Multimodal multiobjective optimization problems (MMOPs) have attracted wide attention in recent years. This kind of problem is very challenging since they need to locate different Pareto-optimal solution sets (PSs) that correspond to the same Pareto front. To resolve it, this article proposes a novel multimodal multiobjective differential evolution (DE) algorithm with species conservation, which develops a new way of locating different PSs. Specifically, the proposed algorithm adopts species conservation to determine different PSs in known areas, while it uses a variant of DE as the basic optimizer to explore new areas. There are three operators in species conservation: 1) species division; 2) seed determination; and 3) seed conservation. Species division mainly partitions the joint population of parents and children into various species in the decision space for retaining different PSs. Seed determination selects superior solutions from each species as seeds that need to be kept in the next generation. Seed conservation is to ensure that all species seeds are retained in the new generation by substituting no promising solutions with them, thereby guarantee not missing some known areas that may contain different PSs. Besides, the DE variant is utilized to produce diverse solutions to find new areas in the decision space where PSs may exist. The comparative experiments with ten state-of-the-art algorithms have been performed on the CEC 2019 MMOPs test set and two real-world problems. The experimental results have verified that the proposed algorithm has a competitive performance for MMOPs.
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IEEE
School of Electrical and Information Engineering,Zhengzhou University
School of Electrical Engineering and Automation, Henan Institute of TechnologyIEEE
Jing Liang
Hongyu Lin
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School of Electrical and Information Engineering, Zhengzhou UniversityIEEE
Hongyu Lin
Caitong Yue
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IEEE
School of Electrical and Information Engineering, Zhengzhou UniversityIEEE
Caitong Yue
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Ponnuthurai Nagaratnam Suganthan
Yaonan Wang
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College of Electrical and Information Engineering, National Engineering Research Center for Robot Visual Perception and Control Technology, Hunan UniversityIEEE