Improving decision quality: Making the case for adopting next-generation site characterization practices
Better site characterization is critical for cheaper, faster, and more effective cleanup. This fact is especially true as cleanup decisions increasingly include site redevelopment and reuse considerations. However, established attitudes about what constitutes “data quality” create many barriers to e...
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Veröffentlicht in: | Remediation (New York, N.Y.) N.Y.), 2003, Vol.13 (2), p.91-111 |
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creator | Crumbling, Deana M. Griffith, Jennifer Powell, Dan M. |
description | Better site characterization is critical for cheaper, faster, and more effective cleanup. This fact is especially
true as cleanup decisions increasingly include site redevelopment and reuse considerations. However, established
attitudes about what constitutes “data quality” create many barriers to exciting new tools capable of
achieving better characterization, slowing their dissemination into the mainstream. Traditional approaches to
environmental “data quality” rest on simplifying assumptions that are rarely acknowledged by the
environmental community. Data quality assessments focus on the quality of the analysis, while seldom asking what
impact matrix heterogeneity has had on analytical results. Assessments of data quality typically assume that
chemical contaminants are distributed nearly homogeneously throughout environmental matrices and that
contaminant‐matrix interactions are well behaved during analysis. Yet, these assumptions seldom hold true for
real‐world matrices and contaminants at scales relevant to accurate risk assessment and efficient remedial
design. For the site cleanup industry to continue technical advancement, over‐simplified paradigms must give
way to next‐generation models that are built on current scientific understanding. If reuse programs such as
Brownfields are to thrive, the scientific defensibility of individual projects must be maintained at the same time
as characterization and cleanup costs are lowered. The U.S. Environmental Protection Agency (EPA) offers
the Triad Approach as an alternative paradigm to foster highly defensible, yet extremely cost‐effective reuse
decisions. © 2003 Wiley Periodicals, Inc. |
doi_str_mv | 10.1002/rem.10066 |
format | Article |
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true as cleanup decisions increasingly include site redevelopment and reuse considerations. However, established
attitudes about what constitutes “data quality” create many barriers to exciting new tools capable of
achieving better characterization, slowing their dissemination into the mainstream. Traditional approaches to
environmental “data quality” rest on simplifying assumptions that are rarely acknowledged by the
environmental community. Data quality assessments focus on the quality of the analysis, while seldom asking what
impact matrix heterogeneity has had on analytical results. Assessments of data quality typically assume that
chemical contaminants are distributed nearly homogeneously throughout environmental matrices and that
contaminant‐matrix interactions are well behaved during analysis. Yet, these assumptions seldom hold true for
real‐world matrices and contaminants at scales relevant to accurate risk assessment and efficient remedial
design. For the site cleanup industry to continue technical advancement, over‐simplified paradigms must give
way to next‐generation models that are built on current scientific understanding. If reuse programs such as
Brownfields are to thrive, the scientific defensibility of individual projects must be maintained at the same time
as characterization and cleanup costs are lowered. The U.S. Environmental Protection Agency (EPA) offers
the Triad Approach as an alternative paradigm to foster highly defensible, yet extremely cost‐effective reuse
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true as cleanup decisions increasingly include site redevelopment and reuse considerations. However, established
attitudes about what constitutes “data quality” create many barriers to exciting new tools capable of
achieving better characterization, slowing their dissemination into the mainstream. Traditional approaches to
environmental “data quality” rest on simplifying assumptions that are rarely acknowledged by the
environmental community. Data quality assessments focus on the quality of the analysis, while seldom asking what
impact matrix heterogeneity has had on analytical results. Assessments of data quality typically assume that
chemical contaminants are distributed nearly homogeneously throughout environmental matrices and that
contaminant‐matrix interactions are well behaved during analysis. Yet, these assumptions seldom hold true for
real‐world matrices and contaminants at scales relevant to accurate risk assessment and efficient remedial
design. For the site cleanup industry to continue technical advancement, over‐simplified paradigms must give
way to next‐generation models that are built on current scientific understanding. If reuse programs such as
Brownfields are to thrive, the scientific defensibility of individual projects must be maintained at the same time
as characterization and cleanup costs are lowered. The U.S. Environmental Protection Agency (EPA) offers
the Triad Approach as an alternative paradigm to foster highly defensible, yet extremely cost‐effective reuse
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true as cleanup decisions increasingly include site redevelopment and reuse considerations. However, established
attitudes about what constitutes “data quality” create many barriers to exciting new tools capable of
achieving better characterization, slowing their dissemination into the mainstream. Traditional approaches to
environmental “data quality” rest on simplifying assumptions that are rarely acknowledged by the
environmental community. Data quality assessments focus on the quality of the analysis, while seldom asking what
impact matrix heterogeneity has had on analytical results. Assessments of data quality typically assume that
chemical contaminants are distributed nearly homogeneously throughout environmental matrices and that
contaminant‐matrix interactions are well behaved during analysis. Yet, these assumptions seldom hold true for
real‐world matrices and contaminants at scales relevant to accurate risk assessment and efficient remedial
design. For the site cleanup industry to continue technical advancement, over‐simplified paradigms must give
way to next‐generation models that are built on current scientific understanding. If reuse programs such as
Brownfields are to thrive, the scientific defensibility of individual projects must be maintained at the same time
as characterization and cleanup costs are lowered. The U.S. Environmental Protection Agency (EPA) offers
the Triad Approach as an alternative paradigm to foster highly defensible, yet extremely cost‐effective reuse
decisions. © 2003 Wiley Periodicals, Inc.</abstract><cop>New York</cop><pub>Wiley Subscription Services, Inc., A Wiley Company</pub><doi>10.1002/rem.10066</doi><tpages>21</tpages></addata></record> |
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title | Improving decision quality: Making the case for adopting next-generation site characterization practices |
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