Constraint Programming for Modeling and Solving a Hybrid Flow Shop Scheduling Problem

Haotian Zhang, Yingjun Ji, Ziyan Zhao, Shixin Liu
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引用次数: 1

Abstract

As an extension of a flow shop scheduling problem, hybrid flow shop scheduling problems (HFSP) have been widely concerned. Their characteristics are that every stage has parallel machines, and every job has more complicated production routes than a classical flow shop problem. Currently, most research about HFSP is based on meta-heuristic algorithms, especially evolutionary algorithms. In this article, we provide new models and solution methods based on constraint programming (CP). According to our experiments conducted on benchmark datasets, CP shows great performance in comparison with other competitive solution methods. It renews the best-found solutions of some benchmark instances. For the instances that cannot be solved exactly, it can provide a high-accuracy feasible solution as an upper bound and a relaxed infeasible solution as a lower bound.
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混合流水车间调度问题的约束规划建模与求解
混合流水车间调度问题作为流水车间调度问题的延伸,得到了广泛的关注。它们的特点是每个工序都有并行机,每个作业都有比经典流水作业更复杂的生产路线。目前,HFSP的研究大多是基于元启发式算法,尤其是进化算法。本文提出了基于约束规划(CP)的新模型和求解方法。根据我们在基准数据集上进行的实验,与其他有竞争力的求解方法相比,CP表现出了很好的性能。它更新了一些基准实例的最佳解决方案。对于不能精确求解的实例,它可以提供高精度可行解作为上界,松弛不可行解作为下界。
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