求解动态单目标多模态约束优化的多目标免疫遗传算法

Zhuhong Zhang, Min Liao, Lei Wang
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引用次数: 1

摘要

本文根据约束优势的概念和生物免疫的启发,研究了一种求解动态约束单目标多模态优化问题的多目标免疫遗传算法。该算法通过环境检测和两个进化的子种群,假设沿不同的搜索方向搜索多个全局最优解。它通过执行周期性抑制机制和周期性调整突变幅度来开发各种有希望的区域。通过动态抑制指数可以保持种群的充分多样性,同时在解搜索过程中可以快速找到高质量的解。对比实验表明,所提方法不仅优于所比较的算法,而且能够快速获得每个测试问题在每个环境下的全局最优解,是一种竞争性优化器。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multi-objective immune genetic algorithm solving dynamic single-objective multimodal constrained optimization
This work investigates one multi-objective immune genetic algorithm to solve dynamic constrained single-objective multimodal optimization problems in terms of the concept of constraint-dominance and biological immune inspirations. The algorithm assumes searching multiple global optimal solutions along diverse searching directions, by means of the environmental detection and two evolving subpopulations. It exploits various kinds of promising regions through executing the periodical suppression mechanism and periodically adjusting the mutation magnitude. The sufficient diversity of population can be maintained relying upon a dynamic suppression index, and meanwhile the high-quality solutions can be found rapidly during the process of solution search. Comparative experiments show that the proposed approach can not only outperform the compared algorithms, but also rapidly acquire the global optima in each environment for each test problem, and thus it is a competitive optimizer.
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