An improved iterated greedy algorithm for the distributed flow shop scheduling problem with sequence-dependent setup times

Xue Han, Yu-yan Han, Yiping Liu, Q. Pan, H. Qin, Jun-qing Li
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Abstract

In various flow shop scheduling problems, it is very common that a large-scale production is done. Under this situation, more factories are of more practical interest than a factory. Thus, the distributed permutation flow shop scheduling problems (DPFSPs) have been attracted attentions by researchers. However, the DPFSP is more complicated than the traditional flow shop scheduling problems. It considers not only the processing order of the jobs, but also how to distribute the jobs to multiple factories for parallel processing. In addition, the sequence- dependent setup time (SDST) constraint of machines is taken into account to well study the above DPFSP with SDST. This paper presents a simple and effective iterated greedy algorithm. It is proposed to replace the traditional insertion-based local search with exchange-based local search, which greatly improves the search efficiency. The proposed new iterated greedy (NIG) algorithm is applied to test instances, and compares with the state- of-the-art algorithms. Our empirical results demonstrate that the proposed algorithm outperforms the compared algorithms and can obtain the best solution of DPFSP.
针对时序相关的分布式流水车间调度问题,提出一种改进的迭代贪心算法
在各种流程车间调度问题中,进行大规模生产是很常见的。在这种情况下,更多的工厂比一个工厂更有实际意义。因此,分布式置换流水车间调度问题(DPFSPs)越来越受到研究者的关注。然而,dppfsp比传统的流水车间调度问题更为复杂。它不仅考虑了作业的加工顺序,而且考虑了如何将作业分配到多个工厂进行并行处理。此外,考虑了机器的序列相关设置时间(SDST)约束,可以很好地研究上述具有SDST的DPFSP。本文提出了一种简单有效的迭代贪心算法。提出用基于交换的局部搜索取代传统的基于插入的局部搜索,大大提高了搜索效率。将提出的迭代贪心算法应用于测试实例,并与现有算法进行了比较。实证结果表明,本文提出的算法优于比较算法,能够得到DPFSP的最优解。
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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