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首页> 外文期刊>Evolutionary Computation, IEEE Transactions on >Two_Arch2: An Improved Two-Archive Algorithm for Many-Objective Optimization
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Two_Arch2: An Improved Two-Archive Algorithm for Many-Objective Optimization

机译:Two_Arch2:用于多目标优化的改进的两归档算法

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Many-objective optimization problems (ManyOPs) refer, usually, to those multiobjective problems (MOPs) with more than three objectives. Their large numbers of objectives pose challenges to multiobjective evolutionary algorithms (MOEAs) in terms of convergence, diversity, and complexity. Most existing MOEAs can only perform well in one of those three aspects. In view of this, we aim to design a more balanced MOEA on ManyOPs in all three aspects at the same time. Among the existing MOEAs, the two-archive algorithm (Two_Arch) is a low-complexity algorithm with two archives focusing on convergence and diversity separately. Inspired by the idea of Two_Arch, we propose a significantly improved two-archive algorithm (i.e., Two_Arch2) for ManyOPs in this paper. In our Two_Arch2, we assign different selection principles (indicator-based and Pareto-based) to the two archives. In addition, we design a new -norm-based () diversity maintenance scheme for ManyOPs in Two_Arch2. In order to evaluate the performance of Two_Arch2 on ManyOPs, we have compared it with several MOEAs on a wide range of benchmark problems with different numbers of objectives. The experimental results show that Two_Arch2 can cope with ManyOPs (up to 20 objectives) with satisfactory convergence, diversity, and complexity.
机译:多目标优化问题(ManyOP)通常指的是具有三个以上目标的多目标问题(MOP)。它们的大量目标在收敛性,多样性和复杂性方面给多目标进化算法(MOEA)带来了挑战。大多数现有的MOEA只能在这三个方面之一中表现良好。有鉴于此,我们旨在同时针对这三个方面在ManyOPs上设计更加均衡的MOEA。在现有的MOEA中,双归档算法(Two_Arch)是一种低复杂度算法,具有两个分别关注收敛和多样性的档案。受到Two_Arch思想的启发,我们针对ManyOPs提出了一种显着改进的二归档算法(即Two_Arch2)。在Two_Arch2中,我们为两个档案分配了不同的选择原则(基于指标和基于帕累托的)。此外,我们为Two_Arch2中的ManyOP设计了一个新的基于-(-norm-b​​ased)的多样性维护方案。为了评估Two_Arch2在ManyOP上的性能,我们将其与具有不同目标数量的各种基准问题上的几个MOEA进行了比较。实验结果表明,Two_Arch2可以以令人满意的收敛性,多样性和复杂性来应对ManyOP(最多20个目标)。

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