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Multiobjective genetic algorithm-based method for job shop scheduling problem: Machines under preventive and corrective maintenance activities

机译:基于多目标遗传算法的作业车间调度问题方法:预防性和纠正性维护活动中的机器

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In this paper we consider a multiobjective job shop scheduling problem. The machines are subject to availability constraints that are due to preventive maintenance, machine breakdowns or tool replacement. Two optimization criteria were considered; the makespan for the jobs and the total cost for the maintenance activities. The job shop scheduling problem without considering the availability constraints is known to be NP-Hard. Because of the complexity of the problem, we develop a two-phase genetic algorithm based heuristic to solve the addressed problem. A set of pareto optimal solutions is obtained in the first phase containing relatively large number of solutions. This makes difficult the choice of the most suitable solution. For this reason the second phase will filter the obtained set so as to reduce its size. Performance of the proposed heuristic is evaluated through computational experiments on the benchmark of Muth & Thomson mt06 of 6×6 and 10 different sizes benchmarks of Lawrence. The results show that the heuristic gives solutions close to those obtained in the classic job shop scheduling problem.
机译:在本文中,我们考虑了一个多目标作业车间调度问题。由于预防性维护,机器故障或工具更换,机器受到可用性限制。考虑了两个优化标准;作业的工期和维护活动的总成本。不考虑可用性约束的车间调度问题被称为NP-Hard。由于问题的复杂性,我们开发了一种基于启发式的两阶段遗传算法来解决所解决的问题。在包含相对大量解的第一阶段中获得了一组pareto最优解。这使得选择最合适的解决方案变得困难。因此,第二阶段将对获得的集合进行过滤,以减小其大小。通过在6×6的Muth&Thomson mt06基准和劳伦斯的10种不同大小的基准上进行的计算实验,评估了所提出的启发式算法的性能。结果表明,启发式方法提供的解决方案与经典作业车间调度问题中获得的解决方案接近。

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