Earliness/tardiness minimization in a no-wait flow shop with sequence-dependent setup times

IF 1.3 Q4 ENGINEERING, INDUSTRIAL
Andrés Felipe Guevara-Guevara, Valentina Gómez-Fuentes, Leidy Johana Posos-Rodríguez, Nicolás Remolina-Gómez, E. M. González-Neira
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引用次数: 5

Abstract

The no-wait flow shop scheduling problem (NWFSP) plays a crucial role in the allocation of resources in multitudinous industries, including the steel, pharmaceutical, chemical, plastic, electronic, and food processing industries. The NWFSP consists of n jobs that must be processed in m machines in series, and no job is allowed to wait between consecutive operations. This project deals with NWFSP with sequence-dependent setup times for minimizing earliness and tardiness. From the literature review of the last five years in NWFSP, it is noticeable that only around 1.92% of the researchers have studied that multi-objective function, which could help to improve the productivity of industries where methods such as just in time are considered. Besides, there is no information about previous researchers that have solved this problem with sequence-dependent setup times. Firstly, a MILP model is proposed to solve small instances, and secondly, a genetic algorithm (GA) is developed as a solution method for medium and large instances. Compared with the mathematical model for small instances, the GA obtained the optimal solution in 100% of the cases. For medium and large instances, the GA improves in an average of 31.54%, 38.09%, 44.58%, 47.72%, and 37.33% the MDD, EDDP, ATC, SPT, and LPT dispatching rules, respectively.
在具有序列依赖的设置时间的无等待流车间中,提前/延迟最小化
无等待流程车间调度问题(NWFSP)在钢铁、制药、化工、塑料、电子和食品加工等众多行业的资源配置中起着至关重要的作用。NWFSP由n个作业组成,这些作业必须在m台机器上串行处理,并且在连续操作之间不允许有任何作业等待。本项目处理NWFSP与序列相关的设置时间,以尽量减少早期和延迟。从NWFSP过去五年的文献回顾中,值得注意的是,只有大约1.92%的研究人员研究了多目标函数,这可以帮助提高行业的生产力,其中考虑了及时等方法。此外,没有关于以前的研究人员用序列依赖的设置时间解决这个问题的信息。首先提出了求解小实例的MILP模型,然后提出了求解大中型实例的遗传算法(GA)。与小实例的数学模型相比,遗传算法在100%的情况下获得了最优解。对于中型和大型实例,GA对MDD、EDDP、ATC、SPT和LPT调度规则的平均提升率分别为31.54%、38.09%、44.58%、47.72%和37.33%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
3.70
自引率
5.90%
发文量
16
审稿时长
16 weeks
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