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Statistical Modeling of Global Geogenic Arsenic Contamination in Groundwater

机译:地下水中全球地质砷污染的统计模型

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Contamination of groundwaters with geogenic arsenic poses a major health risk to millions of people. Although the main geochemical mechanisms of arsenic mobilization are well understood, the worldwide scale of affected regions is still unknown. In this study we used a large database of measured arsenic concentration in groundwaters (around 20,000 data points) from around the world as well as digital maps of physical characteristics such as soil, geology, climate, and elevation to model probability maps of global arsenic contamination. A novel rule-based statistical procedure was used to combine the physical data and expert knowledge to delineate two process regions for arsenic mobilization: "reducing" and "high-pH/ oxidizing". Arsenic concentrations were modeled in each region using regression analysis and adaptive neuro-fuzzy inferencing followed by Latin hypercube sampling for uncertainty propagation to produce probability maps. The derived global arsenic models could benefit from more accurate geologic information and aquifer chemical/physical information. Using some proxy surface information, however, the models explained 77% of arsenic variation in reducing regions and 68% of arsenic variation in high-pH/oxidizing regions. The probability maps based on the above models correspond well with the known contaminated regions around the world and delineate new untested areas that have a high probability of arsenic contamination. Notable among these regions are South East and North West of China in Asia, Central Australia, New Zealand, Northern Afghanistan, and Northern Mali and Zambia in Africa.
机译:地质砷污染了地下水,对数百万人口构成了重大健康风险。尽管人们对砷迁移的主要地球化学机制已经了如指掌,但受影响地区的全球范围仍然未知。在这项研究中,我们使用了一个大型数据库,该数据库测量了来自世界各地的地下水中的砷浓度(约20,000个数据点),以及诸如土壤,地质,气候和海拔等物理特征的数字地图,以建模全球砷污染的概率图。 。一种新颖的基于规则的统计程序被用于结合物理数据和专家知识来描绘砷迁移的两个过程区域:“还原”和“高pH /氧化”。使用回归分析和自适应神经模糊推理对每个区域中的砷浓度进行建模,然后进行拉丁超立方体采样以进行不确定性传播,从而生成概率图。导出的全球砷模型可以受益于更准确的地质信息和含水层化学/物理信息。然而,使用一些替代表面信息,模型解释了还原区中77%的砷变化和高pH /氧化区中68%的砷变化。基于上述模型的概率图与世界上已知的受污染区域非常吻合,并勾勒出新的未经测试的区域,这些区域极有可能被砷污染。这些地区中值得注意的是亚洲的中国东南部和西北部,中部澳大利亚,新西兰,阿富汗北部以及非洲的马里北部和赞比亚。

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