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Multiregional co-evolutionary algorithm for dynamic multiobjective optimization

机译:动态多目标优化的多限共同进化算法

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摘要

Dynamic multiobjective optimization problems (DMOPs) require Evolutionary algorithms (EAs) to track the time-dependent Pareto-optimal front (PF) or Pareto-optimal set (PS), and provide diversified solutions. Thus, a multiregional co-evolutionary dynamic multiobjective optimization algorithm (MRCDMO) is proposed based on the combination of a multiregional prediction strategy (MRP) and a multiregional diversity maintenance mechanism (MRDM). To accurately predict the moving trend of PS, a series of center points in different subregions is used to build a difference model to estimate the new location of center points when an environmental change is detected. To promote the diversity of the population, some diverse individuals are generated within the subregion of the next predicted PS. These two parts of solutions make up the population under a new environment. The performance of our proposed method is validated by comparison with four state-of-the-art EAs on 12 test functions. Experimental results demonstrate that the proposed algorithm can effectively cover the changing PF and efficiently predict the location of the moving PS. (C) 2020 Elsevier Inc. All rights reserved.
机译:动态多目标优化问题(DMOP)需要进化算法(EA)来跟踪与时间相关的帕累托最优前沿(PF)或帕累托最优集(PS),并提供多样化的解决方案。因此,基于多区域预测策略(MRP)和多区域多样性维护机制(MRDM)的结合,提出了一种多区域协同进化动态多目标优化算法(MRCDMO)。为了准确预测PS的移动趋势,在检测到环境变化时,使用不同子区域的一系列中心点建立差分模型来估计中心点的新位置。为了促进种群的多样性,在下一个预测PS的子区域内产生了一些不同的个体。这两部分解决方案构成了新环境下的种群。通过在12个测试函数上与四种最先进的EA进行比较,验证了我们提出的方法的性能。实验结果表明,该算法能有效地覆盖变化的PF,并能有效地预测移动PS的位置。(C)2020爱思唯尔公司版权所有。

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