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New Hybrid Optimization Methodology to Identify Pollution Sources Considering the Source Locations and Source Flux as Unknown

机译:考虑污染源位置和污染源通量的新型混合优化方法来识别污染源

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A hybrid methodology was developed for identifying unknown groundwater pollution sources. The source identification problem can be solved by using the inverse optimization approach. Being a mixed-integer problem, genetic algorithms (GAs) can be applied to solve the inverse optimization problem. Even though GA can determine the discrete variable efficiently, it is not efficient in obtaining the continuous variables. For such a situation, the gradient-based local search optimization is considered to be an efficient approach. Therefore, because of the advantages of GA and gradient-based approach, they are combined to form an improved approach. GA has been modified to handle the source variables of locations and fluxes differently. It has been observed that GA often gives near-optimal solution. As such, three local location search algorithms, i.e., longitudinal-transverse search (LTS), mutation search (MS), and ripple-migration search (RMS), have been proposed. The efficiency and the applicability of the proposed model were evaluated by applying it in a hypothetical study area. The results show that the proposed model is capable of obtaining optimal source locations and fluxes. The results obtained are superior to those obtained by using embedded optimization method. However, when computational efficiency was compared in terms of the number of function evaluations, it was found that the number of function evaluation for the LTS algorithm was minimum.
机译:开发了一种混合方法来识别未知的地下水污染源。源识别问题可以通过使用逆优化方法来解决。作为混合整数问题,遗传算法(GA)可以用于解决逆优化问题。即使GA可以有效地确定离散变量,但在获取连续变量时效率也不高。对于这种情况,基于梯度的本地搜索优化被认为是一种有效的方法。因此,由于遗传算法和基于梯度的方法的优势,将它们结合起来形成一种改进的方法。对GA进行了修改,以不同方式处理位置和通量的源变量。已经观察到GA经常给出接近最优的解。这样,已经提出了三种本地位置搜索算法,即纵向搜索(LTS),突变搜索(MS)和波纹迁移搜索(RMS)。通过在假设的研究区域中应用该模型,评估了该模型的效率和适用性。结果表明,所提出的模型能够获得最佳的源位置和通量。获得的结果优于通过嵌入式优化方法获得的结果。但是,当根据功能评估的数量比较计算效率时,发现LTS算法的功能评估的数量最少。

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