Department of Chemistry, University at Buffalo, State University of New York, Buffalo, NY 14260-3000, USA.
Environ Pollut. 2012 Nov;170:52-62. doi: 10.1016/j.envpol.2012.06.006. Epub 2012 Jul 4.
Soil remediation plans are often dictated by areas of jurisdiction or property lines instead of scientific information. This study exemplifies how geostatistically interpolated surfaces can substantially improve remediation planning. Ordinary kriging, ordinary co-kriging, and inverse distance weighting spatial interpolation methods were compared for analyzing surface and sub-surface soil sample data originally collected by the US EPA and researchers at the University at Buffalo in Hickory Woods, an industrial-residential neighborhood in Buffalo, NY, where both lead and arsenic contamination is present. Past clean-up efforts estimated contamination levels from point samples, but parcel and agency jurisdiction boundaries were used to define remediation sites, rather than geostatistical models estimating the spatial behavior of the contaminants in the soil. Residents were understandably dissatisfied with the arbitrariness of the remediation plan. In this study we show how geostatistical mapping and participatory assessment can make soil remediation scientifically defensible, socially acceptable, and economically feasible.
土壤修复计划通常由管辖区域或产权线决定,而不是根据科学信息。本研究举例说明了地质统计学插值曲面如何能够显著改善修复规划。本文比较了普通克里金法、普通协同克里金法和反向距离加权空间插值方法,用于分析最初由美国环保署和纽约州布法罗市比奇伍德市的布法罗大学的研究人员收集的表层和次表层土壤样本数据,该地区同时存在铅和砷污染。过去的清理工作是根据点样本估计污染水平,但修复地点是根据包裹和机构管辖边界来定义的,而不是利用地质统计学模型来估计土壤中污染物的空间行为。居民对修复计划的任意性感到不满是可以理解的。在本研究中,我们展示了如何通过地质统计学制图和参与式评估使土壤修复在科学上站得住脚、在社会上可以接受、在经济上可行。