人类多任务处理
计算机科学
进化算法
数学优化
多目标优化
任务(项目管理)
进化计算
约束优化
遗传算法
人工智能
数学
机器学习
工程类
心理学
认知心理学
系统工程
作者
Kangjia Qiao,Kunjie Yu,Boyang Qu,Jing Liang,Hui Song,Caitong Yue,Hongyu Lin,Kay Chen Tan
标识
DOI:10.1109/tevc.2022.3175065
摘要
When solving constrained multiobjective optimization problems (CMOPs), the utilization of infeasible solutions significantly affects algorithm’s performance because they not only maintain diversity but also provide promising search directions. In light of this situation, this article proposes a new multitasking-constrained multiobjective optimization (MTCMO) framework, in which a dynamic auxiliary task is created to assist in solving a complex CMOP (the main task) via the knowledge transfer. Moreover, the constraint boundary of the auxiliary task reduces dynamically, so that it keeps a high relatedness with the main task to continuously provide supplementary evolutionary directions. Furthermore, an improved $\epsilon $ method is designed for the auxiliary task to utilize diverse high-quality infeasible solutions for breaking through infeasible obstacles in the early stage and approaching the feasible boundary from infeasible regions in the later stage. Besides, a new test function with decision space constraints is designed, where one parameter can be adjusted to control the overlap degree between the constrained Pareto front and the unconstrained Pareto front. This function and the other two modified existing functions are used to analyze the characteristics of MTCMO. Finally, compared with 11 state-of-the-art peer methods, the superior or competitive performance of MTCMO is demonstrated on 54 benchmark functions and two real-world applications.
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