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New multi-objective method to solve reentrant hybrid flow shop scheduling problem

机译:解决可重入混合流水车间调度问题的新多目标方法

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This paper focuses on the multi-objective resolution of a reentrant hybrid flow shop scheduling problem (RHFS). In our case the two objectives are: the maximization of the utilization rate of the bottleneck and the minimization of the maximum completion time. This problem is solved with a new multi-objective genetic algorithm called L-NSGA which uses the Lorenz dominance relationship. The results of L-NSGA are compared with NSGA2, SPEA2 and an exact method. A stochastic model of the system is proposed and used with a discrete event simulation module. A test protocol is applied to compare the four methods on various configurations of the problem. The comparison is established using two standard multi-objective metrics. The Lorenz dominance relationship provides a stronger selection than the Pareto dominance and gives better results than the latter. The computational tests show that L-NSGA provides better solutions than NSGA2 and SPEA2; moreover, its solutions are closer to the optimal front. The efficiency of our method is verified in an industrial field-experiment.
机译:本文着重于可重入混合流水车间调度问题(RHFS)的多目标解决方案。在我们的案例中,两个目标是:瓶颈利用率最大化和最大完成时间最小化。通过使用劳伦兹优势关系的新的多目标遗传算法L-NSGA解决了该问题。将L-NSGA的结果与NSGA2,SPEA2和精确方法进行比较。提出了系统的随机模型,并将其与离散事件仿真模块一起使用。应用了一个测试协议,以比较问题的各种配置上的四种方法。使用两个标准的多目标指标建立比较。洛伦兹优势关系提供了比帕累托优势更强的选择,并且比后者具有更好的结果。计算测试表明,L-NSGA比NSGA2和SPEA2提供更好的解决方案。此外,它的解决方案更接近于最佳领域。我们的方法的效率已在工业现场实验中得到验证。

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