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Scheduling jobs and maintenances in flexible job shop with a hybrid genetic algorithm

机译:使用混合遗传算法在灵活的车间中调度作业和维护

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摘要

Most flexible job shop scheduling models assume that the machines are available all of the time. However, in most realistic situations, machines may be unavailable due to maintenances, pre-schedules and so on. In this paper, we study the flexible job shop scheduling problem with availability constraints. The availability constraints are non-fixed in that the completion time of the maintenance tasks is not fixed and has to be determined during the scheduling procedure. We then propose a hybrid genetic algorithm to solve the flexible job shop scheduling problem with non-fixed availability constraints (fJSP-nfa). The genetic algorithm uses an innovative representation method and applies genetic operations in phenotype space in order to enhance the inheritability. We also define two kinds of neighbourhood for the problem based on the concept of critical path. A local search procedure is then integrated under the framework of the genetic algorithm. Representative flexible job shop scheduling benchmark problems and fJSP-nfa problems are solved in order to test the effectiveness and efficiency of the suggested methodology.
机译:大多数灵活的车间计划模型都假定机器始终可用。但是,在最现实的情况下,由于维护,预定时间表等原因,机器可能不可用。在本文中,我们研究了具有可用性约束的柔性作业车间调度问题。可用性约束是不固定的,因为维护任务的完成时间不是固定的,必须在计划过程中确定。然后,我们提出了一种混合遗传算法,以解决具有非固定可用性约束(fJSP-nfa)的柔性作业车间调度问题。遗传算法使用创新的表示方法,并在表型空间中应用遗传运算,以增强可继承性。我们还根据关键路径的概念为问题定义了两种邻域。然后在遗传算法的框架下整合了本地搜索程序。解决了具有代表性的灵活的作业车间调度基准问题和fJSP-nfa问题,以测试所建议方法的有效性和效率。

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