A Fast Memetic Multi-Objective Differential Evolution for Multi-Tasking Optimization

Yongliang Chen, J. Zhong, Mingkui Tan
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引用次数: 18

Abstract

Multi-tasking optimization has now become a promising research topic that has attracted increasing attention from researchers. In this paper, an efficient memetic evolutionary multi-tasking optimization framework is proposed. The key idea is to use multiple subpopulations to solve multiple tasks, with each subpopulation focusing on solving a single task. A knowledge transferring crossover is proposed to transfer knowledge between subpopulations during the evolution. The proposed framework is further integrated with a multi-objective differential evolution and an adaptive local search strategy, forming a memetic multiobjective DE named MM-DE for multi-tasking optimization. The proposed MM-DE is compared with the state-of-the-art multi-tasking multi-objective evolutionary algorithm (named MO-MFEA) on nine benchmark problems in the CEC 2017 multitasking optimization competition. The experimental results have demonstrated that the proposed MM-DE can offer very promising performance.
多任务优化的快速模因多目标差分进化
多任务优化已经成为一个很有前途的研究课题,越来越受到研究者的关注。提出了一种高效的模因进化多任务优化框架。关键思想是使用多个子群体来解决多个任务,每个子群体专注于解决一个任务。在进化过程中,提出了一种知识转移交叉算法来实现知识在子种群之间的转移。该框架进一步与多目标差分进化和自适应局部搜索策略相结合,形成多任务优化模因多目标算法MM-DE。在CEC 2017多任务优化竞赛的9个基准问题上,将所提出的MM-DE算法与最先进的多任务多目标进化算法(MO-MFEA)进行了比较。实验结果表明,该算法具有良好的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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