收录:
摘要:
The huge objective space makes some representative multiobjective optimization algorithms face challenges. A many-objective particle swarm optimization based on adaptive fuzzy dominance (MAPSOAF) is proposed. An adaptive fuzzy dominance relation is defined to adjust the threshold of fuzzy dominance adaptively to improve the convergence of MAPSOAF. Second, a perturbation term is added to the particle's velocity formula by selecting an elite member from the external archive to conquer premature convergence and to enhance the diversity of population. In addition, a method of simplified Harmonic normalized distance is utilized to evaluate the density of individuals and reduce the computational cost when while improving the population diversity. MAPSOAF is compared with other five high-performance multiobjective evolutionary algorithms on the benchmark test set DTLZ {1, 2, 4, 5}, and the results show that the proposed MAPSOAF has more significant performance advantages in convergence and diversity over the peering algorithms. Copyright © 2018 Acta Automatica Sinica. All rights reserved.
关键词:
通讯作者信息:
电子邮件地址: