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A genetic local search algorithm for minimizing total weighted tardiness in the job-shop scheduling problem

机译:一种遗传局部搜索算法,用于最小化车间调度问题中的总加权拖延时间

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摘要

This paper considers the job-shop problem with release dates and due dates, with the objective of minimizing the total weighted tardiness. A genetic algorithm is combined with an iterated local search that uses a longest path approach on a disjunctive graph model. A design of experiments approach is employed to calibrate the parameters and operators of the algorithm. Previous studies on genetic algorithms for the job-shop problem point out that these algorithms are highly depended on the way the chromosomes are decoded. In this paper, we show that the efficiency of genetic algorithms does no longer depend on the schedule builder when an iterated local search is used. Computational experiments carried out on instances of the literature show the efficiency of the proposed algorithm.
机译:本文考虑了带有发布日期和到期日的作业车间问题,目的是最大程度地减少总加权拖延时间。遗传算法与迭代式局部搜索相结合,该迭代式局部搜索在析取图模型上使用最长路径方法。设计了一种实验方法来校准算法的参数和运算符。以前有关解决车间问题的遗传算法的研究指出,这些算法高度依赖于染色体的解码方式。在本文中,我们证明了当使用迭代局部搜索时,遗传算法的效率不再取决于进度表生成器。在文献实例上进行的计算实验证明了该算法的有效性。

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