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Assessing Human Health Risk to DNAPLs Exposure in Bayesian Uncertainty Analysis

机译:在贝叶斯不确定性分析中评估DNAPLs暴露的人类健康风险

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摘要

The human health risk (HHR) assessment to dense non-aqueous phase liquids (DNAPLs) exposure has become an important part of groundwater environment management. Usually, DNAPL transport models are applied to simulate the concentration distribution of contaminant for HHR assessment. The present paper studied the influences of model uncertainties on the HHR assessment, and the metric of Incremental Lifetime Cancer Risk (ILCR) was used to quantify HHR. The impacts of permeability's heterogeneity and the structure of DNAPL transport model (e.g., the constitutive model) on HHR assessment were evaluated based on a synthetical DNAPL transport model. The results demonstrate that, compared with the low heterogeneity, the high heterogeneity leads to lower average ILCR value at the control planes near the source zone, and higher average ILCR value at the control planes far away from the source zone. In addition, the HHR assessments would be inconsistent for the two constitutive models, i.e., Stone-Parker (S-P) and Corey-van Genuchten (C-v) models. Compared with the HHR assessment depending on C-v model, the mean of ILCR's probability distribution produced by S-P model is larger at the control planes near the source zone, and smaller at the control planes far away from the source zone. Moreover, based on a sandbox experiment, the impact of parameter uncertainty of DNAPL transport model on HHR assessment was evaluated by Markov chain Monte Carlo (MCMC) simulation. The results show that it is infeasible and risky to assess HHR by the specific parameters of contaminant transport model and ignoring parameter uncertainty. The HHR assessment by incorporating Bayesian uncertainty analysis could provide more flexible information. In addition, the sparse grid (SG) surrogate is an effective way to reduce computation burden caused by the larger number of model executions in the MCMC based HHR assessment.
机译:致密非水相液体(DNAPLs)暴露的人类健康风险(HHR)评估已成为地下水环境管理的重要组成部分。通常,DNAPL输运模型用于模拟污染物的浓度分布,以进行HHR评估。本文研究了模型不确定性对HHR评估的影响,并采用增量终生癌症风险(ILCR)指标对HHR进行量化。基于合成的DNAPL迁移模型,评估了渗透率的异质性和DNAPL输运模型(如本构模型)结构对HHR评估的影响。结果表明,与低异质性相比,高异质性导致源区附近控制平面的平均ILCR值较低,而远离源区的控制平面的平均ILCR值较高。此外,两个本构模型,即 Stone-Parker (S-P) 和 Corey-van Genuchten (C-v) 模型的 HHR 评估将不一致。与基于C-v模型的HHR评估相比,S-P模型产生的ILCR概率分布均值在靠近源区的控制平面处较大,在远离源区的控制平面处较小。此外,基于沙箱实验,采用马尔可夫链蒙特卡洛(MCMC)模拟评估了DNAPL转运模型参数不确定性对HHR评估的影响。结果表明,通过污染物输运模型的特定参数来评估HHR是不可行的,也是存在风险的。通过结合贝叶斯不确定性分析的HHR评估可以提供更灵活的信息。此外,稀疏网格 (SG) 代理是减少基于 MCMC 的 HHR 评估中大量模型执行造成的计算负担的有效方法。

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