile rubber, butyl rubber, poly(vinyl alcohol), and polyethylene.  Six glove
styles are in general use; these are unsupported, coated interlock,.coated
jersey, coated flannel, inner flocked, and thin, unsupported disposable.  Also,
the manufacturing processes and construction methods,used vary greatly

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depending on the glove style.  There  are  approximately  35 manufacturers  of
chemical-protective gloves in the United  States.

     The development of predictive models  and,  to  some  extent,  the  development
of test methods are made difficult by the  large number  of glove manufacturers
and the variety of construction and manufacturing  processes used  by them.
Also, polymeric gloves are not "pure" polymers, but  they  include  other
components such as fillers, plasticizers,  stabilizers,  pigments,  and
antioxidants (for example, see Tables 1 and  2).  The identities and amounts  of
these additives in a given formulation will  often  have  a major  impact on the
rate of permeation of chemicals through the  glove.   This  is particularly true
for poly(vinyl chloride) gloves, which often contain a  higher percentage of
additives, especially plasticizers, than  the PVC resins used to form the
gloves.  PVC gloves have the largest  share of  the  market  in chemical-protective
gloves.

     Even gloves that are formulated  for  the same  application,  but  that  are
made by different manufacturers, often have  very different chemical-protective
properties.  For example, Williams (_3) reported a  variation of  a  factor  of
three in the breakthrough times obtained  for the permeation of  carbon
tetrachloride through PVC gloves of the same thickness  and formulated for the
same purpose, but made by three different  manufacturers.

     After a review of glove styles,  construction  methods, manufacturing
processes, and formulations, it was concluded  that unsupported  natural-rubber
gloves would be the simplest for which to  begin the  development of  predictive
permeation models and test methods primarily because of the "purity" of  the
typical formulation for such gloves.   Thus,  much of  the modeling  effort  during
the remainder of the contract emphasized natural rubber.

     It should be noted that the validity  of the PMN approval,  whether based on
a predictive model or on test data, may be nullified in the event a
manufacturer elects to make a change  in the  formulation of a glove.  This
change may be dictated by economic considerations  or by the availability of
materials, and the change may affect  the permeability of  the glove  with  respect
to the chemical against which it is supposed to provide protection.  For this
reason, once PMN approval is granted,  it should be made specific  for a given
glove formulation from a specific glove manufacturer (both recommended,  of
course, by the prospective manufacturer of the  new chemical).
CHEMICAL-RESISTANCE DATA

     After the development of a predictive model  (or predictive  test method),
its applicability must be confirmed by comparing  predictions  such  as
breakthrough times (for a given definition), steady-state permeation rates,  and
perraeation-rate-versus-time data with experimental chemical-resistance data
of the same type.  Thus, the existing chemical-resistance literature was
searched for such quantitative data.

-------
TABLE 1.  TYPICAL FORMULATIONS FOR NATURAL-RUBBER, NEOPRENE-RUBBER,
                AND MITRILE-RUBBER CHEMICAL-PROTECTIVE GLOVES3'b
Component
Latex
Plasticizer
Zinc oxide
Clay
Color pigments
Antioxidant
Sulfur
Potassium hydroxide
Butyl zioate
Other accelerators
Ammoniated casein
Thickener
Wetting agents
Bactericide
Natural
Uns
93.3
0
0.9
0
1.4
1.0
1.0
0.5
0
1.4
0.5
0
0
0.02
rubber
Sup
83.5
4.0
1.6
0-5
1.5
0.8
0.8
0.5
0
1.6
0.5
0.08
0.08
0.02
Neoprene
Uns
83.0
4.0
4.2
4.0
1.5
0.8
0.8
0.1
0.8
0
0.3
0.5
0
0
rubber
Sup
80.5
4.0
4.0
4.0
2.0
0.8
1.0
0.1
0.5
2.0
0.5
0.1
0.5
0
Nitrile
Uns
93. 8C
0
0
0
1.5
1.0
0.2
0
0.5
2.5
0.5
0.5
0
0
rubber
Sup
91. Oc
0
2.5
0
1.5
1.0
0
1.0
1.0
1.0
0.2
0.4
0.5
0
   aThe  numbers  in the table are in units of weight percent.  "Uns" means
   unsupported;  "Sup" means supported.

   See,  for  example,  Waterman (_U  and Blackley (2).

   cNitrile gloves are prepared from a copolymer of about 40% acrylonitrile
   and  about  60% butadiene.

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       TABLE 2.  TYPICAL FORMULATIONS FOR POLY(VINYL CHLORIDE)
                          CHEMICAL-PROTECTIVE GLOVES*
                                General Purpose
          Component

High-raolecular-weighc PVC resins
Phchalate-type plascicizers
Filler
Pigment
Heat stabilizer
Weight %

 42-52
 42-53
  0-5
  0.2
  0-2.6
                               Solvent Resistant
          Component

High-molecular-weight PVC resins
Butyl benzylphthalate;
  polyglycol benzoates
Polyester plasticizer
Filler
Pigment
Heat stabilizer
Weight %

  42-52

  23-39
  15-26
   0-5
   0.2
   1.0-2.5
                                Low Temperature
          Component

High-molecular-weight PVC resins
Phthalate-type plasticizers
Adipate-type plascicizers
Filler
Pigment
Heac stabilizers
Weight I

  43-46
  35-46
   7-14
   0-2
   0.2
   1,2-2.3
    aSee, for example, Waterman (_1_) and Blackley (2)
                                        10

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Manufacturers' Brochures

     Manufacturers of chemical-protective gloves generally  provide  chemical-
resistance tables in their marketing brochures.  These  tables usually  include
no permeation data but only recommendations such as excellent, good, fair,
poor, and not recommended.  Often, no criteria  for these  ratings  are given, and
thus, they are of little value in making or confirming  quantitative predic-
tions.

     Two exceptions to the qualitative data generally presented by  manufac-
turers of gloves are those provided by North Hand Protection (Siebe North,
Inc.) and by Edraont (Beeton Dickinson and Company).  Both the North and  Edmont
brochures include measured breakthrough times.  However,  most details  concern-
ing the permeation-test methods used to generate the data are not included in
the North and Edmont literature.  For example,  the North  brochure defines
breakthrough time as "the elapsed time between  initial  contact of the  liquid
chemical with the outside surface of the glove  and the  time at which the chemi-
cal can be detected at the inside surface of the glove  by means of  the
analytical technique."  However, neither North  nor Edmont include analytical
detection limits for any of the chemicals in their literature.

     North also gives the maximum permeation rates observed during  tests of
unspecified duration.  The Edmont literature categorizes  the maximum permeation
rate during a six-hour test as none detected, excellent,  very good, and  so
forth.  Each qualitative maximum permeation rate reported by Edmont is defined
in terms of an order-of-magnitude quantitative  range; for example,  a maximum
permeation rate categorized as "good" means that the maximum rate observed was
in the range of l.S to 15 mg/(m2>sec).

     There is no way to relate the breakthrough times and maximum
permeation-rate data reported for North and Edmont glovea to fundamental
parameters such as solubilities and diffusion coefficients, which are  needed to
predict quantitative permeation data under a variety of exposure  conditions.
It should be noted also that both North and Edmont recommend strongly  that
users conduct their own permeation (and degradation) tests  to determine  the
suitability of a given protective glove for a specific  application.

     Data similar to those provided by North and Edmont are also  available from
the Pioneer Industrial Products Division of Brunswick Corporation.  These data
(as well as those of North and Edmont) are included in  the  second edition of a
two-volume document entitled "Guidelines for the Selection  of Chemical
Protective Clothing" (4).  The Pioneer data given in that report  include
percentage weight change and percentage volume  change as  a  function of time  for
polymeric glove samples immersed in organic liquids.  The thickness of each
glove sample is also presented in the report.   However, neither the initial
weights nor the initial volumes of the samples  are given; thus, the
weight-change and volume-change data cannot be  used to  calculate  solubilities
in units of concentration (for example, g/cm3).
                                       11

-------
Government Reports

     A number of reports published under Government contract  were  reviewed.
These included the two-volume document  entitled  "Guidelines  for  the  Selection
of Chemical Protective Clothing"  (5}, which was  originally published by
Arthur D. Little, Inc., under the auspices of  the EPA  and the American
Conference of Government Industrial Hygienists.  Although the original  document
included no quantitative data on  the permeation  of polymeric  materials,  a
revised version  that  includes breakthrough times and steady-state
permeation-rate data  collected  from a number of  sources  was  issued recently
(4_).  Tables of  immersion data  (including percentage weight  changes  and
percentage volume changes as a  function of time) and diffusion coefficients
have also been added  to the document.   Almost  all of the diffusion coefficients
reported are, however, for chemical-protective materials for  which the
manufacturers are unknown.

     The document referenced above also includes an overview  of  considerations
involved in the  selection of chemical-protective clothing, a  review of  simple
permeation theory, and a list of  ASTM methods  currently  used  to  evaluate
protective clothing.  In addition, a summary of  manufacturers' recommendations
and 280 references are presented.

     SRI International recently published a report entitled  "Studies to Support
PMN Review:  Effectiveness of Protective Gloves" (b).  The report  includes a
brief introduction to simple permeation theory.  It also presents  tables and
figures that attempt  to show a  correlation between separation of solvent* and
polymer in solubility space and permeability coefficient.  Observed
correlations were good to poor.   Thus,  the predictive  value  of such
correlations is questionable.   Also, little correlation  between  separation in
solubility space and  diffusion  coefficient was observed.

     One of the primary points  made  in  the SRI International  report  is  that
little permeation data that can be used in evaluating  models  currently  exist.
Also, much of the data that do  exist is of questionable  value.  For  example,
breakthrough times reported for various glove/solvent  combinations are  of
limited use in the calculation  of diffusion coefficients, because  these times
depend on the sensitivity of the  analytical methods employed. Also, on the
basis of simple diffusion theory, the so-called  lag times rather than
breakthrough times should be used to calculate diffusion coefficients;  the SRI
International report  stated that  diffusion coefficients  based on breakthrough
times may be in  error by as much  as  a  factor of  ten.

     The SRI International report also  includes  estimates of  diffusion
coefficients for various glove/solvent  combinations.   It also contains
permeability coefficients for glove/solvent combinations that were based on
reported steady-state permeation  rates. Each  steady-state permeation rate was
divided by the vapor  pressure of  the solvent at  saturation and multiplied by
*The word "solvent"  is often used  in  this  report  as  a  substitute for the phrase
"liquid organic  chemical."
                                       12

-------
 the  thickness  of  the  glove  polymer  to  yield  an  estimate of the permeability
 coefficient.   The  SRI  International  report also includes brief discussions of
 solubility  parameters  and how  to  calculate them;  in  addition,  it  contains 55
 references.

     Another document  reviewed  under the  current  contract was  a draft  copy of a
 monograph being prepared by NIOSH (T).  This monograph,  which  summarizes  a
 computerized data  base, includes  breakthrough times  and  steady-state  permeation
 data collected from a  variety  of  sources.  Although  this report will  represent
 an impressive  collection of information when  it is published,  it  does  not
 contain all the data  necessary  (for  example, diffusion  coefficients  and
 solubilities)  to evaluate a model that must make  quantitative  predictions, such
 as permeation  rate versus time.   As  illustrated by the  discussion below,  the
 primary reason such data (for  example, analytical detection  limits) are not
 included in the monograph is that these data are  generally not available.

 Journal Articles

     Journal articles  were collected that describe experiments in which
 protective gloves  were exposed  to various solvents and  other chemicals.
 Table 3 gives  a summary of  the  types of data contained  in these articles  that
 specifically address glove  permeation.  These articles  and the data  included in
 them are believed  to be representative of the information on the  permeation of
 protective gloves  that has  been reported  in the scientific literature.

     Unfortunately, much of the information reported in  the  articles  referenced
 in Table 3 demonstrates a lack of appreciation  of permeation theory by the
 authors.  Also, extracting useful data from  the literature is  often made
 difficult by the careless use of  terminology; for example, the terms
 "permeation rate"  and  "cumulative permeation" are frequently used
 interchangeably even  though the significance of the  two  types  of  data  and the
 theories used  to interpret  the data  differ considerably.  Thus, most of  the
 data reported  in the  literature are  of limited  value in  the  validation of
 either predictive  models or test methods.

     The most  significant data  that  can be generated to  allow  the validation of
models and simple  Cest methods are  the permeation rate*  (J)  or the cumulative
 permeation (Q) as  a function of time.  Unfortunately, little of these  data
 exists for protective'  gloves.  Host  of the data that exist are in the  form of
 breakthrough times, which are dependent on analytical sensitivity and  which
 provide insufficient  information  to  characterize  fully  the permeation  being
 studied.

     A significant amount of the permeation data and interpretation of these
 data is based  on misunderstandings of  simple permeation  theory.  For example,
 the so-called  normalized breakthrough  time (t-/£2 or t / £2)  and the product Q*&
 listed in Table 3  have no basis, even  in simple theory.   Yet the  concept  of
*The correct terminology is permeation  flux; however,  the use  of  "rate"  in
 place of "flux" is widespread.
                                       13

-------
  TABLE 3.  TYPES OF DATA REPORTED  IN TWENTY-FIVE JOURNAL ARTICLES
                     DESCRIBING GLOVE-PERMENATION EXPERIMENTS


Data reported                              References


Permeation rate (J) versus time            3,  8

Cumulative permeation (Q) versus time       9-20

Lag tine (CL)                              8

Steady-state permeation rate (Ja)           3,  8,  11,  13,  19, 21, 22

Permeation rate (J) at selected times       23, 24

Cumulative permeation (Q) at selected       12, 20,  25, 26
  times

Ratios of products of cumulative           27
  permeation (Q) and polymer
  thickness (i)

Weight or volume changes  at a given        8-10,  20,  28
  time

Breakthrough times (t-) based on           3,  8,  13,  22,  23
  permeation rate

Breakthrough times (t ) based on           3,  8-12,  14, 19-21
cumulative permeation

Normalized breakthrough times (c-/42       8-11,  20
  or
Diffusion coefficients (calculated          11,  14
  incorrectly)

Other                                      13af  15b,  16C,  18C , 28d, 29e, 30f, 31*
    *Time at which the permeation  rate  is  equal  to one-half  the steady-state
     rate.

     Percent equilibrium.

    Distribution of nicrosanines  between  solvent, glove, and receiving fluid.

     Percent loss of solvent  through  glove;  percent change in length; other
     physical effects.

    cDroplet test data (generated  using a  so-called splash test).

     Diffusion coefficient  and  solubility  (incorrectly labeled solubility
     coefficient) versus vapor  concentration.

    ^Physiological symptoms versus time in glove-permeation  tests using human
     subjects.

-------
 normalized  breakthrough  time  is  widely used,  and  such data are frequently
 reported.

     On  first  examination,  there appears  to be  a  significant  (though not  exten-
 sive) body  of  data  in  the open  literature on  the  permeation of protective-glove
 materials by chemicals.  For  example,  Table 4 lists  19 references  for studies
 of  the permeation of natural-rubber-based gloves  by  67 compounds.   An
 examination of  the  articles referenced in the table,  however,  revealed that
 very little of  the  data  (which  represent  about  130 permeation  experiments)
 would be of significant  value in evaluating quantitative  predictive models or
 test methods for natural-rubber  gloves.   For  example,  the permeation data for
 only three  chemicals (pentachlorophenol,  dimethyl sulfoxide, and benzene)  in
 three references listed  in  the  table meet the following simple criteria:

          •    That a  permeation-related  property (for example, permeation
                rate, cumulative  permeation, weight change,  or  volume change) be
                reported  as  a  function  of  time.

          •    That the  glove be clearly  identified  (that is,  the  glove
                manufacturer,  type, catalog number, and thickness should be
                reported).

 Even more revealing is that of more than  2000 glove/chemical-permeation
 experiments found in 23  references, only  about  52 of  these  experiments meet  the
 two criteria listed above.

     A more extensive  survey  of  the type  described above  was beyond the scope  of
 this contract.  The limited survey results presented  here are  only  intended  to
 demonstrate the lack of  data  suitable  for evaluating  quantitative,  predictive
 models or test  methods.

     Not all glove-permeation data in  the literature  are  worthless  for
 evaluating  predictive models.  The data that  exist are useful  for comparing
 trends in a homologous series of  compounds or for a single  compound in a  series
 of glove materials.  Also, some  of the data are sufficient  to  allow the
 evaluation  of models and test methods  that are  intended to  identify gross
 glove/chemical  incompatibilities.


PERMEATION  DATA FOR POLYMERS

     Because little time-dependent permeation-related  data were found  to exist
 for polymeric glove samples,  the  literature was reviewed  to obtain  such data
 for polymers commonly used in the manufacture of  protective gloves.
Approximately 118 journal articles were reviewed; of these, only 17  contained
data of potential use in the  present study (32_-4£).   These  data included
solubilities,  diffusion coefficients,  and permeabilities  (the  product  of the
diffusion coefficient and the solubility).  The most relevant  of the  solubility
and diffusion-coefficient data in the journal articles referenced (as  well as
in a report by ADL (49)) are  presented in Tables  5 and 6.
                                       15

-------
TABLE 4.  CHEMICALS FOR WHICH PERMEATION DATA
          FOR NATURAL-RUBBER GLOVES EXIST
          IN THE SCIENTIFIC LITERATURE
Compound
Acetone
Acrylonitrile
Allyl glycidyl eCher
Aniline
Aroclor
Benzene
Butyl acetate
n-Butanol
Carbon tetrachloride
jj-Chloroaniline
Chloroform
m-Cresol
Cyclohexane
1 ,2-Dibromo-3-chloropropane
1 ,2-Dibromoe thane
Dichlororae thane
Dimethyl formaraide
Dimethyl su If oxide
Dioxane
Epichlorohydrin
Ethanol
Ethylene dibromide
Ethylene dichloride
Ethylene glycol
Ethylene glycol dinitrate
Freon TF
ji-Hexane
Isoamyl acetate
Methanol
Methylene bis(2-chloroaniline)
Methylene chloride
4 ,4 '-Methylene dianiline
Methyl ethyl ketone
Methyl iodide
Nitric acid, inhibited red fuming
Nitroglycerin
N-Nitrosobutyl methylamine
N-Nitrosodibutylamine
N-Nitrosodiethylamine
_N-Nitrosodimethylamine
N-Nitrosodipropylaoine
N-Nitrosoethyl methylamine
jJ-Nitrosomethyl pentylamine
N-Nitrosopiperidine
(continued)
16
Reference
14, 15, 18, 22, 27, 28
25
28
15, 27
10
15, 20a, 22, 29, 30
22
15
15, 22, 29
14
15, 22
22
22
25
8
14, 18
15, 27
12a, 15, 22
15, 22
8
14, 15, 18, 22
25
22
22
31
22
15
22
15, 22
14
15, 22
14
15, 22
15
23
31
18
16, 17
16-18
16-18
16-18
18
16
16, 17



-------
                    TABLE 4  (continued)
Compound
Reference
]f-Nitropyrrolidine                    16, 17
N-Nitrosodi-sec-butylamine            18
Pentachlorophenol                     lla
Pentane                               22
Perchloroethylene                     8, 15
Phenol                                9, 15, 22
Phenyl glycidyl ether                 28
2-Propanol                            15
Pyridine                              15, 22
1,1,2,2-Tetrachloroethane             15
Tetrachloroethane                     22
Tetrahydrofuran                       15, 22
Toluene                               15, 22, 28
j>-Toluidine                           14
Trichlorobenzene                      10
1,1,1-Trichloroethane                 22, 28
1,1,2-Trichloroethane                 15
Trichloroethylene                     8, 22
Trifluoroethanol                      22
Unsymmetrical dimethylhydrazine       23
Water                                 28
Water, tritiated                      14,  15, 18
Xylene                                22
     aOnly  these  reference/chemical  combinations  meet  the
      acceptance  criteria  listed  on  page  15.
                             17

-------
TABLE 5.  SOLUBILITIES3 OF SELECTED ORGANIC
                 LIQUIDS IN POLYMERS
Polymer Organic liquid
Butyl rubber Benzene
1 , 1-Dimethylhydrazine
Epichlorohydrin
Ethyl enimine
2-Nitropropane
Trichloroethylene
Natural rubber Acetone
Benzene
Benzyl alcohol
n-Butanol
^-Butanol
Carbon tetrachloride
Cyclohexane
Cyclohexanone
Diethyl carbonate
Ethanol
Ethyl acetate
2-Ethyl-l-butanol
Ethylenimine
ji-Heptane
n-Hexane
Reference
49
49
49
49
49
49
48
49
48
48
48
48
48
48
48
48
48
48
49
48
48
Solubility,
cmVcm^
0.662
0.138
0.044
0.169
0.021
1.46
0.125
3.91
0.147
0.114
0.391
5.21
3.67
3.55
0.770
0.0050
0.755
0.319
0.169
2.33
2.03
Temp . ,
K
295
295
295
295
295
295
297
295
297
297
303
297
297
297
297
297
297
297
295
297
297
                     (continued)
                           18

-------
TABLE 5 (continued)
Polymer Organic liquid
Isopropanol
Met Hanoi
Methyl ethyl ketone
ji-Pentanol
£-Pentanol
jn-Propanol
ji-Propyl acetate
Tetrachloroethylene
Tetralin
Toluene
Trichloroethylene
Neoprene Benzene
rubber

Carbon tetrachloride
Diisobutylene
1,1 -Dime thylhydrazine
Epichlorohydrin
Ethyl acetate
Methanol
Reference
48
48
48
48
48
48
48
48
48
48
48
40
49
40
40
49
49
40
40
Solubility,
cmVczn3
0.0406
0.0020
0.642
0.142
0.479
0.110
1.47
4.29
4.53
4.13
5.13
2.98
3.75
4.12
3.91
3.44
3.69
3.41
0.25
0.47
0.57
0.664
0.455
1.20
1.16
1.27
0.04
0.26
Temp . ,
K
297
297
297
297
297
297
297
297
297
297
297
298
328
355
295
298
328
355
298
328
355
295
295
298
328
355
298
328
    (continued)



         19

-------
                           TABLE  5  (continued)
Polymer





Nicrile
rubber



Polyethylene











Poly(vinyl
alcohol)

Organic liquid
Methyl ethyl ketone


2-Nitropropane
Trichloroethylene
1 , 1 -Dime thy Ihydrazine

Epichlorohydrin
2-Nitropropane
Trichloroethylene
Benzene



Epichlorohydrin
iv-Heptane

n-Hexane


2-Nitropropane
Trichloroethylene
Benzene
Trichloroethylene
Reference
40


49
49
49

49
49
49
35.36


49
49
35,36

35,36


49
49
49
49
Solubility.
cm3/cm3
1.42
1.52
2.02
0.289
0.993
0.631

0.24L
0.717
1.46
0.0343
0.0350
0.0355
0.295
0.092
0.0542
0.0535
0.0524
0.0264
0.0276
0.0290
0.065
0.039
0.035
0.028
Temp.
K
298
328
355
295
295
295

295
295
295
298
303
308
295
295
298
303
308
298
303
308
295
295
295
295
aThe solubilities reported are in units of cm3 of organic liquid per
 of unswollen polymer.  The densities of the organic liquids, which can be
 found in chemical reference-data handbooks, may be used to convert the
 solubilities given to units of g/cm3.
                                   20

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     TABLE 6.   DIFFUSION COEFFICIENTS FOR SELECTED ORGANIC
                       LIQUIDS IN NATURAL RUBBER3
103
Organic liquid
Benzene
Carbon tetrachloride
Cyclohexane
Cjrclohexanone
n-Keptane
n-Hexane
Isooctane
Methyl ethyl ketone
Methyl isobutyl ketone
Tetralin
Toluene
o-Xylene
x Concentration.
moles/cm3
43.1
54.0
35.9
26.0
15.9
15.0
11.8
6.91
12.3
32.4
40.2
36.7
LO6 x Diffusion
coefficient, cm2/sec
2.37
1.67
2.01
1.80
1.78
0.66
0.74
3.07
4.06
2.73
1.95
4.09
1.67
0.82
2.36
2.75
1.78
Reference0
45
45
47
45
46
45
47
45
45
45
47
45
45
45
45
47
45
     data were obtained at 303 K.

 The concentrations reported are in. units of moles of organic  liquid per
 cm3 of unswollen polymer.  (These data represent solubility data  in
 addition to those given in Table 5).  Each reported diffusion coefficient
 was experimentally determined at the corresponding concentration.

cThe column labeled "D  x 10**" in Table 1 of Reference 47 should be
 labeled "Dm x 106".
                                   21

-------
      Of  some  interest  also are solubility data reported by Curry and McKinley
 (44)  for  acetone  and benzene  in natural  rubber as a function of the partial
 pressure  of  the vapor  to which the polymer was exposed.  This reference
 includes  expressions for the  concentration dependence of the diffusion
 coefficients  of acetone  and benzene in natural rubber.  (The data are not
 presented here because  the primary interest under the current effort is the
 exposure  of  polymers to  organic liquids  rather than to vapors.)

      Another  article of  interest was  authored by Fujita (50) .  It included a
 review of diffusion  theory as  well as data originally published by Hayes and
 Park  (51) that demonstrate the concentration dependence of the diffusion
 coefficient  for benzene  in natural rubber.  (These data are included in
 Figure 5  in  this  report.)


 DIFFUSION THEORY

      During  the literature survey,  diffusion theory was reviewed to ensure that
 the critique  of literature data and that  proposed models and test methods were
 based on  the  correct interpretation of theory.  Several well-recognized
 references were consulted  ( 52_-5b) •  A brief summary of simple diffusion theory
 is presented  below.

 Fick'a Laws

      In general the permeation of  polymeric gloves by an organic liquid may be
 described by  Pick's laws  of diffusion:

                                   j = -D3C/3X                             (1)

                              3C/at  =  ,5(Dac/3x)/ax                         (2)
where j is the flux  through a plane  perpendicular  to  the  x  axis,  D is  the
diffusion coefficient, and C is  the  concentration  of  the  solvent  in the
polymer.

     To solve Equations 1 or 2 for quantities  such  as  permeation  rate,  J,
versus time or concentration versus  time  and position  in  the  polymer,  it  is
necessary to specify initial conditions (for example,  C(x,0)sO) and boundary
conditions (for example, C(0,t)  - S  and C(fc,t)=0).  After the initial  and
boundary conditions are specified (and, usually, after other  simplifying
assumptions are made), the differential equations may  be  solved to yield  the
desired analytical solutions.  Alternatively,  numerical methods may be  used  to
"solve" the equations.

Permeation

     The simplest theory that describes the permeation of a polymeric  glove  by
a solvent requires that the following assumptions be made:

          •    Diffusion obeys Pick's laws.
                                       22

-------
          •    Diffusion  occurs  in  only  one  dimension.

          •    The diffusion  coefficient,  D,  is  independent  of the solvent
               concentration  in  the  polymer.

          •    The initial concentration of  the  solvent  throughout the polymer
               sample  is  zero.

          •    The solvent has a finite  solubility,  S,  in the polymer, and
               this  solubility is attained instantly at  the  surface of the
               polymer  in contact with  the solvent.

          •    The concentration of  the  solvent  on  the  challenge side of the
               polymeric  glove sample is much greater than that  in the
               receiving  fluid (gas  or  liquid) on the opposite side of the
               sample  throughout the measurement.

          •    The thickness  of  the  polymer  is constant;  that is,  negligible
               swelling occurs as the solvent dissolves  in the polymer.

          •    The temperature of the test apparatus and  the polymeric sample
               remains constant  throughout the experiment.

          •    The solvent does  not  react  with the  polymer or alter its
               physical properties.

Almost all of the interpretation of  permeation data  for  protective gloves
reported in journal  articles  is  based on these assumptions.

     If the assumptions above are true (and  often one or  more are  not), then
the time-dependent diffusion  equation, Equation  2, may be solved to yield:

                  J  = 
-------
         Q -  (DS/i){t  -  *2/6D _ (2£2/1I2D)  £  [(.tf* exp{-m2ir2Dt)/ *2]/,n2J   (4)
                                         m=l
      If Q-versus-C or  J-versus-C  data  were generated and  reported  routinely,
 then  the fundamental parameters D and  S  could  be  determined.   And  these data
 could be used  for the  evaluation  of  predictive models and test methods.

      Because Equations 1  through  4 look  complicated and require the use a
 computer program, albeit  very simple,  to determine  D and  S,  workers who evaluate
 protective gloves usually seek approximations  that  may be useful for comparing
 permeation data.  One  approach to determining  the parameters  D and S without the
 aid of a computer is to  transform Equation 3,  using a method  suggested by
 Holstein (.55) , to yield  the  so-called  early-time  approximation:
                     ln(J.tl'2) ,  ln[2S(D/ir)l/2]  -  fc2/4Dt                   (5)

If this equation  is used, a plot of  ln(J»t1/2) versus  1/t  yields  a straight
line with, a slope equal  to -£2/4D  and  a y-intercept  equal  to ln[2S(D/ir) 1/2] .
Thus, in  this manner, D  and S can  be determined graphically.

     At long times, Equation 3 reduces to  the so-called  steady-state
approximation:
                                                                            (6)
where J^ is the steady-state permeation  rate.   Thus,  in  tests  where
steady-state permeation  is achieved, researchers  have  only  to  calculate the
product DS (also known as the permeability)  to  compare the  relative
effectiveness of different types0 of protective  gloves.

     Although the calculations are simple,  the  determination of  steady-state
permeation rates is of limited value because no time-dependent information is
obtained.  Also, because of the breakdown of the  assumptions listed above,
steady-state permeation may never be achieved for a given glove/solvent
combination.  In addition, knowing the permeation rate for  a given  glove  polymer
may be of much more significance at early times,  as the  protection  afforded by
the glove begins to fail, than at long times when the  steady-state  permeation
rate may be far above that which results in  acceptable exposure  levels.

     Steady-state permeation rates (or frequently, a detector  signal
proportional to J^) are often multiplied by  glove thickness ( &)  to  yield  a
result which is directly proportional to the product DS  (see Equation  6).   Thus,
a comparison of J^-i values for various gloves  enables their ability to protect
against permeation by a solvent at steady state to be  compared.  Unfortunately,
even this simple normalization has been incorrectly applied.   For example,
Sansone and Tewari (27) multiplied cumulative-permeation (Q) data rather  than
steady-state permeation-rate (J^) data times glove thickness ( £) in an
ill-founded attempt to correct for the effect of  sample  thickness in their study
of gloves obtained from several manufacturers.

     Another useful approximation may be obtained by reducing  Equation 4  for
long times to:
                                       24

-------
                           <}„= (DS/4){t -  fc2/6D}                           (7)

If cumulative-permeation data obtained at long  times  (more  correctly,  when
steady-state permeation is achieved)  are extrapolated  to  zero  cumulative
permeation, then Equation 7 reduces to:

                            0 = (DS/£){tL -  *2/6D}                          (8)

where t^ is the so-called lag time.   And,

                                  t   = *2/6D                                (9)
Thus, if the lag time is determined, then  the diffusion  coefficient  D may be
calculated.

     The misinterpretation of Equations 8  and 9 has  resulted  in  two  major
errors in the literature:

          •    Confusion of the lag time with breakthrough  time.

          •    "Normalizing" breakthrough-time data  by dividing  by  j2,

Researchers often use an experimental method and analytical technique to
determine the time at which the permeation rate (J)  or the  cumulative
permeation (Q) exceeds a given value, usually the  analytical  detection  limit.
And, as stated above, they frequently and  incorrectly equate  the breakthrough
time with lag time.

     Mathematically, the breakthrough t-imes generally used  (t and  t- below) are
defined by the equations:
    Qb  = 
-------
 also recommends reporting the steady-state permeation rate, which can be used to
 estimate  the  product  DS.   In addition, it recommends reporting a graph of
 cumulat ive-permeation-versus-time data, which, if reported correctly, could be
 used to determine D and S if the assumptions listed on pages 22 and 23 remain
 valid throughout  a given  experiment.   Also, more sophisticated theories than
 describe  above  could  be used to analyze the data when, for example, D is
 concentration dependent.   Unfortunately,  most testing laboratories using ASTM
 Method F739-81  do not report either J-versus-t or Q-versus-t data.

 Absorption  and  Desorption

      Other  data reported  in the literature include the percentage weight gain
 at  a specific time (usually 24 hr)  for a  polymer sample immersed in an organic
 Liquid.   Simple diffusion theory may be used to show that the weight gain as
 a  function  of time for a  thin planar sample of a polymer immersed in a liquid
 is  given  by the equation:
               Mt/M- "  X  ~  <8/n2)    <2tm-l)-2 exp(-D(2m+l) 2B2t/ £2)
                                 m=0

where M£  is  the  net  weight  gained  at time t and M^ is the  net weight gained at
long times (at equilibrium).   (S may be calculated from the value determined
for M^.)  However, the  weight  gain at a single time does not yield enough
information  to allow the  calculation of D and S.

     The  weight  gained  per  unit  volume at 24 hr (or at another fixed time) by a
polymer sample immersed in  an  organic liquid is often considered to be the
solubility,  S. -However,  most  researchers who study the absorption of organic
liquids by protective gloves fail  to prove that equilibrium is actually
achieved.  That  is,  they  'do not  determine the weight gained as a function of
time to show that equilibrium  has  been achieved.  Thus, the weight gain of the
polymer at 24 hr cannot be  assumed to equal the value of S.

     The  weight  gained  by a given  polymer sample when it is immersed in an
organic liquid may not  reach an  equilibrium,   [n fact, weight loss caused by
the leaching of  additives from the polymer is not unusual  (8_,2B} .  Thus,  the
effective value  of S when the  polymer sample  is first immerTed~in the liquid
may differ considerably from the effective value of S at long times.

     After a polymer sample immersed  in a solvent has reached equilibrium, it
may be removed from the solvent  and blotted to remove excess solvent,  and then
its weight may be monitored as a function of  time.   The desorption of the
solvent from the polymer  sample  as a function of time is also described by
Equation  12, except  that  MC is now defined as the cumulative weight loss  at
time t.   As  for  absorption, the  values of D and Ma (proportional to S)  may be
determined by fitting the Mg-versus-t data to Equation 12.


     As in permeation studies, approximations are often useful in
absorption/desorption studies.  One  such  approximation (52), derived from
                                       26

-------
 Equation  12,  is  Chat  the  time,  tl/2>  for which Mt/Ma> = 1/2 is approximately
 given  by
                                                             }             (13)

with an  error of  about  0.001%.   Thus,

                              D  =  0.049  42/t                               (14)
and  if the half-time of a  sorption  process  is  experimentally determined, the
diffusion coefficient  (concentration  independent)  can be  readily calculated.

     Unfortunately, polymer  swelling  and  concentration-dependent diffusion
coefficients are common for  many  polymer/ solvent  systems.   The  application of
Equations 12 -and 14 to absorption/desorption data  for nonideal  systems  yields
an apparent diffusion  coefficient averaged  over the  concentration range
corresponding to the particular experiment.  This  apparent  diffusion
coefficient is often a good  approximation to the  integral diffusion
coefficient, ^^nt, given by


                             Dint " (1/C0>  /0° Mc                        (15)

where 0 to CQ is the concentration  range  existing  in the polymer sheet  during
the absorption/desorpcion  experiment.   If the  apparent  diffusion coefficient is
approximately the same as  the  integral  diffusion  coefficient, then it can be
used (along with a value for S) to  predict  permeation-rate  data for exposure
conditions similar to  those  in the  sorption experiment.

     The common practice in  presenting  data from absorption or  desorption
experiments is to plot the ratio M^/H^  against the quantity tl/2/£, where MC
is the amount of a given solvent absorbed in or desorbed from a given polymer
sample for a time t from the start of the experiment,  M  is the equilibrium
weight gain of the polymer in  the immersion experiment  (related to the  measured
solubility of the liquid in  the polymer), and  i is the  thickness of the
polymeric glove sample.  The resulting  curve is called  the  reduced absorption or
desorption curve.  The initial portion  of these reduced curves  is normally
linear, that is, the amount  absorbed or desorbed is  directly proportional to the
square root of time.  This is true regardless  of the  relationship between the
diffusion coefficient and  concentration,  assuming  Fickian behavior (see the
paragraph below) .

     As discussed by Fujita (50) and by Crank  (^2) ,  an  apparent  diffusion
coefficient can be calculated from the  initial slope  of the reduced absorption
or desorption curve according to the equation:

                                 D = (n/16)l2                              (16)

where I is the slope of the initial (linear) portion  of the  reduced sorption
curve .
                                       27

-------
      It  should  be  noted  that  experimental  curves  of absorption and desorption
data  for a  liquid/polymer  system  can  often demonstrate  the  nature of the
diffusion of  the organic chemical  in  the  test  polymer (_50,5_2) .  If the reduced
absorption-versus-time curve  is equivalent to  the reduced desorption-versus-time
curve, the  diffusion  is Fickian and the diffusion coefficient  is concentration
independent.  If a simple  hysteresis  is observed, then  the  diffusion may still
by classified as Fickian,  but the  diffusion coefficient  is  concentration
dependent.  If  the absorption curve shows  an inflection  point  and the absorption
and desorption  curves  intersect,  then the  diffusion is  non-Fickian or anomalous.
Non-Fickian behavior has been attributed  to time-dependent  effects on diffusion.
For a given polymer at temperatures above  its  glass-transition temperature,
Fickian behavior is usually observed,  while at temperatures below its
glass-transition temperature,  non-Fickian  behavior is generally observed.

Numerical Methods
     The equations presented above are analytical  solutions  that  may be
obtained if the diffusion processes being studied  are  ideal.   Often one  or  more
of the assumptions made  fail.  For example,  the diffusion  coefficient is
often dependent on the concentration of  the  organic  compound  in  the polymer.
Equation 2 must then be written  as:

                            3C/3t • 3(D(C)3C/3x)/ax                        (17)

Usually the functional dependence of D on C  is not known.  For such cases,
numerical methods nay be used to determine the empirical dependence of D on C
from, for example, penneation-rate-versus-time data.

     Because even very "simple"  deviations from the  assumptions given
previously may result in differential equations that cannot  be solved
analytically, it becomes necessary to rely on numerical methods.   As more
sophisticated predictive models  and test methods are developed, there will  be
an increasing need to use such techniques.

Applications

     As stated previously,  the approach  to the development of  predictive models
and test methods in this work involved the development of  rigorous mathematical
expressions (or the use of  numerical methods).  These expressions may then  be
used to make whatever calculations are necessary to demonstrate that a given
glove provides the desired protection against permeation.  For example,
Equation 10 may be used to  solve for the breakthrough time corresponding to a
given cumulative amount of  an organic compound in  the receiving fluid in a
closed-loop-mode permeation test.  Also, Equation  11 may be used  to solve for
the breakthrough time corresponding to a given concentration of an organic
compound in the receiving fluid  in the open-loop mode (if  the  Clow rate  of  the
receiving fluid is known).  Equation 6 may be used to determine the
steady-state permeation rate.

     Obviously, if such quantitative data can be determined, then qualitative
permeation ratings can be established based  on ranges such as  those used by
Edmont in the definition of their permeation ratings.
                                       28

-------
 PREDICTIVE  MODELS

      Very few attempts  appear to have  been made to predict quantitatively the
 permeation  of polymeric gloves by organic compounds.  Most modeling efforts
 have  been qualitative and  empirical  in approach.   And they usually involve only
 the consideration of  solubility and  not diffusivity.

      Attempts have  been made  by a number of researchers (JJ-10) to correlate
 weight  or volume  changes in glove materials at a fixed time after the immersion
 of test  samples  in  a  chemical with normalized  breakthrough times.  These
 correlations  have yielded  poor results at best.  The primary reasons for the
 poor  correlations observed  are:

          •   The.  type of  experimental data reported in the literature is
               generally not  sufficient to demonstrate correlations.

          •   Normalized  breakthrough times (t-/i2 or t / &2) are based on a
               misinterpretation of  permeation theory.

          •   Glove materials may lose weight or shrink in volume in contrast
               to expectations of weight gains or volume increases on immersion
               in an  organic  liquid.

          •   Equilibrium  may not be  reached  at  24 hr or at any other fixed
               time during  the immersion test.

      The permeation literature includes numerous  attempts to correlate
 permeation-related  observations,  such  as percentage weight gain on immersion,
 with  solubility parameters.   The  solubility parameter for an organic compound
 (or polymer)  is defined as  the square  root of  its cohesive energy density
 (which  is the  energy of vaporization per cubic centimeter);  extensive tables of
 solubility  parameters exist (for  example,  Reference 56).  Solubility parameters
 may be  related to solubility  by  the  Flory interaction parameter (see
 Section 4).   Two  compounds  (or a compound and  a polymer) are thought to be
 miscible if there is a  close  match in  their respective solubility parameters.
 Also, they  are generally considered  to be immiscible if their solubility
 parameters  differ greatly.

      As an  example, Haxo, Nelson,  and  Hiedema  (57)  presented plots of
maximum percentage weight gain on immersion of polymer samples in various
 organic liquids as a  function of  solubility parameter.  In their work, they
 indeed  found  examples of organic  liquids that  resulted in large weight gains
 for a given polymer sample  and that had  about  the same solubility parameter as
 the polymer.  However,  they also  identified other compounds  whose solubility
 parameters  approximately matched  that  of the polymer,  but there were little or
 no weight gains observed for  polymer samples immersed  in these organic liquids
 (see  Figure 4  in  Reference  57).

      As described previously,  SRI  International (j6)  found that correlations
between the permeability coefficient and the separation in solubility space of
 Che solvent and the polymer (effectively,  the  difference in  solubility
                                       29

-------
parameters) ranged from good Co poor.  Even worse  results  were  obtained  in the
current work in attempts to correlate solubility and  separation in  solubility
space (see Section 5).

     Very few researchers concerned with protective clothing have  considered
the effect of diffusivity (that is, the diffusion  coefficient)  on  permeation.
However, the diffusion coefficient may strongly affect observed permeation
rates (or parameters such as breakthrough  times) because  it  appears not  only as
a multiplier in, for example, Equation 3 but  also  in  the  exponential  terms.   In
addition, the diffusion coefficient is often  strongly coupled  to the
concentration of the organic compound in the  polymer.  That  is, as  the
concentration of the compound in  the  polymer  increases (or decreases),  the
diffusion coefficient may change  significantly  (44,50,51).

     Correlations of the type referenced above may be of  some value for
screening gross incompatibilities  between  gloves and  organic  liquids.  However,
if a model is to be generally useful, then it must be capable of quantitative
predictions of data such as permeation rate  as  a  function of time.

     Several models were identified during the  literature search for  estimating
solubilities and diffusivities.   Discussions  of these models are presented in
Sections 5 and 6 of this report.
PREDICTIVE TEST METHODS

     During the first  three months  of  the  contract  referenced above,  written
descriptions  of test methods  were  collected from several sources, including the
American Society  for Testing  and Materials (ASTM),  the International
Organization  for  Standardization (abbreviated ISO), the British Standards
Institute, and the  US  Army.   The test  methods and types of data reported in
journal articles  and  in  reports  by other contractors and Government agencies
(for example, Arthur D.  Little,  Inc.;  MIOSH; and SRI International) were also
reviewed critically.

     In general,  the permeation-test methods in use are satisfactory.  However,
they are not  universal.   That is,  extensive analytical methods development is
often necessary when applying a  given  test method to the measurement  of the
permeation of a specific permeant  (solvent or other liquid chemical).  Thus,
the adaptation of permeation  test  methods  currently in use to evaluate
protective gloves is  usually  quite expensive, time-consuming, and complex.

     For Che  reasons given above,  the  efforts on Task II emphasized the
identification of potential test methods that would be more universal than
those currently in  use and that  would  allow the prediction of permeation rate
versus  time.  It  should  be noted that  there are currently no test methods  that
attempt to use simple  experimental procedures to predict permeation rate versus
time.
                                        30

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 Summary  of Test Methods

     The existing  standard  test  methods  for  evaluating chemical protective
 clothing were  recently compiled  in Arthur  D.  Little's "Guidelines for the
 Selection of Chemical Protective Clothing" (4_^5) .   This compilation was based
 on an earlier  list  in the ADL report  entitled "Development of Performance
 Criteria for Protective  Clothing Used Against Carcinogenic Liquids" (49).  With
 the exception  of the stress-crazing test and  the  transparency test, which are
 specific for the evaluation of rigid  plastics,  all  of the test methods listed
 and discussed  in these reports are applicable to  the  evaluation of protective
 gloves.  (The  fabric and textile tests included in  ADL's compilation are
 considered applicable to the  evaluation of fabric-supported gloves.)

     An updated list of  standard test methods that  includes those given in the
 two ADL reports, proposed ASTM test methods,  British  and ISO test methods, and
 the Army's standard test methods for  evaluating the resistance of protective
 clothing to-permeation by chemical-warfare agents  is  given in Table 7.   All of
 the test methods listed  in  Table 7 except  the ISO and British standards were
 reviewed.  Copies of the ISO  and British standards  were ordered but were not
 received during the contract  period.   Brief descriptions of all of the  methods
 reviewed are given  in Appendix A.

     The test methods listed  in  Table 7 can be  divided into two broad
 categories according to  the glove  properties  that are being evaluated:
 chemical resistance of the  gloves  and mechanical  properties of the gloves.  The
 glove properties included in  the chemical-resistance  category are permeation
 resistance,  penetration resistance, degradation resistance,  and swelling and
 solubility.   The glove properties  included in the mechanical-properties
category are tear resistance  and strength, cut  resistance,  puncture resistance,
 abrasion resistance, flexibility,  ozone resistance, and UV resistance.   (Ozone
 resistance and UV resistance  are technically  chemical-degradation tests, but
 they are not grouped in  the chemical-resistance category because the tests do
not measure  degradation caused by  the liquid  chemicals that the gloves  were
developed to resist.)

Evaluation of Test Methods

     Although both categories  of tests are necessary,  the  primary purpose of
 chemical-protective gloves  is  to prevent the  exposure of workers to hazardous
 liquid chemicals.  Thus, the  chemical-resistance  category was considered more
 important to this work than the  mechanical-properties  category.   Within the
chemical-resistance category,  the  importance  of the tests  (in descending order)
was considered to be as follows:   permeation  resistance,  penetration resistance,
degradation resistance, and swelling  and solubility.   This  ranking of the tests
 is consistent with a recent survey  of the members of  ASTM  Subcommittee  F23.30 on
Chemical Resistance that rated the  priority of  subcommittee objectives  and
 projects.  Listed in descending  order, these  were:  permeation,  penetration,
degradation,  decontamination,  standard chemicals, splash,  and particles.

     Of the  existing or proposed standard methods for  evaluating chemical-
protective gloves, the most definitive is  the permeation-resistance test.   The
permeation resistance of a glove dictates  the ultimate  choice of the type
                                       31

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         TABLE 7.  STANDARD TEST METHODS FOR THE EVALUATION
                       OF CHEMICAL-PROTECTIVE MATERIALS
Glove property
Test method
                                                     Title
Permeation resistance
ASTM Method F739-81
Penetration resistance
Degradation resistance
                            ASTM Draft Test
                            Method F739-8X
                            (Revision of ASTM
                            F739-81)

                            British standard test
                            Method 33 4724:1971
                            Draft ISO Method 6529
                            (Identical to BS 4724)
                            ISO Method 6530
                            CRDC-SP-84010
ASTM Draft Test
Method F903
ASTM Draft Test
Method Fxxx
Swelling and solubility     ASTM Method D471-79
                                   (continued)
Resistance of protective
clothing materials to
permeation by hazardous
liquid chemicals

Resistance of protective
clothing materials to
permeation by liquids or
gases

Resistance of air-
impermeable clothing
materials to penetration
by harmful liquids

Protective clothing
resistance to penetration
by dangerous liquid
chemicals

Clothing for limited
protection against
dangerous liquid
chemicals—resistance  to
penetrat ion—marking

Laboratory methods for
evaluating protective
clothing systems against
chemical agents

Resistance of protective
clothing materials to
penetration by liquids

Test method for evalu-
ating protective clothing
materials for resistance
to degradation by  liquid
chemicals

Rubber property—effect
of liquids
                                       32

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                              TABLE 7 (continued)
Glove property
Test method
                                                     Title
Tear resistance and
  strength
Cut resistance


Puncture resistance


Abrasion resistance




Flexibility

Ozone resistance


Ozone resistance



UV resistance
                            ISO Method 2025
ASTM Method D751-79
                            ASTM Method D412-83
                            ASTM Dl682-64
                            (Fed. 191A-5102)
                            ASTM D2261-83
ASTM Draft Test
Method Fxxx

ASTM Draft Test
Method Fxxx

ASTM Method D4157-82
(Replaces ASTM
D1175-71)
ASTM Dl388-64

ASTM Method D3041-79


ASTM Method 01149-81
ASTM Method G26-83
(Combination of two
previous methods—G26
and G27)
Lined industrial rubber
boots with general
purpose oil resistance

Standard methods of
testing coated fabrics

Rubber properties in
tension

Breaking load and
elongation of textile
fabrics

Tearing strength of woven
fabrics by the tongue
(single rip) method
(constant-rate-of-
extension tensile testing
machine)

Resistance to cut
Resistance to puncture
Abrasion resistance of
textile fabrics
(oscillatory cylinder
method)

Stiffness of fabrics

Coated fabrics—ozone
cracking in a chamber

Rubber deterioration—
surface ozone cracking  in
a chamber (flat specimen)

Operating ligtxp-exposure
apparatus (xenon-arc
type) with and without
water for exposure of
nonraetallic materials
                                        33

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of chemical-protective glove material to be used in a. given application.
Penetration resistance is a manufacturing quality-control problem  that  is
independent of the identity of the solvent or chemical  in contact  with  the
gloves.  Resistance to chemical degradation is a materials-compatibility
problem; that is, the selection of a glove material should be made only from a
list of materials that have already been screened for compatibility with the
chemical of interest.

     All of the standard permeation tests are based on  a partition-cell method
in which the glove material to be evaluated is mounted  in a test cell so that
the cell is divided or partitioned into two chambers by the sample.  One side of
the test sample is exposed to a Liquid-challenge chemical, and  the amount of the
chemical that permeates through the sample into an appropriate  collecting fluid
(either gas or liquid) is monitored as a function of time.

     ASTM Method F739-81, which is typically cited as the standard permeation-
test method, is rather general in scope.  The major emphasis of the method  is
the designation of a specific test cell to use in conducting the tests.  No
specific analytical methods are recommended in the ASTM method, because the
analytical method must be chosen specifically for each  chemical or class of
chemicals to be tested.  Typical analytical methods that have been used include
gas, liquid, and ion chromatography; UV and IR spectrophotometry;  the use of
radioactive isotopes; and wet chemical methods.

     The current draft ASTM Method F739-8X contains two major additions to
Method F739-81—modification of the test method to allow gas or vapor
challenges of the teat material and provision for using alternative test cells
that have been found to be equivalent to the ASTM reference cell.   (A standard
method for experimentally determining the equivalency of test cells is
currently under development by ASTM Committee F23.)  Otherwise,  the revised
method is identical to Method F739-81.

     Unlike ASTM Method F739-81, Che methods given in CRDC-SP-84010 (58) are
very specific.  The methods specify test-cell design, test procedures,  and
analytical methods for permeation tests using chemical-warfare  agents.   Criteria
for interpreting the test results are also given; these criteria can be
specified because both the physicochemical and physiological properties of  CW
agents are known and well defined.  Thus, the methods given in  CRDC-SP-84010 are
not generally applicable to the evaluation of chemical-protective  gloves against
a wide variety of organic liquids.

     The major disadvantages of the standard permeation tests are  the
specificity of the analytical method for the challenge  chemical and the
frequent requirement for relatively complex and expensive analytical
instrumentation.  A general, relatively inexpensive test method or a
"universal" analytical instrument is desirable for the  routine  experimental
determination of the resistance of gloves to permeation.

     In Section 6 of this report are proposed gravimetric absorptioo/desorption
procedures for determining the solubility, S, and the diffusion coefficient, D,
of a solvent in a glove sample.  Data such as the steady-state  permeation rate
and lag time (which is inversely proportional to D) as  well as  the permeation

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rate and cumulative permeation as a  function of time can be predicted  once D  and
S are known.  Although a method based on such absorption/desorption  procedures
may be more time-consuming than a direct permeation test and may require
sophisticated mathematical computation, the method would be general, relatively
simple, and inexpensive in terms of  the analytical instrumentation (the only
requirement being a sensitive balance or a calibrated quartz spring  and
cathetometer) and technical training required.
                                       35

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                                    SECTION  4

                    GENERAL APPROACH TO  THE  DEVELOPMENT  OF
                      PREDICTIVE  MODELS  AND TEST METHODS
     As a result of  Che  literature  review  and  the  requirements  of the PMN
review process,  the  decision was made  to base  the  development  of models and
test methods on  the  separate and independent  prediction  of the  diffusion
coefficient, D,  and  the  solubility,  S.  The coupling  of  D and  S through the
concentration dependence of the diffusion  coefficient would be  considered as
well.  Once D and S  are  determined,  then predictions  of  quantities  such as
breakthrough times,  cumulative permeation,  and maximum permeation rate can be
based on analytical  or numerical solutions  of  Pick's  laws of diffusion.
(Diffusion that  does not appear to  obey Pick's laws,  that is,  anomalous
diffusion, is also possible.  Such  anomalous  or non-Fickian diffusion was not
specifically considered  in this work.)

     The prediction  of D and S may  be based on theory (for example,  the use of
solution thermodynamics  to determine S) or  on simple  test methods capable of
yielding D and S (for example, the  use of  immersion tests).  The development of
predictive models in this work was  based on the independent determination of D
and S.  Two theoretical  methods for  the prediction of solubilities  were
evaluated, and these methods are described  in Section 5  of this report.  Two
approaches for the prediction of diffusion  coefficients  based  on free-volume
theory were identified and also evaluated;  these approaches are outlined in
Section 6 of this report.

     As with theoretical models, the primary  emphasis in the selection of test
methods was in the independent (if  necessary)  determination of  estimates of
solubilities and diffusion coefficients.   In  addition,  the test methods
developed emphasized simplicity, low cost,  and the desire to use relatively
untrained technical  personnel to perform the  tests.   In  conjunction with the
development of predictive test methods, there  was  a need to conduct some
permeation tests in  order to have reliable  time-dependent data  to verify both
test methods and predictive models.

     After the selection of specific approaches to the  prediction of D and S,
these approaches were evaluated by  comparing  predicted  D and S  values to values
published in the chemical literature.

     Once the methods for the prediction of D and  S were selected and
evaluated, simple diffusion theory  (such as that described in  Section 3) was
used to predict  permeation-rate-versus-time curves.   Then parameters such as
breakthrough times and steady-state  permeation rates  were determined from these
curves.  The results obtained were  first compared  to  manufacturers'
chemical-resistance  and  degradation-rating  tables. These predictions were then
compared to the  available experimental data.

     In this initial approach, simple diffusion theory was employed.  In the
future, as examples  of failures of  the predictive  ability of the models and
                                       36

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test methods are identified, the diffusion  theory  (as  well  as  that  used  to
predict D and S) can be increased in sophistication  as  necessary  to reduce the
frequency of the failures.  The availability of  ptfysicochemical data for
organic liquids and polymers must be considered.

     Throughout the development of the predictive  model,  the emphasis  was  on
the development of algorithms as opposed to "user-friendly" computer programs.
Some programming was necessary to ease, for example, the  calculations  required
to estimate diffusion coefficients and to make possible calculations that
required numerical methods.
                                       37

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                                    SECTION 5

                        PREDICTIVE MODELS FOR SOLUBILITY
      This section of Che report describes two approaches evaluated for the
 estimation of the solubility of an organic compound in a polymer.  These were
 Flory-Huggins theory and UNIFAP theory.
 FLORY-HUGGINS'THEORY

 Discussion of the Theory

      The  thermodynamics  of solutions is difficult to quantify in many cases-
 however,  many theories have been developed which accurately predict the
 behavior  of particular systems.   Solution equilibrium depends on the Gibbs
 energy of mixing,  which  consists of an enthalpy term and an entropy term.  The
 regular-solution  theory  of Scatchard and Hildebrand (59) has been successfully
 used  to characterize various nonpolar solutions where the components are of
 similar molecular size.   This theory assumes that Che Gibbs free energy of
 mixing  depends  only  on the enthalpy of mixing, that is, Che entropy of mixing
 is  zero (assuming no volume change  on mixing).  In conjunction with the
 development  of  this  theory, Hildebrand introduced the concept and the use of
 solubility parameters.   In reference to polymer solutions, Flory (60) and
 Muggins (6±-63) took an  alternative approach and initially assumed that Che
 enthalpy  of  mixing is zero for solutions of small molecules and long-chain
 molecules;  solutions of  this type are termed athermal solutions.

      The  Flory-Huggins equation  (derived using statistical mechanics) for an
 athermal  solution  of a solvent and  a polymer is

                         In &1 =  In  *1 + 
-------
     If a term to account for the enthalpy of mixing, deviations  from  complete
randomness of mixing, and other factors  is added  to Equation  18,  the
Flory-Huggins equation may be written as  follows:

                     In 8j a In (frj + (l-Vj/Vj)^  +  x*22                    <19>

where x is the Flory interaction parameter for  the  polymer/ solvent  system.   The
Flory interaction parameter can be related to Hildebrand's solubility
parameters by the following equation:

                             X • (v^RT)  (6^63)2                         (20)

where R is the universal gas constant (cal/K-mole) , T is  the  absolute
temperature (K), 6, is the solubility parameter of  the solvent  [(cal/cm3) l/2] ,
and 5, is the solubility parameter of the polymer [(cal/cm3) i/2] .
Flory-Huggins theory will account for polymer swelling; however,  Equation  18
was derived assuming no volume change on mixing,  which may not  hold  for highly
swelling systems.

     If we assume that (l-v./\J2) = I for  high-mo lecular-weight  polymers and
given that *j+*2 = *» Equation 19 becomes:

                       In a  = In *  + (1-) +   ^1"*2                   (21)
Huggins (63) has shown that  if  X  is larger  than  a  critical  value  given
by:
                          X,. - (1/2)[1 +  Ov/v^)"2]*                      (22)

then the calculated curve for activity, a^ versus  the mole  fraction  of
polymer, x., (or versus *, or C2' where C? e(?ual3 tne concentration of  the
polymer in the solution in moles/cm^) exhibits  a minimum and  a maximum,
indicating a phase separation.  Examination of  Equation  22 shows  that the
limiting value of Xc " 0.5 for high-molecular-weight polymers.   Thus,
for polymer/solvent systems, a phase separation (that is, a  finite  solubility)
can be expected when X>0.5.  (When  X<0.5, the solvent and the
polymer will be miscible in all proportions if  the  theory is  applicable.   At
values of X=0.5, the behavior will  be uncertain.)

     For the case when a phase separation occurs, a^sl,  and Equation  21 reduces
to:

                        0 « In $L * (1-^) + x^1'*^2                      (23^

The concentration of the solvent, C., in moles/cm3  of unswollen polymer is
related to $1 by the following equation:
                                       39

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                                                                           (24)
Thus, if X is known,  *. can be calculated using Equation  23  and  an
iceracive computation on a computer.  The concentration C ,  which can  be
calculated using Equation 24, will equal the  solubility of the  solvent in  the
polymer.
     As discussed above, the Flory  interaction  parameter,  Xi
nonpolar systems can be calculated  using Hildebrand's  solubility  parameters.
A refinement of solubility theory involves  the  use of  three-dimensional
solubility parameters where { is given by

                           62 •  6d2 + 6p2 +  6h2                           (25)

where 5d is for dispersion forces,  5- is for polar effects, and  5.  is  for
hydrogen bonding.  The use of three-dimensional  solubility parameters  in the
calculation of x should make Flory-Huggins  theory more  applicable  for  polar
systems.

     The Flory interaction parameter depends on the difference  in
Hildebrand's solubility parameters  (Equation 20).  However, there  is  some
disagreement over the calculation of the "difference"  in solubility parameters
when three-dimensional solubility parameters are used.  For example,  Bomberger
and coworkers (.6) reported a so-called "separation in  solubility  space," A, for
various solvents in polymeric glove materials.   They stated that  the  A values
which they reported were calculated by Henriksen (64)  or by themselves using
the following equation:

                                                                           (26)

where the p and £ superscripts refer respectively to the polymer  and  the
liquid solvent.  Even though Equation 26 is often used  (56) to  define  A, the
equation actually used by Henriksen is:
                 A' -  [4( $-tf) 2 + ( fiP-S*) 2 + ( freft 2] 1/2                 (27)

where the factor of 4  is added  to provide a spherical  interaction  volume.

     Haasen and Beer bower (65) have  suggested another  method  for calculating
the "difference" in solubility  parameters.  They  state that  <5_  and jj,  are  not
really separable and,  therefore, the  following  equation  should  be  used:


                    A" =  [(<§-$}>* +  0.250(TP-T*)2P'2                    (28)
where T - U2 + «g) l/z.

Calculation of Solubilities

     Table 8 contains A, A1, and A" values calculated using Equations  26,  27,
and 28, respectively, for a given set of solvents  and natural  rubber.   These
values were calculated using three-dimensional solubility  parameters  reported
                                       40

-------
        TABLE 8.  VALUES OF A, A1, AND A" FOR SELECTED
                     SOLVENTS AND NATURAL RUBBER3
Solvent
Methanol
Ethanol
Zsopropanol
n-Butanol
n-Pentanol
Benzyl alcohol
n-Propanol
Ace Cone
2-Ethyl-l-butanol
t-Pentanol
Diethyl carbonate
Methyl ethyl ketone
Ethyl acetate
n-Propyl acetate
n-Hexane
n-Heptane
Tetralin
Cyclohexane
Cyclohexanone
Toluene
Tetrachloroethylene
Carbon tetrachloride
Trichloroethylene
A, (cal/cn3)l/2
9.1
7.0
5.1
4.7
3.7
3.8
5.6
4.3
3.5
5.2
1.1
3.7
2.1
3.7
4.0
3.9
2.2
3.6
2.3
2.5
3.1
3.4
1.0
A1, (cal/cm3)l/2
9.5
7.3
5.6
5.2
4.3
3.8
6.0
5.0
4.2
6.6
1.9
4.3
3.1
5.2
5.0
4.7
2.4
3.9
2.4
2.5
3.1
3.4
1.1
A", (cal/cn3)l/2
4.7
3.6
2.8
2.6
2.1
1.9
3.0
1.9
2.1
3.1
0.91
1.4
1.3
2.3
2.5
2.4
1.1
1.9
0.35
1.2
0.31
1.7
0.38
aThe separation in solubility space A was calculated using Equation  26.
 A' and A" were calculated using Equations 27 and 28, respectively.
                                   41

-------
by Hansen and Beerbower or by Barton ^56).  In most cases, the A and A' values
in Table 8 are the same or very close, but significant differences are still
observed for a couple of the solvents.  Large variations are observed when the
A" values are compared to the A and A' values.

     Equation 20 [written x = ( v./RT)A2] and the A, A1, and A" values
given in Table 8 were used to calculate x> X*> and X* values,
respectively, at 298 K to be used in Equation 23.  This latter equation was then
solved for *i, *i, and $1 values from which Cj, Cj, and C\ values were
calculated using Equation 24.  The prime superscript indicates that A' was used
in the calculations, and the double-prime superscript indicates that A" was
used in the calculations.  The results of these calculations are given in
Table 9.  This table also includes solubilities (specified by C   ) directly
calculated from experimental volume-fraction data reported by Paul and
coworkers (48).

     Comparison of the Cj, C\, and Cj values in Table 9 shows that C] and C\
are generally similar, while c'{ is considerably greater.  Comparison of the
calculated values with the literature values can be^made by visual inspection
of Figures 1,2, and 3, which present C\, C\, and C\, respectively, versus
C   .  The solid line in each plot represents GI equal to C    for all possible
vafues of C   .  The dashed lines define the range of possible calculated
values which rail within one order of magnitude greater than or less than the
experimental values.  Figures 1,2, and 3 all have approximately the same
number of calculated values within the dashed lines.  The Cj and C} values
are generally smaller than the corresponding(Cex  values, while the Cj values
are generally larger.  Overall, the GI and GI values are better than the GI
values for the less soluble solvents, but the C^ and Ci values become more
scattered for the more soluble solvents.  The Cj values appear to be better
for the soluble solvents.  The prediction of miscibility in all proportions or
"infinite solubility" occurs more often for  the C± values, indicating that the
c" values could possibly be used to screen out highly soluble solvents when
evaluating natural rubber as a protective-glove material.

     An example of the dependence of the estimated solubility on the technique
used to calculate the separation in solubility space is given by the values
listed in Table 9 for the solubility of £-pentanol in natural rubber:
0.0000223, 0.00000110, and 0.000929 moles/cm3.  AS another example, the use of
Equations 26 and 27 resulted in relatively low solubilities (0.000699 and
0.000308 moles/cm3, respectively) for methyl ethyl ketone in natural rubber.
However, the use of Equation 28 resulted in  the prediction that methyl ethyl
ketone and natural rubber should be miscible  in all proportions.

     For the entire data set in Table 9, Equation 26 resulted in
solubilities in error by factors from 1.5 to 280 and a linear-regression
correlation coefficient of 0.15 (when compared to the experimental solubilities
                                       42

-------
 TABLE 9   SOLUBILITIES CALCULATED  FOR VARIOUS  SOLVENTS  IN
           NATURAL  RUBBER1 (BASED ON  FLORY-HUGCINS THEORY
                     AND SOLUBILITY PARAMETERS)
Literature solubility Calculated solubility0'
Solvent

Mechanol
Ethanol
Isopropanot
n-Butanol
n-Pentanol
Benzyl alcohol
n-Propanol
Acetone
2-Ethyl-l-butanol
t-Pentanol
Diethyl carbonate
Methyl ethyl ketone
Ethyl acetate
n-Propyl acetate
n-Hexane
n-Heptane
Tetral in
Cyclohexane
Cyclohexanone
Toluene
Tetrachloroethylene
Carbon tetrachlor ide
Trichloroethylene
105 * C.xp

6.92
8.59
52.6
125
130
162
146
169
259
437
636'
713
766
1270
1540
1580
3330
3380
3410
3870
4240
5370
5690
10* x C|

3.21
5.37
18.7
14.3
34.5
35.0
9.33
64.2
28.1
2.23
«
69.9
1400
28.6
8.57
5.71
266
39.7
689
299
136
96.8
-•
10* x CJ

1.88
3.21
9.21
6.99
13.7
15.0
5.25
26.7
8.68
0.110
858
30.8
151
1.76
1.15
1.00
157
25.9
629
286
127
88.9
~™
10s x Ci

392
396
606
675
724
2630
639
—
483
92.9
—
~
--
363
152
135
~
1380
--
—
—
—
~~
'The concentrations (solubilities) reported  are  in  unit*  of
 moles/cm1 of unswollen polymer at 298 K.

''These values are calculated  from the experimental  volume-fraction data
 given in Reference 48

cThese values are calculated  using Flory-Huggins  theory.   The  term C,  means
 that Equation 26 was used to calculate  the  separation in solubility
 space, C". corresponds to Equation 27, and C'j  corresponds to Equation  28.

^The svmbol "—" means that no solubility could  be  calculated,  because
 these systems are  predicted  to be oiscible  in all  proportions.
                                      43

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  10,000
n
 u
   1.000
     100
      10
i  i 11111|     i   i  i 11 mi     i   i  i i ni i]     I
             I   I  I I I I III     I   I  I I I (III
i  i  n
             i   i  i 11 ml/1    i  i i i mil    i  i  i  i lull    i  i  i  M ml
                       10
                      100            1.000           10.000

                  10** x Cexp, moles/cm3
   Figure 1.  Comparison of solubilities calculated using Flory-Huggins theory, Cj. with
             experimental solubilities. CexD.
                                      44

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  10.000
   1.000
 u
 x
U
 K

in
o
     100
      10
      0.1
                     ITMI     i  n M iin     i  i i  11 in     i   i  i niu
                        10
 100            1.000


x C. moles/cm3
10.000



    6749-3
   Figure 2. Comparison of solubilities calculated using Flory-Huggins theory, Cj. with

            experimental solubilities, Cexo.

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        11
  10.000
   1.000
m


 u
 N.
 M
 U
 K
     100
      10
              I   I  I I ITTTT
              I   1  I I  Mill/   L I   I I  I III!    I   I  I  I II 1(1     I   1  I  I I Illl
10
                                         100             1.000


                                       x Cexp. moles/cm^
10.000


    1141-4
  Figure 3.  Comparison of solubilities calculated using Flory-Huggins theory, c'j, with

            experimental solubilities, Cexp.
                                          46

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included  in.Che  cable).  Equation  27  resulted  in  solubilities  in error  by
factors from 1.3 Co 4000 and'a correlation  coefficienC  of  0.23.   Equation  28
resulted  in  solubilities in  error  by  factors  from 1.9  to 80  and  a correlation
coefficient  of 0.073.

     Because  of  the poor correlation  of  Che calculated  solubilities  with  che
experimental  solubilities, Che development  of  a method  based on  Flory-Huggins
theory and solubility parameters for  the  estimation  of  solubilities  was not
pursued further.
UNIFAP THEORY

Discussion of the Theory

     The UNIFAP equations,  like  Che  Flory-Huggins  equation, model  liquids  as
being in a solid-like or  quasicrystalline  state.   In  other  words,  both
approaches are based on  Lacti.ce  theories.   These  theories  propose  chat
molecules of a liquid are  fixed  in an  ordered  arrangement  and  chat  Che  behavior
of the liquid depends on  che molecules'  interaccions  with  their  neighbors.   If
the molecules show no preference  in  che  selection  of  their  neighbors, Chen  a
completely random mixture  exists,  that is,  ideal  conditions are  present.
However, this rarely occurs, and  Guggenheim proposed  in  his  quasichemical
theory of liquid mixtures  Co correct  for Chis  nonideality  (66).  He described
the behavior of nonrandom  systems  with equally sized  molecules.  Flory  and
Huggins independently used  lattice theory  to predict  Che behavior  of mixtures
whose molecules varied in  size but were  chemically similar  (£6_,J£).  Their  work
resulted in a relatively  simple  one-parameter  equation.  However,  because  of
Che strong dependence of  the Flory inCeraction parameter on composition and
several assumptions made  in the  derivation of  the  Flory-Huggins  equation,  it
does not give a good quantitative description  of  solubility.

     Wilson extended Flory  and Huggins1  work by examining  the  interactions
between different molecules (68).  His semiempirical  approach  is based  on  che
local composition concept,  which  assumes  that  a liquid  is  not  homogeneous  on  a
molecular level.  Therefore, Che  energies  of interactions  are  significant  and
must be taken into account.  Wilson  accounted  for  molecular interactions by
including two adjustable  parameters  for  each pair  of  molecules in  his
equation.

     Abrams and Frausnitz's universal  quasichemical equation,  UNIQUAC
(universal quasichemical  activity coefficients),  uses local area fractions
instead of local mole fractions  as used  in  the Wilson equation (68). UNIQUAC
provides no major  improvements over  che  Wilson equacion  for prediccing  the
behavior of completely miscible  vapor/liquid systems, but  it allows a
prediction of Che behavior  of  liquid/liquid systems,  even  liquid/liquid
systems with more than two  components.   As  in  the  Wilson equation,  UNIQUAC  uses
only two adjustable parameters  for each  pair of molecules,  and with several
specific assumptions, che  UNIQUAC equation  reduces to the  Flory-Huggins
equacion or any of the well-known equations derived from Guggenheim's work.

-------
     Fredenslund et al. (Q,TQ) combined UNIQUAC with the solution-of-groups
concept chat a physical property can be predicted by summing the effects of the
functional groups (that is, the structural units) comprising the compound.  The
resulting model, UNIFAC (UNIQUAC Functional-group Activity Coefficients),
contains two adjustable parameters per pair of functional groups instead of
containing two adjustable parameters per pair of molecules as in UNIQUAC.
Compared to UNIQUAC, this significantly reduces the number of interaction
parameters required to apply the model, because the number of possible
funccional groups is much smaller than the number of existing compounds.
Furthermore, this allows a quantitative description of the behavior of systems
for which no experimental data are available but that contain functional groups
whose energies of interaction have been experimentally determined.  However,
this extrapolation technique holds only if the behavior of any given group is
not affected by the presence of the other groups within the molecule.  Often
this assumption is not true; thus, UNIFAC is an approximate method.

     As in the Flory-Huggins equation, the UNIFAC equation used to calculate
the liquid-phase activity coefficient for a given component consists of an
entropy term or a combinatorial part, resulting from the differences in the
size and shape of the functional groups in the mixture, and an enthalpy term or
residual part, resulting from the interaction energies between the functional
groups.

     The combinatorial part of the UNIFAC equation is calculated from the
functional-group parameters known as normalized van der Waals group volumes and
interaction surface areas.  These parameters are determined independently from
pure component, atomic and molecular structure data (70).

     The residual part of the UNIFAC equation depends on the "concentrations"
of the functional groups and the interactions between the groups.  Therefore,
the solution-of-groups concept plays an important part in calculating this
term.  In addition, the residual term resembles the Wilson equation written in
terms of area and segment fractions.

     The group-interaction parameters, a  , in the residual part of the model
characterize the energy of interactions between the functional groups n and m.
They have the units of Kelvin, and for interactions between a given pair of
functional groups, there exist two distinct parameters (that is, annj*amn ^'
These parameters are determined empirically from experimental vapor/liquid
equilibrium data.  An extensive compilation of such data are available on
magnetic tape from the University of Dortmund (Dortmund, West Germany); the
Dortmund data base contains vapor/liquid equilibrium data for systems meeting
the following requirements (70):  the pressure is less than IS atm, and the
components only consist of water or organic compounds with a normal boiling
point higher than 273 K.  Fortunately, tables of group-interaction parameters
are available in the literature (71-73).

     As more phase-equilibrium data for vapor/liquid systems become available,
it is possible to estimate previously missing interaction parameters and to
improve the estimation of the parameters that were based on very limited data
(71).
                                       48

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     The UNIFAC model has  two  significant  advantages:   It  is very  simple
because the interaction parameters are not very  strong  functions of  temperature
and pressure within the range  of  applicability;  it  is also very  flexible  and,
thus, very easily applied  to a  large number of systems  because UNIFAC
parameters are available for a  large number of different  functional  groups.

     Overall, UNIFAC has been proven to predict  satisfactorily activity coeffi-
cients in a large number of systems.  However, UNIFAC does have  limitations
(74).  It can only be applied when:

          •    The pressure is  no more than a few atmospheres.

          •    All components are well below their  critical points.

          •    The temperature  of interest is in the range of.300  to 425  K
               (80 to 300  *F).

          •    No noncondensables or electrolytes are contained  in the system.

          •    No immiscible liquids are contained  in the system.

          •    No polymers are  contained in the  system.

          •    Only components  that contain ten  or  less different  UNIFAC
               functional  groups are present.

     Oishi and Prausnitz (75) extended UNIFAC to the calculation of  solvent
activities in polymer solutions, and they  referred  to the modified theory as
UNIFAP (UNIFAC for polymer systems).  They began by working in terms of
activities rather than activity coefficients; they  felt mole  fractions were
"awkward units" of concentration  for polymer solutions  because of  the much
larger molecular weight of the  polymer versus the solvent.  In addition,  they
added another contribution term to the model to  take into account  the changes
in free volume caused by mixing the solvent and  the polymer.  Thus,  the
activity of the solvent is determined by

                       In  3j •  In a^ + In a f + In ajfv                  (29)

where a.c is the combinatorial  activity (an entropy term), a .r is  the residual
	_-«_^/     ^ t  •   	  \  _J_ f V J  ^L _ f	  __*   -   ^ .*-_ -• ^
                                  1
activity (an enthalpy tern), and a.   is the free-volume activity.
     The equations necessary to apply the UNIFAP model are  tedious.  An
excellent summary of the equations and an illustrative calculation are given  in
Reference 75.  A copy of the UNIFAP software package written by Oishi and
Prausnitz, which is based on the equations given in Reference  75, is available
from the Friends of Chemical Engineering (University of California, Berkeley,
CA).

     In general, the UNIFAP (UNIFAC for polymer systems) model has been  proven
to predict activities satisfactorily for polymer/solvent systems  (75,76).
However, as in the case of UNIFAC, the independence of the  interaction
parameters to changes in temperature and to the effects of  other  functional
groups contained in the system may not always be a valid assumption.  Thus,


                                       49

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accounting for such effects  in the determination of  the group-interaction
parameters would greatly improve  the reliability of  UNIFAP  in predicting
solubility (76) .


Calculation of Solubilities

     The UNIFAP software obtained from  the Friends of Chemical  Engineering
yields activities at specific volume fractions.  The UNIFAP software  was
modified slightly to determine activities for various solvent volume
fractions.  The modified software allows the determination  of the volume
fraction of the solvent that yields an  activity of one (that  is, a  =1).
Therefore, the solubility of the  solvent in a polymer can be determined.

     Using the modified UNIFAP program,- solubilities, Cuni, for various
solvents in natural rubber at 298 K were calculated. In general, the
temperature of the system, the densities of the solvent and the polymer, and
the functional groups comprising  the solvent and the polymer were the only
required inputs of this method.   From these inputs,  a solvent volume  fraction
was generated at the saturation condition (that is,  for a^l).  Finally, this
volume fraction, «. , was converted to solubility, Cun£ , in  units of moles/cm 3
of unswollen polymer by using the following equation:
where vi is the molar volume of  the  solvent.

     The data used  in the UNIFAP calculations  of  solubilities  are  listed  in
Table 10.  The UNIFAP results  and  experimental solubilities,  C   , reported by
Paul et al. (48) are given  in  Table  11.   In addition,  the  calculated  values and
the experimental values  are compared graphically  in Figure 4.   Several  types of
regressions were performed  on  the  data,  but a  linear regression provided  the
best fit with a correlation coefficient,  r, equal to 0.92.  The equation  given
in Figure 4 indicates that  solubilities  calculated using  the  UNIFAP model are
generally less than experimental values  by  about  a factor  of  two (except  for
very low solubilities and solubilities  that indicate miscibility in all
proportions).  Future work  using UNIFAP  should address this systematic  error.

     As shown by Che results in  Table 11, the  equilibrium solubilities  for some
polymer/solvent combinations (for  example,  acetone or  ji-pentanol in natural
rubber) can be described accurately  by  the  UNIFAP modeT.   However, solubili-
ties for many of the systems given can  only be determined  within a factor of
five.  This error probably  results from  inaccuracies in the group-interaction
parameters in the data base used in  performing the calculations or the
breakdown of some of the assumptions on  which  UNIFAP is based.
                                        50

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TABLE 10.  SOLVENT DATA USED IN UNIFAP CALCULATIONS
Molecular
Solvent weight, g/mole Density,3 g/ctn
Acetone
Benzyl alcohol
£-Butanol
_t-Butanol
Carbon tetrachloride
Cyclohexane
Cyclohexanone
Diethyl carbonate
Ethanol
Ethyl acetate
2-Ethyl-l-butanol
n- Heptane
n-Hexane
Isopropanol
Methanol
Methyl ethyl ketone
j»-Pentanol
_t-Pentanol
jn-Propanol
_n-Propyl acetate
Tetrachloroethylene

58.08
108.1
74.12
74.12
153.8
84.16
98.14
118.3
46.06
88.10
102.2
100.2
86.17
60.09
32.04
72.10
88.15
88.15
60.09
102.1
165.9

0.788
1.05
0.810
0.786
1.59
0.778
0.948
0.976
0.816
0.902
0.833
0.634
0.660
0.785
0.792
0.805
0.815
0.808
0.805
0.836
1.62
(continued)
3 Functional groups'9
1 CH3, 1 CH3CO
5 ACH, 1 ACCH2, 1 OH
1 CH3, 1 CH2, 1 OH
3 CH3, 1 C, 1 OH
1 CCl^
u wEl M
5 CH2, 1 CH2CO
2 CH3, 1 CH20, 1 CH2COO
1 CH3, 1 CH2, 1 OH
1 CH3, 1 CH2, 1 CHjCOO
2*CH3, 3 CH2, 1 CH, 1 OH
2fu e ru
OJlj, 3 *'tl2
7 fu i, rv
L l-Mj, 1 l,H2
2 CH3, 1 CH, 1 OH
1 CH3OH
Ipu i pu i pu p/\
~nji » 2 ' u'ji'U
1 CH3, 4 CH2, 1 OH
3 CH3, 1 CH2, 1 C, 1 OH
1 CH3, 2 CH2, 1 OH
1 CH3, 2 CH2, 1 CH3COO
1 0»C, 4 Cl(OC)

                             51

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                    TABLE 10  (continued)
Solvent
Tetralin
Toluene
Trichloroethylene
Molecular
weight, g/mole
132.2
92.13
131.4
Density,8 g/cm3
0.970
0.866
1.46
Functional
4 CH2, 4
5 ACH, 1
1 CH-C, 3
groups
ACH, 2 AC
ACCH3
Cl(C-C)
aThese are the densities at 298 K.




 The symbol AC designates an aromatic carbon.
                                 52

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TABLE 11.  SOLUBILITIES CALCULATED FOR VARIOUS SOLVENTS IN NATURAL
              RUBBERa'b (BASED ON "VAPOR/LIQUID" UNIFAP THEORY)
Solvent
Methanol
Ethanol
Isopropanol
jn-Butanol
n-Pentanol
Benzyl alcohol
ti-Propanol
Acetone
2-Ethyl-l-butanol
t-Butanol
t-Pentanol
Diethyl carbonate
Methyl ethyl ketone
Ethyl acetate
n-Propyl acetate
n-Hexane
n- Heptane
Tetralin
105 x Cun£ moles/cm3
26.5
42.4
81.6
93.3
103
27.5
100
185
114
81.5
96.9
202
271
411
581
*
*
*
105 x C moles/cm3
cxp y
4.92
8.59
52.8
125
130
142
146
169
259
414
437
636
713
766
1270
1540
1580
3330
                                 (continued)
                                      53

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                        TABLE 11  (continued)
Solvent 10s x Cuni moles/cm3
Cyclohexane *
Cyclohexanone *
Toluene *
TetrachLoroethylene *
Carbon Cetrachloride *
Trichloroethylene *
10s x C___ moles/cn>3
CAt* t
3380
3410
3870
4240
5370
5690
aThe UNIFAP calculations of the solubilities at 298 K were performed using
 group-interaction parameters estimated by fitting vapor/liquid phase
 equilibrium data to the UNIFAC equations.

 The symbol "*" indicates that an activity of one was achieved only for a
 solvent volume fraction equal to one.  Thus, the polymer and the solvent
 are predicted to be miscible in all proportions.
                                 54

-------
o
o
X
   600
    500
   400
    300
   200
    100
                                    1          1
                                                i          i
                    r = 0.92

                    Cuni = 0.39 Cexp+ 21.72
                    s   •

        -
       r
i          i
I	I
               200       400       600      800      1000     1200      1400
                                      x Ce«. moles/cm^
                                                               5 74 9-1
       Figure 4. Comparison of solubilities calculated using vapor/liquid UNIFAP, Cuni,
                with experimental solubilities, Cexp.
                                            55

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     1C should be noted that  Che error  in Che UNIFAP resales given here  is most
significant in comparison Co  very small and very  large experimental
solubilities.  In fact, aC extremely large solubilities, an accivity of  one
(which is indicacive of reaching equilibrium and, Chus, defines the solubility)
is achieved only for a solvenC volume fraccion equal Co one.  Thus, at  large
solvent concentrations, UNIFAP predicts a greater solubility than is actually
observed experimentally.  This phenomenon is expected because Che UNIFAP
calculations do noC Cake into account the amount of crosslinking in a polymer,
which may limit the swelling  of the polymer.  Rather than being a limitation,
if the UNIFAP model yields an activity  of one only at a solvent volume  fraction
of one, Chen the solvent and  the polymer may be miscible in all proportions;
that is, only one phase may exist.  Therefore, Che polymer probably would not
be suitable as a protective barrier material for  the solvent.  (Nonetheless,
future modifications of UNIFAP theory should consider the degree of
crosslinking.)

     As discussed above, the  group-interaction parameters are assumed Co be
independent of CemperaCure and independent of Che other groups within the given
molecule.  However, these group-interaction parameters may not be constant, and
determinations of the dependence of Chese parameters on composition, pressure,
and Cemperature need to be made (76).   Furthermore, the data base currently
being used is a table of group-interaction parameters obtained by fitting
experimental vapor/liquid phase-equilibrium data to the UNIFAC equations.
Theoretically, the parameters and equations used for the prediction of  a
vapor/liquid system's behavior at equilibrium also can be used for the
prediction of a liquid/liquid system's  behavior at equilibrium (TT) •  And it
has been shown that group-interaction parameters determined from vapor/liquid
equilibrium data typically give a deviation of approximately 9 moleX (78) when
used to determine equilibrium in liquid/liquid systems.  However, using  a
UNIFAC interaction-parameter  Cable obCained from liquid/liquid equilibrium data
rather than vapor/liquid data would be  expected to yield better results.

     Magnussen, Rasnussen, and Fredenslund (78) presented a data base of UNIFAC
group-interaction parameters  for predicting liquid/liquid equilibrium behavior
in 1981.  These parameters were estimated by fitting experimental liquid/liquid
equilibrium data measured between 283 and 313 K to the UNIFAC equations.  A
data base for the UNIFAP software that  included these group-interaction parame-
ters was set up.  This data base was a  combination of the previously listed
vapor/liquid interaction parameters and the "new" liquid/liquid interaction
parameters.  This combination was necessary because only a limited set  of
reliable experimental phase-equilibrium data exists for liquid/liquid systems.
If only this small liquid/liquid data base were used Co calculate group-
interaction parameters, then  there would be an insufficient set of them.  That
is, prediccions could be made for only  a limited number of polymer/solvent
systems.

     Solubilicies calculated  for several polymer/solvent systems using  this
combined data base and the experimental solubilities, C   , reported by
Paul et al. (48) are compared in Table  12.  Several solubility predictions for
individual systems were in closer agreement using liquid/liquid interaction
parameters than when using vapor/liquid interaction parameters.  F«r example,
Paul experimentally determined a solubility equal to 125 x 10~"5 moles/cm3 for
                                       56

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TABLE 12.  SOLUBILITIES CALCULATED FOR VARIOUS SOLVENTS IN NATURAL
             RUBBER*>b (BASED ON "LIQUID/LIQUID" UNIFAP THEORY)
Solvent
Methanol
Ethanol
Isopropanol
n-Butanol
n-Pencanol
Benzyl alcohol
n-Propanol
Acetone
2-Ethyl-l-butanol
t-Butanol
t-Pentanol
Diethyl carbonate
Methyl ethyl ketone
Ethyl acetate
n-Propyl acetate
n-Hexane
n-Heptane
Tetralin
10 5 x Cun£ moles/cm3
30.8
58.8
110
124
135
101
138
76.3
138
105
197
93.0
101
*
*
*
*
*
105 x C___ moles/cm3
exp ,
4.92
8.59
52.8
125
130
142
146
169
259
414
437
636
713
766
1270
1540
1580
3330
                                 (continued)
                                       57

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                        TABLE 12  (continued)
Solvent 10s x Cuni> moles/cm^
Cyclohexane *
Cyclohexanone *
Toluene *
Tetrachloroethylene 259
Carbon tetrachlaride 128
Trichloroethylene 310
10 5 x C___ moles/cm3
exp ,
3380
3410
3870
4240
5370
5690
aThe UNIFAP calculations of the solubilities at 298 K were  performed using
 group-interaction parameters estimated by  fitting vapor/liquid  and
 liquid/liquid phase-equilibrium data  to  the UNIFAC equations.

bThe symbol "*" indicates  that an activity  of one was achieved only  for  a
 solvent volume fraction equal to one.  Thus, the polymer and the  solvent
 are predicted to be miscible in all proportions.
                                   58

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n-butanol in natural rubber.  Using UNIFAP, solubilities were  found to be
724 x 10~5 moles/cm3 and 93.3 x 10~5 moles/cm3 using liquid/liquid and vapor/
liquid interaction parameters, respectively.  However, using liquid/liquid
parameters to calculate solubilities, several solvents previously determined  Co
be totally miscible with natural rubber (using vapor/liquid parameters) were
predicted to show phase separation (that is, an activity of one was obtained  at
a solvent volume fraction leas than one).  In addition, some of the predicted
solubilities were low by factors as large as 42 in comparison  to experimental
solubilities.  Also, several types of regressions were performed on the
comparison of the calculated values and the experimental values, but no satis-
factory correlation resulted.  Therefore, it is suggested that the vapor/liquid
interaction-parameter data base instead of the liquid/liquid parameter data
base be used to calculate solubilities until more thermodynamically consistent
liquid/liquid equilibrium data are available.

     It should be noted that the selection of functional groups comprising a
compound is sometimes somewhat arbitrary because the set of functional groups
for which interaction parameters are available is limited.  Therefore, a "best
guess" of the functional groups used to construct the compound oust be made.
It may be possible to construct a given compound from two or more "best-guess"
sets of functional groups.  And the two sets of functional groups may yield
very different predicted solubilities using UNIFAP.  For example, using
liquid/liquid interaction parameters and the functional groups 2 CH3, 1 Ct^O,
and 1 CH2COO for diethy1 carbonate generated an activity of one only  for a
solvent volume fraction equal to one; that is, no finite solubility could be
predicted.  However, using liquid/liquid interaction parameters and the func-
tional groups 2 CH,, 1 CH2, 1 CH20, and 1 COO for diethyl carbonate generated a
UNIFAP solubility equal to 93.0 x 10~5 moles/cm3 of unswoilen  polymer.  To
eliminate such "arbitrary" choices of functional groups, the set of functional
groups for which interaction parameters are available needs to be expanded.

     As previously discussed, the UNIFAP model generally provides a good
estimate of solubilities for many polymer/solvent systems.  With  improvements
in estimating the values of the group-interaction parameters and  in
standardizing the process of selection (or definition) of  the  functional groups
comprising the compounds, the reliability of this method will  probably  improve
significantly.

     The UNIFAP software also needs to be extended  to predict  the behavior of
ternary and other larger systems to account for the presence of plasticizers
and various other additives in glove formulations.  (Because the  UNIFAP model
works with only functional groups, the model can describe  the  behavior  of
ternary or larger systems; however, the software to perform calculations for
such systems has not yet been developed.)  Furthermore, the UNIFAP model needs
to take into account the possibility of the polymer being  crosslinked.
Currently, the model is limited to only uncrosslinked polymers.   (As  stated
previously, this limitation accounts for the predictions of total miscibility
given in Table 11 for some of the solvents in crosslinked  natural rubber even
though experimental solubilities less than "infinity" have been reported.)
                                        59

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                                   SECTION 6

               PREDICTIVE MODELS FOR THE DIFFUSION COEFFICIENT
     Predicting Che permeation race of a solvent  through a polymeric membrane
involves solving Che governing mass transport equations.  If  the  simple
diffusion theory presented in Section 3 is applicable,  it is  necessary only
to solve Pick's first and second laws with the appropriate boundary and  initial
conditions.  An important term appearing in Pick's laws is Che diffusion
coefficient.  Numerous theories and correlations  are reported in  the literature
for predicting the diffusion coefficient, D, of various substances under
various conditions (7j).  For solvent diffusion in polymers, however, no  single
theory has yet been universally accepted.  One of the more widely used
approaches to predicting diffusion coefficients is based on free-volume
theory.

     Free-volume theory depends on a concept in which solvent diffusion  is
related to "holes" or "free volume" which exists  throughout the polymer  bulk.
Free volume is defined as the volume in a polymer bulk  not occupied by polymer
molecules themselves.  Because of random molecular notion, individual
free-volume elements are constantly being collapsed and recreated, but the
total free volume does not change as a result of  this motion.  If  it is  assumed
that solvent diffusion occurs due to the random notion  of solvent molecules
through the free volume, then relationships can be derived to predict the
diffusion coefficient.  Also, because the solvent molecules will  occupy  the
free volume as they diffuse into the polymer, free-volume theories can
generally account for concentration-dependent diffusion coefficients.  This
capability is especially important in polymer/solvent systems.

     Two diffusion theories based on free-volume  concepts are discussed  below.
The two do not constitute the entire set of free-volume theories, but are meant
to be representative of them.  The first of the two theories  discussed was
developed by Vrentas and Duda (80-82) and is more complex than the second,
which was developed by Paul (£377  Because of the relative simplicity of  the
Paul model, its application was emphasized in the current work, the goal  of
which was to demonstrate the feasibility of the development of predictive
models.
VRENTAS-DUDA MODEL

     The Vrentas-Duda model can predict diffusion  coefficients  over  a majority
of the possible solvent volume-fraction range.   Because  the model  uses
specific information about the polymer/solvent  system at  small  solvent  volume
fractions, it is especially accurate  at very  small  solvent volume  fractions
(* <0.1).  At very large volume fractions {*  >0.9),  free-volume  concepts  are  no
longer valid and, therefore, the Vrentas-Duda model  is inaccurate.   At
intermediate volume fractions, the model  is able to  predict diffusion
coefficients fairly accurately.
                                       60

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     A major drawback to the Vrentas-Duda model, however,  is  the  large  amount
of experimental data necessary to compute the diffusion coefficient, D.  The
data needed include:

          •    Ratio of the number of surface sites  for the polymer  segments  Co
               the number of surface sites  for the solvent.   (This can  be
               estimated from molecular dimensions.)

          •    Energy interchange parameter.  (This  can be derived from
               enthalpy of dilution data for the mixture.)

          •    Entropy interchange parameter.  (This can be derived  from
               reduced, residual chemical-potential  data near zero polymer
               segment fraction.  The reduced, residual chemical-potential data
               are derived from chemical-potential-versus-teraperature data.
               Polymer segment fraction refers to a  parameter defined using
               specific volume and other characteristic data.)

          •    Viscosity of the solvent as  a function of temperature.

          •    Viscosity of the polymer as  a function of temperature and
               molecular weight.

          •    Specific volume of the solvent and the polymer at  0 K.

          •    Polymer glass-transition temperature  as a function of molecular
               weight.

          •    Diffusion coefficient of the solvent  in the polymer near zero
               solvent concentration.

          •    Solvent and polymer molecular weights.

     A very complex series of calculations  is required to  estimate D using the
Vrentas-Duda model.  Because of the rather  extensive set of required data, some
of which may often be difficult to obtain,  and because of  the complexity of the
calculations, the Vrentas-Duda model was considered  less satisfactory than the
Paul model for initial attempts to predict  D.
PAUL MODEL

     The Paul model (83) for predicting diffusion coefficients  is also based on
free-volume theory.  One advantage of this model over  the Vrentas-Duda
model, however, is the relatively small amount of data needed to calculate  the
diffusion coefficient.  These data include:

          •    Viscosity of the solvent as a function  of temperature.
                                       61

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          •    Density (or specific volume) of  Che  solvent  as  a  function  of
               temperature.

          •    Density (or specific volume) of  the  solvent  and the  polymer at
               the temperature of  interest and  at absolute  zero  (0  K).

          •    Critical volume of  the  solvent (see  Appendix B).

          •    Molecular weight of  the  solvent  and  the  polymer.

          •    Solvent chemical potential as a  function of  solvent  volume
               fraction.   [These data  can be derived from UNIFAP data  (see
               Appendix B)].

Given the data listed above and the following assumptions (which represent a
modification of Paul's model), diffusion coefficients can be calculated.

          •    The average solvent molecular velocity is proportional  to  T1/2.

          •    The free volume is  randomly distributed  among all units  of mass
               in the solution.

          •    The only volume which  is not  freely  distributed is the  molecular
               volume and  the interstitial volume associated with a random
               packing of  the molecules.  (The  molecular volume  and the
               associated  interstitial  volume is  approximated  by the volume  at
               0 K.)

          •    Polymer segments have  a negligible chance of refilling  a void
               space compared to a  solvent molecule.  (This assumption makes
               the Paul model less  accurate  for solvent volume fractions  less
               than 0.1).

          •    The polymer self-diffusion coefficient is negligible.

          •    The excess volume of mixing is zero  at all concentrations.

          •    The polymer is nonglassy and, thus,  above its glass  transition
               temperature.

     A detailed derivation of the modified Paul model is given in Appendix  B.
A computer program written to perform the necessary calculations is also
included  in this appendix.

     The  concentration-dependence  of  the diffusion  coefficient for  benzene
in natural rubber at 298 K, calculated  using the modified Paul model-,  is
illustrated in Figure 5.   Similar data  for n-heptane  in natural  rubber at 298  K
are  shown in Figure 6.  The input  data used  to  perform  these calculations are
given i   Appendix B.  (The UNIFAP  calculations  that were necessary  used the
vapor/liquid data base.)
                                        62

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          0.75
          0.65
          0.55
       J

        — 0.45
        O
        x
       in
        S 0.35
        U
        ui
        O
        (J
        S 0.25
        C0
          0.15
          0.05
         •0.05
                                     APPROXIMATE PREDICTIVE

                                     RANGE:  0.1<4>i <0.9
                       PREDICTED USING

                       THE PAUL MODEL
  s\       \     -
  7 EXPERIMENTAL DATA   •
*S  [HAYES AND PARK (15)1  \

                           \~\
             0.00      0.20       0.40       0.60        0.80       1.00

                         BENZENE VOLUME FRACTION, <*>,         6749-16
Figure 5. Diffusion coefficient of benzene in natural rubber as a function of volume fraction.
                                   63

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             0.80
             0.70
             0.60
N



-  0.50
Q

 x
         1  0.40
         u
         o
         u

         2

         S  0.30
         C/5
            0.20
            0.10
            0.00

               0.00
                                            APPROXIMATE PREDICTIVE

                                            RANGE:  0.1 <<*  <0.9
                                                PREDICTED USING

                                                THE PAUL MODEL
                 0.20        0.40        0.60

                   jvHEPTANE VOLUME FRACTION.
                                                           0.80        1.00


                                                                     4749-1T
Figure 6. Diffusion coefficient of n_-heptane in natural rubber as a function of volume fraction

-------
      Figure  5  also  shows  an  experimental  curve  reported by Hayes and Park (51)
 for benzene  in natural  rubber  at  298  K.   The maximum value of D reported is
 close to  the value  predicted by the modified Paul  model.  However,  the volume
 fraction  at  which the maximum  occurs  is not  in  agreement;  the theoretical curve
•appears  to be  shifted to  the left.  No plausible explanation has yet been
 developed for  this  disagreement.

      D.R. Paul (45)  reported experimental diffusion coefficients for benzene
 and ji-heptane  in natural  rubber of 2.3? x 10"6  cm2/sec and 3.07 x 1C"6 cm2/secf
 respectively,  at 303 K; the  diffusion coefficient  for benzene was determined at
 a volume  fraction of 0.8, and  the diffusion  coefficient for n-heptane was
 determined at  a volume  fraction of 0.7.   The modified Paul model predicts that
 the diffusion  coefficients are 2.72 x 10~8 cm2/sec for benzene and
 2.71  x 10~£  cm2/sec  for n-heptane at  volume  fraction of 0.8 and 0.7, respec-
 tively.   Comparison  of  D?R.  Paul's reported  diffusion coefficients  with those
 calculated using the modified  Paul model  suggests  that the model has only
 limited  applicability.  However,  much more extensive evaluations of the Paul
 model must be  made  before discarding  it  in favor of more sophisticated models.

      The  predicted  D-versus-*. curves in  Figures 5 and 6 exhibit a maximum, a
 phenomenon observed  experimentally by others (5^,j[l ,]J4^8_5).  The curves also
 suggest  that the solvent  diffusion coefficient  approaches  zero as the solvent
 volume fraction approaches one.  Because  free-volume theory requires a consi-
 derable  amount of polymer-polymer contact, this result is  not surprising.
 Below a minimum polymer volume fraction,  the concept of free-volume within a
 polymer  bulk is no  longer valid (Bl). For small polymer volume fractions,
 theories  for dilute  and infinitely dilute polymer concentrations are valid.
 Berry and Fox  (86)  report that the minimum polymer mass fraction, which may be
 related  to volume" fraction,  for which free-volume calculations are acceptable
 is given  by:

                             w2 - 4/(l +  0.2  MW21'2)                      (31)

 where HV. is the molecular weight of  the  polymer.  For natural rubber, the
 polymer molecular weight  is  approximately 68,100, assuming a degree of polymer-
 ization  of 1000.  Thus, the  minimum polymer  mass fraction for which free-volume
 calculations are valid  for natural rubber is about 0.08.

      On  first  examination, use of the modified  Paul model  appears to be a
 limited  approach to predicting diffusion  coefficients.  However, because only
 benzene/natural-rubber  predictions were  checked with D-versus-*  experimental
 data, no  firm  conclusions can  yet be  drawn.   Future work should include
 extensive checking  of  the model against  experimental data.  Because of the
 relatively small amount of experimental  data reported in the literature, the
 thorough  confirmation of  the model will  be difficult without experimentally
'determining  diffusion-coefficient data for a series of solvents in a variety of
 polymers. An  alternative is to use diffusion-coefficient  data calculated with
 the Paul  model and  solubility  data  to calculate permeation-rate-versus-time
                                        65

-------
curves (see Section 7).  By comparing these data to experimental permeation-
rate curves, the Paul model could be indirectly confirmed or refuted.  Criteria
such as defined breakthrough times, lag times, and steady-state permeation
rates calculated from the predicted permeation-rate curves could also be
compared to experimental data to indirectly confirm the modified Paul model.
                                        66

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                                   SECTION 7

                  PREDICTIVE TEST METHODS FOR SOLUBILITY AND
                           THE DIFFUSION COEFFICIENT


     Under Task II of the contract, two potential predictive  test methods  that
could be used to estimate the solubility and diffusion coefficient  of  an
organic liquid in a polymeric glove material were investigated.  Permeation
tests for selected glove/solvent combinations were also conducted  to generate
data that could be used to demonstrate the validity of the  predictive  methods
studied.


SELECTION OF PREDICTIVE TEST METHODS

     As discussed in Section 3 of this report,  the most accurate,  precise, and
reliable method for "predicting" the  permeation rate  of an  organic  liquid
through a glove material as a function of time  is a direct  permeation  test,
such as ASTM Method F739.  However, the apparatus  that  is needed to perform
permeation tests may be costly and conceptually complex;  thus,  such tests  must
usually be performed by well-trained  chemical professionals.   The  major
components of a permeation-test system include  a permeation test cell; a  gas  or
liquid stream or reservoir  to collect  the solvent  after  it  permeates  through
the test sample; a sophisticated, sensitive, and usually  expensive  analytical
instrument for quantifying  the solvent, and  possibly  a temperature-control
system.  For these reasons,  it is desirable  to  develop  alternative  predictive
test methods that are  simpler and  less expensive than direct permeation tests
and that can be performed by personnel with  less technical  training than  is
normally required for  permeation  testing.

     The first step in  the  selection  of alternative methods was a review  of
the existing standard  test  methods  for evaluating  chemical-protective  clothing.
The test methods reviewed were described  in  Section  3 and in Appendix  A of this
report.  As  stated previously,  these  methods can be  divided into two broad
categories:  chemical-resistance  tests and mechanical-properties tests.  The
glove  properties  included  in the  chemical-resistance  category are permeation
resistance,  penetration  resistance, degradation resistance, and swelling  and
solubility.  The  glove properties  included  in the  mechanical-properties
category were  tear resistance and  strength,  cut resistance, puncture
resistance,  abrasion  resistance,  flexibility,  ozone  resistance, and UV
resistance.  However,  no  existing  standard  test method other than the  direct
permeation test was  identified  that  would yield solubilities and diffusion
coefficients of organic  liquids  in  polymeric glove materials.

     A review  of  experimental methods described in the scientific literature,
however,  revealed  that absorption and desorption methods have been developed
and used  extensively  for  many years  by academic and  industrial  researchers to
study  the  diffusion  of permanent  gases and  organic vapors  in polymer  films
(see,  for  example, Reference 50).   In addition, exact analytical solutions of
Fick's laws  that  describe absorption and  desorption have been developed.   On
                                        67

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the basis of this experience, two test methods for evaluation and development
were selected; these were a saturated-vapor absorption/desorption method and a
liquid-immersion absorption/desorption method.  Each of  the methods  is  a
gravimetric procedure that was expected to yield both the solubility, S, and
the diffusion coefficient, D, of a solvent in a polymeric glove  sample  in  a
single experiment.  Although these methods may be more time-consuming than
direct permeation tests and may require relatively sophisticated mathematical
computation, they are experimentally quite simple.  Thus, the analytical
instrumentation required  is relatively inexpensive and unsophisticated, and
personnel with only a minimum of technical training can  conduct  the  tests.


IMMERSION ABSORPTION/DESORPTION TESTS

Description of the Test

     In the immersion test, the weight of an  organic  liquid  absorbed by a
polymer sample totally  immersed in the liquid was measured  as  a  function of
time with an analytical balance.  To begin the test,  the dimensions  of  a
polymeric glove sample were measured, and the sample  was weighed accurately  and
immersed in the organic liquid.  After a  specified  time, the  sample  was removed
from the liquid, the excess  liquid was blotted from the  exposed  surfaces  of  the
glove sample, and the sample was weighed.  The sample was then  reimmersed  in
the liquid and reweighed  following the same  procedure at specified  intervals.
The weighing and reimmersion procedure was repeated until a constant weight  was
attained.  After equilibrium absorption  or  saturation was reached,  the
cumulative desorption of  the organic  chemical from the  glove material was
determined by monitoring  the weight  loss  of  the  saturated sample as  a function
of  time with an analytical balance.

Determination of Solubilities  and  Diffusion  Coefficients

     The solubility,  S, of  the  organic  liquid in the  polymeric  glove material
was determined by dividing  the  equilibrium  weight gain of the glove  sample
during  the  immersion  test by its  unswollen  volume.  The diffusion coefficient,
D,  was  estimated  from the time-dependent  absorption and desorption data by an
approximate method  described  by Crank (52)  and by numerically fitting
Equation 12 to the  entire absorption or  desorption curve.  These two methods
are described briefly below.   (A more extensive  discussion of these
data-reduction techniques was  presented  in  Section 2 of this report.)

Direct  Curve  Fit—

      The absorption or  desorption of a substance into or from a planar sample
(if edge effects  are  negligible)  can be  described by the equation:

               M../M  =  1  - (8/ir2)  7 (2m+l)~2 exp(-D(2m+l)2n2t/£2)         (12)
                 t  
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(effectively, after equilibrium has been reached), D is the diffusion coeffi-
cient (cm2/sec), and I is the thickness of the sheet (cm).  This equation is
applicable to the liquid immersion test if the diffusion is effectively one
dimensional (thin samples) and the diffusion coefficient is concentration
independent.  Experimental time-dependent absorption or desorption data can be
fit, with the aid of a computer, to Equation 12 using nonlinear curve-fitting
techniques to yield the diffusion coefficient.

Initial Rates of Absorption and Desorption—

     As stated previously in Section 3, the common practice (50) in presenting
data from absorption or desorption experiments is to plot  the  ratio M^/M^
against the quantity tl/2/i, where MC  is the cumulative amount of a given
solvent absorbed in or desorbed from a given polymer sample at time t from the
start of the absorption or desorption  experiment.  M^ is th'e equilibrium weight
gain of the polymer in the immersion experiment (related to the solubility of
the liquid in the polymer), and t is the thickness of the  original, unswollen
polymer sample.  The resulting curve is called the reduced absorption or
desorption curve.

     As discussed by Fujita (.50) and by Crank (£2), an apparent diffusion
coefficient can be calculated from the initial slope of  the reduced absorption
or desorption curve according to the equation:

                                 D - (ir/16)l2                              (16)

where D is the apparent diffusion coefficient and I  is  the slope  of  the  initial
(linear) portion of the reduced sorption curve.   In  this  report,  D  and  I  are
denoted D  and Ia, respectively, for an absorption experiment  and Dd  and  Id,
respectively, for a desorption experiment.

Test Samples

     Liquid-immersion  absorption and desorption  tests  were conducted  using five
protective-glove materials and four  solvents.  The  glove  materials  used  were
butyl rubber, natural  rubber, neoprene rubber, nitrile  rubber, and  poly(vinyl
chloride).   All of  the gloves were  unsupported.   The  solvents  used  were
acetone, cyclohexane,  isopropanol,  and toluene.   The  natural-, neoprene-,  and
nitrile-rubber gloves  were manufactured by the  Edmont  Company  and were  obtained
from a  local  supplier.  The  PVC gloves were  manufactured  by the Pioneer
Company, and  the butyl-rubber gloves were  made  by the  Norton  Company;  both of
these  types  of gloves  were obtained  from  the stockroom at  the  Institute.   The
manufacturer,  supplier, and  style  number  of  each glove  used in the  immersion
and desorption  tests are  given  in  Table  13.   The solvents  used in the
measurements were  reagent-grade  chemicals  obtained  from the Institute
stockroom.   Two brands of solvents  were used during  the test  program—
Mallinckrodt (Paris, KY)  and  EH Science  (Cherry  Hill,  NJ).

     The  glove materials  used  in  the tests were  considered representative of a
variety of  commercially available,  unsupported  protective gloves  in common use.
The  chemicals used  in  the tests  were selected because  they are common,
solvents  that encompass several  chemical  functional groups.
                                        69

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TABLE 13.  IDENTIFICATION OF GLOVE MATERIALS USED IN LIQUID-IMMERSION
                        ABSORPTION AND DESORPTION TESTS
   Glove
  Manufacturer
              Nominal
Style No.  thickness, mil
                                                                  Source
Butyl rubber
Poly(vinyl
  chloride)
Neoprene
  rubber
Natural
  rubber
Nitrile
  rubber
Siebe Norton, Inc.
N. Charleston, SC

Pioneer Industrial
  Products Co.
Willard, OH

Edraont
Coshocton, OH
Edraont
Coshocton, OH
Edraont
Coshocton, OH
B-224            25       SRI stockroom
V-5 Quixam        5       SRI stockroom
29-875           19       Southern Safety
                            Products, Inc.
                            Birmingham, AL

26-680           21       Southern Safety
                            Products, Inc.
                            Birmingham, AL

37-165           22       Southern Safety
                            Products, Inc.
                            Birmingham, AL
                                         70

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     Absorption tests were conducted with  each  glove material  with  each
solvent.  However, because of  the low solubility of some  of  the  solvents'in
some of the gloves, the duration of some of  the  immersion tests,  and  the
apparent extraction of some component of the PVC gloves  (as  discussed  in  the
next section), desorption tests were conducted  with only  ten of  the
glove/solvent combinations.  All of the tests were performed as  simply as
possible using common laboratory equipment.  Also, all of the tests were
purposely conducted at ambient temperature and  relative humidity in the
laboratory with no provision for temperature or  humidity  control to keep  the
test requirements as simple as possible.

     Each glove sample tested  was a flat,  circular sample punched from a
protective glove with an arch  punch.  The  diameter of  each sample was  1-3/8 in.
The nominal thickness of each  glove material except PVC  was  approximately
20 mil (0.0508 cm).  The nominal thickness of  the PVC  gloves was 5  mil
(0.0127 cm).  The diameter of  each glove sample  was measured with a stainless
steel ruler calibrated in units of 0.01 in.  (0.0254 cm).   The thickness of each
glove sample was measured with a Starrett  dial  gauge  that was capable  of
measuring accurately a thickness of less than  0.2 mil  (0.000508  cm).   Five
thickness measurements were made uniformly over  the surface  of each glove
sample.  Each reported sample  thickness was  the average  of the five
measurements.

Test Procedure

     In the absorption tests,  each glove sample was weighed  to the  nearest
0.0001 g on a top-loading Sartorius analytical  balance.   The weighed  glove
sample was then immersed  in  approximately  50 mL of  a  given solvent in a
wide-mouth, screw-cap jar.  At timed intervals,  the  sample was removed from the
jar, quickly and  lightly blotted between  two sheets  of ashless filter paper,
placed in a.tared, wide-mouth  weighing bottle,  and weighed on the analytical
balance.  After some weighings, the diameter and thickness of the test sample
were also measured.  The sample was then re immersed  in the solvent  in the jar.
The weighing and  reimmersion at  timed  intervals was  continued until a constant
weight was observed.  For some tests, a constant weight  was  not  attained, even
after three weeks.

     The desorption tests were run with samples that  had reached equilibrium
solubility (that  is, attained  a  constant weight) in  a given solvent.  In the
desorption tests, a solvent-saturated  sample was removed from the solvent,
quickly and lightly blotted  between  two  sheets of ashless filter paper, and
mounted on a tared wire  tripod (constructed  from 18-gauge copper wire) on the
pan of  the analytical balance. The  tripod-mounted  sample was left on the
balance pan for the remainder  of  the desorption test,  and the weight of the
sample  was monitored and  recorded  as  a function of  time  at ambient temperature
and relative humidity.   The  glass  sliding  doors on  the side and  top of the
weighing chamber  on the  balance  were  left  slightly  open.  A low airflow was
maintained through  the chamber by  means  of an  aspirator  pump connected to the
opening  in the  door on  the  top of  the  weighing chamber.
                                        71

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     The raw data collected in Che tests were sample weights  as  a  function of
absorption time or desorption time.  The data.were analyzed as described
above.

Immersion Test Results

     The immersion absorption and desorption tests that were  conducted during
the study are listed in Table 14.  Three main types of  sorption  behavior were
observed:

          •    Each PVC sample lost weight from immersion  in  each  solvent.
               Such weight loss  indicates the extraction of some component of
               the PVC formulation (probably a plaaticizer) by the  solvent.

          •    The neoprene-, nitrile-, butyl-, and natural-rubber  glove
               samples each showed small weight gains over a  long  period
               (several days) with two of the four solvents.

          •    The neoprene-, nitrile-, butyl-, and natural-rubber  glove
               samples each showed large, rapid weight  gains  over  a period of
               hours with the other two of the four solvents.

     Desorption tests were conducted with the eight glove/solvent  com-
binations that exhibited large,  rapid solvent uptake by the glove  sample
during the immersion tests and with two glove/solvent combinations  that
exhibited small, slow uptake—natural-rubber/acetone and neoprene-rubber/
acetone.

     The data obtained in the liquid-immersion absorption  tests  are summarized
in Table 15.  The table includes  for each test the average  initial  dimensions
of each glove, the range of test  conditions (temperature and  relative
humidity), the average initial weight of each glove, and the  average weight
gain at equilibrium saturation for each glove/solvent combination.  A summary
of these data for each glove/solvent absorption test conducted are  presented in
Table 26 in Appendix D.

     The time-dependent absorption and desorption data  for  each  glove/solvent
combination tested are given in  the data tables included as a separate volume
with this report.  Absorption and desorption curves for selected tests are
plotted as reduced sorption curves and given in Appendix D  (see  Figures  11
through 18).

Solubilities—

     According to the principles  on which the immersion test  is  based, the
weight gain of the glove sample  at long times (that is, at  equilibrium)
should yield the solubility of the solvent in the polymer.  Estimated
solubilities (in g/cm3 of unsvollen polymer) obtained in this work are included
in Table 16.  A comparison of the average solubilities  (in moles/cm3)
determined in this work for the  four solvents used versus  solubilities
calculated from the data of Paul  et al. (48) is given below for  natural
rubber:
                                       72

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TABLE 14.  SUMMARY OF THE TYPES OF LIQUID-IMMERSION TESTS CONDUCTED
Glove
Butyl rubber



Natural rubber



Neoprene rubber



Nitrile rubber



Poly(vinyl chloride)



Solvent
Acetone
Cyclohexane
Isopropanol
Toluene
Acetone
Cyc lohexane
Isopropanol
Toluene
Acetone
Cyc lohexane
Isopropanol
Toluene
Acetone
Cyclohexane
Isopropanol
Toluene
Acetone
Cyclohexane
Isopropanol
Toluene
Absorption
X
X
X
X
X
X
X
X
X
X
X
X
X
X
X
X
X
X
X
X
Desorption3

X

X
X
X

X
X
X

X
X


X




  aDesorption tests were conducted for solvent/glove  combinations  that
   achieved equilibrium during absorption tests.
                                     73

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              TABLE  15. SUMMARY  OF  AVERAGE  LIQUID-IMMERSION ABSORPTION TEST DATA
Glove
Butyl rubber



Natural rubber



Neoprene rubber



Nitrite rubber



Poly(v inyl
chloride)


Initial
Solvent diameter, cm.
Acetone
Cyclohexane
Isopropanol
Toluene
Acetone
Cyclohexane
laopropanol
Toluene
Acetone
Cyclohexane
laopropanol
Toluene
Acetone
Cyclohexane3
Isopropanol3
Toluene
Acetone
Cyclohexane
Isopropanol
Toluene
3.53
3.53
3.53
3.56
3.56
3.56
3.56
3.56
3.56
3.56
3.56
3.56
3.56
3.56
3.53
3.56
3.61
3.56
3.56
3.56
Init Lai
thickness, cm.
0.0597
0.0582
0.0592
0.0587
0.0632
0.0660
0.0655
0.0653
0.0478
0.0480
0.0483
0.0485
0.0541
0.0566
0.0554
0.0559
0.0160
0.0145
0.0218
0.0147
Init ial
weight, g
0.6604
0.6455
0.6555
0.6484
0.6323
0.6612
0.6486
0.6478
0.6367
0.6405
0.64S8
0.6418
0.5635
0.5981
0.5890
0.5932
0.1930
0.1718
0.2187
0.1791
Maximum Temperature
weight gain, g range, *F
0.0268
1.5491
0.0024
1.0264
0.0958
1.7633
0.0314
2.0761
0.1912
0.4176
0.0274
1 . 5090
0.9707
0.0548
0.1285
0.7904
-0.0529
-0.0510
-0.0635
-0.0273
70-79
67-78
70-79
67-78
69-79
69-78
69-79
68-78
70-79
69-78
69-79
68-78
69-78
70-79
70-79
69-78
70-72
70-72
70-72
70-72
R.H.
range, Z
63-86
55-75
63-86
55-74
51-88
51-80
51-86
51-80
52-87
52-73
52-86
52-73
53-74
51-86
51-86
53-72
51-80
51-80
51-80
51-80
"Some  <»f  the  nitrile-rubber samples immersed in these solvents continued to gain  weight  even after 530 hr.

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           TABLE  16.   AVERAGE SOLUBILITIES AND DIFFUSION COEFFICIENTS  CALCULATED  FROM
                             LIQUID-IMMERSION ABSORPTION AND DESORPTION TEST DATA
Glove
Butyl rubber



Natural rubber



Neoprene rubber



Nitrile rubber

Solvent
Acetone
Cyclohexane
Isopropanol
Toluene
Acetone
Cyclohexane
Isopropanol
Toluene
Acetone
Cyclohexane
Isopropanol
Toluene
Acetone
Cyclohexane
Isopropanol"
Toluene
Solubility,
g/cm3
0.0457
2.7261
0.0041
1.7691
0.1527
2.6877
0.0489
3.2067
0.4044
0.8781
0.0574
3.1388
1.8204
0.0982
0.2340
1.4377
Diffusion coef f icient ,a> >c cm2 /sec
10fi x Da
0.0056
-0.15
0.0071
0.38
0.40
0.25
0.042
0.53
0.25
0.037
0.0013
0.35
0.42
0.00025
0.00035
0.059
10b x Dd
_.
0.33
—
0.28
0.38
0.49
—
0.26
0.26
0.054
—
0.20
0.45
0.20
10b x Da
0.0050
0.18
0.00043
0.32
0.69
0.26
0.044
0.58
0.52
0.040
0.00014
0.41
0.44
0.00030
0.00071
0.098
10b x D^
_ _
0.28
— —
0.21
0.45
0.48
— —
0.29
0.31
0.043
— —
0.21
0.48
0.15
"The term D  is the  diffusion coefficient  estimated  from the  initial  slope  of  the  reduced absorption curve.
 D, is the diffusion coefficient  estimated from the  initial  slope  of  the  reduced desorption curve.  All data
 points (including (0,0)1  for which Mt/M<>) <0.6 were  used in  these  calculations;  if no data points meeting this
 criterion except  (0,0) existed,  then the  calculation was based  on (0,0)  and  the  first data point above
bThe term Da is the diffusion coefficient  calculated from a curve-fit  of data  obtained in an absorption test.
 D! is the diffusion coefficient calculated from a curve-fit of data obtained  in a desorption test.
  a

cThe symbol " — " means that the experiment indicated was not conducted.

''some of the nitr ile-rubber samples immersed in these solvents  continued to  gain weight even after 530 hr.

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        Solvent                    Paul et  al.     Southern  Research

     Acetone                       0.00169         0.00263
     Cyclohexane                   0.0338          0.0319
     Isopropanol                   0.000528       0.000814
     Toluene                       0.0387          0.0348

It may be seen that the  solubilities determined  in  this work agree well  with
Paul's for toluene  and cyclohexane,  for which  high  solubilities were obtained.
There is less agreement  in  the  two data sets  for  acetone  and isopropanol;
however, these solvents  are  not  very soluble  in  natural rubber.

     It should be emphasized  that  it is important to obtain time-dependent
weight-gain data  in immersion tests  that  are  conducted to  determine the
solubilities of organic  liquids  in polymeric  glove  materials.   Time-dependent
data are necessary  to establish  the  attainment of equilibrium weight gain.
Although in many  cases a true solubility may  be  obtained by simply immersing a
glove sample in an  organic  liquid  for  a fixed  period of time (24 hr, for
example) and then weighing  the  sample, this  single-data-point  technique  may
often give incorrect results  if  equilibrium weight  gain has not been attained.
In the immersion  tests conducted in  this  study,  for example, the weights of
some of the nitrile samples  immersed in cyclohexane and some of the nitrile
samples immersed  in isopropanol  were still increasing at  the time the final
weights were measured (530  hr).   Thus, an  equilibrium weight gain was not
established, and  a  true  solubility could  not  be  determined.

     The major problem in determining  the  solubility of an organic liquid  in an
unsupported, polymeric glove  material  (and the major potential problem in the
entire immersion  test method) is the possible  extraction  of components of tha»
glove formulation by the immersion solvent.   The extraction of components can
often be deduced  from the liquid-immersion absorption data; for example, the
PVC samples in this work that were immersed  in solvents  lost weight.  However,
it is conceivable that simultaneous  solvent  absorption and component extraction
could occur during  immersion and,  thus,  that  the net weight gain of the glove
sample may not be entirely  due  to  the  absorption of solvent by the glove.
Hence, some caution must be used in  interpreting immersion  test results.  (It
should be noted,  however, that  if  the  solvent extracts a  component of the glove
formulation and a weight loss is observed, the glove will probably not provide
the required chemical resistance.)

Diffusion Coefficients—

     Solvent diffusion coefficients  estimated from the immersion data by the
two methods described above [that is,  from the initial slope of the reduced
sorption curve  (Equation 16,  Section 7)  or by a  fit of the  reduced sorption
curve to Equation 12, Section 7] are listed  in Table 16 for each glove/solvent
combination.  There is  little data in  the literature that contains
experimental values for  diffusion coefficients of organic liquids  in polymeric
glove materials with which  to compare  the diffusion coefficients determined  in
the  immersion tests.  For the two glove/solvent  combinations for which we found
literature values of the diffusion coefficient (natural-rubber/cyclphexane  and
natural-rubber/toluene), the diffusion coefficients estimated  from the immer-
sion absorption  and desorption test  data  are approximately  an  order of magni-
tude smaller  than the values reported  in the literature.   However, the diffu-

                                        76

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sion coefficients calculated  for each glove/solvent  combination  with  each
method of estimation are, in  general, self-consistent  and  in  close  agreement
with apparent diffusion coefficients calculated  from the direct  permeation
tests discussed in this section.

     It should be emphasized  that  the values  of  the  diffusion coefficients
determined  from the  immersion absorption  and  desorption data  are based  on
approximations that  contain several  simplifying  assumptions.   In the  curve-fit
method, in  particular, a concentration-independent diffusion  coefficient  is
assumed.  From the frequent lack of  coincidence  of the absorption and
desorption  curves shown in the  representative figures  in Appendix D,  however,
the diffusion coefficients of the  solvents  in most of  the  gloves tested appear
to be concentration  dependent.  Although  more sophisticated  treatments  of  the
absorption  and desorption data  are possible,  it  was  decided  to first  explore
the potential of simple data-reduction  methods that  would  yield  parameters
useful for  predictive  purposes.


VAPOR ABSORPTION TESTS

     Liquid-immersion  absorption  tests  cannot be readily  automated; thus,
they are  labor intensive  although  they  are  very simple to  conduct.  In an
attempt to  avoid this  problem,  a  brief  investigation of a  vapor  absorption/
desorption  procedure,  which could  easily  be automated, was conducted.
Theoretically, at atmospheric pressure, the process  of solvent diffusion into  a
polymer in  contact with a liquid  is  the same as for  a polymer in contact with  a
saturated vapor.  Therefore,  the  saturated-vapor test and  the immersion test
should provide the same data; however,  differences in test results may be
observed  for  some liquid/polymer  systems.  For example^ a  liquid may leach
additives  from a polymer  to  a greater  extent than does" vapor.

Description of the Test

     In the vapor absorption  test  described below, a thin polymeric glove
sample was  suspended from a  sensitive  quartz spring, which was calibrated for
extension versus load. The  sample and  spring were enclosed  in a chamber
containing  an organic  vapor maintained  at the vapor  pressure of the liquid at
"ambient"  temperature. A cathetometer  was used to observe the spring  extension
as a function of time  until  a constant  extension was observed.  The data
obtained  were then converted  to weight  gain versus time or,  in other words,
cumulative  absorption  versus  time.  Time-dependent vapor absorption and
desorption  data  are  treated  and analyzed in  the same manner  as for the
immersion tests  described above.

Test Apparatus  and Procedure

     The  same glove  materials and solvents that were used in the immersion
tests  were  scheduled for  use  in saturated-vapor absorption and desorption
tests.  As  discussed below,  however, because of the long time required to
conduct  the vapor  absorption test, only a single absorption  test was conducted
with a single glove/solvent  combination (nitrile rubber/acetone) during the
test  program.  (No  desorption tests were conducted.)
                                        77

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     The test apparatus used in  the vapor absorption  test  is  shown  in  Figure  7.
The apparatus consisted of a calibrated  fused-quartz  spring (Ruska  Instrument
Corporation, Houston, TX) suspended from a hook on  the  inside upper end of  a
custom-fabricated jacketed condenser (M.B. Watson Scientific  Glassblowing,
Tuscaloosa, AL), a round-bottom  flask  that contained  approximately  25  mL  of
acetone, a water bath to prevent rapid changes in the temperature of the
solvent, and a  cathetometer to monitor the extension  or compression of the
quartz spring.

     The quartz spring used in the vapor absorption test was  precalibrated  by
the manufacturer to give a spring extension of 1 mm for a  1 mg  load.   The maxi-
mum extension of the spring was  500 mm.  Prior to the vapor absorption test,
the spring was  calibrated over a range of 10  to 500 mm  with a set of precision
milligram weights (Bitronics, Inc., Bethlehem, PA).  The extension  of  the
spring was measured with a sensitive cathetometer graduated in  divisions  of
0.1 mm.  The cathetometer was focused  on a "crosshair"  reference mark  near  the
end of the spring.

     For the test conducted, a 1-cm by l-cm square  sample  was cut from a
nitrile-rubber  glove, and a small hole was punched  through the  sample  near  the
center of one of the edges.  The test  sample  was mounted on a hook  at  the
bottom of the quartz spring through the  hole  in the sample.   The vertical
position of the reference mark on the quartz  spring was measured through  the
cathetometer.   About 25 mL of acetone was poured into the  100-mL round bottom
flask, and it was connected to the bottom of  the condenser.   The flask was
immersed into the water bath as  shown  in Figure 7.  The extension of the  quartz
spring as the glove sample absorbed acetone vapor was then monitored with the
cathetometer as a function of time over  a ten-day period.

Vapor Absorption Test Results

     By the time the test method was selected and the required  appparatus was
designed, fabricated, assembled, and calibrated, little time  remained  under
the contract for testing.  As stated previously, because of the long duration
required (approximately two weeks) for a single vapor absorption test, only one
such test with  a single glove/solvent  combination—nitrile rubber with
acetone—was completed.  The data obtained in this  test are given  in Table  17.

     As the data in the table indicate,  the measured  absorption of  acetone  by
the nitrile-rubber sample fluctuated as  a function  of time.   Consequently,  no
useful time-dependent absorption data  were obtained in  the test.

     We attribute the fluctuations obtained in the  vapor absorption test
primarily to the lack of temperature control  of the test apparatus. With the
addition to the apparatus of a constant-temperature bath to control the
temperature of  the reservoir of  liquid solvent and  the  circulation  of  the water
from the bath through the outer  jacket of the condenser, reliable  time-
dependent absorption data should be obtained.

     The vapor  sorption method is experimentally more complex and  time-
consuming than  the liquid-immersion absorption/desorption  test  method  described
above, and the  vapor sorption method is  applicable  only to volatile solvents.
                                        78

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                                   GLASS STOPPER WITH HOOK
    CALIBRATED
    QUARTZ
    SPRING
   ALIGNMENT
   "CROSS HAIR-
   ON QUARTZ
   SPRING
     JACKETED
     REFLUX
     CONDENSER
 ROUND-
 BOTTOM
 FLASK
SOLVENT
GLOVE SAMPLE
(1 cm x 1 cm)
           CATHETOMETER.
                                                 WATER BATH
                                                                        6749-15
       Figure 7.  Diagram of vapor sorption apparatus (not drawn to scale).

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  TABLE 17.  VAPOR ABSORPTION DATA OBTAINED
             FOR NITRILE RUBBER AND ACETONE8
Time, min          Weight, mg          Weight  gain, mg
0
77
147
197
327
1,234
1,457
1,711
2,681
2,897
3,227
4,484
5,777
9,887
10,397
11,354
11,848
12,763
13,287
14,253
56.55
55.90
55.90
56.41
58.45
83.13
82.79
83.57
97.47
93.39
89.50
94.89
100.43
105.38
95.18
103.98
101.40
107.91
100.82
107.52
0
-0.65
-0.65
-0.14
1.90
26.58
26.24
27.02
40.92
36.84
32.95
38.34
43.88
48.83
38.63
47.43
44.85
51.36
44.27
50.97
     aThe initial dimensions of the test  sample were
     1 cm x 1 cm x 0.0508 cm.  The temperature was  in
     the range of 21 to 28 °C during the  test.
                              80

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Thus, it does not appear to be a widely applicable alternative to permeation
testing.


PERMEATION TEST DATA

     Direct permeation tests were conducted with each of the glove materials
(except PVC) and each of the organic solvents (except isopropanol) to generate
permeation-rate-versus-time data to compare with predictions made from the
results of the immersion and vapor sorption tests.  Direct permeation tests
were conducted because sufficient quality time-dependent permeation data  to
compare with the gravimetric methods proposed do not exist in the literature.

     The direct permeation tests were conducted according to the standard ASTM
Method F739.  The tests were conducted in a 1-in. "ASTM permeation test cell"
from Pesce Lab Sales (Kennett Square, PA).  All tests were conducted at room
temperature using dry nitrogen gas as the collection fluid.  Each permeation
test was conducted in an "open-loop" mode; that is, fresh nitrogen was
continually swept at a flow rate of 100 mL/min across the unchallenged surface
of the test sample.  At timed intervals, an aliquot of the gas stream from the
test cell was sampled with a gas-tight syringe.  The sampled portion of the gas
stream in the syringe was then injected directly into a Hewlett-Packard Model
5790 gas chromatograph for the detection and quantitation of the solvent  in the
gas stream.

     In each permeation test, the test cell was immersed in a water bath
containing tap water at room temperature.  The temperature of the water bath
was not controlled, but its temperature remained constant at approximately
20 ± I "C during each test.  The temperature of the nitrogen gas stream that
was swept through the collection side of the test cell was preequilibrated to
the temperature of the water bath by flowing it through a 50-ft coil of
l/4-in.-OD copper tubing immersed in the water bath.

     Prior to each permeation test, the gas chromatograph was calibrated  for
the organic challenge liquid to be used in the permeation test by injecting
dilute solutions of the organic liquid in a suitable solvent into the gas
chromatograph.  A standard calibration curve that covered the entire working
range of the method was determined with five concentrations of standard solu-
tions.

     The test data generated in each open-loop permeation test were instantane-
ous permeation rate as a function of time.  Average breakthrough times and
steady-state permeation rates obtained in these direct permeation tests are
given in Table 18.  This table also includes diffusion coefficients and
solubilities obtained from curve fits of the permeation-rate data to
Equation 3 (Section 3).
                                        81

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                                TABLE 18.  SUMMARY OF AVERAGE PERMEATION-TEST DATA
00
to
Glove
Butyl rubber
Natural rubber
Neoprene rubber
Nitrite rubber
Solvent
Acetone
Cyclohexane
Toluene
Acetone
Cyclohexane
Isopropanol
Toluene
Acetone
Cyclohexane
Toluene
Acetone
Cyclohexane
Toluene
Thickness ,
cm
0.0615
0.0600
0.0589
0.0616
0.0619
0.0617
0.0617
0 .0480
0.0460
0.0478
0.0589
0.0582
0.0574
Steady-state
Breakthrough permeation rate.
time,8 tnin pg/(cm2«min)
>1115
55
24
17
19
>150, <1400
10
22
170
12
10
>1350
52
<0.47
437
396
34
572
1
782
151
26
642
962
<0.12
210
Calculated
dif fusion
coefficient ,
cm2/sec, 106 x D
0.085
0.19
0.17
0.22
0.0012
0.58
0.15
0.014
0.26
0.39
0.066
Calculated
solubility .
g/cm3
7.6
2.9
0.33
3.2
2.6
1.5
1.1
7.0
2.1
3.0
4.3
           aThe minimum permeation  rates  that  could  be  detected were:  0.47  ug/(cm2>nun)  for  acetone,
            0.11  ug/(cm2.min)  for toluene,  and  0.12  Ug/(cm2.min) for  Cyclohexane.


           bThe symbol  "--"  means that  no diffusion  coefficient or  solubility  could  be  calculated.

-------
                                   SECTION 8

                             PREDICTIVE ALGORITHMS


     The purpose of the contract was to develop models and test methods  that
would allow the prediction of the protection from permeation afforded by
polymeric gloves in contact with liquid organic chemicals.  The previous
sections of this report have included a summary of the results of  a  literature
survey of topics relevant to this purpose and descriptions of  the  theory  and
test methods developed to make the required predictions.

     In this section of the report, the key results presented  previously  are
used to construct or suggest algorithms or approaches  to  the evaluation  of
polymeric gloves proposed as protective clothing for use  with  specific
chemicals.


SPECIFIC ALGORITHM REQUIREMENTS

     Among the objectives of this work were that the model or  predictive
algorithms developed must be relatively simple; must not  require data other
than that provided in the PMN submittal,  in handbooks  or  in data bases,  or
obtained in simple, reproducible tests; and'tnust be applicable to  a  wide
variety of chemical substances and polymeric gloves.   In  addition, the
algorithms must be capable of predicting  such quantities  as maximum  (or
steady-state) permeation rates; breakthrough times; 1-hr  and 8-hr  cumulative
exposures; and permeation rates versus time.  It must  also be  able to place  the
protective glove into one of a series of  qualitative groupings such  as  the
following:

          •    The glove will protect  against dermal contact with  the  chemical
               in question for a limited  period  (1 hr)  or an extended period
                (full work shift).

          •    The glove will not  protect against  dermal  contact  even  for a
                limited  period.

          •    Experimental data are  needed before  a prediction  can  be  made.


APPROACH TO THE  ALGORITHM

     As stated previously in this  report, the  approach used  in the development
of  the predictive ability outlined above  was  to  base  predictions  as  much as
possible on the  theory  of diffusion  in  polymers.   Thus,  this  work emphasized
the development  of models and  simple  test methods  that allow  the  prediction  or
determination  of diffusion coefficients  and  solubilities.  Given  these
fundamental parameters,  any of  the required  predictive calculations  can be
completed  using,  for  example,  diffusion  equations  such as those  presented in
Section 3.
                                        83

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     1C should be noted that the predictive algorithms given  in  this  section of
the report are based only on simple diffusion theory, and this will limit  their
usefulness.  However, because the development of any predictive  algorithm  is a
stepwise process, it is logical to begin with the simplest approach.  The
predictive*algorithms developed can easily be improved in sophistication under
subsequent research efforts conducted in conjunction with confirming  the
applicability of the algorithms.  That is, predictions should be made and
compared with available experimental data, and the results should be  studied to
determine needed improvements to the model.  The model (that  is, the
algorithms) would then be modified, and new predictions would be made and
compared to the experimental data, and so forth.

     Another point to be made is that the algorithms described here are not
"user friendly."  That is, for example, the suggested input may  not be in  a
form that would be easily handled by someone processing the PUN  submittal.
Also, the only "software" that currently exists (except for very simple
programs) is described in the various sections of this report.   The development
of software that would be easy for an "untrained" person to use would not  be
particularly difficult, but it would be time-consuming.
INPUT TO THE ALGORITHM

     The input to the predictive algorithm includes data  provided  in  the  PHN
submittal as well as data that may be readily  available from handbooks  or
data bases.  In addition, the parameters  (and  associated  quantitative values)
used to evaluate the degree of protection must be  specified.  Examples  of input
data required by the UNIFAP program  (which is  a  part of the predictive
algorithm) to calculate solubilities are:

          •    The temperature of interest.

          •    The structure, molecular weight,  and density of  the liquid
               organic chemical.

          •    The structure, molecular weight,  density,  and degree of
               polymerization of the polymeric glove material.

Other input data* may include those  required to  calculate diffusion
coefficients using the modified Paul model (which  is also incorporated  in the
predictive algorithm):

          •    Viscosity of the solvent as a function  of  temperature.

          •    Density (or specific  volume) of the solvent as a function  of
               temperature.
*The list of input data given  in  Section 6  for  the  Paul model  included  other
 parameters that may be determined within software  and, thus,  be  transparent  to
 the user.
                                       84

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          •    Density (or specific volume) of the solvent and the polymer at
               the temperature of interest.

          •    The molecular weights of the solvent and the polymer.

Still additional input data may be those obtained in simple immersion tests
such as those described in Section 7:

          •    Initial dimensions of the polymeric glove samples (thickness and
               area) for each test.

          •    Temperatures at which experiments were conducted.

          •    Weight-change-versus-time data for each immersion test.

For the sake of completeness, other data may be input to the predictive
algorithm.  These may include, for example, the manufacturer or vendor catalog
number and other miscellaneous information describing the polymeric glove.

     Even with all of the input data listed above, it will not be possible for
the predictive algorithm to assess the protection afforded by a given polymeric
glove unless some quantitative criteria are specified.  These criteria may
include one or more of the following:

          •    The maximum permeation rate per unit area allowed within a
               specified period (1 hr, 8 hr, and so forth).

          •    The maximum cumulative exposure per unit area allowed within a
               specified period (1 hr, 8 hr, and so forth).

          •    The minimum breakthrough time allowed (based on a specified
               analytical sensitivity to simulate open-lo'op or closed-loop
               permeation tests of a known area of sample).

          •    Maximum permeation-rate ranges to simulate manufacturers'
               qualitative recommendations (for example, 0.15 to
               1.5  mg/(m2«aec) to be equivalent to Edmont's permeation rating
               of "excellent").

          •    Maximum percentage weight gain within a fixed period (for
               example, 2 hr) to simulate a degradation test.

The protection criteria specified by the user of the predictive algorithm
should be based, if possible, on well-established safety criteria, such as
those published by NIOSH, the American Conference of Government Industrial
Hygienists, or EPA.
                                       85

-------
CALCULATIONS OF FUNDAMENTAL PARAMETERS

     After data of the type listed above are input to the predictive algorithm,
it will calculate the fundamental parameters needed to make the desired
predictions—parameters such as solubility (using UNIFAP), solubility (using
the 24-hr immersion-test data), the solvent diffusion coefficient versus
solvent volume fraction (using the modified Paul model), or the apparent
solvent diffusion coefficient (using immersion-test data).  The approach used
by the predictive algorithm will depend on the data input to it.  For example,
if only immersion-test data are provided in the PMN submittal (and the glove
material is not identified), then the solubility and the diffusion coefficient
cannot be calculated using the UNIFAP or Paul models, respectively.  Also, only
an apparent diffusion coefficient can be determined from the immersion-test
data using the technique recommended in this report; that is, concentration-
dependent diffusion cannot be modeled.  It should be noted, however, that the
apparent diffusion coefficient calculated from immersion-test data for systems
exhibiting concentration-dependent diffusion coefficients may often be
satisfactory for predictive purposes.

     Results of the calculation of diffusion coefficients and solubilities
using the predictive models and test methods developed in this work were
presented in previous tables (11 and 16) and figures (4, 5, and 6) in this
report.  As stated above, the specific calculations performed by  the predictive
algorithms will depend on the data input.  If insufficient information is input
to perform the required calculations, then the predictive algorithm will inform
the PMN submittal reviewer that additional information, is required; the
algorithm could be designed to specify the type of missing data that must be
supplied.


CALCULATION OF CUMULATIVE PERMEATION OR PERMEATION RATE

     After the algorithm has yielded the solvent solubility and its apparent
diffusion coefficient, these data may then be used to calculate the permeation
rate versus time (using, for example, Equation 3) and the cumulative
permeation versus time (using, for example, Equation 4).  If there is
sufficient data for the predictive algorithm to yield the solvent diffusion
coefficient as a function of solvent volume fraction (as  well as  to yield the
solubility), then numerical methods  similar to the example given  in Appendix  C
must be used to determine permeation rate and cumulative  permeation as a
function of time from Fick's laws, given the initial and  boundary conditions
(see Section 3).  An example of the  calculation of permeation rate versus time
using a numerical method as well as  a computer program for the  calculation  is
also given in Appendix C.  (This simple program will not  handle concentration-
dependent diffusion coefficients.)

     If all of the input data listed above were available, then the
calculation of J versus t and Q versus t could be performed using several
combinations of fundamental parameters and methods.  The  most likely
combinations are:
                                       86

-------
          •    UNIFAP solubility, Paul diffusion coefficients, numerical
               analysis.

          •    Immersion solubility, Paul diffusion coefficients, numerical
               analysis.

          •    UNIFAP solubility, immersion diffusion coefficient, analytical
               solutions.

          •    Immersion solubility, immersion diffusion coefficient,
               analytical solutions.

It would be preferable to perform calculations for all of the combinations
listed above or for as many combinations as possible.  Any estimate of  the
protection afforded by a recommended polymeric glove could then be
"safe-sided."  That is, a predicted failure to meet the specified protection
criteria for any combination of input data would result in the rejection of
the polymeric gloves recommended in the PMN submittal.  It may obviously be
desirable to weight evaluations in favor of experimental data, such as
immersion-test data.
EVALUATION OF PROTECTION CRITERIA

     After the calculation of permeation rate  (J) and cumulative permeation  (Q)
as a function of time, these data may be used  to determine whether  the
protection criteria input to the algorithm have been met  (that  is,  whether
the polymeric glove will provide the desired protection).  For  example,  if the
criteria specified that the permeation rate per unit area shall not exceed
1-mg/(m2
-------
TABLE 19.  COMPARISON OF SOLUBILITIES CALCULATED USING THE UNIFAP
           MODEL OR OBTAINED EXPERIMENTALLY WITH MANUFACTURERS'
           CHEMICAL-RESISTANCE GUIDELINES3)b
Polymer
Natural
rubber





















Butyl
rubber


Neoprene
rubber


Degradation
Solvent 10s x Cuni 10s x Cexp rating0
Mechanol
Ethanol
Isopropanol
n-Butanol
£-Pentanol
Benzyl alcohol
ri-Propanol
Acetone
2-Ethyl-l-butanol
£-Butanol
t^Pentanol
Diethyl carbonate
Methyl ethyl ketone
Ethyl acetate
n-Propyl acetate
n-Hexane
ii-Heptane
Tetralin
Cyclohexane
Cyelohexanone
Toluene
Tetrachloroethylene
Carbon tetrachloride
Trichloroethylene
Acetone
Cyclohexane
Isopropanol
Toluene
Acetone
Cyclohexane
Isopropanol
Toluene
26.5
42.4
81.6
93.3
103
27.5
100
IBS
114
81.5
96.9
202
271
411
581
*e
*
*
*
*
*
*
*
*
322
*
29.7
*
*
*
69.8
—
4.92
8.59
52.8 (81.4)
125
130
142
146
169 (263)
259
414
437
636
713
766
1270
1540
1580
3330
3380 (3190)
3410
3870 (3480)
4240
5370
5690
(78.7)
(3240)
(6.8)
(1920)
(696)
(1040)
(95.5)
(3410)
E
E
E
E
NA
NA
E
E
NA
NA
NA
NA
G
C
F
NR
NA
NA
NA
NA
NR
NA
NR
NA
NA
NA
NA
NA
G
NA
E
NR
Permeation
racing*1
E, NN
VG, NN
E, NN
G
NA
NA
VG
F, NN
NA
NA
NA
NA
P. NN
C, NN
F, NN
NA
NN
NA
NN
NA
NN
NN
NN
NN
NA
RR
NA
NA
F, NN
NN
E
NN
                                  (continued)
                                       88

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                       TABLE  19  (continued)
Polymer
Nitrile
rubber


Poly(vinyl
chloride)


Solvent
Acetone
Cyclohexane
Isopropanol
Toluene
Acetone
Cyclohexane
Isopropanol
Toluene
lo5,cunl .....^
(3130)
(117)
(389)
(1560)
,8 (..)»
* (— )
49.5 {— >
* (-)
Degradation
? rating0
NR
NA
E
F
NR
NA
G
NR
Permeation
rating"
NN
RR
E, RR
F, NN
NN
NN
E
NN
aThe units of the calculated equilibrium solubilities,  CUR^,  and  the
 experimental solubilities, Cex_, are moles/cm^.

The values in parentheses under the column  labeled  "10s  x  Cex  "  were
 determined during immersion tests conducted under the  current  effort;  the
 other data under this heading were calculated  from  data  reported in
 Reference 48.

cThese are Edmont degradation ratings; E means  excellent; G means good;  F
 means fair; NR means not recommended; NA means not  available.

 For the Edmont ratings, E means excellent (permeation  rate <0.15 mg/m2/sec);
 VG means very good (permeation rate <1.5 mg/m2/aec); G means good
 (permeation rate <15 mg/m2/sec); F means  fair  (permeation  rate
 <150 mg/m2/sec); P means poor (permeation race <1500 mg/m^/sec); ND means
 none detected.  The double letters refer  to ratings used by  ADL  (4_);  RR
 (recommended) means that a large amount of  test  data indicates exTellent
 chemical resistance; NN (not recommended) means  that a large amount of test
 data indicates poor chemical resistance; NA means rating not available (or
 conflicting ratings are reported by ADL).

eThe symbol "*" in this column means that an activity of  one  was  achieved
 only for a solvent volume fraction equal to one.  (That  is,  the  solvent  and
 the polymer are predicted to be miscible  in all  proportions.)

 The symbol "--" in this column means that no interaction parameters were
 available for the polymer/solvent pair indicated.
     UNIFAP solubilities for solvents in poly(vinyl  chloride)  were  based  on
 the polymer structure alone; the presence of plasticizer was  not
 considered.

 The symbol "—" in this column means that weight  loss  was  observed  in  the
 immersion tests with poly(vinyl chloride).                    ~
                                    89

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     If only "steady-state" or 24-hr solubilities were available from immersion
tests, similar correlations between large solubilities and manufacturers'
recommendations would be expected.  Experimental (or immersion-test
solubilities) are also shown in Table 19.  Again, there is generally a good
correlation between manufacturers' recommendations and experimental
solubilities.
OUTPUT OR EVALUATION REPORT

     The output of the predictive algorithm could include:

          •    A reiteration of all of the data input to the algorithm.

          •    A list of the methods used to calculate solubility and
               diffusivity data.

          •    A pass/fail report for all protection criteria.

          •    Recommendations such as the suitability of the glove for a 1-hr
               period or for extended periods.

          •    Recommendations for the submittal of more data on which to base
               an evaluation.

Other output could include calculated J-versus-t or Q-versus-t curves,
D-versus-C curves, and tables of such data.  A regulatory style report could
also be issued by the computer.


CONFIRMATION

     As stated above, the development of a predictive algorithm is an  iterative
process.  That is, the algorithm must be tested or confirmed at various states
in its development.  An anticipated task to confirm the models and predictive
test methods developed under this contract was not completed due to the
unavailability of funds.

     Some confirmation work has been described previously in this report.  This
work included the comparison of calculated diffusion coefficients to values
published in the scientific literature, the comparison of solubilities
calculated using UNIFAP and from immersion-test data to solubilities previously
reported, and the comparison of calculated solubilities to manufacturers'
degradation and permeation ratings.

     Presented below are results obtained in additional efforts to demonstrate
the feasibility of the suggested predictive models and test methods described
in this report.  These efforts included:

          •    The prediction of a permeation-rate-versus-time curve for
               benzene in natural rubber using a solubility calculated with  the
               UNIFAP program, concentration-dependent diffusion-coefficient
                                       90

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               data calculated with  the modified Paul model,  and  a  numerical
               analysis method.

          •    The prediction of permeation-rate-versus-time  curves for  several
               solvents in a series  of glove materials  using  apparent  diffusion
               coefficients and solubilities obtained  in  liquid-immersion  tests
               and using Equation 3.

          •    The use of these calculated  permeation-rate-versus-time curves
               to predict breakthrough times and steady-state permeation rates
               for the glove/solvent combinations  used  in the liquid-immersion
               tests and the comparison of  these predictions  with values
               obtained in permeation tests.

          •    The comparison of two predicted  permeation-rate-versus-time
               curves with data obtained  in permeation  experiments.

     It should be noted that much more confirmation work  than presented  here
could be completed using the experimental data  obtained under the current
contract.  Again, the current effort was  devoted primarily to the
identification of potential predictive models and  test  methods and  the limited
demonstration of their feasibility.  More extensive confirmation  work  and
additional refinements to the models and  test methods  proposed here should be
the subject of a future contract.

Prediction of a Permeation-Rate Curve Using Theoretical Models

     The concentration dependence of the  diffusion coefficient for  benzene in
natural rubber calculated using Che  modified Paul  model was given in Figure 5.
The solubility of benzene in natural rubber (0.685 g/cm3  of swollen polymer)
was calculated using the UHIFAP software.   These theoretical  data were then
used to predict a benzene permeation-rate-versus-time  curve for an  unsupported,
0.046-cm-thick natural-rubber glove  (see  Figure 8).  The  calculations  needed
were performed using a numerical analysis method similar  to that  described in
Appendix C; however, the method was  modified to account for a concentration-
dependent diffusion coefficient.

     Figure 8 includes a permeation-rate  curve  calculated from experimental
cumulative-permeation data reported  by Weeks and McLeod (20)  for  benzene
through an unsupported natural-rubber glove of  the same thickness as used  in
the theoretical calculations.  Although  there is considerable scatter  in the
experimental data, the relative agreement between  the  experimental  and
predicted curves is obvious.

Prediction of Permeation-Rate Curves Using  Test Methods

     Table 16 includes apparent diffusion coefficients  and solubilities
calculated from data generated  in liquid-immersion tests  using 16 glove/solvent
combinations.  Average apparent diffusion coefficients  defined by [(Dfl+Dd)/2]
and solubilities and Equation 3 were used to predict permeation-rate-versus-
                                        91

-------
   300
 E
isi

   200
   100
 oc
 HI
 &
PERMEATION DATA

(EXTRAPOLATED FROM

REFERENCE 20)
     W""
       PREDICTED USING

       THEORETICAL MODEL
                             10
              15

         TIME, min
20
25
                                                                 5749-11
        Figure 8. Comparison of predicted and experimental permeation-rate curves for

                benzene through natural rubber.
                                    92

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time data for acetone in natural rubber and in nitrile rubber.  (Permeation
tests were also conducted for these glove/solvent combinations.)  The predicted
permeation-rate data for acetone through a 0.061-cm-thick nitrile-rubber-glove
sample are shown in Figure 9.  Also shown in the same figure are permeation-
rate data obtained in an actual permeation experiment using the same glove/
solvent combination (see Test No. D031-45 in Table 27 in Appendix D).  The
general agreement between the major features of the predicted curve and the
actual permeation-rate curve is obvious.  The predicted permeation-rate curve
for acetone through a 0.061-cm-thick natural-rubber glove is compared to the
measured permeation-rate curve (see Test No. D0301-28 in Table 26) in
Figure 10.

     Due to the lack of time, plots of all of the predicted permeation-rate
curves or the actual permeation data could not be prepared.  However, the use
of the constants (D and S) in Table 16 and Equation 3 to calculate these curves
is relatively simple, and the permeation-rate data obtained in permeation
experiments are given in a separate data volume.  Thus, more comparisons such
as those shown in Figures 9 and 10 could easily be made.

     Permeation-rate data, predicted as just described, were examined to yield
breakthrough times (based on the permeation-rate sensitivities reported in
Table 18) and steady-state permeation rates.  These predictions and the average
observed breakthrough times and steady-state permeation rates measured in
permeation experiments are given in Table 20.
                                       93

-------
    1200
   1000
 E
N*  800
 a.
 <  600

 O
 ff
    400
    200
                            I          I
                                                                    PERMEATION DATA
                 10
20
30
   40

TIME, min
50
                                                                         PREDICTED FROM
                                                                         IMMERSION DATA
                                                                     60
                                                    70
                                                    80
                                                                                      5749-19
      Figure 9. Comparison of predicted and experimental permeation-rate curves for acetone through
               nitrite rubber.
                                              94

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                                                         PREDICTED FROM
                                                         IMMERSION DATA
                                                       PERMEATION DATA  	
Figure fO.  Comprison of predicted and experimental permeation-rate curves for acetone
          through natural rubber.
                                      95

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        TABLE 20.  COMPARISON OF MEASURED BREAKTHROUGH TIMES
                   AND STEADY-STATE PERMEATION RATES WITH THOSE
                   PREDICTED FROM IMMERSION TEST DATA3
Glove
Natural
  rubber
Neoprene
  rubber
Nitrile
  rubber
Solvent
Breakthrough time,  min
Measured      Predicted
                                                        Steady-state  permeation
                                                           rate,  ug/(cm2*min)
                                                       Measured
                                                      Predicted
Butyl
rubber


Acetone
Cyclohexane
Isopropanol
Toluene
>1113
55
—
24
MO*
6
>106
5
<0.47
437
~
396
0.26
670
0.030
59
Acetone
Cyclohexane
Isopropanol
Toluene

Acetone
Cyclohexane
Isopropanol
Toluene

Acetone
Cyclohexane
Isopropanol
Toluene
     17
     19
>150, <1400
     10

     22
   >170

     12

     10
  M350

     52
  7
  5
130
  4

  6
 28
 10*
  4

  3
>106
>106
 11
 34
572
  1
782

151
 26

642

962
 <0.12

210
  57
 910
   1.9
1200

 130
  49
   0.095
1100

 880
   0.025
   0.088
 200
     *The symbol "—" means  that  no  permeation  test  was conducted with this
      glove/solvent combination.

     bThe predicted breakthrough  times  are  based  on  the minimum permeation
      rates that could be detected  in permeation  tests:  0.47 ug/(cm2«min) for
      acetone, 0.12 yg/(cm2'oin)  for Cyclohexane, and 0.11 ug/(cm2«min)  for
      toluene, and 0.31  ug/(cm2-min) for  isopropanol.
                                        96

-------
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     Engineers' Handbook.  McGraw-Hill, New York;  1973.  p. 3-212.

93.  Lange's Handbook of Chemistry, Physical Properties.  McGraw-Hill, New
     York;   1979.  pp. 10-127 and 10-128.

94.  Rodriguez, F.  Principles of Polymer Systems.  McGraw-Hill, New York;
     1982.

95.  Smith, J.M.; Van Ness, H.C.  Introduction to Chemical Engineering
     Thermodynamics, 3rd ed.  McGraw-Hill, New York;  1975.  pp. 569-570.

96.  Viscosity:  Pure Liquids.  In:  International Critical Tables, Vol.  VII.
     McGraw-Hill, New York; 1930.  p. 219.
                                       103

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97.  Selected Values of Physical and Thermodynaraic Properties of Hydrocarbons
     and Related Compounds.  American Petroleum Institute Project 44, Carnegie
     Press, Pittsburgh, PA; 1953.

98.  Gerald, C.F.  Applied Numerical Analysis, 2nd ed.  Addison-Wesley
     Publishing Company, Reading, MA; 1980.  pp. 390-432.
                                       104

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                                  APPENDIX A

          SUMMARY OF TEST METHODS FOR EVALUATING PROTECTIVE MATERIALS

SUMMARY OF MECHANICAL-PROPERTIES TESTS

ASTM Method D751-79 -- Standard Methods of Testing
Coated Fabrics

     The purpose of this method, first published in 1943,  is to test coated
fabrics for a vide variety of mechanical properties.  The method describes
standard procedures for determining length, width, thickness, and mass of
coated fabric samples, breaking strength, elongation, bursting strength, tear-
ing strength (by both a pendulum method and a tongue tear method), hydrostatic
resistance, adhesion of coating to fabric, tack-tear resistance, low-
temperature bend strength, low-temperature impact strength, and seam strength.
In terms of glove evaluation, Method D751-79 is directly applicable to the
evaluation of fabric-supported rubber gloves.

ASTM Method D412-83 — Standard Test Methods for Rubber
Properties in Tension

     This method, first published in 1935, is used to determine the tensile
properties of rubber at various temperatures.  The method  describes the
specifications of the testing machine (such as an Instron  tester) and  the teat
chamber, the preparation of the test specimens, and the procedures for
determining tensile strength, tensile stress, ultimate elongation, and tensile
set.  The method is directly applicable to the evaluation  of unsupported rubber
glove material or elastomeric sheets or films.

ASTM Method D16B2-64 -- Standard Test Methods for Breaking
Load and Elongation of Textile Fabrics

     This test method, first issued in 1959, is used to determine the  breaking
load and elongation of textile fabrics with a tensile test machine using the
grab, raveled-strip, and cut-strip methods.  The grab test  is a tension test  in
which only a part of the width of the fabric specimen is gripped in the clamps
of a tensile testing machine.  The raveled-strip test is a  tension test in
which the full width of the specimen is gripped in the clamps and the  specified
specimen width is secured by raveling away yarns.  The cut-strip method is a
tension test in which the full width of the specimen is gripped in the clamps
and the specimen width is secured by cutting the fabric.   This method  is not
directly applicable to the evaluation of glove samples but may have some
utility in evaluating the fabric portion of fabric-supported gloves.

ASTM Method D2261-83 — Standard Test Method for Tearing Strength
of Woven Fabrics by the Tongue (Single Rip) Method (Constant-Rate-
of-Extension Tensile Testing Machine)

     Originally  issued in 1964, this method describes procedures for  the deter-
mination of the  tearing strength of woven  fabrics by the tongue (single rip)
                                       105

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method using a recording constant-rate-of-extension (CRE) tensile testing
machine.  In the method, tearing strength is defined as the force required to
continue or propagate a lengthwise tear started previously in the specimen.
The method may be applicable to the evaluation of the fabric portion of fabric-
supported gloves.

ASTM Draft Test Method Fxxx — Test Method for Resistance to Cut

     This draft ASTM test method describes procedures for determining the
resistance of a rectangular test specimen (either a single layer or a
composite material) to static cut by measuring the force required to cause a
sharp-edged blade to cut the surface of the test specimen.  The test method
defines the test procedure, test apparatus, blade dimensions, the size and
conditioning of the test specimen, and the positioning of the test specimen on
the test apparatus.

ASTM Draft Test Method Fxxx — A Test Method for Resistance to
Puncture

     This draft ASTM test method describes procedures for determining the
resistance of a rectangular test specimen (either a single layer or a
composite material) to puncture by measuring the force required to cause a
pointed penetrometer to puncture the material specimen.  The test method
defines the test procedure, the test apparatus, the dimensions of the
penetrometer, and the test specimen size, condition, and position in the test
apparatus.

ASTM Method D4157-82 — Standard Test Method for Abrasion
Resistance of Textile Fabrics (Oscillatory Cylinder Method)

     This method defines a standard procedure for measuring the abrasion resis-
tance of textile fabrics by subjecting the test specimen to unidirectional
rubbing action under known conditions of pressure, tension, and abrasive
action.  The test is conducted in a special apparatus, described in the method,
that contains an oscillating cylinder section.  The method may be useful in
evaluating the fabric portion of fabric-supported protective gloves.

ASTM Method D1388-64 — Standard Test Methods for Stiffness of Fabrics

     Originally issued in 1956, ASTM Method D1388-64 describes two  test
methods for determining the stiffness of fabrics, particularly woven fabrics:
the cantilever test and the heart loop test.  Both methods are based on  the
bending of a fabric in one plane under the force of gravity.  The method may be
useful in evaluating the fabric portion of fabric-supported protective gloves.

ASTM Method D3041-79 — Standard Method for Testing Coated
Fabrics — Ozone Cracking in a Chamber

     This method defines a standard procedure for determining the resistance of
elastomer-coated fabrics to cracking when exposed to an  atmosphere  containing
ozone.  Each test specimen is kept under a controlled surface strain, and  the
ozone concentration in the test chamber is maintained at a fixed value.  The
                                        106

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method is directly applicable  to  the evaluation of  fabric-supported  rubber
gloves.

ASTM Method Dl149-81 — Standard  Method  for Rubber  Deterioration  —
Surface Ozone Cracking in a Chamber (Flat Specimen)

     Originally issued in 1951, this method defines a  standard  procedure  for
determining the resistance of  vulcanized  rubber to  cracking  when  exposed  to
an atmosphere containing ozone.   Each rubber specimen  is kept under  a  surface
tensile strain, and the ozone  concentration in  the  test  chamber is maintained
at a fixed value.  The method  is  directly applicable to  the  evaluation  of
unsupported rubber gloves.

ASTM Method G26-83 — Standard Practice  for Operating
light-Exposure Apparatus {Xenon-Arc Typ^e) With  and
Without Mater for Exposure of  Nonmetallic Materials

     This method is a combination of two  previous ASTM Methods—G26  and G27.
The method describes the basic principles and operating  procedure for
exposing samples of nonmetallic materials to ultraviolet radiation with a
xenon-arc light source.  The method is concerned  only  with  the  exposure method
and does not cover sample preparation, test conditions,  or  evaluation  of
results.  The method is applicable to the evaluation of  both supported  and
unsupported rubber gloves.
SUMMARY OF CHEMICAL-RESISTANCE  TESTS

ASTM Method F739-81 — Standard Test Method  for  Resistance
of Protective Clothing Materials  to Permeation by  Hazardous
Liquid Chemicals

     This relatively recent method defines standard  test  procedures  for  deter-
mining the resistance of  protective-clothing materials  to permeation by
hazardous liquid chemicals in direct,  continuous contact  with  the  normal outer
surface of the material specimen.  The permeation  resistance of the  test speci-
men is determined by measuring  the breakthrough  time of the  challenge chemical
through the test sample and  then  monitoring  the  subsequent  permeation rate of
the chemical through the  sample.

     The method specifies the use of a specially constructed glass
permeation-test cell.  When mounted  in the  test  cell, the material specimen
acts as a barrier separating  the  liquid challenge  chemical  from a  collecting
medium.  The collecting fluid,  either  a liquid or  a  gas,  is  sampled  and
quantitatively analyzed for hazardous  permeant as  a  function of time after
initial liquid contact.   Both the initial  breakthrough  time  and the  permeation
rate of the hazardous chemical  are determined from the  time-dependent chemical
analysis of the collecting fluid  by means  of direct  calculations or  graphical
analysis.
                                        107

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ASTM Draft.Method F739-8X (Revision 4) — Standard Test Method
for Resistance of Protective Clothing Materials to Permeation
by Liquids or Gases

     This draft test method is an extension of Method F739-81 that incorporates
a standard test procedure for determining the resistance of protective
clothing materials to permeation by potentially hazardous gaseous chemicals  in
continuous contact with the normal outer surface of the material.  Otherwise
the method is essentially identical to Method F739-81.  An earlier revision of
the draft test method included as an appendix a statistical procedure  for
determining the equivalency of permeation-test cells of different designs.
Under the current revision of test method F739-81, the equivalency appendix has
been deleted from the method and is slated to be developed into a separate test
method.

ASTM Draft Method F739-8X (Draft 3) — Standard Test Method
for Resistance of Protective Clothing Materials to Permeation
by Liquid, Liquid Splashes, and Gases

     This is the latest draft revision of Method F739-81.  The method  includes
a standard procedure for determining the resistance of protective-clothing
materials to permeation by liquid chemicals in intermittent contact with the
normal outer surface of the material.  The remainder of the method is  essenti-
ally identical to Draft Method F739-8X (Revision 4) discussed above.

Permeation Test Methods Contained in CRDC-SP-84010 — Laboratory
Methods for Evaluating Protective Clothing Systems Against
Chemical Agents

     CRDC-SP-84010 is a special publication (58) issued by the US Army Chemical
Research and Development Center.  The publicaTIon specifies standard test
procedures for evaluating the resistance of protective clothing materials to
permeation by chemical-warfare agents.  The methods specify test cells design,
test procedures, analytical methods, and criteria for interpreting the test
results.

ASTM Draft Method F903 (Revision 7) — New Standard Test Method
for Resistance of Protective Clothing Materials to Penetration"
by Liquids

     This proposed test method defines standard procedures for determining the
resistance of protective clothing materials to visible penetration by  liquids
in direct, continuous contact with the normal outer surface of the material.
The method determines resistance to penetration only and not  the resistance  to
permeation or chemical degradation.  The method involves mounting a sample of a
protective material in a specially designed test cell so that the sample
divides the cell into two chambers.  The normal outer surface of the sample  is
then exposed to a liquid chemical under pressure (2 psig), and the normal inner
surface of the sample is observed (through the transparent cover plate of the
test cell) for visible penetration of the liquid.
                                       108

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ASTM Draft Method Fxxx — Test Method  for Evaluating Protective
Clothing Materials  for Resistance to Degradation by Liquid
Chemicals

     This proposed  test method is a semiquantitative method  for determining
the resistance of protective-clothing  materials to degradation by  liquid
chemicals in direct, continuous contact with the normal outer surface  of  the
material.  The method consists of measuring the thickness, weight, and  elonga-
tion of a material  specimen, exposing  separate identical  specimens of  the same
material to a liquid chemical, and measuring the thickness,  weight,  and elonga-
tion of the additional specimens to identify changes resulting from  contact
with the liquid chemical.

ASTM Method D471-79 — Standard Test Method for Rubber Property —
Effect of Liquids

     Originally published in 1937, this well-established  method measures  the
comparative ability of rubber and elastomeric materials to withstand the
effect of liquids.  The method involves immersing a sample of a material  in a
liquid chemical at  a constant temperature and measuring selected physical
properties of the sample as a function of immersion time.  Any deterioration of
the material sample is determined by noting the changes in physical properties
before and after immersion in the test liquid over various time intervals.  The
physical properties that are measured  during the test are weight, volume,
thickness, soluble extracted matter, tensile strength, elongation, hardness,
breaking strength, burst strength, tear strength, and adhesion (for  coated
fabrics).
                                       109

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                                  APPENDIX B

       THE DERIVATION OF THE MODIFIED PAUL MODEL AND A COMPUTER PROGRAM


DERIVATION OF THE MODIFIED PAUL MODEL

     The Paul model for predicting the solvent self-diffusion coefficient  is
based on free-volume theory.  A self-diffusion coefficient may be defined  as
the diffusion coetficient of a component within itself.  No concentration
gradient exists.  A mutual-diffusion coefficient may be defined as  the diffu-
sion coefficient of a component within another, for example, a solvent within
a polymer.  It can be shown that (87) :
                    D* [f(D1,x1,D2,x2)/RTl Ouj/aln XI)T(P              (32)

where D is the mutual diffusion coefficient; D. and D. are the solvent and
polymer self-diffusion coefficients, respectively; x1 and x2 are solvent and
polymer mole fractions, respectively; R is the universal gas constant; T is the
absolute temperature; u, is the solvent chemical potential; and P  is  the pres-
sure.  The quantity f(D1,xI,D2,x2) represents a function yet to be determined.

     Vrentas and Duda (80-8£) proposed that because DZ is much smaller than DI
for most systems, D2 may be neglected in  f(DL,x ^D-.Xj) over a large  concentra-
tion interval from almost pure polymer to about 85* solvent in some systems.
In this range, they suggest the use of:

                         D » (x^/RTKai^/ain a^x p                     (33)

Paul's model, an extension of the Cohen- Turnbull model (88) , is based on the
following expression:

                       Dj = J DQ1 Tl/2 exp (-YV*/V£)                      (34)

where J is the jump-back factor described below, D.  is a constant evaluated
from experimental data, and y is a numerical factor between 1/2 and 1, which
accounts for the fact that a given free-volume element is available to more
than one molecule.  The term V* is the specific critical volume for diffusion,
which is the minimum free-volume element necessary for diffusion,  and Vj is the
specific free volume of the mixture.  The parameters J, DQ., y, v., and v^
must be evaluated.

     The jump-back factor, J, represents  the ratio of the probability in the
mixture that a solvent diffusive jump is successful to the probability in a
pure solvent that a diffusive jump is successful.  A successful jump by a
solvent molecule is defined as one which is not immediately followed by a
                                       110

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return jump to its original position.  Analytically,
                                         z
                           J -[(*+!)/«]   [n/(n*D]  P(s=n)              (35)
where z is the number of sites available to a diffusing solvent molecule
(usually 4!>] •l"»2z'1            <36>

Figures which graphically represent Equation 36 can be  found in  the  litera-
ture (£3).  It should be noted that J(z=10)/J(z=4) is less than  2  for  ^jO.05.
This implies a weak dependence of J on z except at very low solvent  concentra-
t ions .

     The parameters D  , v"f , and the product *p* may be evaluated  using vis-
cosity and specific-volume data  for the  pure solvent.  Only a  limited  amount
of binary data are also  needed, but these may be approximated  from equations
of state.  Paul (83) used a correlation  presented by Dullien (89):

                  H,D° - (RT/v.) (0.124  x 10-16 mol2/3) v|/3               (37)
                    ill                           *• i
where n, is the solvent  viscosity at temperature T, D^  is the  self-diffusion
coefficient of pure solvent, v   is the solvent molar volume at temperature T,
and v   is the solvent critical molar volume.  For pure solvent  (*•!), Equation
34 reduces to:
                       D0 „ Dfli Ti/2 exp  {^/[Vj - v^O K)] }              (38)


Note that

                                   vf • Vj - v^O K)                       (39)

has been used.  Equation 39 implies that  the free volume  is  identically  zero
at 0 K (absolute zero).  The value of v^O K) may be  estimated  by  a.  variety of
methods ^90).  Substituting Equation 38 into Equation 37 and
taking the ratio of the resulting equation evaluated  at T  to  the same
equation evaluated at Tref, some reference temperature, yields:

                                                
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cosity and specific-volume (or molar-volume) data are present  in  the  literature
for most solvents.  However, these data would have to be determined  if  they are
unavailable.

     Knowing >v*  we can evaluate D   from Equations 37 and 38.   The  only
remaining parameter is v"f which may oe expressed as:

                               5f = v - v(0 K>                             (41)

where v is the specific volume for the mixture.

     If v is not available in the literature, a rough estimate of this  quantity
may be obtained using the Flory-Prigogne theory (91) of excess volume:

                            VE = v - (w.vO + w,vO)
                                       11    2 2                          (42)
where VE is the excess specific volume and *>l and w2 are the weight  fractions
of the solvent and the polymer, respectively.  The terms vj and v2 are  the
specific volume of pure solvent and pure polymer, respectively.

     Rough estimates are also possible by setting VE = 0.  This may  be  done
because generally at room temperature, the maximum value of VE is less  than 1%
of the actual volume whereas v^ is about 152.  Increasing  the  temperature
increases VE but vf increases more rapidly (83) .  For the  calculations
presented in this report, VE was assumed to be zero.

     One drawback to Che Paul model is Chat the value of D calculated  is  less
accurate when the solvent volume fraction, 4^, is less than 0.1.   This  is
because the choice of z affects J more strongly at small solvent  volume frac-
tions than at large volume fractions.  More significantly  however, the  polymer
segments may contribute substantially to the refilling of  voids even if solvent
molecules are nearby; thus, an assumption made  in Paul's derivation  of
Equation 34 is invalidated (£3).  Under such conditions, that  is, for $^0.1,
the Vrencas-Duda model should be used.

     After the calculation of D., the only remaining quantity  to  be  evaluated
in order to obtain D is the derivative shown in Equation 33.   This may  be
calculated by noting that:
                              Xj)TjP •  RTCSln  a^Bln  x^p                (43)

where a   is the activity of  the  solvent  in  the mixture.

     The  expression on  the right-hand side  of  Equation 43 may be  evaluated from
a -versus-x. data generated  by the UNIFAP program.  This  information  can  then
be used with D. and Equation 33  to calculate the mutual-diffusion coefficient,
D.
                                        112

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COMPUTER PROGRAM FOR THE CALCULATION OF D

     A computer program based on the Paul model was written  using  FORTRAN 77,
and a DEC 2040 computer was used to perform the series  of  calculations  needed
to estimate the diffusion coefficient, D.  A copy of  the program is  included
at the end of this section.  Because time limitations,  the software  was  not
made "user friendly"; however, it can be easily followed.

     The first parameter to be calculated by the program is  the quantity -yv*.
Viscosity-versus-temperature and specific-volume-versus-temperature  data in
Equation 40 are used by a linear-regression subroutine.  Next  Equations  37 and
38 are used to calculate the constant D   .  The jump-back  factor is  calculated
by Equations 35 and 36.  UNIFAP data are used to calculate the derivative in
Equation 32 by noting the relationship shown in Equation 43.   Next,  D  is calcu-
lated using Equation 32.  A library graphics package  is used to plot D  as a
function of solvent weight fraction.  Tables 21 through 24 show the  data used
in the calculations presented in Section 6 of this report.
                                        113

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          TABLE 21.  VISCOSITY AND SPECIFIC VOLUME OF BENZENE
                     AS A FUNCTION OF TEMPERATURE
Temperature, K
284C
293
303
313
323
333
343
353
Viscosity,8 cp
0.75
0.65
0.57
0.50
0.66
0.39
0.35
0.31
Specific volume, cm3/g
1.1254
1.1376
1.1516
1.1660
1.1809
1.1963
1.2124
1.2291
aFrom Reference 92.

bFrom Reference 93.

cData used as the reference condition in Equation 40.
                                  114

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   TABLE 22.  OTHER PARAMETERS USED IN THE CALCULATION OF DIFFUSION
              COEFFICIENTS FOR BENZENE IN NATURAL RUBBER
Parameter
-0
vl
-0
V2
Vj <0 K)
5 2 (0 K)
Cl
Tinc
MW1
MM,
z
Value
1.1109 cn3/g
1.0753 co3/g
0.9115 cm3/g
-0.9 cm3/g
258.7 cm3/g
298 K
78.11
68.12a
6
Reference
93
94
90
90
95
—
—
—
aGiven as the molecular weight of a monomer unit
                                   115

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    TABLE.23.  VISCOSITY AND SPECIFIC VOLUME OF n-HEPTANE
                     AS A FUNCTION OF TEMPERATURE
Temperature, K
289C
300
311
322
333
344
355
366
378
389
Viscosity,* cp
0.2271
0.2156
0.2045
0.1947
0.1857
0.1775
0.1700
0.1631
0.1567
0.1508
Specific volume, crnVg
1.4544
1 .4748
1.4960
1.5181
1.5412
1.5653
1.5907
1.6174
1.6456
1.6754
aFrom Reference 96.

bFrora Reference 97.

cData used as the reference condition in Equation 40.
                                    116

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TABLE 24. OTHER PARAMETERS USED IN THE CALCULATION OF DIFFUSION
              COEFFICIENTS FOR n-HEPTANE IN NATURAL RUBBER
Parameter
-0
vl
.0
V2
Vj (0 K)
V2 (0 K)
v
Tint
MW .
MW2
z
Value
1.4327 cn»3/g
1.0753 cm3/g
1.0941 cm3/g
sO.9 cm3/g
432.0 cm3/g
298 K
100.20
68.12a
6
Reference
93
94
90
90
94
—
—
—
—
 aGiven as the molecular weight of a monomer unit.
                                    117

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c
c
^•••••••••••••••••••••••"••••••••••••••••••••••••••••••••••••••••••
c
C     THIS PROGRAM MILL CALCULATE DIFFUSION  COEFFICIENTS FOR  VARIOUS
C     SOLVENT/POLYMER COMBINATIONS AS A FUNCTION  OF SOLVENT
C     CONCENTRATION,
C
C
C     PROGRAM WRITTEN BY ABHOYJIT BHOHN     8/85
C
C
C
C—— ALLOCATE VARIABLES
C
      INTEGER OUT
      REAL TENP(30).VISC(50).SVOLC50),X(50),Y(30),N.J,MW1,NW2,XP(50),
     *     YP(«0)
      INTECEB Z
      R s 8.11441
C
C
C— .— OPEN DATA FILES
C
      OPEN (WHIT»1.FILE='DIFFDAT.DAT',T»PE«'OLD')
      OPES (UNITsZ.FILEs'UNIFDAT.DAT'.TYPE-'OLD1 .DEVICCo'DSK')
C
C
C— —INPUT DATA
C
      READ (1,*) N
      DO 100 IBI.N
  100 READ (I,*) TEKPCI),YI3Cm,SYOLU)
      READ ti,«) vio,V20,viox,v30K,vic
      READ (1.*) TREF,VREF,SREF,TXNT,MM1,MW2,Z
      READ (1,*) Hia.HlE.Wll
C
c
C. -.-.CALCULATE CAMHA-VSTAR
C
      00 200 I»1,N
             X(I) • 1/(SVOL(X)-V10K) - 1/CSREF-V10K]
  200 Yd) • LOG (VISCtD/VREF • SVOLd)/SREF • SORT(TREF/TEKP(X) ))
      CALL LINREC (N,X. Y. SLOPE, YINT.CORR)
      GAVS « SLOPE
C
C
C—— CALCULATE CONSTANT D01
C
      00 100 I«1,N
           X(I) • SORT (TEMPtin • EXP(-CAVS/(SVOL(I).V10K))
  JOO Yd) « 0.124E-16 • R • TENP(I) / SVOL(I) / VISC(I) • V1C«»C2./J.)
     *       • 1.0E9 / HU1
      CALL LINREC (h.X. Y. SLOPE. YXHT.CORR)
      D01 • SLOPE
C
C
C..— -START CONCENTRATION-DEPENDANT DIFFUSION COEFFICIENT CALCULATIONS
C
                                    118

-------
      WRITE (1,1)
      1C H 0
      00 400 H1BU1B,U1C,W1I
      1C • 1C + 1
c
c
C—.......READ UN1FAP DATA AND CALCULATE DERIVATIVE OF A VS X
C
  350      REAR (2,»> HEI1.ACT1
           IF (NISTdOO.•«£!!).NE.NINT(100.»W1)} GOTO 350
           READ (2,*) VEI2.ACT2
           XUEIl B Meil/MWl/(MEIl/MHl+(l.wEIl)/HW2)
           XWEI2 B WEI2/MU1/(UEI2/HU1+(1»UEI2)/MU2)
           DERV  B (LOGCACT1)-LOG(ACT2)) / (LOGCXNEI1)-LOC(XWEI2))
           VF    • HI • (V10-V10K) * (l-Hi)*(V20-V20K)
           VFRAi • M*V10/(W1*V10*(1-W1)«V20)
C
C
C——.....CALCULATE J
C
           CALL FACT (Z.I1)
           SUN • 0.
           DO 170 1=1,Z
                CALL FACT (1,12)
                CALL FACT (Z-I.I3)
                P B FLOATCIl/I2/I31»vrPAl»»I»(l,-VFRAn»»(l-I3
  370      SUN    B SUN *• I/(I»1.)»H
           J      • (I*i,)/I*SUH
C
c
C——.—CALCULATE 0
C
           Di
           XI
           D
           XP(IC)
           YP(IC)
J*D01*SORT(TINT)*EXP(.6AVS/VF)
tl.-Xl)*Dl«DERV
VFRAI
D
  400 WRITE (3,2) Kl.VFRAI,D
C
C
C—--FORMAT STATEMENTS
C
    1 rOR»AT (IX.'WEIGHT FRACTION',5X,'VOLUHt FRACTION',5X.
     *        'HUTUAL-DXFF COEFF (CN»*2/S)>)
    2 FORMAT (1X,F10.4,10X,F10.4,15X.E14.7)
C
C
C-....CLOSE FILES, CALL PLOTTING ROUTINE, AND END PROGRAM
C
      CLOSE CUNITBl)
      CLOSE CUNITBP2)
      CALL PLOTS (0,0,6)
      CALL PLOT (0.0,0.0,-))
      CALL SAML06 (XP.YP.IC,1,1,1,1,1,II)
      CALL PLOT (12.0,0.0,-999)
      END
C
C
C.....LINEAR REGRESSION SUBROUTINE
C
                                 119

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      SUBROUTINE LIMBEC (DN,OX,DT,DSLOPC,DTINT,DCORR>
C

C-—-ALLOCATE AND RESET VARIABLES

      DIMENSION DX(SO).DY(SOJ
      SUMX  • 0.
              o.
              0,
      SUHX2 • 0.
      5UHVJ • 0.
C

C.....CALCULATE VARIOUS SUMS
C
      00 100 iBl.ON
           SUMX  « SUMX + DX(I)
           SUMY  • SUMY * DY(I)
           SUMXY s SUNXY * DX(I)*OY(I}
           SUHX2 • 5UM2 * t>XCI)»«2
   100 5UMY2 • SUHT2 4 OYtI)»«2
C
C
C—"CALCULATE SLOPE.YINT,CORR

      DSLOPE •  (SUNXY«SUMX«5U)ir/DN)/CSUMX2-SUMX**2/ONl
      DYINT  c  
      DCORR  • OSLOPE'SDEVX/SDEVY
      END
C

C—--FACTORIAL SUBROUTINE
C
      SUBROUTINE FACT tJi,J2)
      J2=l
      DO  100 J«2,J1
   100 J
      END
                                  120

-------
                                   APPENDIX C

                NUMERICAL METHODS FOR SOLVING DIFFUSION PROBLEMS

      Permeation-rate-versus-time data may be calculated using Che fundamental
 parameters  D  and  S  and  analytical solutions of Pick's first and second laws for
 given initial  and boundary conditions (for example,  see Equation 3 in this
 report).  However,  frequently the initial and boundary conditions are complex
 and phenomena  such  as concentration-dependent diffusion must be considered.
 For these reasons,  an exact analytical solution to a given diffusion problem is
 often not possible.  Thus,  during the current effort, numerical methods for
 solving such  problems were  explored  briefly.

      Presented  below is  a trivial example in which the Crank-Nicolson implicit
 finite differences method (98)  was used to determine the permeation rate
 versus time for a given  D (which was  held constant)  and a given C , the
 concentration  of  solvent on one side  of a polymeric  membrane.  The
 concentration  of  solvent in the receiving fluid on the other side of the
 membrane was assumed to  be  zero.   The initial concentration of solvent
 throughout  the membrane  was assumed  to be zero, although the computer program
 listed will accept  any valid  concentration profile.

      The parameters  needed  for  the calculation of  permeation rate versus time
 are:

          •     n, which  is  the  number of nodes at  which the concentration will be
               calculated within  the  membrane.

          •     Cfi,  which is  the solvent concentration on one side of the membrane,
               usually taken  as the  solubility of  the solvent in the polymer.

          •     i, which  is  the  thickness of the membrane.

          •     At, which  is  the time  increment.

          •    The maximum  time to which calculations should be carried out.

     Table 25  shows  results  from  calculations done by two computer systems, an
Osborne I microcomputer  using BASIC and a DEC 2040 using FORTRAN.  A comparison
of permeation rates versus  time calculated  numerically with those calculated
using the exact analytical  solution  is  also given  in the table.  The results
obtained with  the two computers differ  slightly  for  two  reasons.   First,  the
DEC 2040 is based on a higher-bit  microprocessor than the Osborne I;  this
enables the DEC 2040 to  carry operations  to higher significant  figures.
Second, the method of actually  solving  the  equations set up by  the
Crank-Nicolson scheme was different in  the  two  programs.  (The  program listed
after the table was written for  the DEC 2040.)
                                       121

-------
     TABLE 25.  PERMEATION RATE VERSUS TIME CALCULATED
                USING THE CRANK-NICOLSON METHOD*>b>c
— ™^^— —— •
Time,
sec
1800
2025
2250
2475
2700
2925
3150
3375
3600
3825
4050
5275
4500
Calculated permeation race
Osborne I
0.06868
0.1084
0.1555
0.2081
0.2643
0.3227
0.3818
0 .4408
0.3988
0.5554
0.6100
0.6625
0.7127
DEC 2040
0.06779
0.1070
0.1539
0.2065
0.2628
0.3214
0.3807
0.4399
0.4981
0.5548
0.6095
0.6621
0.7123
, ng/(cm2.sec)
Analytical
0.06713
0.1067
0.1536
0.2061
0.2623
0.3207
0.3799
0.4389
0.4970
0.5536
0.6083
0.6608
0.7110
Relative difference, %
Osborne I
2.3
1.6
1.2
1.0
0.8
0.6
0.5
0.4
0.4
0.3
0.3
0.3
0.2
DEC 2040
1.0
0.3
0.2
0.2
0.2
0.2
0.2
0.2
0.2
0.2
0.2
0.2
0.2
aThe solubility used was 0.01078 g/cm3, the diffusion coefficient was
 6.59 x 10~10 on2/sec, and the thickness of the polymer sample,  £, was
 0.00472 cm.  The initial condition was C(x,0) =0; the boundary conditions
 were C(0,t) - 0.01078 g/cm* and CU.t) - 0.

bFor the Osborne I calculation, the number of x intervals was 40 and  At was
 6.25 sec.  The software was written in BASIC.  The execution time was
 about 5 min.

cFor the DEC 2040 calculation, the number of x intervals was 40  and  At was
 225 sec.  The software was written in FORTRAN.  The execution  time  was
 1.96 sec.

"^Thirty terms of the infinite series analytical solution were used in this
 calculation.
                                    122

-------
c
c
C     THIS PROGRAM WILL CALCUATE CONCENTRATION  PROflLES  WITHIN  A  MEMBRANE
C     EXPOSED TO CONSTANT BOUNDRY CONDITIONS USING FINITE  DIFFERENCES.
C     XT WILL ALSO CALCULATE THE FLUX AT X«L,
C
C
      PROGRAM WRITTEN BY ABHOYJIT BHOWN     8/85
     •ALLOCATE VARIABLES
      DIMENSION UOLD( 100), UNC«( 100) ,W(100),C( 1001, BBC 100), D( 100)
      REAL LBC.L
C
C
C—...READ PARAMETERS
C
      OPEN (UNITsl.FILFB'PARAN.DAT'.TYPEa'OLD1)
      N « 40
      LBC * 0.
      RBC a 1.0
      THICK • 1.
      L • 0.00472
      CS • 0.01078
C
C
C— —SET BOUNDARY CONDITIONS
C
      UOLDClJaLBC
      UOLD(N]«RBC
      UNEU(1)BLBC
      UNEii(N)BRBC
C
C
C— — SCT INITIAL CONDITIONS
C
      WRITE O.D.O.
      WRITE (3,»)
      WRITE (3,2).1,UOLD(1)*CS
      DO 100 H2.N-1
      UOLDCI)«0.
  100 WRITE (J,2),I,UOLD(I)*C5
      WRITE (3.2),N,UOLO(N)»CS
      WRITE (3,»)
      WRITE C3,»)
      WRITE O.»)
C
C
C— --INITIALIZE ITERATION
C
      DXFF • 6.59E-10
      TNAX • 4500,*DIFF/L*«2
      TINC • 225,*DlFF/L»*a
      DELX • THICK/(N-1)

-------
      R • TIMC/DELX**2
      A • R/2

      C • R/2
C
C
C——-START TIKE
C
      DO 700 TsTIHIT.-THAX.TIMC
C

C— — .. —-INITIALIZE THOMAS ALGORITHM
C
           DO 200 I&2.X-1
  200      D(I)
           D(2)
           W(21
           C(2)
           88C2)
 (R/2*uaLD(I-l)-(R-l)"UOLDrl)+R/2*UOLDCX+l))
D(2)-A»UOLOC1)
D(N-l)-C*UOLDCN)
1/B
W(2)*0(2)
W(2)*C
C

C..........START THOMAS ALGORITHM
C
           00 300 1=3,N-l
                «a)  • i/(B-A«BB(x-m
                BB(1)
  300      G(X) i
           UNEW(M-l) • Gttl-1)
           DO 400 X«N-2,2,-l
  400      UNEW(X) a G(X)-BB(X)*UNEW(I+1)
C
C
C—...... PRINT VALUES
C
           WRITE (3.1),T*L**2/DXFF
           WRITE (3.*)
           DO 600 IBI.N
                WRITE (3,3),I,I»L,UKEW(I)*CS
  600      UOLD(X) • UKEN(I)
           FLUX • UULO(2)*OIFF»CS/L/OLLX»1.E9
           WRITE (3,«)
           WRITE (3.4) FLUX
           WRITE (3,*)
           WRITE (3.*)
           WPXTE (3,*)
  700 CONTINUE
C
C
C——FORMAT STATMENTS
C
    1 FORMAT (IX,'TIME •'.F10.0)
    2 FORMAT (IX.'NODE •'.I3.SX,'FEXLD «',F10.6)
    1 FORMAT (IX,'NODE *'.I3,SX,'X  =',F10.6,3X,'FEILD ••.F10.6)
    4 FORMAT (U.'FLUX «',F10.6)
C
C
C——CLOSE FILES AND END  PROGRAM
C
      CLOSE (UHXTBl)
      END                           «*

-------
              APPENDIX D

SUMMARY OF LIQUID-IMMERSION ABSORPTION
   DATA AND PERMEATION-TEST RESULTS
                 125

-------
TABLE 26.  SUMMARY OF LIQUID-IMMERSION ABSORPTION TEST DATA
Dimeter, in
Clove Solvent Teat Number Initial
Butyl Acetone D0220-27-3
rubber 00220-45-3
00220-46-1
00265-93-1
00265-93-3
00265-93-5
Cyclohexane D0220-27-I
00220-45-1
00220-46-1
00265-36
00265-54
00265-74
laopropanol 00220-27-4
00220-45-4
D0220-46-4
00265-93-2
00265-93-4
0026 5-93-6
Toluene 00220-27-2
00220-45-2
00220-46-2
00265-38
00265-56
00265-76
.37
.38
.39
.40
.40
.40
.37
.40
.36
.41
.40
.39
.39
.38
.39
.40
.40
.40
.39
.40
.38
.41
.40
.40
Final
1.41
1.42
1.42
1.42
1.42
1.42
2.24
2.24
2.26
2.18
2.19
2.21
1.41
1.41
1.39
1.40
1.40
1.40
1.98
1.95
1.99
1.92
1.96
1.96
Thickneaa, oil
Initial
25.62
22.5
21.24
21.78
25.6
24.5
24.3
20.4
24.52
23.36
22.94
22.12
24.8
21.0
24.1
26.1
22.4
21.54
22.1
23.1
21.0
22.18
25.48
24.80
Final
25.98
22.9
21.4
22.06
26.08
24.86
36.8
29.54
36.0
35.64
35.12
34.54
25.0
20.7
23.96
26.11
22.36
21.62
29.8
30.2
27.2
29.64
35.32
35.30
Temp.
range,
•F
70-76
70-76
70-76
74-79
74-79
74-79
73-76
70-75
71-76
67-68
74-77
76-78
70-76
70-76
70-76
74-79
74-79
74-79
73-76
70-75
71-76
67-71
74-76
76-78
R.H.
range,
X
65-71
63-71
63-65
66-86
66-86
66-86
66-71
63-71
66-71
55-60
62-72
63-75
65-71
63-71
63-65
66-86
66-86
66-86
66-71
63-71
66-71
55-61
62-72
67-74
Init lal
weight,
8
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
.7155
.6343
.5971
.6100
.7132
.6921
.6743
.5740
6925
.6622
.6461
.6237
.7012
.5919
6767
.7315
6252
.6064
.6168
6507
.5914
6246
.7068
6999
Max .
weight
gain. Solubility,
8 8/™l
0
0
0
0
0
0






0
0
0
0
0
0
0
1
0
0
1
1
.0281
.0257
.0232
.0255
0295
.0287
.6162
.4282
.6738
.5368
.5185
.5209
.0025
0019
0020
.0022
.0025
.0032.
.9771
0132
.9373
9677
3330
.1090
0.0454
0.0466
0.0439
0.0464
0.0457
0.0464
2.7533
2.7753
2.8676
2.5711
2.6240
2.7650
0.0040
0.0037
0 0033
0.0033
0 0044
0.0059
.7780
.7731
.8210
.7051
.7646
.7727
                        (continued)

-------
TABLE 26 (continued)
Diameter, in
Clove Solvent Test Number Initial
Natural Acetone D0220-II6-1
rubber D0220-130-3
D0220-13I-3
00265-92- 1
D0265-92-3
D0265-92-5
D0265-102
00265-104
D0265-I1I
D0265-120
D0265-122
Cyclohexane D0220-I16-I
D0220-I30-I
D0220-I3I-I
00265-50
00265-66
00265-86
laopropanol 00220-11 6-4
002 20- 130-4
00220-1)1-4
00265-92-2
00265-92-4
00265-92-6
Toluene 00220-116-2
D0220-I30-2
00220-131-2
00265-48
00265-70
00265-88
.40
.39
.40
.40
.40
.40
.40
.40
.40
.40
.40
.41
.40
.40
.40
.40
.39
.40
.40
.40
.40
.40
.40
.40
.40
.40
.40
.40
.40
Final
1.45
1.4)
1.46
1.46
1.47
1.46
—
1.45
1.45
1.45
1.46
2.23
2.18
2.24
2.21
2.17
2.17
1.43
1.43
1.42
1.42
1.41
1.40
2.28
2.31
2.32
_.
2.34
2.27
Thickneai, mil
Initial
25.14
23.96
23.82
24.9
23.82
26.3
25.40
24.28
25.48
24.66
25.78
25.86
25.46
25.9
25.88
26.78
26.14
26.08
25.86
27.74
24.5
26.3
24.1
25.30
25.34
25.7
26.74
24.38
26.72
Final
26.0
25.06
24.84
25.9
24.80
27.44
..
25.60
26.48
25.52
26.84
38.7
38.20
38.4
40.12
40.9
40.46
26.4
26.70
27.82
25.04
26.6
24.5
38.6
40.74
39.6
.-
40.5
43.52
Temp.
range ,
•F
69-73
70-71
70-73
74-79
74-79
74-79
14-76
76
7S-76
78-79
76-77
69-73
70-71
70-73
69-70
73-76
77-78
69-73
70-71
70-73
74-79
74-79
74-79
69-73
70-71
70-73
68-70
71-76
74-78
R.H.
range ,
I
52-80
51-74
51-76
66-86
66-86
66-86
80-88
78-82
73-76
73-74
68-69
52-80
51-74
52-76
66-69
59-61
63-71
52-80
51-74
51-76
66-86
66-86
66-86
52-80
51-74
52-76
67-71
61-75
63-72
Init lal
weight ,
R
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
.6466
.6162
.6068
.6332
.6065
.6649
.6531
.6177
.6404
.6161
.6544
.6655
.6528
.6699
.6514
.6674
.6604
.6536
.6502
.6816
6267
.6652
.6141
.6121
.6512
.6567
6537
.6207
6724
Max
weight
Rim.
R
0
0
0
0
0
0
0
0
0
0
0






0
0
0
(1
0
0
2
2
2
2
2
2
.0919
0831'
.0832
.1012
.0955
1099
.0979
0931
.0932
.1037
.1009
8424
.6602
.7526
7640
.8177
.7429
.0)09
0306
.0)19
0)07
.0)4)
0)02
0086
0591
.0732
0637
.1494
.1026
Solubility.
g/cml
0.1449
0.1395
0.1385
0.1611
0.1589
0.1656
0.1528
0.1520
0.1450
0.1667
0.1551
2.7844
2.5850
2.6825
2.7020
2.6907
2 6811
0.0470
0.0465
0.0489
0 0497
o osi;
0.0497
.1472
2212
1979
.0594
.4949
.1194
    (continued)

-------
TABLE 76 (continued)
Dimeter, in
Clove Solvent Test Number Initial Final
Neoprene Acetone D0220-71-3
rubber 00220-93-1
D0220-94-3
00265-94-1
00265-94-3
00265-94-5
00265-106
00265-112
00265-118
00265-124
Cyclohexane 00220-73-1
D0220-93-I
00220-96-1
00265-46
D026S-62
00265-82
Iiopropanol 00220-71-4
D0220-93-4
00220-94-4
00265-94-2
00265-94-4
00265-94-6
Toluene 00220- 7 1-2
00220-93-2
00220-94-2
00265-44
00265-64
00265-84
.39
.39
.38
.40
.40
.40
.40
.40
.40
.40
.40
.39
.39
40
.40
.40
.39
.39
.40
.40
.40
.40
.40
.39
.39
.40
.40
.40
.52
.54
.SO
.55
.55
.57
.54
.58
.55
.55
.76
.78
.78
.80
.73
.77
.44
.42
.43
.42
.41
.43
.28
.29
.33

.26
.26
Thickneaa
Initial
18
18
IB
IB
19
19
19
19
18
19
18
18
19
19
19
19
IB
18
19
19
19
IB
19
19
19
19
18
19
.58
.32
.40
.59
.12
.4
.24
.06
.52
.08
.54
.58
.16
.02
.04
.28
.74
.70
.24
.8
.5
.2
.2
.04
.68
.26
.54
.16
, nil
Final
20.12
20.46
20.42
20.74
21.08
21 .36
21 .06
21.64
20.80
20.98
23.06
23.00
24.46
24.04
23.92
24.70
19.1
19.16
19.54
20.12
20.06
19.2
29.1
29.40
30.68
—
28.92
30.20
Temp.
range.
•F
70-76
71-73
70-73
74-79
74-79
74-79
74-75
76
78-79
76-77
71-76
69-73
70-73
69-74
73-76
73-78
70-76
69-73
70-73
74-79
74-79
74-79
71-76
69-73
70-73
68-70
71-75
73-78
R.H.
range.
X
52-73
52-73
52-72
66-86
66-86
66-86
80-87
71-74
73-74
68-69
52-73
53-73
52-72
66-71
62-67
59-63
52-73
52-73
S2-72
66-86
66-86
66-86
52-73
52-73
52-72
65-71
62-73
62-64
Inn ill
weight .
R
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
6224
6206
6195
6310
.6385
6477
6165
6995
6156
6360
.6219
6351
.6463
.6447
.6661
.6491
.6303
.6333
.6512
.6689
.6554
.6358
6490
6441
.6666
.6365
.6141
.6403
Max
weight
gain,
g
0 1662
0 1915
0.1595
0 1976
0 2026
0 2054
0 2013
0 1908
0 1958
0 1993
0.4025
0 4006
0 4167
0 4220
0.4117
0 4119
0.0279
0.0224
0.0232
0.031)
0.0287
0.0110
.5244
.5030
.6134
.4840
.4280
501)
Solubt 1 ity,
g/ca.1
0.3597
0.4204
0.3537
0.4214
0 4200
0 4197
0.4189
0.1968
0.4191
0 4140
0 .8606
0.8670
0.8746
0 8795
0 8988
0 8880
0.0599
0.0482
0.0478
0.0627
0.0581
0.0675
3.1473
3.1745
3 2968
3.0544
3 0533
3.1062
    (continued)

-------
TABLE 26 (continued)
Clove
Htcrilc
rubber















Dimeter, in
Solvent Teat Humbei Initial Final
Acetone 00 2 20- SO- J
D0220-5I-4
D0220-52-3
D0265-42
D0265-S8
00265-78
Cycloheiiane 00220-50-1
00220-S1-2
D0220-52-1
D026S-91-I
D0265-91-J
D026 5-91-5
laopropanol 00220-50-4
D0220-SI-I
00220-52-4
D0265-9I-2
00265-91 -4
D026S-9I-6
Toluene DO 2 20- 50- 2
00220-Sl-J
D0220-52-2
D0265-40
D0265-6I
00265-80
.40
.39
.39
.40
.40
.40
.40
.40
.37
.40
.40
.40
.39
.39
.37
.40
.40
.40
.40
.38
.39
.40
.40
.40
.99
.93
.94
.84
.92
.89
.45
.43
.43
.44
.46
.43
.10
.11
.SO
.51
.50
.SI
.88
.85
.89
.81
.86
.84
Thtekneat
Initial
20.7
19.5
21.9
20.40
21.92
23.20
21.4
22.9
22.0
2). 4
21.7
22.3
21.2
23.0
19.4
22.7
21.5
23. S
20. S
20.66
21.7
20.70
24.72
23.54
, .11
Final
29.0
26.3
28. 5
28.06
31 .02
32.02
22.1
23.6
23.1
24.68
22.98
23.0
23.34
2S.72
20.9
2J. 18
23.64
26.14
27.48
28.1
29.7
27.82
32.78
32.04
Temp.
range .
•F
70-76
71-7S
70-7)
69-71
74-78
77-78
70-76
70-75
70-75
74-79
74-79
74-79
70-76
70-76
70-75
74-79
74-79
74-79
70-76
71-75
70-76
69 -M
74-77
74-78
R.H.
range,
S
51-72
63-66
63-66
64-70
63-72
66-74
53-72
51-71
51-71
66-86
66-86
66-86
53-72
65-71
SI-M
66-86
66-86
66-86
53-72
63-66
63-66
64-70
62-72
59-64
Initial
Height.
g
0.557S
0.5382
0.5970
0.5318
0.5517
0 6048
0 5713
0.6116
0.5947
0 6305
0 5826
0 5979
0.5768
0.6243
0.5082
0 6153
o 5717
a f>373
0.5545
0 5663
0.5914
0.5617
0.6575
0.6277
M«x .
weight
gain,
8
0 9497
0.9451
1.0851
0.8854
0.9438
1 0154
0.0629
0 0556
0.0404
0.0544
0.0690
0.0463
0.1149
0.1482
0.0971
0.1375
0 1178
0.1557
0.7491
0.7607
0.7966
0.7218
0.8727
O.S4I6
Solubility,
g/cnl
.8187
.9490
.9925
.7205
.7068
7350
0.1165
0.0962
0.0760
0 0922
0.1260
0.0823
0.2180
0.2591
0.2072
0.2401
0 2172
0.2626
.4486
.5022
.4763
.3823
.3995
.4173
    (continued)

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                                              TABLE  26  (continued)




Dimeter, in Thickneia.
Clove
PolyCvinyl
chloride)



Solvent
Acetone
Cyclohexane
laopropanol
Toluene
Teat Number Initial Final Initial
00220- HO- 3
D0220-1S1-3
DO 220- 150-1
D0220-D1-1
00220-150-4
D0220-15I-4
D0220-150-2
D0220-15I-2
.41
.42
.39
.41
.39
.40
.40
.40
.24
.29
.23
.29
.26
.29
.24
.31
.70
.88
.14
.22
.42
.80
.20
.38

nil
Final
5
4
6
6
II
5
5
4
.24
.6
.04
.2
.80
.68
.18
.14

Temp.
range ,
•F
70-71
69-72
70-71
70-72
70-71
70-72
70-71
70-72

R.H.
range ,
I
51-80
52-71
SI-BO
52-71
51-80
52-71
51-80
52-71

Initial
weight .
ft
0 2047
0.1814
0.1573
0.1864
0.2596
0.1778
0.1923
0 1660
Max
weight
gain. Solubility,
K g/cin'
-0.0511 --'
-0.0528
-0 0492
-0 0528
-0 0747
-0.0460
-0.0310
-0.0236
•The symbol "--" in the column libeled "Solubility.  g/cm3"
 aolubility could be calculated.
eani that a weight loss waa observed, thui.  no

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                       TABLE  27.  SUMMARY  OF INDIVIDUAL  PERMEATION-TEST RESULTS
Clove
Butyl rubber





Natural rubber









Neoprene rubber







Nitrile rubber




Solvent
Acetone
Cyclohexane



Toluene
Acetone


Cyclohexane


Toluene


Isopropanol
Acetone


Cyclohexane



Toluene
Acetone


Cyctohexane
Toluene
Teat No.
D0301-40
D0301-53
D0301-56
D0301-59
00301-87
DO 30 1-84
D0301-24
00301-27
D0301-28
00301-73
D030I-74
D030I-76
DO 301 -66
D0301-70
D030I-71
D0301-95
D0301-34
D030I-38
D0301-39
D0301-62
D0301-8S
00301-88
D030I-93
D030I-80
00301-44
00301-45
D0301-48
D030I-91
D0301-7B
-t =i
Thickness,
cm
0.0615
0.0607
0.0597
0.0597
0.0625
0.0589
0.0610
0.0630
0.0607
0.0602
0.0617
0.0638
0.0635
0.0617
0.0599
0.0617
0.0688
0.0480
0.0472
0.048
0.0493
0.0485
0.0483
0.0478
0.0572
0.0584
0.0612
0.0607
0.0574
Breakthrough
time,8 min
>1I15
50
50
57
63
24
18
16
18
18
21
IB
10
8
11
>150
20
24
22
60
>60
>I60
135
12
10
8
12
>I350
52
Steady-state
permeation rate.
ug/(cm?*inin)
<0.47
460
565
403
311
396
30
34
37
572
528
476
775
760
812
I
171
149
132
55
16
7
61
642
984
933
969
<0. 12
210
Calculated diffusion
coefficient. cra'/sec

1.
0.
0.
0.
1.
1.
1.
1.
1.
1.
2.
7.
5.
4.
1.
1.
1.
1.
3.
3.
3.
1.
2.
3.
4.
3.

6.

2
93
72
60
9
5
8
7
3
8
5
1
9
3
2
6
3
4
4
3
4
7
6
8
2
7

6
—
X
X
•
•
X
X
X
X
X
X
X
X
X
X
X
X
X
X
X
X
X
X
X
X
X
X
—
X

10~7
ID"7
lo-'
IO-?
10"
10-'
io- 7
io-7
io- 7
io-7
io-7
lot7
JO"7
io-7
io-9
io-7
IO'7
io-7
JO-"
ID"9
io-'
IO-»
io-7
io-7
io-7
io-7

10"B
Calculated
soliibil ity,
R/cn.3
—
5
6
7
10
2
0
0
0
2
4
2
1
1
2
2
I
1
0
0
7
17
3
2
2
2
3
-
4

.4
.7
.9

.9
.46
.28
.26
.9
.6
.4
.2
.4
.0
.6
.0
.2
.98
.78
.6

.1
•'
.A
.7
.4
-
.3
"The minimum permeation rates  that could be detected were:   0.47 ug/(cmz*min) for acetone, 0.12 ug/(cm2-min)
 for Cyclohexane, and O.I I  iig/(cm2-min) for toluene.

bThp symbol "—" means that  the  calculation could not be performed.

-------
           1 2
<*>
s>
                    i—i—i—i—i—i—i—i—i—i—i—i—i—i—i     i—i      r
                                                       ABSORPTION
            00
                     		I	I	I	I	I	I	I	I	L
             ( 0      2    4     6     8     10    12    14    16    18    20   22     24   26    28    3O   32    34    36     38


                                                               TIME'-0. mmv'
                                  Figure 11. Absorption and desorntion curves lor cycloltexfine in butyl rubber

-------
             1 2
u>
LO
                      1      I      I      I      I     I     I     I      I      |      I      I      I      I     I     I     I     I
             o.o

             I   O
                      I     I      I      I      I      I      I     I     I     I      I      I      I      I      I      I      I	I
4     6     8    10    12    14
16    18    20   22

    TIME1'1. mm''2
                                                           24   26    28    3O    32    34    36    38
                                      Figure  12. Absorption and desorption curves for toluene in butyl rubber

-------
1 2
1 O
08
06
O4
02
OO
        1      |     I     I      I      I      I     \     \     \      I      I     I     I     I     I      I      I
         I     I      I      I     I     I	I	I	I	I	I	I	I	I	I	I	I	L
   0     2     4     6    8     10    12    14    16    18   20   22   24    26    28    3O    32    34   36    38
                                                       TIME1/', mm*
                       Figure 13.  Absorption and drsorption curves for cyclohexane in natural rubber

-------
1 2
         i—i—i—i—i—i—i—i—i      i      i      i      i      i      i      i      i      r
   0     Z     4     6
8     10   12    14     16    18    2O    22    24    26    28    3O    32    34    36    38
                           TIME*7'. min'/'                                              BTIS-II
                          Figure 14.  Absorption and dcsorption curves tor toluene in natural rubber

-------
1 2
1 0
08
06
04
O2
       T—\—i—i—\—i—i—i—i—i—i—i—\     i     i     i      r
 /
s
                                                     ABSORPTION
                                                                   OESORPTION
                   I     I     I     I	I	1	I	I	\	I	I	I	I	I	L
00
I   0    1
2    3    4     5     6    7
                                            8    9    10

                                             TIME1"*. minv'
                                              11   12   13    14    15   16
17   18

   6719-7
                 Figure 15. Absorption anil desorption curves for cydohexane in neoprene rubber

-------
         i—i—i—i—i—i—i—i—i—i—i—i—i—i—i—i—r
                                        ABSORPTION
                                        —v—•
                                                                      DE3CRF7SON
00
         J	I	\	I	I	I     I     I      I      I     I     I     I     I     I      »      I
               2     ?    4     5     67     8    9     10    11     12    13    14    IS

                                                   TIME1*  mm1/4
16    17    18

         6749-6
                        Figure 16.  Absorption and desorption curves for toluene in neoprene rubber.

-------
             1 2
LO
OO
             1 O  —
                     1     I     I     I      I      I      I     I     I     I      I      I      I     I      I     I     I     T
                                                    ABSORPTION

                                                        /
            OO
                                       1_   I      I      I      I     I      I     I      I      I      I      I      I     I     I
                                       8    10    12    14
16    18   20

  TIMEy*.
22    24   26   28   3O    32    34
36    38

   6749-t
                                     Figure 17.  Absorption and desorption curves for acetone in nitrite rubber

-------
             12
LO
             1 O
             08
             06
             04
             02
OO
 I
                     "1      I      I     I     I      I      I      I     I     I     I      I     I     I     1     I     I     T
                                ABSORPTION
                 DESORPTION
                                                   1     1     L    I     I     I      I     I      I     I     I     I     I
                O     2    4     6     8     10   12    14
16    18    20   22

     TIME*, minI/J
24    26    28    3O    32   34    36
                                                                                                                              38

                                                                                                                              -10
                                     Figure 18.' Absorption and desorplion curves lor toluene in nilnle rubber

-------
                                   TECHNICAL REPORT DATA
                            (Please read Instructions on the reverse before completing}
 1  REPORT NO.

 EPA/600/2-86/055
2.
 PB86-209087/AS
                             3. RECIPIENT'S ACCESSION-NO.
                   Effectiveness  of  Chemical-
    Protective Clothing: Model and Test  Method
    Development
                             5. REPORT DATE
                                 September 30, 1986
                             6. PERFORMING ORGANIZATION CODE
        , _it S. Bhown, Elizabeth F.  Philpot,
    Donald P. Segers, Gary D. Sides,  Ralph B.  Spafford
                             8. PERFORMING ORGANIZATION REPORT NO.
                                SoRI-EAS-85-835
                                5749-F
                             10. PROGRAM ELEMENT NO.	
 9 PI
                           : AND ADDRESS
   ERFORMING ORGANIZATION NAME AND 4
   Southern  Research Institute
   2000  Ninth Avenue South
   Birmingham, Alabama 35255-5305
                             11. CONTRACT/GRANT NO.
                                68-03-3113
 12. SPONSORING AGENCY NAME AND ADDRESS
    U.S.  Environmental Protection Agency
    Water Engineering Research Laboratory
    26 W.  St.  Clair Street
    Cincinnati,  OH 45268
                             13. TYPE OF REPORT AND PERIOD COVERED
                                Project Report (1/85- 9/85)
                             14. SPONSORING AGENCY CODE
 IS. SUPPLEMENTARY NOTES
      A predictive  model  and test method were  developed for determining the chemical
 resistance of  protective polymeric gloves exposed  to liquid organic chemicals."  The
 prediction of  permeation through protective gloves by solvents was based on theories
 of the solution  thermodynamics of polymer/sol vent  systems and the diffusion of  solvents
 in polymers.   These models and test methods were further developed to estimate  the
 solubility, S, and the diffusion coefficient, D for a solvent in a glove polymer.
 Given S and D, the permeation of a glove by a solvent can be predicted for various
 exposure conditions using analytical or numerical  solutions to Pick's Laws.
      The model developed for estimating solubility is based on group-contribution
 methods for predicting phase equilibria, while that for estimating diffusion coeffi-
 cients versus  concentration is based on free-volume theory.  The predictive test
 method developed is a  liquid-immersion/desorption  method that provides estimates of S
 and D.
      Limited confirmation of the developed models  and test method was secured by com-
 paring estimated values  of S and D with reported experimental data and by using the
 estimated values to predict instantaneous permeation rates, breakthrough times, and
 steady-state permeation  rates for comparison with  experimental permeation data.
 7.
                                KEY WORDS AND DOCUMENT ANALYSIS
                  DESCRIPTORS
                                              b. IDENTIFIERS/OPEN ENDED TERMS
                                           c. COSATi Field/Croup
 a DISTRIBUTION STATEMENT
                                              19 SECURITY CLASS (ThisReport/
                                                                         21 NO. OF PAGES
                                              20. SECURITY CLASS (Thupage)
                                                                         22. PRICE
EPA Form 2220-1 (9-73)

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