Practicable Strategy of High-Dimensional Multi-objective Coevolution

Hongbo Wang, Wei Huang, Ke-Na Tian, Xuyan Tu
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Abstract

With the rapid development of social economy, people’s demand for diversified and precise goals is increasingly prominent. In the face of a specific engineering application practice, how to find a satisfactory equilibrium solution among multiple objectives has been the focus of researchers at home and abroad. Aiming at the convergence and diversity imbalance in the current high-dimensional multi-objective evolutionary algorithm based on reference points, this paper suggests a constrained evolutionary algorithm based on spatial division, angle culling and hybrid matching selection strategy. Experimental practices show that the proposed algorithm has better performance compared with other related variants on DTLZ/WFG benchmark functions and in solving the problem of electricity market price.
高维多目标协同进化的可行策略
随着社会经济的快速发展,人们对目标多样化、精准化的需求日益突出。面对具体的工程应用实践,如何在多个目标之间找到满意的平衡解一直是国内外研究人员关注的焦点。针对当前基于参考点的高维多目标进化算法存在的收敛性和多样性失衡问题,提出了一种基于空间划分、角度剔除和混合匹配选择策略的约束进化算法。实验实践表明,该算法在DTLZ/WFG基准函数和解决电力市场价格问题上具有较好的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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