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Uncertainty analysis and the identification of the contaminant transport and source parameters for a computationally intensive groundwater simulation.

机译:用于计算密集型地下水模拟的不确定度分析以及污染物传输和源参数的识别。

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摘要

Transport parameter estimation and contaminant source identification are critical steps in the development of a physically based groundwater contaminant transport model. Due to the irreversibility of the dispersion process, the calibration of a transport model of interest is inherently ill-posed, and very sensitive to the simplification employed in the development of the lumped models. In this research, a methodology for the calibration of physically based computationally intensive transport models was developed and applied to a case study, the Reich Farm Superfund site in Toms River, New Jersey.;The contaminant transport model calibration results indicate that overall, multi-start PEST performs best in terms of the final best objective function values with equal number of function evaluations. Multi-start PEST also was employed to identify contaminant transport and source parameters under different scenarios including spatially and temporally varying recharge and averaged recharge. For the detailed, transient flow model with spatially and temporally varying recharge, the estimated transverse dispersivity coefficients were estimated to be significantly less than that reported in the literature for the more traditional approach that uses steady-state flow with averaged, less physically based recharge values. In the end, based on the Latin Hypercube sampling, a methodology for comprehensive uncertainty analysis, which accounts for multiple parameter sets and the associated correlations, was developed and applied to the case study.;Using HydroGeoSphere, a physically based transient three-dimensional computationally intensive groundwater flow model with spatially and temporally varying recharge was developed. Due to the convergence issue of implementing saturation versus permeability curve (van Genuchten equation) for the large scale models with coarse discretization, a novel flux-based method was innovated to determined solutions for the unsaturated zone for soil-water-retention models. The parameters for the flow system were determined separately from the parameters for the contaminant transport model. The contaminant transport and source parameters were estimated using both approximately 15 years of TCE concentration data from continuous well records and data over a period of approximately 30 years from traditional monitoring wells, and compared using optimization with two heuristic search algorithms (DDS and MicroGA) and a gradient based multi-start PEST.
机译:传输参数估算和污染物源识别是开发基于物理的地下水污染物传输模型的关键步骤。由于分散过程的不可逆性,目标传输模型的校准固有地不适当,并且对集总模型开发中使用的简化非常敏感。在这项研究中,开发了一种用于校准基于物理的计算密集型运输模型的方法,并将其应用于案例研究(新泽西州汤姆斯河的Reich Farm Superfund站点);污染物运输模型的校准结果表明,总体而言,就最终的最佳目标功能值而言,start PEST在功能评估数量相等的情况下表现最佳。在不同情况下(包括时空变化的补给量和平均补给量),还采用了多起点PEST来识别污染物的运输和污染源参数。对于具有随时间变化的补给的详细的瞬态流量模型,估计的横向弥散系数估计要明显小于文献中报道的使用稳态流量和基于平均值的较少物理补给值的更传统方法的报告。 。最后,基于Latin Hypercube抽样,开发了一种综合不确定性分析的方法,该方法考虑了多个参数集和相关的相关性,并应用于案例研究。;使用HydroGeoSphere,基于物理的瞬态三维计算建立了随时间变化补给的高强度地下水流模型。由于对具有粗离散化的大型模型实施饱和度与渗透率曲线(van Genuchten方程)的收敛性问题,创新的基于通量的新方法为土壤保水模型确定了非饱和区的解决方案。流量系统的参数与污染物传输模型的参数分开确定。使用连续井记录中约15年的TCE浓度数据和传统监测井中约30年的数据估算污染物的运输和污染源参数,并使用两种启发式搜索算法(DDS和MicroGA)进行优化,并进行比较。基于梯度的多起点PEST。

著录项

  • 作者

    Yin, Yong.;

  • 作者单位

    University of Waterloo (Canada).;

  • 授予单位 University of Waterloo (Canada).;
  • 学科 Engineering Environmental.
  • 学位 Ph.D.
  • 年度 2009
  • 页码 233 p.
  • 总页数 233
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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