寻找代表性:发展环境数据质量模型。

D M Crumbling
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引用次数: 31

摘要

环境监管政策提出了一个“健全科学”的目标。良好的科学实践是建立在对不确定性的系统识别和管理之上的;也就是说,知识差距会影响我们做出准确预测的能力。预测有关污染场地的风险和减少风险的决定的后果需要一个场地污染的性质和程度的准确模型,这反过来又需要测量复杂环境基质中的污染物浓度。在过去的二三十年里,完善分析测试以执行这些测量已经消耗了监管部门的巨大注意力。然而,尽管环境分析能力有了很大提高,但对数据质量不足的抱怨仍然很多。本文认为,将环境数据质量等同于分析质量的第一代数据质量模型是一个有用的起点,但它是不够的,因为它对被统称为“代表性”的多方面问题的影响视而不见。为了在环境恢复项目中实现“健全科学”的政策目标,必须更新环境数据质量模型,以识别和管理从异构环境矩阵中生成代表性数据所涉及的不确定性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
In search of representativeness: evolving the environmental data quality model.

Environmental regulatory policy states a goal of "sound science." The practice of good science is founded on the systematic identification and management of uncertainties; i.e., knowledge gaps that compromise our ability to make accurate predictions. Predicting the consequences of decisions about risk and risk reduction at contaminated sites requires an accurate model of the nature and extent of site contamination, which in turn requires measuring contaminant concentrations in complex environmental matrices. Perfecting analytical tests to perform those measurements has consumed tremendous regulatory attention for the past 20-30 years. Yet, despite great improvements in environmental analytical capability, complaints about inadequate data quality still abound. This paper argues that the first generation data quality model that equated environmental data quality with analytical quality was a useful starting point, but it is insufficient because it is blind to the repercussions of multifaceted issues collectively termed "representativeness." To achieve policy goals of "sound science" in environmental restoration projects, the environmental data quality model must be updated to recognize and manage the uncertainties involved in generating representative data from heterogeneous environmental matrices.

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