Environmental sampling: A summary - ACS Publications - American

Lawrence H. Keith. Radian Corporation. Austin, TX 78720-1088. Poor sample collection procedures yield samples that are not representa- tive of the pop...
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Lawrence H. Keith Radian Corporation Austin, TX 78720-1088 Poor sample collection procedures yield samples that are not representative of the population of interest, are of little use, seriously compromise the purpose of sampling, and contribute to the uncertainty of the analytical results. Furthermore, sampling and analytical errors occur independently of each other, so sampling-related errors cannot be accounted for by laboratory blanks or control samples. Sample contamination is a common source of error and may come from artifacts in sampling containers or may be introduced during 610

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Environmental sampling osium, publications

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Related publications 3rinciples of Environmental Sammental Improveme pling; Keit Ed.; American the symposium, Pri vironmental Sampling. The pro- Chemical ceedings were published in 1988, DC, 1988; 1-800-227-5558. and since then the Committee “Principles of Enviro has summarized the most impor- j a m p Iing: Electron ic Edit ion ” ; tant principles and supplemented Keith, L. H., Ed.; Ame cal Society: Wash them here with an 1990; 1-800-227-5558. review. ACS has produ Practical Guide for Environmenta tally searchable elect Sampling and Analysis; Keith, sion of the initial

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sample collection, preservation, handling, storage, or transport to the laboratory.

Planning and sampling protocols The objective in collecting samples for analysis is to obtain a small and informative portion of the population being investigated. Usually representative samples are sought, but sometimes nonrepresentative, or targeted, samples are needed (e.g., at a site near an industrial outfall suspected of polluting a river), However, to be useful, sampled aliquots from a chosen site usually need to be representative of that site at the time the samples were taken. Data quality objectives. Data quality objectives (DQOs) are statements that provide critical definitions of the confidence that must be inherent in the conclusions drawn from the data produced by the whole project. These objectives determine the degree of total variability (uncertainty or error) that can be tolerated in the data (E. G. Meier, EPA, personal communication, July 1989). These limits of variability must be incorporated in the sampling and analysis plan and be achievable by using detailed sampling and analysis protocols. DQOs differ from measure-

Wembers Joan B. Berkowitz ;ha 3erkowitz International Nilliam Bernaek, Jr. ndianapolis Center for lvance qesearch, Inc. Nendal H. Cross Seorgia Institute n + 411an M. Ford Monsanto Compa. 4. Wallace Hayes !LJ.R.-Nabisco, Inc. Samuel F. Hohmann Sonsultant, environmental services Eugene L. Holt Levy, Bivona & Cohen Robert Jamieson Procter & Gamble Nathan J. Karch rch & Associates, Inc. Anne R. Keller-Leslie EPA Roger D. Middlekauff (decea McKenna, Conner & C u n c Glenn E. Schweitz ai C-viet and East E . .,tional Research Coilncil, NA Paul Tomboulian kland Universitv She J. Tonn .J

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ment quality objectives (such as preci- purposes and usually is intended to prosion and accuracy) in that they are lim- vide information on the variation in its imposed on the overall uncertainty concentration of specific analytes over of results, whereas the latter are only a particular period of time or within a limits for the uncertainty of specific specific geographic area. In typical measurements. Often, desired DQOs monitoring programs each individual must be balanced against the cost of a test sample is analyzed. However, comsampling and analysis project and, if posite sampling (combining portions of necessary, more realistic objectives multiple samples) is often used to remust be adopted (with the concurrence duce the cost of analyzing a large number of samples. of the users of the data). Basic considerations. A sampling In designing a sampling program plan may, by necessity and design, be- consideration also must be given to the come a compromise among the de- quality of the data needed. A pre-estabmands of various DQOs because envi- lished budget should not be the sole ronmental monitoring studies, constraint on the design of a data colespecially if they are published, are fre- lection program (E Haeberer, EPA, quently used for purposes beyond those personal communication, May 1989). of the original investigation. This ex- If the desired data quality and representended usage by others occurs fre- tativeness cannot be obtained within quently and must be recognized. budget constraints, then a decision must The first step in planning a sampling be made whether to increase the budget activity is to define clearly the objec- and resources or to accept reduced data tive. Objectives of environmental sam- quality or representativeness (E. G. pling are broadly divided into explor- Meier, EPA, personal communication, atory (surveillance) or monitoring July 1989). One of the most important aspects of (assessment) goals. Exploratory sampling is designed to provide prelimi- the data collection planning process is nary information about the site or mate- involvement of the data users with the rial being analyzed. Monitoring, on the samplers and analysts. The initial and other hand, may be undertaken for reg- continued involvement and perspective ulatory (enforcement) or nonregulatory of each is critical to defining data quality and quantity requirements. The choice of a data analysis method is an important decision that also should be made in the planning stage. It must facilitate, and be facilitated by, the goals, DQOs, and experimental design. Two basic sampling decisions that must be resolved during the planning stage and documented in the sampling protocol are the types and numbers of quality control samples to be taken ( I ) . The answers depend directly on the nature of the errors to be assessed (both systematic and random) and the accuracy desired in their assessment. Addiies N. Seiber tional considerations include the contriversity of Calif - - - * bution of sampling error relative to total error, the relative cost of sampling and analysis, and the sensitivity and selectivity of the analytical method in relation to the concentration of the analytes (M. J. Messner, Research Triangle Institute, personal communication, Nov. 1989). Careful documentation during prepaqational Sanitation Foundation ration of the sampling plan will help Subcommittee Members Not on eliminate misunderstandingslater in the sampling effort. This documentation should include the objectives of the sampling; a description of the location, timing, and character of the samples to be taken; preservation precautions; sample identification; chain-of-custody records; and an indication of the analyses that are to be made. This information, which is gathered and documented during the planning process, is also used in the sampling protocol. Environ. Sci. Technol., Vol. 24, No. 5,1990 611

Sampling protocols. Sampling protocols are written descriptions of the detailed procedures to be followed in the collection, packaging, preservation, transportation, storage, and documentation of the samples. The more specific a sampling protocol, the less chance there will be for errors or erroneous assumptions. Most protocols should have a statistical design to prove that the samples represent the matrix to be evaluated (E. G. Meier, EPA, personal communication, July 1989). This statistical design should, together with the sample preparation and analytical methods, respond to the DQOs and data collection objectives of the study. However, it must always be remembered that statistical equations are tools to be used as aids to common sense and not as a substitute for it. The overall sampling protocol must identify sampling locations and include all of the equipment and information needed for sampling: the types, numbers, and sizes of containers; labels; field logs; types of sampling devices; numbers and types of blanks; sample splits and spikes; volume of the sample; specifics of any composite samples; preservation instructions for each type of sample; chain-of-custody procedures; transportation plans; any field preparations (such as filtering or pH adjustments); any field measurements (such as pH, dissolved oxygen, and the like); and report format (2). The protocol also should identify those physical, meteorological, and hydrological variables that should be recorded or measured at the time of sampling (3). In addition, information concerning the analytical methods to be used, minimum sample volumes, desired minimum levels of quantitation, and limits for analytical bias and precision may help sampling personnel make better decisions when unforeseen circumstances require changes to the sampling protocol. Selecting analytical methods is an integral part of the sample planning process and can strongly influence the sampling protocol. For example, the sensitivity of an analytical method directly influences the volume of sample necessary to measure analytes at specified minimum detection (or quantitation) levels. The analytical method may also affect the selection of storage conthiners and preservation techniques (4). Basic sampling approaches. There are three primary sampling approaches: random, systematic, and judgmental. There are three primary combinations of each of these: stratified (judgmental) random, systematic random, and systematicjudgmental. There are further variations among the three 612

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primary approaches and the three combinations of them. Figure 1 illustrates the differences among the three primary approaches, and Figure 2 shows the correlation between the approaches and combinations of them versus the relative numbers of samples needed and the relative amount of bias incorporated into each. Samples collected for research studies may allow use of prior knowledge in order to obtain as much useful data as possible, but sampling for legal purposes often requires absolutely random samples. An advantage of random sampling is the simplicity of assumptions about the sample population. A disadvantage of random sampling is that it is usually more expensive; sometimes money is essentially substituted for good judgment if random sampling is strictly observed (5).

Because most analytes show some type of space or time dependence, some kind of stratified random or search sampling is usually most efficient (A. G. Journel, Stanford University, personal communication, July 1989). Sample sites that are more heterogeneous (nonuniform) than others, or that cover relatively large areas or volumes, are more difficult to sample and usually require more samples to achieve a desired level of information. Often a combination of judgmental, systematic, or random sampling is the most feasible approach. Migration of pollutants. Most environmental pollutants do not remain stationary. If they are in a water, air, soil, sludge, solid, or liquid matrix they are almost certain to migrate. The pathway and rate of migration is affected by the physical characteristics of each matrix,

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meteorological conditions, amount of pollutant present, rate of release into the environment, whether it is a point source or a nonpoint source of release, and whether there is human intervention. The most common transport mechanisms for environmental pollutants are wind, rain, surface water, groundwater, and human intervention (e.g ., wastewater pipes, drainage ditches, roads, and railways). In addition to transport mechanisms, physical and biological influences also may affect migration of pollutants. Physical influences include topographical features (valleys, mountains, slopes, lakes, rivers) and geological features (aquifers, soil composition, mineral composition), all of which can either aid or impede chemical migration. Biological influences usually consist of food pathways (bioaccumulation). Selecting sampling devices. Collection of samples must not significantly disturb the environment being sampled or the site will be changed and the analytical results will be biased. Therefore, the methods and materials used to collect, store, and transport samples must be carefully selected. Contamination by sampling devices and materials can contribute relatively large errors in comparison to analytical procedures, especially when the analytes of interest are at low concentrations. If the sample contacts materials that are reactive or sorptive, or that leach either the analytes or analytical interferents, then opportunities exist for gross sample source bias. The components of any sampling device (e.g., tubing, gaskets, metal or plastic components) and sorptive materials must be carefully evaluated and checked for analyte interaction (4). The selection of a sampling device and the sampling protocol should be based on the most labile analytes to be measured. Labile in this context refers to the probability that the analyte concentration will change prior to analysis. Important considerations are the analyte’s reactivity (with light, heat, air, water, biological organisms, metals, and other chemicals), volatility, space-time variability, and potential for being irreversibly sorbed by the sampling device or storage container. Safety plans. Safety must always be considered in the development of any sampling plan. In the United States, specific training for sampling at hazardous waste sites is required by the Occupational Safety and Health Administration (OSHA) ( M . M. Walker, Geological and Environmental Services, Inc., personal communication, Nov. 1989). Proper planning and execution of safety protocols will help

to protect employees who perform the sampling from accidents and needless exposure to hazardous or potentially hazardous chemicals. Documentation of safety protocols will also be important in cases in which litigation and workers’ compensation issues are involved as the result of accidents during sampling episodes. Exposure of personnel to hazardous chemicals that can permeate their chemical protective clothing (CPC) is of concern whenever neat chemicals or chemicals in high concentrations are to be sampled (e.g., from some landfills and wastewater streams). Beware of material safety data sheets (MSDSs) that contain unspecific references to CPC selection (such as “use rubber gloves”). Many different polymers are used in CPC manufacture (e.g., PVC, neoprene, nitrile, and Teflon). Furthermore, variations in the manufacturing process can significantly affect the chemical permeation properties of a garment. Therefore, the manufacturer and product model can be of great importance when selecting CPC. Sometimes, many different manufacturers’ brochures must be reviewed before a selection can be made with confidence. Alternatively, the Chemical Protective Clothing Performance Index (7) with GlovES+ is available from ACS Software (Washington, DC; 1-800-227-5558) and leading CPC safety suppliers. These personal computer programs contain comprehensive

sources of chemical permeation data by manufacturer, polymer type, and chemical.

Quality assurance and control The planning-sampling-analysis-reporting chain is composed of many links, and the uncertainty in the final result is a function of the uncertainties in each step. There are opportunities for error in all parts of this chain, and the goal of quality assurance is to be able to identify, measure, and control these errors. The goal of quality improvement is to minimize or correct for the individual errors and the cumulative effect of them. The two parameters used most often to assess measurement quality objectives are bias and precision. Bias is a systematic deviation (error) in data. Precision is random variation in data. One objective of any sampling quality assurance program is to provide the type and number of quality control samples necessary to control and minimize the effects of bias and precision. Therefore, studies should incorporate enough samples (including extras) so that statistical and representativeness objectives are met. Sources and measurement of errors. Sampling operations can contribute to both systematic and random error. These components are interactive and are evaluated using appropriate statistical methods. Yet some aspects of sampling may cause large variations

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and cannot be treated strictly by statistics. Examples include the proper selection of sampling devices, storage containers, and preservation protocols. Bias resulting from sorption or reaction with container materials, sampling equipment, or material transfer lines can totally invalidate data generated from the samples. Deterioration from biologically mediated reactions, atmospheric contact, temperature instability, radiation, and interactions with other analytes can also cause serious biases. Field manipulations such as material transfers, filtrations, physical measurements, aliquot preparation, and spiking are common sources of potential bias from contamination. Wherever a possibility exists for introducing extraneous material into a collection, treatment, or analytical procedure, a blank should be devised to detect and measure the extraneous material. Blanks are matrices that have negligible or unmeasurable amounts of the substance of interest (8). Various types of blanks commonly used for environmental sampling include trip, field, equipment, and material blanks. These are supplemented with analytical blanks which may include laboratory, solvent, reagent, method, and instrument blanks. Analysis of samples is often expensive. Sometimes it is prudent to collect a full suite of blanks but analyze only the field blanks. If the field blanks indicate no problems, then the other blanks may be discarded or stored as necessary. If a problem is discovered, then the individual blanks can be analyzed to determine its source (9). Resampling will still likely be necessary. One caveat to this philosophy is the possibility of exceeding prescribed holding times of the other blanks, thereby rendering them invalid. When an extraction device is used instead of direct collection of the sample, then the field, storage, and transport blanks must include the corresponding extraction device. However, blank solid .. sorbents, such as Tenax and charcoal in particular, should remain_*sealeduntil they are opened for analysis as matrix blanks. This is because they will immediately begin to sorb volatile compounds from the surrounding air (J. B. Clements, EPA, personal communication, July 1989). Control standards and samples. There are basically two types of controls: those used to determine whether an analytical procedure is in statistical control, and those used to determine whether an analyte of interest is present in a population under study but not in a similar control population (9). Two types of standards are generally used to determine whether an analytical 614

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procedure is in control: check and laboratory control. Check standards are solutions containing the analytes of interest at comparable (often low) but known and measurable concentrations (9). They are used to ensure that calibration stays in control and that the detection limit is acceptable (E. G. Meier, EPA, personal communication, July 1989). Laboratory control standards are certified standards, generally supplied by an outside source (9). They are used to ensure that the accuracy of the analysis is in control (E. G. Meier, EPA, personal communication, July 1989). Two types of control samples are used to determine whether an analyte of interest is really present in the test samples under study: field spike and background (control site) samples. Control sites are further differentiated as “local control sites” and “area control sites.’’ Field spike samples (selected field samples to which known amounts of the analytes of interest are added during their collection in the field) (9) are used to identify field, transportation, and matrix effects (E. G. Meier, EPA, personal communication, July 1989). Background or control site or matrix samples (samples taken near in time and space to the sample of interest) are used to demonstrate whether the site being sampled is contaminated or truly different from the norm (E. G. Meier, EPA, personal communication, July 1989). Local control sites are usually adjacent to or very near the test sample sites. In contrast to a local control site, an area control site is in the same area (e.g., a city or county), as the sampling site but not adjacent to it. All possible efforts should be made to make the sites identical except for the presence of the species of interest at the site under investigation (9).

Sampling water matrices Representative samples. Waters can be very heterogeneous both spatially and temporally, thus making it difficult to obtain truly representative samples (E: G. Meier, EPA, personal communication, July 1989). Surface water sources. Significant variations in the chemical composition of lakes and ponds are possible depending on the season. Sometimes, the length of the sampling study is recommended to be about 10 times as long as the longest period of interest (IO);however, this is often not practical because of sampling costs. The composition of flowing waters such as streams is dependent on the flow and may also vary with the depth within the stream. When a single fixed intake point is used, it should be located

at about 60% of the stream depth in an area of maximum turbulence, and the intake velocity should be equal to or greater than the average water velocity (11). Stratification within bodies of water is common. In lakes shallower than about 5 meters, wind action usually causes mixing; rapidly flowing shallow rivers usually show no stratification, but deep rivers can exhibit it. Stratification is also common where two steams merge, such as at the point where an effluent enters a river. Stratification is also a problem with ocean sampling; various species may be stratified at different depths. In addition, the composition of near-shore waters is usually much different from that of waters far from shore. Estuarine sampling is even more complex because strata move up rivers unevenly (G. V. Cox, Chemical Manufacturers Association, personal communication, July 1989). Precipitation sources. Precipitation (snow, rain, fog, dew) can vary greatly in composition during the course of a sampling event. This is caused by meteorological conditions and variation in the atmospheric concentrations of species of interest. All data involving precipitation samples must include information on meteorological conditions and the sampling time in relation to the total precipitation event (12). Location of collection devices is especially important when sampling ice and snow because their chemical compositions reflect that of the surface waters from which they form, entrapped dust and plankton, the atmosphere, and their rate of formation. Initial snow and rain samples usually have higher concentrations of chemical contaminants than do samples collected later in the precipitation event. This is because the initial precipitation scrubs dust, other particulates, and water soluble gases (such as H2S, NO,, and SO3)out of the air as it falls. Groundwater sources. The vulnerability of groundwater to contamination is affected by depth to water, recharge rate, soil composition, topography (slope), as well as other parameters such as the volatility and persistence of the analytes being determined. When constructing monitoring wells, care must be taken during the drilling process not to cross contaminate aquifers with loosened topsoil possibly laden with agricultural or industrial chemicals (A. E. Dupuy, EPA, personal communication, July 1989). Material blanks are important because well construction and the materials used can profoundly influence the chemical composition of samples. Purging wells before collecting sam-

ples eliminates stagnant water. The method and rate of purging, time between purging and sampling, and sampling itself depends on the diameter, depth, and recharge rate of a well (13). The standard purge volume is that in which a stabilized concentration of the parameter of interest is obtained, and usually ranges from 3 to 10 well volumes (D. F? Steele, Environmental Resources Management, personal communication, July 1989). Common sampling problems. Contamination of water samples is always a problem. Furthermore, contamination increases in importance as concentration levels of the analytes decrease. Sampling devices and sample containers are always likely sources of contamination. Also, care must be taken to prevent carry-over from previous samples taken with the sampling device. Sampling protocols often recommend that samples from groundwater monitoring wells to be used for metals analyses be field-filtered under pressure before preservation and analysis. Samples collected for metals are usually acidified, and acidification of unfiltered samples can lead to dissolution of minerals from suspended clays. Samples to be collected for organic compounds analyses, however, are never filtered (M. J. Barcelona, Illinois State Water Survey, personal communication, July 1989). Sorption of analytes is also a common problem. PVC and plastics other than Teflon tend to sorb organics and leach plasticizers and other chemicals used in their manufacture. In addition, some pesticides and halogenated compounds strongly adsorb to glass. Therefore, when analyzing for these substances in water samples, i t is important not to prerinse the glass sample bottle with sample before collection. It is equally important at the laboratory to rinse the sample container with portions of extraction solvent after the water sample has been quantitatively transferred into the extraction apparatus (A. E. Dupuy, EPA, personal communication, July 1989). Sorption of metals at low concentrations on container walls is dependent on the metal species, concentration, pH, contact time, sample and container composition, presence of dissolved organic carbon, and complexing agents (IO). Preserving metals samples with acid usually prevents this problem. Sample preservation. The stability of analytes of interest depends on how well the samples are preserved. Preservation instructions must include specification of proper containers, pH, protection from light, absence of headspace, chemical addition, and temperature control as needed. The chem-

istry of all analytes must be considered and it should be recognized that certain reactions (e.g., hydrolysis), may still occur under recommended preservation conditions (w. T Donaldson, EPA, personal communication, July 1989). Holding time is the period of time a sample can be stored after collection and preservation and before preparation and analysis without significantly affecting the analytical results. Holding times vary with the analyte, preservation technique, and the analytical methodology used. Usually maximum holding times are specified by EPA and they must be considered and planned for when sampling and analysis protocols are being developed (M. Burns, Du Pont Environmental Remediation Services, Inc., personal communication, July 1989). Free chlorine in samples (such as drinking waters and treated wastewaters) can react with organic compounds to form chlorinated by-products. Sodium thiosulfate should be added to samples that contain free chlorine in order to remove it (14). An exception to this recommendation is when dihaloacetonitriles are to be analyzedthese compounds are degraded by sodium thiosulfate (15). Samples with photosensitive analytes (such as polynuclear aromatic hydrocarbons and bromo- or iodo- compounds) should be collected and stored in amber glass containers to protect them from light (14). The composition of water samples may also change because of microbiological activity; this is especially prevalent with organic analytes in wastewaters subjected to biological degradation. Therefore, these samples (and samples containing organic analytes in general) should be immediately cooled, stored, and shipped at low temperature (about 4 "C). Sometimes extreme pH conditions (high or low) or the addition of toxic chemicals are used to kill microorganisms, but this is not common because of their potential for reacting with other analytes (14). Analytes also may form insoluble salts (precipitates). The most common occurrence is precipitation of metal oxides and hydroxides due to metal ions reacting with oxygen. This precipitation is usually prevented by the addition of nitric acid; the combination of a low pH (less than 2) and nitrate ions keeps most metal ions in solution. Use of other acids (especially hydrochloric and sulfuric acids) may cause precipitation of insoluble salts or analytical interferences (14). Waters with cyanides or sulfides require preservation by addition of sodium hydroxide to ensure that hydrogen cyanide or hydrogen sulfide gas is

not evolved. Waters with ammonia are preserved by adding sulfuric acid. However, addition of sodium hydroxide or sulfuric acid may precipitate other cations (especially metals), so separate test samples are necessary when cyanides, sulfides, or ammonia are target analytes.

Sampling air matrices Common types of air samples include indoor, ambient (outdoor), and air from stacks or other kinds of emission exhausts (including automotive exhausts). Another type of air sampling being performed more frequently is the sampling of soil atmospheres. Samples of air from soils over and around landfill waste sites are increasingly being used to assess chemical pollutants in the soil (D. E! Steele, Environmental Resources Management, personal communication, July 1989). Representative samples. When sampling stationary emission sources (such as stacks), the sampling site and number of traverse points used for sample collection affect the quality of the data from air samples. Emission tests are based on the assumption that a sample obtained at a given point is representative; if this assumption is wrong it can cause serious problems. Because analyte concentration gradients can be very large, screening analyses are usually needed to measure their values prior to the main sampling effort. If samples are to retain representativeness, gaseous analytes must not react irreversibly with filter or sample container surfaces or with collected aerosol particles. Furthermore, collected aerosols must be handled in ways that will minimize release or retention of analytes. However, it is impossible to prevent losses of volatile analytes collected on filters (16).Also, filters must not be contaminated with materials that can convert to aerosols on the filter medium because this will cause false positives ( S . D. Ziman, Chevron USA, personal communication, July 1989). Sorbent sampling is fraught with problems of contamination, interferences, analyte capture efficiency, and recovery efficiency. However, it is also a very important and useful technique when used with appropriate controls. Breakthrough of volatile compounds before completion of sampling will cause errors in their measured concentrations. Therefore, two sorbent cartridges in series are used. When no detectable concentration of the analytes of interest (above background) is measured in the second cartridge, then no measurable breakthrough has occurred. Also, unknown reactions may occur on the sorbent or during solvent extraction Environ. Sci. Technol., Voi. 24,

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or thermal desorption. Comparison of analytical results from two different sorbents may provide documentation that unknown reactions did not occur. Obtaining representative samples from dry deposition (gravitational settling of particles and the aerodynamic exchange of trace gas and aerosol particles from air to a surface) requires that the monitoring site be within an area that is both spatially homogeneous and representative of the larger region of interest. Sampling protocols designed to provide information relative to dry deposition must document meteorological and surface components because, for many chemical species, deposition velocity is as variable a quantity as the concentration. Common sampling problems. Loss of analytes or reduced concentrations from irreversible sorption on the walls of sampling containers can cause very serious problems. Sorption or penetration of analytes with T d a r bags may occur, especially at typical ambient air concentrations, which are very low (R. G. Lewis, EPA, personal communication, July 1989).

Sampling biological matrices Sampling biota for chemical analysis presents unique challenges because of the vast size differences between species, variations within a study population, species mobility, and tissue differentiation. When sampling biota, factors to be considered include purpose of the study, homogeneity of the matrix, concentration of analytes, efficiency of extracting and concentrating, and sensitivity of the method to be employed. The nature of the organism, size of the population under consideration, and availability and cost of the material to be studied are factors that often complicate biota sampling. In addition, the analyte’s physical characteristics-such as phase, volatility, oxidation state, and chemical properties-have pronounced influences on sampling, and these characteristics help determine when, where, and how much material must be removed from the environment to ensure sample validity. Finally, the matrix itself and the distribution of the analyte throughout that matrix must be included when the homogeneity of the matrix is considered. Representative samples. Large variabilities and corresponding uncertainties often occur when sampling biological matrices. In many cases, statistical manipulation alone cannot reduce variability to manageable proportions; therefore, nonstatistical strategies often must be used also. The more that is known about the target population before sampling, the more readily the effects of variability can be taken into ac616

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count (17). Each individual in a biological population should have an equal probability of being included in the sample. Individual biological specimens included in a sample should be chosen at random from a well-defined population. Homogenization and common sense can help decrease the variability contribution from within-sample unit variability. The sample planner must decide what should be measured and how accurately. He or she also must decide what pieces or parts of the biota should be taken for samples and, equally important, what portions of a biological specimen should not be included in the samples. Documentation of the reasoning behind such decisions is extremely important (17). Common sampling problems. For biological materials the limiting factor often may be the availability of substrate. The concentration of the analyte may have a significant bearing on the sue of the sample. If the analyte is present in a very low concentration, the sample will have to be large enough to provide a measurable quantity of analyte. Sample size. In size reductions of nonhomogeneous samples, a selected portion of the sample is isolated for analysis because it is of special interest, represents the known accumulation site, contains the regulated commodity, or represents a limitation of the method. In size reductions of partially homogeneous samples, the sample (primary and secondary) can be made homogeneous by grinding, milling, blending, chopping, mixing, or similar physical processes. Then further subsampling by dividing, riffling, or taking aliquots will produce uniform portions of a size amenable to the analytical method and be representative of the whole. The size of the final subsample will be determined primarily by the concentration of the analyte, sensitivity of the method, and the capability of the analytical equipment. Sample preservation. Preservation should be kept as simple as possible. Freezing is a logical first choice for retarding decomposition of most analytes. Usually biological samples are placed and held in closed glass containers with inert seals or cap liners (18). If freezing is the method chosen, then whole samples should be frozen if possible. If aluminum foil is used to wrap the samples, the shiny side should not contact the sample because it is coated with a slip agent. Also, some aluminum foils contain trace levels of mercury, so they should not be used if mercury is a target analyte. The foil should first be washed with a solvent (such as acetone) and thoroughly dried (19).

Soils, solids, liquids, and sludges The format for presenting the monitoring data-points on maps, contours showing analyte levels and/or variations in confidence limits due to sampling density, charts for the overall program or subsets of the program, and aggregated data sets-should be determined first when designing the sampling plan. The frequency of sampling and the number of individual or composite samples needed depend on the time or spatial variability of the individual sampling sites and the precision required. Representative samples. Because sample heterogeneity often causes problems in soil, solid, sludge, and some liquid matrices, uncertainties associated with the representativeness of these types of samples frequently far exceed those inherent in their collection and analysis. Quantitation of analyte concentration uncertainties associated with the selection of samples often is not possible. In these instances, qualitative descriptions of the uncertainties caused by sampling limitations should be clearly described and the associated assumptions fully documented. Sometimes nonrepresentative samples of soils, solids, liquids, and sludges are deliberately collected. Initial studies at a waste site may focus on the most obviously contaminated areas. Although such samples will not represent the “average” condition, they will establish the “worst case” concentrations of the analytes of interest. Variability arises from the heterogeneity of samples, the size and distribution of the sampling population, and bias from the methods of sampling and analysis. Statistically acceptable values may deviate from the true values because statistically obtained samples include irrelevant data, use inappropriate methods of sampling and analysis, or are biased by systematically excluding parts of the population (20). Because many samples are heterogeneous, it is best to select as large a test sample as practical for sample preparation. An extract or digested solution will be more homogeneous and provide more reproducible aliquots than a smaller portion of the sample (2). Composite samples may be useful in overcoming the lack of homogeneity over time or in the distribution of chemical species, but compositing may dilute peak values of concern. Therefore, if peak concentrations of analytes are important, compositing should be supplemented with grab samples taken at sites where and at times when high values are suspected. Liquid waste samples in shallow containers or in pools on the ground may be poured or scooped into a sampling

container. Liquids in deep containers, such as barrels, are usually best sampled with a long hollow tube. When the tube is inserted into the barrel and the top of it is closed off, a column of the liquid can be withdrawn and placed in the sampling container. This technique provides a fairly representative sample of the liquid at all depths, which is especially important if a barrel contains stratified layers or multiple immiscible liquids. Common sampling problems. Sampling that disturbs the chemical composition of some wastes can be dangerous, and appropriate safety precautions are essential. Some wastes may even be explosive when disturbed. Loss of volatile compounds during sampling and handling of solid and semisolid materials is of special concern. In some cases, acquisition of samples exclusively for volatile analysis, using special sampling and haEdling procedures, may be appropriate. Sample preservation. In general, sample containers should be tightly sealed as soon as samples are taken, with an effort made to minimize headspace. The samples should be refrigerated as soon as possible, refrigeration should be maintained until analysis, and the samples should be analyzed as soon as possible (2). If extraction or acid digestion is required, these procedures should be carried out as soon as possible. Then the extracts or digested solutions can be held for the prescribed holding times. Either entire core samples, or large portions of them, should be shipped to a laboratory, wrapped in solventwashed and dried aluminum foil, or sealed in glass bottles. The most frequent changes in samples of solids, liquids, and sludges are loss of volatiles, biodegradation, oxidation, or reduction. Low temperatures reduce biodegradation and sometimes loss of volatiles, but freezing watercontaining samples can cause degassing, fracture the sample, or cause a slightly immiscible phase to separate. Anaerobic samples must not be exposed to air (2).

Conclusion There are many ways of obtaining good and representative samples. The key to success lies in keeping the goals of the project in perspective, maintaining frequent communication with all parties involved, and having a solid background of experience and knowledge, a sound quality assurance-quality control program, and last but not least, common sense. Deficiencies in any of these attributes make the job a whole lot harder and decrease chances of success.

Acknowledgment This summary was prepared under the auspices of the American Chemical Society’s Committee on Environmental Improvement at the suggestion of Glenn E. Schweitzer. Draft summaries of the sections on the water; biological; and solids, liquids, and sludges matrices were written by David L. Smith, James N. Seiber, and Glenn E. Schweitzer, respectively, from Principles of Environmental Sampling. The author gratefully acknowledges the suggestions provided by the following peer reviewers: Richard Alabert, Food and Drug Administration; Julian B. Andelman, University of Pittsburgh; Michael J. Barcelona, Illinois State Water Survey; Stuart C. Black, EPA; Olin C. Braids, Blasland, Bouck & Lee; Michael E. Burns, Du Pont Environmental Remediation Services; John B. Clements, EPA; William A. Coakley, EPA; Ursela M. Cowgill, Dow Chemical; Geraldine V. Cox, Chemical Manufacturers Association; William T. Donaldson, EPA; Aubry E. Dupuy, EPA; Alan Elserman, Clemson University; Evan J . Englund, EPA; Joseph B. Ferrario, EPA; George T Flatman, EPA; Allan M. Ford, Monsanto; Lew French, ICF Kaiser Engineers; Forest C. Garner, Lockheed; Fred Haeberer, EPA; David Haile, Monsanto; Deborah C. Hockman, WMI Environmental Monitoring Labs; Michael T. Homsher, National Sanitation Foundation; Andre G. J o u r n e l , Stanford University; S h r i Kulkarni, Research Triangle Institute; Robert Lewis, EPA; James I? Lodge, consultant; Eugene I? Meier, EPA; Michael J. M e ssne r, Re search Tr i ang 1e I n st i t u t e ; Roger A. Minear, University of Illinois; Lorance H. Newburn, ISCO; Jerry L. Parr, Enseco; Marvin D. Piwoni, Illinois Hazardous Waste Research and Information Center; Margaret Rostker, EPA; Glenn E. Schweitzer, Soviet and East European Affairs, National Research Council, NAS; Guy F. Simes, EPA; Franklin Smith, Research Triangle Institute; Terry D. Spittler, Cornel1 University; Martin A. Stapanian, Lockheed; David I? Steele, Environmental Resources Management; William A. Telliard, EPA; Sheri J. Tonn, Pacific Lutheran University; William T. Trotter, Food and Drug Administration; Victor Turoski, James River Research Center; A1 W. Verstuyft, Chevron Research; Llewellyn R. Williams, EPA; Mary M. Walker, Geological and Environmental Services, Inc.; and Stephen D. Ziman, Chevron U.S.A.

Kent, R. T.; In Principles of Environmental Sampling; Keith, L. H., Ed.; American Chemical Society: Washington, DC, 1988; p. 231. Forsberg, K. In Chemical Protective Clothing Performance Index; Keith, L. H., Ed.; Instant Reference Sources, Inc.: Austin, TX, 1989. Lewis, D. L. In Principles of Environmental Sampling; Keith, L. H., Ed.; American Chemical Society: Washington, DC 1988; p. 119. Black, S. C. In Principles of Environmental Sampling; Keith, L. H., Ed.; American Chemical Society: Washington, DC, 1988; p. 109. Cowgill, U. M., In Principles of Environmental Sampling; Keith, L. H., Ed.; American Chemical Society: Washington, DC, 1988; p. 171. Newburn, L. H. In Principles of Environmental Sampling; Keith, L. H., Ed.; American Chemical Society: Washington, DC, 1988; p. 225. Tanner, R. L. In Principles of Environmental Sampling; Keith, L. H., Ed.; American Chemical Society: Washington, DC, 1988; p. 275. Smith, J. S. et al. In Principles of Environmental Sampling; Keith, L. H., Ed.; American Chemical Society: Washington, DC, 1988; p. 225. Parr, J. L. et al. In Principles of Environmental Sampling; Keith, L. H., Ed.; American Chemical Society: Washington, DC, 1988; p. 22 1. Trehey, M. L.; Bieber, T. I. In Advances in the Identijcation and Analysis of Organic Pollutants in Water; Keith, L. H., Ed.; Ann Arbor Science: Ann Arbor, MI, 1981; D. 491. (16) Lewis,. R. G. Proceedings, 1986 EPA/

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APCA Symposium on Measurement of Toxic Air Pollutants; Air and Waste Management Association: Pittsburgh, PA, 1986; APCA Special Publication VIP-7; pp. 134-45. Alabert, R.; Horwitz, H. In Principles of Environmental Sampling; Keith, L. H., Ed.; American Chemical Society: Washington, DC, 1988; p. 337. Spittler, T. D.; Bourke, J. B. In Principles of Environmental Sampling; Keith, L. H., Ed.; American Chemical Society: Washington, DC, 1988; p. 375. Norris, J. E. In Principles of Environmental Sampling; Keith, L. H., Ed.; American Chemical Society: Washington, DC, 1988; p. 247. Triegal, E. K. In Principles of Environmental Sampling; Keith, L. H., Ed.; American Chemical Society: Washington, DC, 1988; p. 385.

References Keith, L. H. In Principles of Environmental Analyses; Keith, L. H., Ed.; American Chemical Society: Washington, DC, 1988; p. 86. Bone, L. T. In Principles of Environmental Sampling; Keith, L. H., Ed.; American Chemical Society: Washington, DC, 1988; p. 409. Barcelona, M. J. In Principles of Environmental Sampling; Keith, L. H., Ed.; American Chemical Society; Washington, DC, 1988; p. 3. Taylor, J. K. In Principles of Environmental Sampling; Keith, L. H., Ed.; American Chemical Societv: Washington, DC, 1988; p. 101. (5) Borgman, L. E.; Quinby, W. E In Principles of Environmental Sampling; Keith, L. H., Ed.; American Chemical Society: Washington, DC, 1988; p. 25.

I .

Lawrence H . Keith is a senior program

manager and principal scientist at Radian Corporation in Austin, lX.A former EPA research chemist, he has been developing and implementing methodology for environmental sampling and analysis for more than 20 years. He is past chair of the ACS Division of Environmental Chemistry and present chair of the CEI Subcommittee on Environmental Monitoring and Analysis. Environ. Sci. Technol., Vol. 24, No. 5, 1990 617