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A hybrid genetic and variable neighborhood descent algorithm for flexible job shop scheduling problems

机译:求解柔性作业车间调度问题的遗传与变邻域混合下降算法

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This paper addresses the flexible job shop scheduling problem (fJSP) with three objectives: min makespan, min maximal machine workload and min total workload. We developed a hybrid genetic algorithm (GA) for the problem. The GA uses two vectors to represent solutions. Advanced crossover and mutation operators are used to adapt to the special chromosome structure and the characteristics of the problem. In order to strengthen the search ability, individuals of GA are first improved by a variable neighborhood descent (VND), which involves two local search procedures: local search of moving one operation and local search of moving two operations. Moving an operation is to delete the operation, find an assignable time interval for it, and allocate it in the assignable interval. We developed an efficient method to find assignable time intervals for the deleted operations based on the concept of earliest and latest event time. The local optima of moving one operation are further improved by moving two operations simultaneously. An extensive computational study on 181 benchmark problems shows the performance of our approach.
机译:本文以三个目标解决了灵活的车间调度问题(fJSP):最小制造时间,最小最大机器工作量和最小总工作量。我们针对此问题开发了一种混合遗传算法(GA)。遗传算法使用两个向量表示解。高级交叉和变异算子用于适应特殊的染色体结构和问题的特征。为了增强搜索能力,首先通过可变邻域血统(VND)对GA的个体进行改进,该过程涉及两个本地搜索过程:移动一个操作的本地搜索和移动两个操作的本地搜索。移动操作是删除操作,为其找到可分配的时间间隔,然后在该可分配间隔中进行分配。我们基于最早和最新事件时间的概念,开发了一种有效的方法来为删除的操作查找可分配的时间间隔。通过同时移动两个操作,进一步改善了移动一个操作的局部最佳状态。对181个基准问题的广泛计算研究显示了我们方法的性能。

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