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Learning iterative dispatching rules for job shop scheduling with genetic programming

机译:通过遗传编程学习用于车间调度的迭代调度规则

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This study proposes a new type of dispatching rule for job shop scheduling problems. The novelty of these dispatching rules is that they can iteratively improve the schedules by utilising the information from completed schedules. While the quality of the schedule can be improved, the proposed iterative dispatching rules (IDRs) still maintain the easiness of implementation and low computational effort of the traditional dispatching rules. This feature makes them more attractive for large-scale manufacturing systems. A genetic programming (GP) method is developed in this paper to evolve IDRs for job shop scheduling problems. The results show that the proposed GP method is significantly better than the simple GP method for evolving composite dispatching rules. The evolved IDRs also show their superiority to the benchmark dispatching rules when tested on different problem instances with makespan and total weighted tardiness as the objectives. Different aspects of IDRs are also investigated and the insights from these analyses are used to enhance the performance of IDRs.
机译:这项研究提出了一种用于作业车间调度问题的新型调度规则。这些调度规则的新颖之处在于,它们可以利用已完成的调度表中的信息来迭代地改进调度表。尽管可以提高调度的质量,但所提出的迭代调度规则(IDR)仍保持了传统调度规则的易于实施性和较低的计算量。此功能使它们对于大规模制造系统更具吸引力。本文开发了一种遗传编程(GP)方法,以发展针对车间调度问题的IDR。结果表明,提出的GP方法在改进复合调度规则方面明显优于简单的GP方法。当以makepan和总加权拖尾为目标在不同的问题实例上进行测试时,经过改进的IDR还显示出其优于基准分发规则的优势。还对IDR的不同方面进行了研究,并将这些分析得出的见解用于增强IDR的性能。

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