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An improved genetic algorithm for the flexible job shop scheduling problem with multiple time constraints

机译:一种改进的多次约束柔性作业商店调度问题的改进遗传算法

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The flexible job shop scheduling problem is a very important problem in factory scheduling. Most of existing researches only consider the processing time of each operation, however, jobs often require transporting to another machine for the next operation while machines often require setup to process the next job. In addition, the times associated with these steps increase the complexity of this problem. In this paper, the flexible job scheduling problem is solved that incorporates not only processing time but setup time and transportation time as well. After presenting the problem, an improved genetic algorithm is proposed to solve the problem, with the aim of minimizing the makespan time, minimizing total setup time, and minimizing total transportation time. In the improved genetic algorithm, initial solutions are generated through three different methods to improve the quality and diversity of the initial population. Then, a crossover method with artificial pairing is adopted to preserve good solutions and improve poor solutions effectively. In addition, an adaptive weight mechanism is applied to alter mutation probability and search ranges dynamically for individuals in the population. By a series of experiments with standard datasets, we demonstrate the validity of our approach and its strong performance.
机译:灵活的作业商店调度问题是工厂调度中的一个非常重要的问题。现有的大多数研究只考虑每个操作的处理时间,然而,作业通常需要运输到另一台机器,以便在机器通常需要设置以处理下一个作业时。此外,与这些步骤相关的时间提高了这个问题的复杂性。在本文中,解决了灵活的作业调度问题,其不仅包含处理时间而且还包括设置时间和运输时间。在提出问题之后,提出了一种改进的遗传算法来解决问题,目的是最小化Mapspan时间,最小化总设置时间,最小化总运输时间。在改进的遗传算法中,通过三种不同的方法产生初始解决方案,以提高初始群体的质量和多样性。然后,采用具有人造配对的交叉方法来保护良好的解决方案并有效地提高差的解决方案。另外,应用自适应重量机制以改变突变概率和搜索范围,以便为人群中的个体进行动态。通过标准数据集的一系列实验,我们展示了我们方法的有效性及其强劲的性能。

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