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An ant colony optimization-based hyper-heuristic with genetic programming approach for a hybrid flow shop scheduling problem

机译:基于蚁群优化的超启发式遗传算法求解混合流水车间调度问题

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The problem of a k-stage hybrid flow shop (HFS) with one stage composed of non-identical batch processing machines and the others consisting of non-identical single processing machines is analyzed in the context of the equipment manufacturing industry. Due to the complexity of the addressed problem, a hyper-heuristic which combines heuristic generation and heuristic search is proposed to solve the problem. For each sub-problem, i.e., part assignment, part sequencing and batch formation, heuristic rules are first generated by genetic programming (GP) offline and then selected by ant colony optimization (ACO) correspondingly. Finally, the scheduling solutions are obtained through the above generated combinatorial heuristic rules. Aiming at minimizing the total weighted tardiness of parts, a comparison experiment with the other hyper-heuristic for the same HFS problem is conducted. The result has shown that the proposed algorithm has advantages over the other method with respect to the total weighted tardiness.
机译:在设备制造业的背景下分析了由非相同批处理机组成的一个阶段的K级混合流量店(HFS)的问题,以及由非相同单处理机器组成的其他阶段。由于解决问题的复杂性,提出了一种结合启发式生成和启发式搜索的超起启发式,以解决问题。对于每个子问题,即部分分配,零件排序和批量形成,启发式规则是由遗传编程(GP)离线生成的,然后由蚁群优化(ACO)相应地选择。最后,通过上述产生的组合启发式规则获得调度解决方案。旨在最大限度地减少零件的总加权迟到,对相同HFS问题的其他超启发式的比较实验。结果表明,所提出的算法具有相对于总加权迟到的其他方法的优点。

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