基于DIRECT和遗传算法的全局搜索多目标优化方法研究

Luyi Wang, Hiroyuki Ishida, T. Hiroyasu, M. Miki
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引用次数: 17

摘要

为了求解多目标优化问题的Pareto最优解,已经发展了许多多目标遗传算法(MOGAs)。然而,由于这些方法涉及概率算法,不能保证在设计变量空间中进行全局搜索。在这种情况下,在设计变量空间中存在未搜索的区域,得到的Pareto解可能不是真正的最优解。本文提出了一种NSDIRECT-GA优化方法,尽可能在设计变量空间上进行全局搜索,提高了得到的Pareto解的可靠性。通过数值实验验证了NSDIRECT-GA的有效性。NSDIRECT-GA不仅可以获得Pareto解,而且可以掌握搜索空间的全景,与MOGAs相比,获得的解具有更高的可靠性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Examination of multi-objective optimization method for global search using DIRECT and GA
A number of multi-objective genetic algorithms (MOGAs) have been developed to obtain Pareto optimal solutions for multi-objective optimization problems. However, as these methods involve probabilistic algorithms, there is no guarantee that the global search will be conducted in the design variable space. In such cases, there are unsearched areas in the design variable space, and the obtained Pareto solutions may not be truly optimal. In this paper, we propose an optimization method called NSDIRECT-GA to conduct a global search over the design variable space as much as possible, which improves the reliability of the obtained Pareto solutions. The effectiveness of NSDIRECT-GA was examined through numerical experiments. NSDIRECT-GA can obtain not only Pareto solutions, but also grasp the landscape of the search space, which results in higher reliability of the obtained solutions compared to MOGAs.
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