Geologic predictors of drinking water well contamination in North Carolina

Taylor R. Alvarado, Robert E. Austin, Phillip J. Bradley, Lauren A. Eaves, Rebecca C. Fry, Andrew George, Kathleen M. Gray, Jason A. Osborne, Miroslav Stýblo, David S. Vinson, Owen W. Duckworth
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Abstract

More than 200 million people worldwide, including 11 million in the US, are estimated to consume water containing arsenic (As) concentrations that exceed World Health Organization and US EPA standards. In most cases, the As found in drinking water wells results from interactions between groundwater and geologic materials (geogenic contamination). To that end, we used the NCWELL database, which contains chemical information for 117,960 private drinking wells across North Carolina, to determine the spatial distribution of wells containing As contaminated water within geologic units. Specific geologic units had large percentages (up to 1 in 3) of wells with water exceeding the EPA As maximum contaminant level (MCL, 10 μg/L), both revealing significant variation within areas that have been previously associated with As contamination and identifying as yet unidentified problematic geologic units. For the 19 geologic units that have >5% of wells that contain water with As concentrations in exceedance of 10 μg/L, 12 (63%) are lithogenically related to the Albemarle arc, remnants of an ancient volcanic island, indicating the importance of volcanogenic materials, as well as recycled (eroded and deposited) and metamorphosed volcanogenic material. Within geologic units, wells that have As concentrations exceeding 10 μg/L tended to have pH values greater than wells with As concentrations less than 10 μg/L, emphasizing the importance of the extent of interaction between groundwater and geologic materials. Using census information with the geologic-based exceedance percentages revealed the importance of regional geology on estimates of population at risk compared to estimates based on county boundaries. Results illustrate that relating As contamination to geologic units not only helps explain sources of geogenic contamination but sharpens the identification of communities at risk for exposure and further illuminates problematic areas through geologic interpretation.
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北卡罗来纳州饮用水井污染的地质预测因素
据估计,全球有超过 2 亿人(包括美国的 1100 万人)饮用的水中砷 (As) 的浓度超过了世界卫生组织和美国环保局的标准。在大多数情况下,饮用水井中发现的砷是地下水与地质材料相互作用(地质污染)的结果。为此,我们使用 NCWELL 数据库(其中包含北卡罗来纳州 117,960 口私人饮用水井的化学信息)来确定地质单元中含有砷污染水的水井的空间分布。特定地质单元中,水质超过美国环保署砷最高污染水平(MCL,10 μg/L)的水井所占比例很大(高达三分之一),这既揭示了以前与砷污染有关的区域内的显著差异,也确定了尚未确定的问题地质单元。在含有砷浓度超过 10 μg/L 的水井比例大于 5% 的 19 个地质单元中,有 12 个(63%)与阿尔伯马尔弧(古代火山岛的遗迹)在岩石构造上有关,这表明火山生成物以及再循环(侵蚀和沉积)和变质火山生成物的重要性。在地质单元内,砷浓度超过 10 μg/L 的水井的 pH 值往往高于砷浓度低于 10 μg/L 的水井,这强调了地下水与地质材料之间相互作用程度的重要性。将人口普查信息与基于地质的超标百分比结合使用,可以发现与基于县界的估计值相比,区域地质对风险人口的估计值非常重要。结果表明,将砷污染与地质单元联系起来,不仅有助于解释地质污染的来源,还能更清晰地识别有接触风险的社区,并通过地质解释进一步揭示有问题的区域。
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