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Minimizing tardiness and maintenance costs in flow shop scheduling by a lower-bound-based GA

机译:通过基于下限的GA将流程车间调度中的拖延时间和维护成本降至最低

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A permutation flow shop scheduling problem is reformulated as a mixed-integer linear program after incorporating flexible and diverse maintenance activities for minimizing total tardiness and maintenance costs. The terms "flexible" and "diverse" mean that the maintenance activities are not required to perform following fixed and predetermined time intervals, and there can be different types of maintenance activities for each machine. The problem is proved to be NP-hard and a lower bound for the problem is proposed. A lower-bound-based genetic algorithm (LBGA) is presented, in which the algorithm parameters are first tested through a factorial experiment to identify the statistically significant parameters. The LBGA algorithm self-tunes these parameters for its performance improvement based on the solution gap from the lower bound. While it is experienced that only the population size is statistically significant in improving the quality of solutions, through a computational experiment it is also shown that an optimal population size for one problem size yields the same quality of solutions for larger sizes of problems and increasing the population size beyond the optimal size for larger sizes of problems will only negatively affects the efficiency of the algorithm. Computational results that show efficiency and effectiveness of the algorithm are also provided.
机译:在合并灵活多样的维护活动以最小化总拖延和维护成本之后,将排列流水车间调度问题重新表述为混合整数线性程序。术语“灵活”和“多样化”表示不需要执行固定的和预定的时间间隔的维护活动,并且每台机器可以有不同类型的维护活动。该问题被证明是NP难的,并提出了该问题的下界。提出了一种基于下界的遗传算法(LBGA),其中首先通过阶乘实验对算法参数进行测试,以识别具有统计意义的参数。 LBGA算法根据从下限到解决方案的差距对这些参数进行自调整,以提高性能。虽然经验表明,只有人口规模在改善解决方案质量方面具有统计意义,但通过计算实验,结果还表明,针对一个问题规模的最优人口规模对于较大规模的问题产生相同的解决方案质量,并增加解决方案的质量。人口规模超出了针对较大问题的最佳规模时,只会对算法的效率产生负面影响。计算结果也表明了该算法的效率和有效性。

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