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Network-based hybrid genetic algorithm for scheduling in FMS environments

机译:FMS环境中基于网络的混合遗传算法调度

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摘要

Scheduling in flexible manufacturing systems (FMS) must take account of the shorter lead-time, the multiprocessing environment, the flexibility of alternative workstations with different processing times, and the dynamically changing states. The best scheduling approach, as described here, is to minimize makespan t_M, total flow time t_F, and total tardiness penalty p_T. However, in the case of manufacturing system problems, it is difficult for those with traditional optimization techniques to cope with this. This article presents a new flow network-based hybrid genetic algorithm (hGA) approach for generating static schedules in a FMS environment. The proposed method is combined with the neighborhood search technique in a mutation operation to improve the solution of the FMS problem, and to enhance the performance of the genetic search process. We update the change in swap mutation and the local search-based mutation ration. Numerical experiments show that the proposed flow network-based hGA is both effective and efficient for FMS problems.
机译:柔性制造系统(FMS)中的计划必须考虑到较短的交货时间,多处理环境,具有不同处理时间的替代工作站的灵活性以及动态变化的状态。如此处所述,最佳调度方法是最小化制造跨度t_M,总流动时间t_F和总拖延度惩罚p_T。但是,在制造系统出现问题的情况下,那些使用传统优化技术的人很难解决这一问题。本文提出了一种新的基于流网络的混合遗传算法(hGA)方法,用于在FMS环境中生成静态计划。所提出的方法在变异操作中与邻域搜索技术相结合,以改善FMS问题的解决方案,并提高遗传搜索过程的性能。我们更新交换突变和基于本地搜索的突变比率的变化。数值实验表明,所提出的基于流网络的hGA对于FMS问题既有效又有效。

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