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A novel adaptive control strategy for decomposition-based multiobjective algorithm

机译:基于分解的多目标算法的新型自适应控制策略

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Recently, evolutionary algorithm based on decomposition (MOEA/D) has been found to be very effective and efficient for solving complicated multiobjective optimization problems (MOPs). However, the selected differential evolution (DE) strategies and their parameter settings impact a lot on the performance of MOEA/D when tackling various kinds of MOPs. Therefore, in this paper, a novel adaptive control strategy is designed for a recently proposed MOEA/D with stable matching model, in which multiple DE strategies coupled with the parameter settings are adaptively conducted at different evolutionary stages and thus their advantages can be combined to further enhance the performance. By exploiting the historically successful experience, an execution probability is learned for each DE strategy to perform adaptive adjustment on the candidate solutions. The proposed adaptive strategies on operator selection and parameter settings are aimed at improving both of the convergence speed and population diversity, which are validated by our numerous experiments. When compared with several variants of MOEA/D such as MOEA/D, MOEA/D-DE, MOEA/D-DE+PSO, ENS-MOEA/D, MOEA/D-FRRMAB and MOEA/D-STM, our algorithm performs better on most of test problems. (C) 2016 Published by Elsevier Ltd.
机译:最近,已经发现基于分解的进化算法(MOEA / D)对于解决复杂的多目标优化问题(MOP)非常有效。但是,在处理各种MOP时,选择的差分进化(DE)策略及其参数设置会对MOEA / D的性能产生很大影响。因此,在本文中,针对最近提出的具有稳定匹配模型的MOEA / D设计了一种新颖的自适应控制策略,其中在不同的进化阶段自适应地进行了多种DE策略与参数设置的耦合,因此可以将它们的优点结合起来进一步提高性能。通过利用历史上的成功经验,可以为每种DE策略学习执行概率,以对候选解决方案执行自适应调整。提出的关于操作员选择和参数设置的自适应策略旨在提高收敛速度和总体多样性,这一点已通过我们的大量实验得到验证。与MOEA / D,MOEA / D-DE,MOEA / D-DE + PSO,ENS-MOEA / D,MOEA / D-FRRMAB和MOEA / D-STM等MOEA / D的几种变型进行比较时,我们的算法执行在大多数测试问题上表现更好。 (C)2016由Elsevier Ltd.出版

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