Multi-period cell loading and job sequencing in a cellular manufacturing system

Gokhan Egilmez, G. Süer
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引用次数: 2

Abstract

In this paper, a multi-period cell loading problem is addressed, where the objectives are to minimise the number of tardy jobs (nT) in a multi-period planning horizon and optimise the scheduling of tardy jobs. Three cell loading and job scheduling strategies are proposed and tested with two newly developed mixed integer programming models. Additionally, three types of due dates (tight, medium and loose) and three different demand levels were considered. Finally, two tardy job assignment methods were proposed to observe the impact on nT. Case problems were solved based on minimising nT, Tmax and total tardiness (TT) objectives and cost sensitivity analysis was performed. Results indicated that, the first strategy, (early start allowance and tardy job assignment after each period) performed better in terms of nT. For the secondary objectives, tradeoffs were observed among different strategies depending on the type of due date, demand level and tardy job assignment method.
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细胞制造系统的多周期细胞装载和作业排序
本文讨论了一个多周期单元加载问题,其目标是在多周期规划范围内最小化延迟作业(nT)的数量并优化延迟作业的调度。提出了三种单元加载和作业调度策略,并用两种新开发的混合整数规划模型进行了测试。此外,还考虑了三种类型的截止日期(紧张、中等和宽松)和三种不同的需求水平。最后,提出了两种延迟工作分配方法来观察对延迟时间的影响。基于最小化延迟时间、最大延迟时间和总延迟时间(TT)目标来解决案例问题,并进行成本敏感性分析。结果表明,第一种策略(提前开始津贴和每期后延迟工作分配)在nT方面表现较好。对于次要目标,不同策略之间根据到期日类型,需求水平和延迟工作分配方法进行权衡。
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