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首页> 外文期刊>Electric Power Components and Systems >NSGA-Ⅱ/EDA Hybrid Evolutionary Algorithm for Solving Multi-objective Economic/Emission Dispatch Problem
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NSGA-Ⅱ/EDA Hybrid Evolutionary Algorithm for Solving Multi-objective Economic/Emission Dispatch Problem

机译:NSGA-Ⅱ/ EDA混合进化算法求解多目标经济/排放调度问题

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摘要

In this study, a hybrid algorithm which combines the NSGA-II with a modified form of the marginal histogram model Estimation of Distribution Algorithm (EDA), herein called the NSGA-II/EDA is proposed for solving the multi-objective economic/emission power dispatch problem. The goal is to improve the convergence while preserving the diversity properties of the obtained solution set. The effect of variable interaction on the marginal histogram EDA model is reduced by performing multi-scale Principal Component Analysis on the population of solutions. Also, the concepts of non-domination and elitism have been introduced into the marginal histogram model in order for it to handle multiple objectives. Several optimization runs were carried out on the standard multi-objective test problems, including the IEEE 30- and the 118-bus test systems. Standard metrics are used to compare the performance of the developed hybrid approach with that of other multi-objective evolutionary algorithms. The effectiveness of the proposed approach in improved convergence, with good diversity is demonstrated.
机译:在这项研究中,提出了一种混合算法,该算法将NSGA-II与边际直方图模型的修正形式的分布算法估计(EDA)相结合,在本文中被称为NSGA-II / EDA,以解决多目标经济/排放能力调度问题。目的是在提高收敛性的同时保留获得的解决方案集的多样性。通过对解决方案总体执行多尺度主成分分析,可以减少变量相互作用对边际直方图EDA模型的影响。同样,非统治和精英主义的概念也被引入边缘直方图模型中,以便处理多个目标。针对标准多目标测试问题进行了几次优化运行,包括IEEE 30总线和118总线测试系统。标准度量标准用于比较已开发的混合方法与其他多目标进化算法的性能。证明了所提出的方法在改善的收敛性和良好的多样性方面的有效性。

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