人类多任务处理
水准点(测量)
计算机科学
任务(项目管理)
进化算法
帕累托原理
多目标优化
数学优化
最优化问题
人工智能
机器学习
算法
数学
工程类
心理学
认知心理学
大地测量学
系统工程
地理
作者
Xiaoyu Zhong,Xiangjuan Yao,Kangjia Qiao,Dunwei Gong
标识
DOI:10.1109/tetci.2024.3393368
摘要
Solving constrained multi-objective optimization problems (CMOPs) via evolutionary multitasking optimization (EMTO) algorithm is a meaningful attempt due to the fact that knowledge learning and transfer across the related optimization exercises can improve the efficiency of others. However, the utilization of EMTO in CMOPs is still in its infancy. To fill this research gap, an EMTO-based constrained multi-objective optimization framework including forward and backward stages (CEMTFB) is developed to address an original CMOP task together with two helper CMOP tasks. Firstly, the original task and a helper task evolve forward simultaneously with and without constraints, responsible for exploring well-converged and well-distributed feasible and infeasible solutions, respectively. Then, in the backward stage, a novel reverse haulage strategy is designed for another helper task to conduct a search within the promising areas that are not dominated by any examined feasible solution, thereby collaborating with the original task to approach the constrained Pareto front from two complementary directions. Moreover, a dynamic knowledge transfer strategy is proposed to coordinate the interaction between the original and helper tasks. Finally, comprehensive experiments are conducted on 45 benchmark functions and 19 real-world CMOPs, and the comparison against seven state-of-the-art peer methods demonstrates the superior or at least competitive performance of CEMTFB.
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