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首页> 外文期刊>Acta Geologica Sinica - English Edition >A Hybrid Multi-Objective Evolutionary Algorithm for Optimal Groundwater Management under Variable Density Conditions
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A Hybrid Multi-Objective Evolutionary Algorithm for Optimal Groundwater Management under Variable Density Conditions

机译:变密度条件下最优地下水管理的混合多目标进化算法

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In this paper, a new hybrid multi-objective evolutionary algorithm (MOEA), the niched Pareto tabu search combined with a genetic algorithm (NPTSGA), is proposed for the management of groundwater resources under variable density conditions. Relatively few MOEAs can possess global search ability contenting with intensified search in a local area. Moreover, the overall searching ability of tabu search (TS) based MOEAs is very sensitive to the neighborhood step size. The NPTSGA is developed on the thought of integrating the genetic algorithm (GA) with a TS based MOEA, the niched Pareto tabu search (NPTS), which helps to alleviate both of the above difficulties. Here, the global search ability of the NPTS is improved by the diversification of candidate solutions arising from the evolving genetic algorithm population. Furthermore, the proposed methodology coupled with a density-dependent groundwater flow and solute transport simulator, SEAWAT, is developed and its performance is evaluated through a synthetic seawater intrusion management problem. Optimization results indicate that the NPTSGA offers a tradeoff between the two conflicting objectives. A key conclusion of this study is that the NPTSGA keeps the balance between the intensification of nondomination and the diversification of near Pareto-optimal solutions along the tradeoff curves and is a stable and robust method for implementing the multi-objective design of variable-density groundwater resources.
机译:本文提出了一种新的混合多目标进化算法(MOEA),即结合遗传算法(NPTSGA)的利基帕累托禁忌搜索,用于可变密度条件下的地下水资源管理。相对而言,很少有MOEA能够满足全球搜索能力,并能满足在本地进行的强化搜索。此外,基于禁忌搜索(TS)的MOEA的整体搜索能力对邻域步长非常敏感。 NPTSGA是基于将遗传算法(GA)与基于TS的MOEA(利基帕累托禁忌搜索(NPTS))相结合的思想而开发的,这有助于缓解上述两个难题。在这里,通过不断发展的遗传算法群体而产生的候选解的多样化,提高了NPTS的全局搜索能力。此外,还开发了所提出的方法,并结合了密度依赖性的地下水流量和溶质运移模拟器SEAWAT,并通过合成海水入侵管理问题对其性能进行了评估。优化结果表明,NPTSGA提供了两个相互矛盾的目标之间的权衡。这项研究的主要结论是,NPTSGA沿权衡曲线保持了非支配集约化与近帕累托最优解的多样化之间的平衡,并且是实现可变密度地下水多目标设计的一种稳定而稳健的方法。资源。

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