Solving Flow Shop Scheduling Problems with Blocking by using Genetic Algorithm

H. Kumar, Pankaj Kumar, Manisha Sharma
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引用次数: 2

Abstract

Flow shop scheduling problems have been analyzed worldwide due to their various applications in industry. In this article, a new genetic algorithm (NGA) is developed to obtain the optimum schedule for the minimization of total completion time of n-jobs in an m-machine flow shop operating without buffers. The working process of the present algorithm is very efficient to implement and effective to find the best results. To implement the proposed algorithm more effectively, similar job order crossover operators and inversion mutation operators have been used. Numerous examples are illustrated to explain proposed approach. Finally, the computational results indicate that present NGA performs much superior to the heuristics for blocking flow shop developed in the literature.
用遗传算法求解具有阻塞的流水车间调度问题
由于流程车间调度问题在工业上的广泛应用,在世界范围内对其进行了分析。本文提出了一种新的遗传算法(NGA),用于求解无缓冲区的m机流车间中n个作业总完成时间最小的最优调度问题。该算法的工作过程实现效率高,能有效地找到最佳结果。为了更有效地实现所提出的算法,使用了类似的作业顺序交叉算子和反转变异算子。文中列举了许多例子来解释所提出的方法。最后,计算结果表明,该算法的性能明显优于文献中开发的阻塞流车间启发式算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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