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通过局部子集选择增强进化多目标优化中的多样性

Enhancing Diversity by Local Subset Selection in Evolutionary Multiobjective Optimization

IEEE Transactions on Evolutionary Computation · 2022
被引 10
ABS 4

中文导读

提出一种基于局部子集选择的环境选择策略,通过势能函数和局部搜索来平衡收敛性与多样性,生成形状不变且均匀分布的非支配解集。

Abstract

The main target of multiobjective evolutionary algorithms (MOEAs) is to find a set of evenly distributed nondominated solutions that approximate the Pareto front (PF) of a multiobjective optimization problem (MOP). This means that the approximated set should be as close to the PF as possible, and as diverse as possible. The former is usually called a convergence criterion and the latter is called a diversity criterion. A variety of strategies have been proposed to meet the two criteria. However, as far as the diversity criterion is concerned, it is still a challenge to achieve an evenly distributed approximation set with different sizes for a problem with a complicated PF shape. To deal with this challenge, we propose a local subset selection (LSS) -based environmental selection for evolutionary multiobjective optimization in this article. LSS considers the environmental selection as a subset selection problem by choosing promising solutions from the combination of the parent and offspring populations. In LSS, a potential energy function is utilized as the objective function, which provides a heavy selection pressure on diversity as well as has low computational complexity. Furthermore, to balance search efficiency and quality, a local search strategy is used in LSS to make full use of objective information for acceleration. The proposed LSS strategy is embedded into some state-of-the-art Pareto-domination-based MOEAs, and the experimental results suggest that LSS can produce shape-invariant and evenly distributed nondominated sets with different population sizes.

多目标优化进化算法多样性维护子集选择