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AuthorPeng, Chen
AuthorLi, Zhimeng
AuthorQiao, Kangjia
AuthorSuganthan, P.N.
AuthorBan, Xuanxuan
AuthorYu, Kunjie
AuthorYue, Caitong
AuthorLiang, Jing
Available date2025-05-12T08:08:22Z
Publication Date2024-10-11
Publication NameSwarm and Evolutionary Computation
Identifierhttp://dx.doi.org/10.1016/j.swevo.2024.101738
CitationChen, P., Li, Z., Qiao, K., Suganthan, P. N., Ban, X., Yu, K., ... & Liang, J. (2024). An archive-assisted multi-modal multi-objective evolutionary algorithm. Swarm and Evolutionary Computation, 91, 101738.
ISSN2210-6502
URIhttps://www.sciencedirect.com/science/article/pii/S2210650224002761
URIhttp://hdl.handle.net/10576/64870
AbstractThe multi-modal multi-objective optimization problems (MMOPs) pertain to characteristic of the decision space that exhibit multiple sets of Pareto optimal solutions that are either identical or similar. The resolution of these problems necessitates the utilization of optimization algorithms to locate multiple Pareto sets (PSs). However, existing multi-modal multi-objective evolutionary algorithms (MMOEAs) encounter difficulties in concurrently enhancing solution quality in both decision space and objective space. In order to deal with this predicament, this paper presents an Archive-assisted Multi-modal Multi-objective Evolutionary Algorithm, called A-MMOEA. This algorithm maintains a main population and an external archive, which is leveraged to improve the fault tolerance of individual screening. To augment the quality of solutions in the archive, an archive evolution mechanism (AEM) is formulated for updating the archive and an archive output mechanism (AOM) is used to output the final solutions. Both mechanisms incorporate a comprehensive crowding distance metric that employs objective space crowding distance to facilitate the calculation of decision space crowding distance. Besides, a data screening method is employed in the AOM to alleviate the negative impact on the final results arising from undesirable individuals resulting from diversity search. Finally, in order to enable individuals to effectively escape the limitation of niches and further enhance diversity of population, a diversity search method with level-based evolution mechanism (DSMLBEM) is proposed. The proposed algorithm’s performance is evaluated through extensive experiments conducted on two distinct test sets. Final results indicate that, in comparison to other commonly used algorithms, this approach exhibits favorable performance.
SponsorThis work was supported in part by National Natural Science Fund for Outstanding Young Scholars of China ( 61922072 ), Key R&D projects of the Ministry of Science and Technology of China ( 2022YFD2001200 ), National Natural Science Foundation of China ( 62176238 , 61806179 , 61876169 , 62106230 and 61976237 ), China Postdoctoral Science Foundation ( 2020M682347 , 2021T140616 , 2021M692920 ), Training Program of Young Backbone teachers in Colleges and universities in Henan Province ( 2020GGJS006 ), Henan Provincial Young Talents Lifting Project ( 2021HYTP007 ), Natural Science Foundation project of Henan Province ( 242300420277 ), and Chongqing University of Posts and Telecommunications Key Laboratory of Big Data open fund project ( BDIC-2023-B-005 ).
Languageen
PublisherElsevier
SubjectMulti-modal multi-objective optimization
Archive evolution mechanism
Diversity search method with level-based evolution
Archive output mechanism
TitleAn archive-assisted multi-modal multi-objective evolutionary algorithm
TypeArticle
Volume Number91
ESSN2210-6510
dc.accessType Full Text


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