通过对约束条件和目标的松弛实现约束多目标优化

Fei Ming;Bing Xue;Mengjie Zhang;Wenyin Gong;Huixiang Zhen
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引用次数: 0

摘要

由于现实应用中的大多数多目标优化问题都包含约束,约束处理技术(CHTs)对于多目标优化器是必要的。然而,现有的cht并没有放松目标,从而消除了不可行的主导解决方案,这些解决方案在检测可行区域和受限帕累托前沿(CPF)方面很有希望(潜在有用但较差)。为了克服这一缺点,本文提出了一种客观松弛技术,通过自适应调整松弛因子,松弛目标函数值,即收敛,从而保持前景。在此基础上,提出了一种基于约束和目标松弛的约束多目标优化进化算法(CMOEA)。该算法通过约束松弛技术进化一个种群,以保持有希望的不可行解;通过目标松弛和约束松弛技术进化另一个种群,以保持有希望的不可行的主导解。这样,我们的方法可以克服现有的cht的缺点。此外,设计了存档更新策略来维护两个种群遇到的可行解决方案,以近似CPF。在具有挑战性的基准问题和现实问题上的实验证明了我们提出的CMOEA的优越性或至少具有竞争力。此外,为了验证目标松弛技术的通用性,我们将其嵌入到两个现有的CMOEA框架中,结果表明它可以显着提高处理挑战性问题的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Constrained Multiobjective Optimization via Relaxations on Both Constraints and Objectives
Since most multiobjective optimization problems in real-world applications contain constraints, constraint-handling techniques (CHTs) are necessary for a multiobjective optimizer. However, existing CHTs give no relaxation to objectives, resulting in the elimination of infeasible dominated solutions that are promising (potentially useful but inferior) for detecting feasible regions and the constrained Pareto front (CPF). To overcome this drawback, in this work, we propose an objective relaxation technique that can preserve promising by relaxing objective function values, i.e., convergence, through an adaptively adjusted relaxation factor. Further, we develop a new constrained multiobjective optimization evolutionary algorithm (CMOEA) based on relaxations on both constraints and objectives. The proposed algorithm evolves one population by the constraint relaxation technique to preserve promising infeasible solutions and the other population by both objective and constraint relaxation techniques to preserve promising infeasible dominated solutions. In this way, our method can overcome the drawback of existing CHTs. Besides, an archive update strategy is designed to maintain encountered feasible solutions by the two populations to approximate the CPF. Experiments on challenging benchmark problems and real-world problems have demonstrated the superiority or at least competitiveness of our proposed CMOEA. Moreover, to verify the generality of the objective relaxation technique, we embed it into two existing CMOEA frameworks and the results show that it can significantly improve the performance in handling challenging problems.
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