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首页> 外文期刊>Water Resources Management >Hybrid-Metaheuristics Based Inverse Groundwater Modelling to Estimate Hydraulic Conductivity in a Nonlinear Real-Field Large Aquifer System
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Hybrid-Metaheuristics Based Inverse Groundwater Modelling to Estimate Hydraulic Conductivity in a Nonlinear Real-Field Large Aquifer System

机译:基于杂交型的逆地下水模型,以估算非线性实场大型含水系统中的液压导电性

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摘要

In the inverse groundwater modelling problems, the objective functions generally used contain several local minima which render the conventional gradient-based optimization unsuitable for such problems. The recently used individual population-based evolutionary methods such as differential evolution (DE) algorithm and particle swarm optimization (PSO) are often observed to get stuck into sub-optimal solution. In this study to address this issue, a hybrid- metaheuristic Differential Evolution- Particle Swarm Optimization (DE-PSO) is proposed to obtain aquifer parameters. PSO introduces a perturbation in each generation to increase the diversity in the population of DE to improve its fitness value. The developed hybrid DE-PSO optimization is coupled with finite element method (FEM) based simulator to get a simulation-optimization (SO) model. Initially, the proposed SO model is tested on a synthetic irregular domain problem to estimate aquifer transmissivity values which are compared with available zonation pattern values. Later, the SO model is applied to the Mahi Right Bank Canal (MRBC) heterogeneous unconfined aquifer system and the optimally obtained results are compared with the DE, PSO and genetic algorithm (GA) methods respectively. The performance of the hybrid DE-PSO model is also tested using various fit- independent statistics for the reliability and accuracy. The results of this study show that the hybrid-metaheuristic based DE-PSO optimization algorithm is an efficient and robust tool for inverse groundwater problem of estimating the aquifer parameters.
机译:在反向地下水建模问题中,通常使用的目标函数含有几个局部最小值,使传统基于梯度的优化不适合这种问题。通常观察到最近使用基于种群的进化方法,例如差分演进(DE)算法和粒子群优化(PSO)以陷入次优溶液。在该研究中解决了这个问题,提出了一种混合地质鉴别演化粒子群优化优化(DE-PSO)以获得含水层参数。 PSO在每代引入扰动,以提高DE群体的多样性,以改善其健身价值。开发的混合DE-PSO优化与基于有限元方法(FEM)的模拟器耦合,以获得模拟优化(SO)模型。最初,所提出的所以模型在合成的不规则域问题上测试以估计与可用区划图案值进行比较的含水层透射率值。后来,所以模型应用于Mahi右岸运河(MRBC)异构非核化含水层系统,并分别与DE,PSO和遗传算法(GA)方法进行了最佳的结果。还使用各种适合独立的统计来测试混合DE-PSO模型的性能,以获得可靠性和准确性。本研究的结果表明,杂交地基基于的DE-PSO优化算法是估算含水层参数的逆接地问题的有效且鲁棒的工具。

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