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Ant colony optimisation algorithms for two-stage permutation flow shop with batch processing machines and nonidentical job sizes

机译:具有批量加工机械和非识别工作尺寸的两阶段排列流店的蚁群优化算法

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摘要

This paper focuses on minimising the maximum completion time for the two-stage permutation flow shop scheduling problem with batch processing machines and nonidentical job sizes by considering blocking, arbitrary release times, and fixed setup and cleaning times. Two hybrid ant colony optimisation algorithms, one based on job sequencing (JHACO) and the other based on batch sequencing (BHACO), are proposed to solve this problem. First, max-min pheromone restriction rules and a local optimisation rule are embedded into JHACO and BHACO, respectively, to avoid trapping in local optima. Then, an effective lower bound is estimated to evaluate the performances of the different algorithms. Finally, the Taguchi method is adopted to investigate and optimise the parameters for JHACO and BHACO. The performances of the proposed algorithms are compared with that of CPLEX on small-scale instances and those of a hybrid genetic algorithm (HGA) and a hybrid discrete differential evolution (HDDE) algorithm on full-scale instances. The computational results demonstrate that BHACO outperforms JHACO, HDDE and HGA in terms of solution quality. Besides, JHACO strikes a balance between solution quality and run time.
机译:本文侧重于通过考虑阻塞,任意释放时间和固定设置和清洁时间来最小化两级置换流程图调度问题的最大完成时间和非批量工作尺寸。提出了两个基于作业测序(JHACO)和基于批量测序(BHACO)的混合蚁群优化算法,以解决这个问题。首先,Max-min信息素限制规则和本地优化规则分别嵌入JHACO和BHACO,以避免捕获本地Optima。然后,估计有效的下限以评估不同算法的性能。最后,采用Taguchi方法来研究和优化Jhaco和Bhaco的参数。将所提出的算法的性能与CPLEX对小规模实例的性能和混合遗传算法(HGA)的性能进行比较,以及全尺度实例的混合遗传算法(HGA)和混合离散差分演进(HDDE)算法。计算结果表明,在溶液质量方面,BHACO优于JHACO,HDDE和HGA。此外,JHACO袭击了解决方案质量和运行时间之间的平衡。

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