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Non-point source evaluation of groundwater nitrate contamination from agriculture under geologic uncertainty

机译:地质不确定性下农业地下水硝酸盐污染的非点源评价

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摘要

The long-term effect of non-point source pollution on groundwater from agricultural practices is a major concern globally. Non-point source pollutants such as nitrate that occurs through fertilizers and animal waste eventually make their way into the aquifer by infiltrating soil. The goal of this study is to develop an approach for characterization of nitrate concentrations at potential source locations under conditions of geologic uncertainty. A Bayesian framework using the Markov Chain Monte Carlo (MCMC) approach is developed to estimate posterior probability distributions of non-point sources by incorporating nitrate concentration data as well as geologic uncertainties. The proposed approach is tested using hypothetical contamination scenarios and then validated using an application case study in North Carolina. Uncertainty existing in geologic formation (i.e., heterogeneous hydraulic conductivity field) is treated as prior and used in evaluating the likelihood function that measures the match between observed and simulated concentrations. The likelihood function computation involves a numerical model that simulates nitrate transport in groundwater from non-point agricultural sources and predicts nitrate concentrations at observation wells. Effectiveness of the MCMC approach is evaluated through a convergence analysis. Comparison among different sampling algorithms is carried out with respect to MCMC convergence diagnostics and making inference. The Bayesian inference analysis methodology developed in this research will help decision makers and water managers to identify potential areas for source containment and decide if further sampling is required.
机译:非点源污染对农业实践地下水的长期影响是全球的主要关注点。非点源污染物如肥料和动物废物发生的硝酸盐最终通过渗透土壤来进入含水层。本研究的目标是在地质不确定性条件下开发一种在潜在源位置表征硝酸盐浓度的方法。使用Markov Chain Monte Carlo(MCMC)方法的贝叶斯框架是通过将硝酸盐浓度数据以及地质不确定性纳入非点源的后验概率分布而开发。使用假设的污染方案测试所提出的方法,然后在北卡罗来纳州使用申请案例进行验证。在地质形成(即,异质液压导电场)中存在的不确定性被视为先前并用于评估测量观察和模拟浓度之间匹配的似然函数。似然函数计算涉及一种数值模型,该模型模拟从非点农业来源地下水中的硝酸盐传输,并预测观察孔的硝酸盐浓度。通过收敛分析评估MCMC方法的有效性。在MCMC收敛诊断和推理中执行不同采样算法之间的比较。该研究中开发的贝叶斯推理分析方法将有助于决策者和水管理人员识别潜在地区的来源遏制,并决定是否需要进一步采样。

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