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首页> 外文期刊>Soft computing: A fusion of foundations, methodologies and applications >Dual-information-based evolution and dual-selection strategy in evolutionary multiobjective optimization
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Dual-information-based evolution and dual-selection strategy in evolutionary multiobjective optimization

机译:进化多目标优化中的基于双信息的演化与双选择策略

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Multiobjective evolutionary algorithm based on decomposition (MOEA/D) decomposes a multiobjective optimization problem into a number of scalar optimization subproblems and optimizes them simultaneously in a collaborative manner in one run. The recently proposed stable matching (STM)-based selection is a variant of MOEA/D that achieves one-to-one STM between subproblems and solutions on the basis of mutual preferences. However, the STM has a high probability of matching a good convergence solution with a subproblem, which results in an imbalance between convergence and diversity of selection result. In this study, we propose a new variant of MOEA/D with dual-information and dual-selection (DS) strategy (MOEA/D-DIDS). Different from other evolutionary operations, we use an adaptive historical and neighboring information in generating new individuals to avoid local optima and accelerate convergence rate. In the selection operation, we use the adaptive limited STM (beta LSTM) strategy, where parameter beta is adaptive in accordance with the evolutionary process, as a guideline to select a population from the mixed population that survives as the next parent population. In addition to beta LSTM, we use an STM to select competitive individuals as the members of the next mixed population. This DS strategy not only balances convergence and diversity but also holds the elite solutions. The effectiveness and competitiveness of MOEA/D-DIDS are validated and compared with several state-of-the-art evolutionary multiobjective optimization algorithms on benchmark problems.
机译:基于分解(MOEA / d)的多目标进化算法(MOEA / d)将多目标优化问题分解为多个标量优化子问题,并在一次运行中以协同方式同时优化它们。最近提出的稳定匹配(STM)的选择是MOEA / D的变体,在基于相互偏好的基础上实现子问题和解决方案一对一的STM。然而,STM具有与子问题匹配良好的收敛解决方案的高可能性,这导致选择结果的收敛和多样性之间的不平衡。在这项研究中,我们提出了一种具有双信息和双选(DS)策略的MoA / D的新变种(Moea / D-Dids)。与其他进化操作不同,我们使用自适应历史和邻近的信息生成新的个人,以避免本地最佳和加速收敛速度。在选择操作中,我们使用自适应有限的STM(Beta LSTM)策略,其中参数β根据进化过程是自适应的,作为选择从作为下一个父群的混合群体中选择的人口的指导。除了Beta LSTM之外,我们使用STM选择竞争性的人作为下一个混合人口的成员。这款DS策略不仅余额余额和多样性,而且还拥有精英解决方案。 MOEA / D-DIDS的有效性和竞争力被验证并与若干最先进的进化多目标优化算法进行了验证,并在基准问题上进行了比较。

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