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Development of Unknown Pollution Source Identification Models Using GMS ANN-Based Simulation Optimization Methodology

机译:基于GMS ANN的仿真优化方法开发未知污染源识别模型

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The detection of groundwater pollution sources is an important but a very difficult task. The location and magnitude of ground-water pollution sources can be identified using inverse optimization technique. The technique is also known as simulation-optimization approach where the aquifer simulation model is incorporated with the optimization model for finding the unknown pollution sources in an aquifer. The efficiency of the simulation-optimization model is highly related to the performance of the simulation model. This study develops three improved methodologies for identification of unknown groundwater pollution sources. In the first approach, the groundwater modeling system (GMS) is linked with the optimization model for solving source identification problem. The optimization model is solved using the direct-search method. The incorporation of GMS with the optimization model allows for the solving of a bigger real-world pollution source identification problem. The challenge of this approach is the linking of the external simulator GMS with the optimization model. This has been overcome by executing GMS in the Matlab environment. The main drawback of the approach is that the approach is computationally extensive. For reducing the computational time, the second approach uses the artificial neural networks (ANN) model to simulate the flow and transport processes of aquifer. The ANN model is then externally linked with the optimization model. This approach drastically reduces the computational time of the simulation-optimization model. The problem that was solved in few days can now be solved in a few hours. However, most of the time, it yields only the near optimal solution. Therefore, in the third approach, a hybrid optimization approach is presented that initially solves the problem using ANN-based simulation-optimization model. The solution obtained by the ANN-based model is then used as the initial solution for the GMS-based model. This approach is computationally more efficient than the GMS-based approach and also more accurate than the ANN-based model. The efficiency and accuracy of the proposed approaches are demonstrated using two illustrative study areas.
机译:地下水污染源的检测是一项重要但非常困难的任务。可以使用逆优化技术确定地下水污染源的位置和大小。该技术也称为模拟优化方法,其中将含水层模拟模型与优化模型结合在一起,以查找含水层中的未知污染源。仿真优化模型的效率与仿真模型的性能高度相关。这项研究开发了三种改进的方法来识别未知的地下水污染源。第一种方法是将地下水建模系统(GMS)与优化模型相链接,以解决水源识别问题。使用直接搜索法求解优化模型。 GMS与优化模型的结合可以解决更大的现实世界污染源识别问题。这种方法的挑战是将外部模拟器GMS与优化模型链接在一起。通过在Matlab环境中执行GMS已解决了这一问题。该方法的主要缺点是该方法计算量大。为了减少计算时间,第二种方法使用人工神经网络(ANN)模型来模拟含水层的流动和输运过程。然后,将ANN模型与优化模型进行外部链接。这种方法大大减少了仿真优化模型的计算时间。几天内解决的问题现在可以在几个小时内解决。但是,在大多数情况下,它仅产生接近最佳的解决方案。因此,在第三种方法中,提出了一种混合优化方法,该方法首先使用基于ANN的仿真优化模型解决了该问题。然后,将基于ANN的模型获得的解用作基于GMS的模型的初始解。该方法在计算上比基于GMS的方法更有效,并且比基于ANN的模型更准确。使用两个示例性研究领域证明了所提出方法的效率和准确性。

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