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Flexible flow shop scheduling with stochastic processing times: A decomposition-based approach

机译:具有随机处理时间的灵活流水车间调度:基于分解的方法

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摘要

Flexible flow shop scheduling problems are NP-hard and tend to become more complex when stochastic uncertainties are taken into consideration. Although some methods have been developed to address such problems, they remain inherently difficult to solve by any single approach. This paper presents a novel decomposition-based approach (DBA), which combines both the shortest processing time (SPT) and the genetic algorithm (GA), to minimizing the makespan of a flexible flow shop (FFS) with stochastic processing times. In the proposed DBA, a neighbouring K-means clustering algorithm is developed to firstly group the machines of an FFS into an appropriate number of machine clusters, based on their stochastic nature. Two optimal back propagation networks (BPN), corresponding to the scenarios of simultaneous and non-simultaneous job arrivals, are then selectively adopted to assign either SPT or GA to each machine cluster for sub-schedule generation. Finally, an overall schedule is generated by integrating the sub-schedules of machine clusters. Computation results show that the DBA outperforms SPT and GA alone for FFS scheduling with stochastic processing times. © 2012 Elsevier Ltd. All rights reserved.
机译:灵活的流水车间调度问题是NP难题,当考虑到随机不确定性时,问题会变得越来越复杂。尽管已经开发出一些方法来解决此类问题,但是它们固有地仍然难以通过任何一种方法来解决。本文提出了一种新颖的基于分解的方法(DBA),该方法结合了最短的处理时间(SPT)和遗传算法(GA),以最小化具有随机处理时间的柔性流水车间(FFS)的工期。在提出的DBA中,开发了一种相邻的K均值聚类算法,首先基于其随机性将FFS的机器分为适当数量的机器集群。然后,有选择地采用两个最佳反向传播网络(BPN)(分别对应于同时和非同时到达作业的情况),以将SPT或GA分配给每个机器集群以进行子计划生成。最后,通过集成机器集群的子时间表来生成总体时间表。计算结果表明,对于具有随机处理时间的FFS调度,DBA优于SPT和GA。 ©2012 ElsevierLtd。保留所有权利。

著录项

  • 作者

    Choi SH; Wang K;

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  • 年度 2012
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  • 原文格式 PDF
  • 正文语种 eng
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