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首页> 外文期刊>The International Journal of Advanced Manufacturing Technology >A genetic algorithm and particle swarm optimization for no-wait flow shop problem with separable setup times and makespan criterion
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A genetic algorithm and particle swarm optimization for no-wait flow shop problem with separable setup times and makespan criterion

机译:建立时间和制造期限可分离的无等待流水车间问题的遗传算法和粒子群算法

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摘要

This paper considers the problem of no-wait flow shop scheduling, in which a number of jobs are available for processing on a number of machines in a flow shop context with the added constraint that there should be no waiting time between consecutive operations of a job. Each operation has a separable setup time, meaning that the setup time of an operation is independent on the previous operations; and the machine can be prepared for a specific operation and remain idle before the operation actually starts. The considered objective function in this paper is the makespan. The problem is proven to be NP-hard. In this paper, two frameworks based on genetic algorithm and particle swarm optimization are developed to deal with the problem. For the case of no-wait flow shop problem without setup times, the developed algorithms are applied to a large number of benchmark problems from the literature. Computational results confirm that the proposed algorithms outperform other methods by improving many of the best-known solutions for the test problems. For the problems with setup time, the algorithms are compared against the famous 2-Opt algorithm. Such comparison reveals the efficiency of the proposed method in solving the problem when separable setup times are considered.
机译:本文考虑了无等待流水车间调度的问题,其中在流水车间上下文中,许多作业可用于在多台机器上进行处理,并且增加了约束:作业的连续操作之间应该没有等待时间。每个操作具有可分离的建立时间,这意味着一个操作的建立时间与先前的操作无关;并且机器可以为特定操作做好准备,并在操作真正开始之前保持空闲状态。本文考虑的目标函数是制造期。事实证明,这个问题很难解决。本文针对遗传算法开发了两个基于遗传算法和粒子群算法的框架。对于没有设置时间的无等待流水车间问题,将开发的算法应用于文献中的大量基准问题。计算结果证实,通过改进许多最著名的测试问题解决方案,该算法优于其他方法。对于设置时间的问题,将算法与著名的2-Opt算法进行了比较。这样的比较揭示了在考虑可设置时间时,该方法在解决问题上的效率。

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