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A metaheuristic algorithm and simulation to study the effect of learning or tiredness on sequence-dependent setup times in a parallel machine scheduling problem

机译:一种元启发式算法和仿真,用于研究并行机器调度问题中学习或疲倦对与序列相关的建立时间的影响

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This work analyses the effects of learning or tiredness on the setup times in a scheduling problem with identical parallel machines. This problem involves setup times that depend on the sequence of jobs with the goal of minimizing the sum of total completion times. Due to the complexity of the problem and the assumption that high-quality solutions of the problem without effects are also high-quality solutions when these effects are considered, we firstly propose a metaheuristic algorithm aimed at finding high-quality and diverse solutions, ignoring the learning/tiredness issues. Then, we study the effects of learning or tiredness on the obtained solutions in a real-world scenario by using a multi-agent simulation approach. The computational experiments carried out demonstrate that the simulation model developed in this work is valid to handle randomness in a practical scenario, allowing to be adapted to different learning or tiredness effects. Furthermore, the computational experiments underscore the fact that the proposal can be used as a decision support tool aimed at estimating the amount of job to be assigned to the available machines on the basis of the operator profile. (C) 2018 Elsevier Ltd. All rights reserved.
机译:这项工作分析了学习或疲倦对相同并行机调度问题中准备时间的影响。此问题涉及建立时间,该建立时间取决于作业的顺序,目的是使总完成时间的总和最小。考虑到问题的复杂性以及假设无影响的问题的高质量解也是考虑这些影响的高质量解的假设,我们首先提出一种元启发式算法,旨在寻找高质量和多样化的解决方案,而忽略了学习/疲劳问题。然后,我们使用多主体仿真方法研究学习或疲倦对获得的解决方案在现实世界中的影响。进行的计算实验表明,在这项工作中开发的仿真模型可以有效地处理实际情况下的随机性,从而可以适应不同的学习或疲劳效果。此外,计算实验强调了以下事实:该提议可以用作决策支持工具,旨在基于操作员资料估算要分配给可用机器的作业量。 (C)2018 Elsevier Ltd.保留所有权利。

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