数学优化
局部搜索(优化)
计算机科学
模因算法
粒子群优化
元启发式
作业车间调度
迭代局部搜索
趋同(经济学)
流水车间调度
引导式本地搜索
可变邻域搜索
帕累托原理
调度(生产过程)
算法
数学
布线(电子设计自动化)
经济增长
计算机网络
经济
作者
Wenqiang Zhang,Chen Li,Mitsuo Gen,Weidong Yang,Guohui Zhang
标识
DOI:10.1016/j.eswa.2023.121570
摘要
Most existing distributed hybrid flow-shop scheduling problems (DHFSPs) assume identical shops and lack consideration of heterogeneous shops. This study focuses on energy-efficient heterogeneous DHFSP. A multiobjective memetic algorithm with particle swarm optimization and Q-learning-based local search is proposed in order to optimize both makespan and total energy consumption . Particle swarm optimization with multi-group is specifically designed as a global search strategy to improve the fast convergence performance of solutions in multi-direction of Pareto front . To improve the problem-specific knowledge search, two local search strategies are designed to further improve the quality and diversity of solutions. In addition, Q-learning is utilized to guide variable neighborhood search to better balance the exploration and exploitation of algorithms. This study investigates the effect of parameter setting and conducts extensive numerical tests. The comparative results and statistical analysis demonstrate the superior convergence and distribution performance of the proposed algorithm. • Multi-group PSO as global search enhances multi-direction convergence of PF. • Two local search strategies cooperate with particle swarm optimization . • Inter-factory local search with insert and swap between critical factories. • Intra-factory local search with Q-learning and VNS within factories. • Two initialization methods increase the diversity of population.
科研通智能强力驱动
Strongly Powered by AbleSci AI