Genetic Algorithm with Simulated Annealing for Resolving Job Shop Scheduling Problem

Xu Liang, Zhen Du
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引用次数: 6

Abstract

In order to solve the limitation of traditional genetic algorithm to solve the job shop scheduling problem, combined with the advantages of genetic algorithm (GA) and simulated annealing algorithm (SA), this paper proposes a kind of algorithm based on NSGA-II, which inserts simulated annealing algorithm during operation. A hybrid genetic algorithm simulated annealing algorithm (GASA) combining the advantages of the two algorithms is generated. The algorithm not only has the advantages of fast convergence speed of genetic algorithm and wide search area of simulated annealing algorithm, but also overcomes the problem of premature convergence of the former and slow convergence speed of the latter. In the operation details of the algorithm, adaptive function, non-dominated sorting and elite retention strategy are added to effectively improve the effectiveness of job shop scheduling.
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基于模拟退火的遗传算法求解作业车间调度问题
为了解决传统遗传算法解决作业车间调度问题的局限性,结合遗传算法(GA)和模拟退火算法(SA)的优点,本文提出了一种基于NSGA-II的算法,在运行过程中插入模拟退火算法。结合两种算法的优点,提出了一种混合遗传算法模拟退火算法(GASA)。该算法不仅具有遗传算法收敛速度快、模拟退火算法搜索范围广的优点,而且克服了遗传算法过早收敛、模拟退火算法收敛速度慢的问题。在算法的操作细节中,加入了自适应函数、非支配排序和精英保留策略,有效提高了作业车间调度的有效性。
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