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Scheduling algorithms to minimise the total family flow time for job shops with job families

机译:调度算法以最大程度减少有工作族的车间的总家庭流动时间

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This paper considers the job scheduling problem in which jobs are grouped into job families, but they are processed individually. The decision variable is the sequence of the jobs assigned to each machine. This type of job shop scheduling can be found in various production systems, especially in remanufacturing systems with disassembly, reprocessing and reassembly shops. In other words, the reprocessing shop can be regarded as the job shop with job families since it performs the operations required to bring parts or sub-assemblies disassembled back to like-new condition before reassembling them. To minimise the deviations of the job completion times within each job family, we consider the objective of minimising the total family flow time. Here, the family flow time implies the maximum among the completion times of the jobs within a job family. To describe the problem clearly, a mixed integer programming model is suggested and then, due to the complexity of the problem, two types of heuristics are suggested. They are: (a) priority rule based heuristics; and (b) meta-heuristics. Computational experiments were performed on a number of test instances and the results show that some priority rule based heuristics are better than the existing ones. Also, the meta-heuristics improve the priority rule based heuristics significantly.
机译:本文考虑了工作调度问题,在该问题中,工作被分为多个工作族,但它们是单独处理的。决策变量是分配给每台计算机的作业的顺序。这种类型的车间调度可以在各种生产系统中找到,尤其是在具有拆卸,重新加工和重新组装车间的再制造系统中。换句话说,后处理车间可以看作是具有工作族的车间,因为它在重新组装之前执行使拆卸的零件或子装配体恢复到新状态所需的操作。为了最小化每个工作族内工作完成时间的偏差,我们考虑了使总家庭流动时间最小化的目标。在此,家庭流动时间意味着一个工作家庭中工作完成时间中的最大值。为了清楚地描述问题,提出了一个混合整数规划模型,然后,由于问题的复杂性,提出了两种启发式方法。它们是:(a)基于优先规则的试探法; (b)元启发法。在许多测试实例上进行了计算实验,结果表明,一些基于优先级规则的启发式算法比现有算法更好。而且,元启发式算法显着改善了基于优先级规则的启发式算法。

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