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Incremental Sampling Methodology: Applications for Background Screening Assessments

机译:增量采样方法:背景筛选评估的应用

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This article presents the findings from a numerical simulation study that was conducted to evaluate the performance of alternative statistical analysis methods for background screening assessments when data sets are generated with incremental sampling methods (ISMs). A wide range of background and site conditions are represented in order to test different ISM sampling designs. Both hypothesis tests and upper tolerance limit (UTL) screening methods were implemented following U.S. Environmental Protection Agency (USEPA) guidance for specifying error rates. The simulations show that hypothesis testing using two-sample t-tests can meet standard performance criteria under a wide range of conditions, even with relatively small sample sizes. Key factors that affect the performance include unequal population variances and small absolute differences in population means. UTL methods are generally not recommended due to conceptual limitations in the technique when applied to ISM data sets from single decision units and due to insufficient power given standard statistical sample sizes from ISM.
机译:本文介绍了一项数值模拟研究的结果,该研究旨在评估使用增量采样方法(ISM)生成数据集时用于背景筛选评估的替代统计分析方法的性能。为了测试不同的ISM采样设计,代表了广泛的背景和现场条件。假设检验和容许上限(UTL)筛查方法均根据美国环境保护局(USEPA)规定的错误率指南进行。仿真表明,使用两样本t检验进行的假设检验即使在样本量相对较小的情况下,也可以在各种条件下满足标准性能标准。影响绩效的关键因素包括不均等的总体方差和总体均值的微小绝对差异。通常不建议使用UTL方法,这是因为在将技术应用于单个决策单元的ISM数据集时,该技术存在概念上的局限性,并且由于给定ISM的标准统计样本量而导致的能力不足。

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