N. F. M. Mendes, J. Arroyo, Harlem Mauricio Madrid Villadiego
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引用次数: 1
摘要
本文研究了Flowshop Sequence Dependent Group Scheduling (FSDGS)问题,该问题将m台机器上要处理的n个作业以族(或组)的方式分组,在不同组的两个连续作业之间需要一个机器设置时间。该问题的目的是确定组的顺序和每组内作业的顺序,以最小化总流时间。FSDGS问题属于np困难问题,因此需要有效的启发式算法在合理的计算时间内获得近似最优解。在这项工作中,我们提出了一种基于可变邻域下降(VND)和迭代局部搜索(ILS)元启发式的混合启发式算法。我们的启发式操作具有三个邻域结构,并通过对当前最优解应用扰动过程获得新的起始解。计算结果表明,我们的启发式算法在解质量方面优于文献中提出的算法。统计分析证实了这一结果。
Local search heuristics for the Flowshop Sequence Dependent Group Scheduling problem
This paper considers the Flowshop Sequence Dependent Group Scheduling (FSDGS) problem In this problem, the n jobs to be processed on m machines are grouped in families (or groups) in a way that a machine setup time is needed between two consecutive jobs of different groups. The purpose of this problem is to determine the sequence of the groups and the sequence of the jobs within each group in order to minimize the total flow time. The FSDGS problem is classified as NP-hard, thus, efficient heuristics are needed to obtain near-optimal solutions in reasonable computational time. In this work, we propose a hybrid heuristic based on Variable Neighborhood Descent (VND) and Iterated Local Search (ILS) metaheuristic. Our heuristic operates with three neighborhood structures and new starting solutions are obtained by applying a perturbation procedure on the current best solution. The computational results show that our heuristic outperforms, in terms of solution quality, an algorithm proposed in the literature. The results are confirmed by a statistical analysis.