Auburn University, Department of Geosciences, 2050 Beard Eaves Coliseum, Auburn, AL, 36849, USA.
J Environ Manage. 2021 Feb 15;280:111683. doi: 10.1016/j.jenvman.2020.111683. Epub 2020 Nov 24.
Arsenic (As) contamination in groundwater is a global crisis that is known to cause cancers of the skin, bladder, and lungs, among other health issues, and affects millions of people around the world. Due to the time and financial constraints associated with establishing in-depth monitoring programs, it is difficult to monitor and map arsenic concentrations over time and across large areas. The goal of this study was to determine the most accurate Geographic Information Systems (GIS) interpolation method for mapping the effects of bioremediation on groundwater arsenic sequestration across a local-scale study area in northwest Florida (~900 m) over the duration of a nine-month period (pre-injection, one-month post-injection, and nine-months post-injection). We used groundwater data collected from 2018 to 2019 to visualize arsenic contamination over time. Measured arsenic concentrations from 23 wells were grouped into three categories: (1) decreasing, (2) fluctuating, or (3) largely unaffected by the bioremediation procedure. The accuracy of three interpolation methods was also investigated: Inverse Distance Weighted (IDW), Ordinary Kriging (OK), and Empirical Bayesian Kriging (EBK). Statistical results using the leave-one-out cross validation (LOOCV) process showed that OK consistently provided the most accurate predictions of arsenic concentrations across space and time ([Root Mean Square Error (RMSE) = 0.265] and accurately predicted regulatory arsenic concentrations below 0.05 mg/L in nine of 11 wells, while IDW and EBK only accurately predicted four and five wells, respectively. While it was shown that OK tends to underpredict arsenic maxima, this did not affect the overall accuracy of the interpolation compared to results from EBK (RMSE = 0.297) and IDW (RMSE = 0.272). Overall, these interpolations aided in the interpretation of the extent of bioremediation, revealing the need for repeated injections to continuously remove arsenic from the groundwater. The study will provide guidance and evaluation methods for international and governmental organizations, industrial companies, and local communities on how to understand spatial and temporal distributions of arsenic contamination and inform bioremediation efforts at various scales in the future.
砷(As)污染地下水是一个全球性的危机,已知会导致皮肤癌、膀胱癌和肺癌等健康问题,影响着全球数百万人。由于建立深入监测计划的时间和资金限制,难以随着时间的推移和在大面积范围内监测和绘制砷浓度图。本研究的目的是确定最准确的地理信息系统(GIS)插值方法,以绘制在佛罗里达州西北部局部研究区域(~900 m)内,在九个月的时间内(注射前、注射后一个月和注射后九个月),生物修复对地下水砷固定的影响。我们使用 2018 年至 2019 年收集的地下水数据来随时间可视化砷污染。将 23 口井的测量砷浓度分为三类:(1)减少,(2)波动,或(3)基本不受生物修复过程影响。还研究了三种插值方法的准确性:反距离加权(IDW)、普通克里金(OK)和经验贝叶斯克里金(EBK)。使用留一交叉验证(LOOCV)过程的统计结果表明,OK 始终能够最准确地预测空间和时间上的砷浓度([均方根误差(RMSE)= 0.265],并准确预测了 11 口井中的 9 口井的监管砷浓度低于 0.05 mg/L,而 IDW 和 EBK 仅分别准确预测了 4 口和 5 口井。虽然 OK 倾向于低估砷的最大值,但与 EBK(RMSE = 0.297)和 IDW(RMSE = 0.272)的结果相比,这并没有影响插值的整体准确性。总体而言,这些插值方法有助于解释生物修复的程度,揭示需要重复注射以从地下水中持续去除砷。该研究将为国际和政府组织、工业公司以及当地社区提供指导和评估方法,以了解砷污染的时空分布,并为未来各种规模的生物修复工作提供信息。