计算机科学
对偶(语法数字)
数学优化
趋同(经济学)
约束(计算机辅助设计)
混合算法(约束满足)
人口
可行区
算法
约束满足
人工智能
数学
约束逻辑程序设计
经济增长
经济
概率逻辑
社会学
人口学
文学类
几何学
艺术
作者
Kaixi Yang,Jinhua Zheng,Juan Zou,Fan Yu,Shengxiang Yang
标识
DOI:10.1016/j.swevo.2023.101247
摘要
It is challenging to balance convergence and diversity while fully satisfying feasibility when dealing with constrained multi-objective optimization problems (CMOPs). Overemphasizing the feasibility optimization of constraint satisfaction may lead to the search falling into local optimum, and overemphasizing the objective optimization of ignoring constraints may cause a lot of computational resources to be wasted in searching for infeasible solutions. This paper proposes a dual-population algorithm called dp-ACS, aiming to seek a balance between constraint satisfaction and objective optimization. The algorithm proposes a dominance relation to speed up the algorithm’s convergence and an adaptive constraint strength strategy to consider the information of excellent infeasible solutions. Specifically, the former defines a new domination relationship to distinguish the pros and cons of nondominated solutions. The population converges faster by selecting better nondominated solutions into the matching pool. The latter is informed by infeasible solutions with good objective values by maintaining two cooperatively complementary populations (i.e., mainPop and auxPop). mainPop uses an adaptive constraint strength function that optimizes the objective of the original problem while satisfying the current constraint strengths. Dynamic adjustment of constraint strength can improve the diversity when the population converges to the boundary of the feasible local region. auxPop optimizes the unconstrained objective of the original problem, which can provide mainPop with favorable information outside the feasible region it explores to guide the evolution of mainPop. Experimental results show that the proposed algorithm was more competitive on four constrained test suites and four real-world CMOPs, compared with seven state-of-the-art CMOEAs.
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