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Geostatistical modeling of the spatial variability of arsenic in groundwater of southeast Michigan

机译:密歇根州东南部地下水中砷空间变异的地统计学模型

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摘要

During the last decade one has witnessed an increasing interest in assessing health risks caused by exposure to contaminants present in the soil, air, and water. A key component of any exposure study is a reliable model for the space-time distribution of pollutants. This paper compares the performances of multi-Gaussian and indicator kriging for modeling probabilistically the spatial distribution of arsenic concentrations in groundwater of southeast Michigan, accounting for arsenic data collected at private residential wells and the hydrogeochemistry of the area. The arsenic data set, which was provided by the Michigan Department of Environmental Quality (MDEQ), includes measurements collected between 1993 and 2002 at 8212 different wells. Factorial kriging was used to filter the short-range spatial variability in arsenic concentration, leading to a significant increase (17-65%) in the proportion of variance explained by secondary information, such as type of unconsolidated deposits and proximity to Marshall Sandstone subcrop. Cross validation of well data shows that accounting for this regional background does not improve the local prediction of arsenic, which reveals the presence of unexplained sources of variability and the importance of modeling the uncertainty attached to these predictions. Slightly more precise models of uncertainty were obtained using indicator kriging. Well data collected in 2004 were compared to the prediction model and best results were found for soft indicator kriging which has a mean absolute error of 5.6 μg/L. Although this error is large with respect to the USEPA standard of 10 μg/L, it is smaller than the average difference (12.53 μg/L) between data collected at the same well and day, as reported in the MDEQ data set. Thus the uncertainty attached to the sampled values themselves, which arises from laboratory errors and lack of information regarding the sample origin, contributes to the poor accuracy of the geostatistical predictions in southeast Michigan.
机译:在过去的十年中,人们越来越关注评估由于暴露于土壤,空气和水中的污染物而引起的健康风险。任何暴露研究的关键组成部分是污染物时空分布的可靠模型。本文比较了多高斯和指示克里格法在概率上模拟密歇根州东南部地下水中砷浓度的空间分布的性能,这些方法考虑了在私人住宅井处收集的砷数据和该地区的水文地球化学。密歇根州环境质量部(MDEQ)提供的砷数据集包括1993年至2002年之间在8212口不同井中收集的测量数据。阶乘克里金法用于过滤砷浓度的短期空间变异性,导致次级信息所解释的变异比例显着增加(17-65%),例如,非固结矿床的类型和与马歇尔砂岩子作物的接近程度。井数据的交叉验证表明,解释该区域性背景并不能改善砷的局部预测,这表明存在无法解释的变异性来源,并且对建模与这些预测有关的不确定性具有重要性。使用指标克里金法获得了稍微更精确的不确定性模型。将2004年收集的油井数据与预测模型进行比较,发现软指标克里金法的最佳结果,其平均绝对误差为5.6μg/ L。尽管相对于10 µg / L的USEPA标准而言,此误差很大,但它小于MDEQ数据集中报告的同一天和同一天收集的数据之间的平均差(12.53μg/ L)。因此,由于实验室误差和缺乏有关样品来源的信息而引起的与采样值本身相关的不确定性,导致密歇根州东南部地统计学预测的准确性较差。

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