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An iterated greedy algorithm for solving the total tardiness parallel blocking flow shop scheduling problem

机译:一种求解总时延并行阻塞流水车间调度问题的迭代贪婪算法

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This paper proposes an iterated greedy algorithm for scheduling jobs in F parallel flow shops (lines), each consisting of a series of m machines without storage capacity between machines. This constraint can provoke the blockage of machines if a job has finished its operation and the next machine is not available. The criterion considered is the minimization of the sum of tardiness of all the jobs to schedule, i.e., minimization of the total tardiness of jobs. Notice that the proposed method is also valid for solving the Distributed Permutation Blocking Flow Shop Scheduling Problem (DBFSP), which allows modelling the scheduling process in companies with more than one factory when each factory has an identical flow shop configuration. Firstly, several constructive procedures have been implemented and tested to provide an efficient solution in terms of quality and CPU time. This initial solution is later improved upon with an iterated greedy algorithm that includes a variable neighbourhood search for interchanging or reassigning jobs from the critical line to other lines. Next, two strategies have been tested for selecting the critical line; the one with a higher total tardiness of jobs and the one with a job that has the highest tardiness. The experimental design chooses the best combination of initial solution and critical line selection. Finally, we compare the performance of the proposed algorithm against other benchmark algorithms proposed for the DPFSP, which have been adapted to the problem being considered here since, to the best of our knowledge, this is the first attempt to solve either the Parallel Blocking Flow Shop problem or the Distributed Blocking Flow Shop problem with the goal of minimizing total tardiness. This comparison has allowed us to confirm the good performance of the proposed method. (C) 2019 Elsevier Ltd. All rights reserved.
机译:本文提出了一种迭代贪婪算法,用于调度F个并行流水车间(生产线)中的作业,每个车间由m台机器组成,没有机器之间的存储容量。如果作业已完成其操作并且下一台机器不可用,则此约束可能会导致机器阻塞。所考虑的标准是最小化要调度的所有作业的延迟总和,即最小化作业的总延迟。注意,提出的方法对于解决分布式排列阻塞流水车间调度问题(DBFSP)也是有效的,当每个工厂具有相同的流水车间配置时,该模型允许在具有多个工厂的公司中对调度过程进行建模。首先,已经实施并测试了一些建设性程序,以在质量和CPU时间方面提供有效的解决方案。此初始解决方案后来通过迭代贪婪算法进行了改进,该算法包括可变邻域搜索,用于将作业从关键行交换或重新分配给其他行。接下来,测试了两种选择临界线的策略;一份工作的总拖延率较高,而一份工作的拖延率最高。实验设计选择初始解决方案和关键线路选择的最佳组合。最后,我们将提出的算法与针对DPFSP提出的其他基准算法的性能进行了比较,这些基准算法已针对此处考虑的问题进行了调整,因为据我们所知,这是解决并行阻塞流的首次尝试商店问题或分布式阻塞流商店问题,目的是最大程度地减少总拖延。这种比较使我们能够确认所提出方法的良好性能。 (C)2019 Elsevier Ltd.保留所有权利。

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