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Identification of transient contaminant sources in aquifers through a surrogate model based on a modified self-organizing-maps algorithm

机译:基于修改自组织地图算法的代理模型识别含水层的瞬态污染源

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摘要

The identification of transient groundwater contaminant sources in terms of source locations, contaminant magnitudes, and active durations remains a challenge. The problem becomes more complex due to spatial heterogeneity, sparse observation data, concentration measurement errors, and unexpected uncertainty. This study addresses this challenge by proposing a modified self-organizing maps (SOM) algorithm; this algorithm can improve the physically-based models by reducing the computational burden more efficiently. The method sufficiently increases the accuracy and efficiency for identifying the contaminant source, because the trained SOM-based surrogate models can identify the source characteristics independently without necessarily operating a formal linked simulation-optimization model. The performance of the proposed method was assessed on a hypothetical heterogeneous aquifer model; the assessment considered unknown observation data, concentration measurement errors, and an unknown pumping well. The proposed SOM-based surrogate model can not only approximate the results from the groundwater flow and transport simulation models, but it can also be used in lieu of the optimization model in a more efficient way for identifying the unknown transient contaminant sources in groundwater systems.
机译:在源地点,污染物幅度和主动持续时间方面识别瞬态地下水污染源仍然是一个挑战。由于空间异质性,稀疏观察数据,浓度测量误差和意外不确定性,问题变得更加复杂。本研究通过提出修改的自组织地图(SOM)算法来解决这一挑战;该算法可以通过更有效地降低计算负担来改善基于物理的模型。该方法充分提高了识别污染源的准确性和效率,因为培训的SOM的代理模型可以独立地识别源特征,而不必操作正式的链接仿真优化模型。在假设的异质含水层模型中评估了所提出的方法的性能;评估被认为是未知的观察数据,浓度测量误差和未知的泵送井。所提出的SOM的代理模型不仅可以近似地下水流量和运输模拟模型的结果,而且还可以以更有效的方式来代替优化模型,以识别地下水系统中未知的瞬态污染源。

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