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A variable neighborhood search for job shop scheduling with set-up times to minimize makespan

机译:可变邻域搜索,用于设置车间时间以最大程度缩短制造时间

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Production Scheduling problems are typically named bases on the processing routes of their jobs on different processors and also the number of processors in each stage. In this paper, we consider the problem of scheduling a job shop (JSS) where set-up times are sequence-dependent (SDST) to minimize the maximum completion times of operations or makespan. Our problem is generally formulated as J/STsd/C_(max). To tackle such an NP-hard problem, a recent effective metaheuristic algorithm known as variable neighborhood search (VNS) is employed. VNS algorithms have shown excellent capability to solve scheduling problems to optimal or near-optimal schedule. Our proposed VNS is readily intelligible yet is a robust solution technique for the problem of SDST JSS. VNS is categorized as a local search-based algorithm armed with systematic neighborhood search structures. Our proposed VNS obviates the notorious myopic behavior of local search-based metaheuristic algorithms by the means of several systematic insertion neighborhood search structures. An experimental design based on Taillard's benchmark is conducted to evaluate the efficiency and effectiveness of our proposed algorithm against some effective algorithms in the literature. The obtained results strongly support the high performance of our proposed algorithm with respect to other well-known heuristic and metaheuristic algorithms.
机译:生产调度问题通常是根据作业在不同处理器上的处理路径以及每个阶段中处理器的数量来命名的。在本文中,我们考虑调度作业车间(JSS)的问题,在该车间中,建立时间与序列有关(SDST),以最大程度地减少操作或制造时间的最大完成时间。我们的问题通常表述为J / STsd / C_(max)。为了解决这样的NP难题,采用了一种称为变邻域搜索(VNS)的近来有效的元启发式算法。 VNS算法具有出色的能力,可以将调度问题解决为最佳或接近最佳的调度。我们提出的VNS易于理解,但却是解决SDST JSS问题的可靠解决方案。 VNS被归类为基于本地搜索的算法,具有系统的邻域搜索结构。我们提出的VNS通过几种系统的插入邻域搜索结构,消除了基于局部搜索的元启发式算法臭名昭著的近视行为。进行了基于Taillard基准的实验设计,以相对于文献中的一些有效算法来评估我们提出的算法的效率和有效性。相对于其他众所周知的启发式算法和元启发式算法,所获得的结果强烈支持了我们提出的算法的高性能。

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