A genetic optimization algorithm and perceptron learning rules for a bi-criteria parallel machine scheduling

H. Fazlollahtabar, R. Hassanzadeh, I. Mahdavi, N. Mahdavi-Amiri
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引用次数: 4

Abstract

This work considers scheduling problems minding the setup and removal times of jobs rather than processing times. For some production systems, setup times and removal times are so important to be considered independent of processing times. In general, jobs are performed according to the automatic machine processing in production systems, and the processing times are considered to be constant regardless of the process sequence. As the human factor can influence the setup and removal times, when the setup process is repetitive the setup times decreases. This fact is considered as learning effect in scheduling literature. In this study, a bi-criteria m-identical parallel machines scheduling problem with learning effects of setup and removal times is considered. The learning effect is proposed using a perceptron neural network algorithm. The objective function of the problem is minimization of the weighted sum of total earliness and tardiness. A mathematical programming model is developed for the problem, which is NP-hard. Results of computational tests show that the LINGO 9 software is effective in solving problems with up to 25 jobs and five machines. Therefore, for larger sized problems, a genetic algorithm for optimization is developed.
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双准则并行机器调度的遗传优化算法和感知器学习规则
这项工作考虑了调度问题,注意作业的设置和删除时间,而不是处理时间。对于某些生产系统,设置时间和移除时间非常重要,可以独立于处理时间考虑。一般来说,在生产系统中,作业是根据自动机器加工来执行的,加工时间被认为是恒定的,而与加工顺序无关。由于人为因素会影响安装和拆卸时间,当安装过程重复时,安装时间会减少。这一事实被认为是调度文献中的学习效应。本文研究了具有设置时间和移除时间学习效应的双准则m-相同并行机器调度问题。使用感知器神经网络算法提出了学习效果。该问题的目标函数是使总早迟到的加权和最小。建立了np困难问题的数学规划模型。计算测试结果表明,LINGO 9软件可以有效地解决多达25个工种和5台机器的问题。因此,对于较大规模的问题,本文提出了一种遗传优化算法。
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