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首页> 外文期刊>Journal of Water Resources Planning and Management >Box-Constrained Optimization Methodology and Its Application for a Water Supply System Model
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Box-Constrained Optimization Methodology and Its Application for a Water Supply System Model

机译:箱约束优化方法及其在供水系统模型中的应用

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This study introduces a new search method for box-constrained optimization problems called the search method for box optimization (SMBO). SMBO is a population heuristic-based search methodology that solves global optimization problems. SMBO represents the population as a probability density function (PDF) inside the problem bounds. The PDF shape is dynamically adapted during the process to guide to a "good" search domain. The applicability and the efficiency of the method are demonstrated using two benchmark sets, which include unimodal, multimodal, expanded, and hybrid composition functions. The performance of SMBO is compared with several genetic algorithms (GAs); the first benchmark compares it with nine codes of traditional/classic GAs, and the second compares SMBO with two recent variants of genetic algorithms. The results show that SMBO performs as well as or better than the GAs in both comparisons. The method is demonstrated on a nonlinear model for management of a water supply system (WSS), and the results are compared with the commercial GA toolbox of matrix laboratory (MATLAB).
机译:这项研究介绍了一种针对盒约束优化问题的新搜索方法,称为盒优化搜索方法(SMBO)。 SMBO是一种基于总体启发式的搜索方法,可以解决全局优化问题。 SMBO将总体表示为问题范围内的概率密度函数(PDF)。在此过程中,将动态调整PDF形状以引导到“良好”的搜索域。使用两个基准集证明了该方法的适用性和效率,其中包括单峰,多峰,扩展和混合组成函数。将SMBO的性能与几种遗传算法(GA)进行了比较;第一个基准将其与9个传统/经典GA编码进行比较,第二个基准将SMBO与遗传算法的两个最新变体进行比较。结果表明,在两个比较中,SMBO的性能均优于或优于GA。在用于供水系统(WSS)管理的非线性模型上证明了该方法,并将结果与​​矩阵实验室的商用GA工具箱(MATLAB)进行了比较。

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