Constraint programming models for serial batch scheduling with minimum batch size

IF 3.7 4区 管理学 Q2 OPERATIONS RESEARCH & MANAGEMENT SCIENCE
Jorge A. Huertas, Pascal Van Hentenryck
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Abstract

In serial batch (s-batch) scheduling, jobs are grouped in batches and processed sequentially within their batch. This paper considers multiple parallel machines, nonidentical job weights and release times, and sequence-dependent setup times between batches of different families. Although s-batch has been widely studied in the literature, very few papers have taken into account a minimum batch size, typical in practical settings such as semiconductor manufacturing and the metal industry. The problem with this minimum batch size requirement has been mostly tackled with dynamic programming and meta-heuristics, and no article has ever used constraint programming (CP) to do so. This paper fills this gap by proposing, three CP models for s-batching with minimum batch size: (i) an Interval Assignment model that computes and bounds the size of the batches using the presence literals of interval variables of the jobs. (ii) A Global model that exclusively uses global constraints that track the size of the batches over time. (iii) And a Hybrid model that combines the benefits of the extra global constraints with the efficiency of the sum-of-presences constraints to ensure the minimum batch sizes.The computational experiments on standard cases compare the three CP models with two existing mixed-integer programming (MIP) models from the literature. The results demonstrate the versatility of the proposed CP models to handle multiple variations of s-batching; and their ability to produce, in large instances, better solutions than the MIP models faster.
最小批量串行批调度的约束规划模型
在串行批处理(s-batch)调度中,作业分批分组,并在其批处理中顺序处理。本文考虑了多台并行机器、不相同的作业权值和释放时间,以及不同家族批次之间的顺序相关的设置时间。虽然s-batch在文献中得到了广泛的研究,但很少有论文考虑到最小批量大小,这在半导体制造和金属工业等实际环境中是典型的。这个最小批大小要求的问题主要是通过动态规划和元启发式来解决的,没有一篇文章使用约束规划(CP)来解决这个问题。本文通过提出最小批大小的s批处理的三个CP模型来填补这一空白:(i)一个区间分配模型,该模型使用作业的区间变量的存在量来计算和限定批的大小。(ii)一个全局模型,专门使用跟踪批次大小的全局约束。(iii)混合模型,该模型结合了额外全局约束的好处和存在和约束的效率,以确保最小批量大小。在标准情况下的计算实验将这三种CP模型与文献中已有的两种混合整数规划(MIP)模型进行了比较。结果表明,所提出的CP模型在处理s批处理的多种变化时具有通用性;以及它们在大型情况下比MIP模型更快地产生更好解决方案的能力。
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
Operations Research Perspectives
Operations Research Perspectives Mathematics-Statistics and Probability
CiteScore
6.40
自引率
0.00%
发文量
36
审稿时长
27 days
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