基于简单自适应局部搜索策略的细胞粒子群优化求解置换流水车间调度问题

IF 1.2 4区 计算机科学 Q4 AUTOMATION & CONTROL SYSTEMS Archives of Control Sciences Pub Date : 2023-07-20 DOI:10.24425/acs.2019.129378
J. Seck-Tuoh-Mora, J. Medina-Marin, E. Martinez-Gomez, Eva Selene Hernández-Gress, N. Hernández-Romero, Valeria Volpi-Leon
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引用次数: 4

摘要

排列流车间调度问题处理的是由一组机器按相同顺序加工的多个作业的生产计划。已经提出了几个元启发式方法来最小化这个问题的最大时间跨度。本文在前人交替两阶段粒子群算法(Alternate Two-Phase PSO, ATPPSO)方法的基础上,结合连续问题的元胞粒子群算法的邻域概念,提出了一种简单的自适应局部搜索策略(CAPSO-SALS)来改进ATPPSO算法,以提高其性能。CAPSO-SALS保留了ATPPSO的简单性,并基于邻域对每个解进行本地搜索。邻居是由工作的交换或插入产生的,这些工作由线性轮盘赌方案选择,取决于最佳个人位置的最大跨度。使用12组不同的Taillard基准问题来评估CAPSO-SALS算法的性能,然后与原始算法和先前的另一种增强ATPPSO算法进行比较。最后,将CAPSO-SALS方法与其他10种经典和先进的元启发式方法进行了比较,得到了满意的结果。
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Cellular particle swarm optimization with a simple adaptive local search strategy for the permutation flow shop scheduling problem
Permutation flow shop scheduling problem deals with the production planning of a number of jobs processed by a set of machines in the same order. Several metaheuristics have been proposed for minimizing the makespan of this problem. Taking as basis the previous Alternate Two-Phase PSO (ATPPSO) method and the neighborhood concepts of the Cellular PSO algorithm proposed for continuous problems, this paper proposes the improvement of ATPPSO with a simple adaptive local search strategy (called CAPSO-SALS) to enhance its performance. CAPSO-SALS keeps the simplicity of ATPPSO and boosts the local search based on a neighborhood for every solution. Neighbors are produced by interchanges or insertions of jobs which are selected by a linear roulette scheme depending of the makespan of the best personal positions. The performance of CAPSO-SALS is evaluated using the 12 different sets of Taillard’s benchmark problems and then is contrasted with the original and another previous enhancement of the ATPPSO algorithm. Finally, CAPSO-SALS is compared as well with other ten classic and state-of-art metaheuristics, obtaining satisfactory results.
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来源期刊
Archives of Control Sciences
Archives of Control Sciences Mathematics-Modeling and Simulation
CiteScore
2.40
自引率
33.30%
发文量
0
审稿时长
14 weeks
期刊介绍: Archives of Control Sciences welcomes for consideration papers on topics of significance in broadly understood control science and related areas, including: basic control theory, optimal control, optimization methods, control of complex systems, mathematical modeling of dynamic and control systems, expert and decision support systems and diverse methods of knowledge modelling and representing uncertainty (by stochastic, set-valued, fuzzy or rough set methods, etc.), robotics and flexible manufacturing systems. Related areas that are covered include information technology, parallel and distributed computations, neural networks and mathematical biomedicine, mathematical economics, applied game theory, financial engineering, business informatics and other similar fields.
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