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首页> 外文期刊>Hydrological ProcHydrological Processesrnesses >Applying a real‐coded multi‐population genetic algorithm to multi‐reservoir operation
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Applying a real‐coded multi‐population genetic algorithm to multi‐reservoir operation

机译:将实编码多种群遗传算法应用于多水库调度

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摘要

The primary objective of this study is to propose a real-coded hypercubic distributed genetic algorithm (HDGA) for optimizing reservoir operation system. A conventional genetic algorithm (GA) is often trapped into local optimums during the optimization procedure. To prevent premature convergence and to obtain near-global optimal solutions, the HDGA is designed to have various subpopulations that are processed using separate and parallel GAs. The hypercubic topology with a small diameter spreads good solutions rapidly throughout all of the subpopulations, and a migration mechanism, which exchanges chromosomes among the subpopulations, exchanges information during the joint optimization to maintain diversity and thus avoid a systematic premature convergence toward a single local optimum. Three genetic operators, i.e. linear ranking selection, blend-α crossover and Gaussian mutation, are applied to search for the optimal reservoir releases. First, a benchmark problem, the four-reservoir operation system, is considered to investigate the applicability and effectiveness of the proposed approach. The results show that the known global optimal solution can be effectively and stably achieved by the HDGA. The HDGA is then applied in the planning of a multi-reservoir system in northern Taiwan, considering a water reservoir development scenario to the year 2021. The results searched by an HDGA minimize the water deficit of this reservoir system and provide much better performance than the conventional GA in terms of obtaining lower values of the objective function and avoiding local optimal solutions. Copyright © 2006 John Wiley & Sons, Ltd.
机译:这项研究的主要目的是提出一种用于优化水库作业系统的实码超立方分布式遗传算法(HDGA)。在优化过程中,传统的遗传算法(GA)通常会陷入局部最优。为了防止过早收敛并获得接近全局的最佳解决方案,HDGA设计为具有使用单独的并行GA处理的各种子种群。具有小直径的超立方拓扑结构在所有子种群中快速传播了良好的解决方案,并且存在一种迁移机制,该机制在子种群之间交换染色体,在联合优化过程中交换信息以维持多样性,从而避免了朝着单个局部最优系统地过早收敛。 。三种遗传算子,即线性排序选择,blend-α交叉和高斯突变,被用于寻找最佳的油藏释放。首先,考虑一个基准问题,即四水库作业系统,以研究该方法的适用性和有效性。结果表明,HDGA可以有效,稳定地实现已知的全局最优解。然后,考虑到2021年的水库开发方案,将HDGA应用于规划台湾北部的多水库系统。HDGA搜索的结果使该水库系统的水亏缺最小,并提供了比水库更好的性能。在获得目标函数的较低值并避免局部最优解方面,采用常规GA。版权所有©2006 John Wiley&Sons,Ltd.

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