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Characterizing Uncertainties Associated With Contaminant Transport Modeling Through A Coupled Fuzzy-stochastic Approach

机译:通过耦合模糊随机方法表征与污染物迁移模型相关的不确定性

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A factorial-design-based fuzzy-stochastic modeling system (FFSMS) was developed in this study to systematically investigate impacts of uncertainties associated with hydrocarbon contaminant transport in subsurface through integration of a compositional model, factorial design method, fuzzy modeling approach and Monte Carlo simulation technique. The goodness of fit of the numerical model was analyzed by means of a pilot-scale experimental system. Once the model was calibrated, it was used in order to predict the contaminant concentration depending on values of several parameters including intrinsic permeability, porosity, and longitudinal dis-persivity. These parameters were imprecisely known, and such an imprecision was handled by means of both fuzzy sets and/or stochastic theory. The individual and joint effects of these uncertain parameters were analyzed by modeling the dependence between the prediction and the imprecise parameters (factors) through factorial design analysis. The study results indicated that the uncertainties associated with input parameters had significant impacts on modeling outputs; the degree of influence of each model input varied significantly with the level of its imprecision. The study results demonstrated that proposed FFSMS can efficiently analyze the impact of different uncertainty sources associated with different hydrogeolog-ical parameters on the prediction of the hydrocarbon concentrations in groundwater. Such studies would provide strong basis for performing successful risk assessment and efficient remediation design for the management of contaminated site.
机译:在本研究中,开发了基于因子设计的模糊随机建模系统(FFSMS),以通过组合组成模型,因子设计方法,模糊建模方法和蒙特卡洛模拟系统地研究与地下污染物运移有关的不确定性的影响。技术。数值模型的拟合优度通过中试规模的实验系统进行了分析。对模型进行校准后,就可以根据几个参数的值来预测污染物浓度,这些参数包括固有渗透率,孔隙率和纵向弥散性。这些参数是不精确知道的,并且这种不精确性是通过模糊集和/或随机理论来处理的。这些不确定参数的个体和联合效应通过因子设计分析对预测和不精确参数(因素)之间的依赖关系进行建模,从而进行了分析。研究结果表明,与输入参数相关的不确定性对模型输出具有显着影响。每个模型输入的影响程度随其不精确程度而显着变化。研究结果表明,提出的FFSMS可以有效地分析与不同水文地质参数相关的不同不确定性源对地下水中烃浓度预测的影响。这些研究将为成功进行风险评估和有效补救设计以管理受污染场地提供强有力的基础。

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