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Predicting Benzene Transport in Subsurface underUncertainty through a Coupled Monte Carlo andFactorial Analysis Approach

机译:通过蒙特卡洛和Fatorial分析方法预测不确定性下的地下苯运移

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Mathematical models have been widely used to simulate fate and transport of the nonaqueous phase liquids (NAPLs) contaminants for risk assessment and remediation design studies. However, many theoretical and field studies have recognized that the contaminant fate in subsurface is significantly influenced by uncertainties inherent in natural porous media and thus may affect model predictions. To tackle such a difficulty, a coupled Monte Carlo and factorial analysis modeling approach was developed in this study to systematically investigate impacts of uncertainties associated with hydrocarbon-contaminant transport in subsurface. The approach integrated a solute transport model, factorial analysis, and Monte Carlo technique into a general framework and effectively analyzed the individual and joint effects of input parameters' uncertainties that are associated with hydrogeological conditions. Through a hypothetical case study, the results demonstrated that the uncertainties in input parameters pose considerable influences on the predicted output. The results obtained from the systematic uncertainty analysis methods proposed in this study, such as mean, standard deviation, and percentile, can provide useful information for further decision making regarding the petroleum contamination problem.
机译:数学模型已被广泛用于模拟非水相液体(NAPL)污染物的结局和运输,以进行风险评估和补救设计研究。但是,许多理论和现场研究已经认识到,地下多孔污染物的命运受到天然多孔介质固有的不确定性的显着影响,因此可能会影响模型预测。为了解决这一难题,本研究开发了一种蒙特卡洛和因子分析耦合的建模方法,以系统地研究与地下碳氢化合物污染运输相关的不确定性的影响。该方法将溶质运移模型,阶乘分析和蒙特卡洛技术整合到一个通用框架中,并有效地分析了与水文地质条件相关的输入参数不确定性的个体和联合影响。通过假设的案例研究,结果表明输入参数的不确定性对预测的输出产生了很大的影响。从本研究中提出的系统不确定性分析方法获得的结果,例如均值,标准偏差和百分位数,可以为有关石油污染问题的进一步决策提供有用的信息。

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