An evolutionary algorithm for constrained multi-objective optimization

F. Jiménez, A. Gómez-Skarmeta, Gracia Sánchez, K. Deb
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引用次数: 88

Abstract

The paper follows the line of the design and evaluation of new evolutionary algorithms for constrained multi-objective optimization. The evolutionary algorithm proposed (ENORA) incorporates the Pareto concept of multi-objective optimization with a constraint handling technique and with a powerful diversity mechanism to obtain multiple nondominated solutions through the simple run of the algorithm. Constraint handling is carried out in an evolutionary way and using the min-max formulation, while the diversity technique is based on the partitioning of search space in a set of radial slots along which are positioned the successive populations generated by the algorithm. A set of test problems recently proposed for the evaluation of this kind of algorithm has been used in the evaluation of the algorithm presented. The results obtained with ENORA were very good and considerably better than those obtained with algorithms recently proposed by other authors.
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约束多目标优化的一种进化算法
本文遵循约束多目标优化的新进化算法的设计和评价的思路。所提出的进化算法(ENORA)将Pareto多目标优化概念与约束处理技术相结合,并具有强大的多样性机制,通过算法的简单运行即可获得多个非支配解。约束处理采用进化的方式并使用最小-最大公式进行,而多样性技术是基于在一组径向槽中划分搜索空间,这些槽中放置了算法生成的连续种群。最近提出的一组用于评估这类算法的测试问题已被用于评估所提出的算法。使用ENORA获得的结果非常好,大大优于其他作者最近提出的算法。
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