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多目标多模态优化中∈-局部最优解计算的进化方法

An Evolutionary Approach for the Computation of ∈-Locally Optimal Solutions for Multi-Objective Multimodal Optimization

IEEE Transactions on Evolutionary Computation · 2025
被引 0
ABS 4

中文导读

提出一种有界存档器和两种进化算法,用于高效计算多目标优化问题的∈-局部最优解有限近似,特别适用于多模态优化场景。

Abstract

In this paper, we address the problem of efficiently computing finite-size approximations of the set of -locally optimal solutions of a given multi-objective optimization problem (MOP). Such sets are in particular interesting in the context of multi-objective multimodal optimization (MMO). To this end, we first propose a bounded archiver, ArchiveUpdateLQ,∈B, that is, a modification of a previously proposed unbounded archiver. These archivers can be used as external archivers to in principle any multi-objective evolutionary algorithm (MOEA). In order to reduce the computational cost compared to such archive equipped MOEAs, we propose, in a next step LQ,∈MOEA. This evolutionary algorithm directly uses ArchiveUpdateLQ,∈B for the selection process and hence does not need an external archive for the computation of ∈-locally optimal solutions. We further propose a hybrid of LQ,∈MOEA with a multi-objective continuation method, which significantly improves the accuracy of the obtained solutions in case the gradient information is at hand. Finally, we show some numerical results that demonstrate the benefit of both the bounded archiver and the new MOEAs.

多目标优化多模态优化进化算法局部最优解