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An artificial neural network optimized by a genetic algorithm for real-time flow-shop scheduling

机译:一种人工神经网络,通过遗传算法优化了实时流量铺仓调度

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A job-shop scheduling method using a three-layered neural network optimized by a genetic algorithm, which was called a GANN scheduling method, was a flexible and practical quasi-optimal scheduling method However, further improvements of the present GANN scheduling system are required for rapid flow-shop rescheduling in chemical processes for multipurpose production. In this study, we investigated the effect of improvements of the GANN scheduling system on the efficiency of rescheduling when new jobs were appended in a chemical process with some buffer tanks. In results, the former GANN scheduling method could be developed to a practical real-time scheduling system for process problems.
机译:使用由遗传算法优化的三层神经网络的作业商店调度方法,该方法被称为GANN调度方法,是一种灵活实用的准优选调度方法,但是需要进一步改进当前的拱结调度系统快速流动店重新安排化学工艺,用于多用途生产。在这项研究中,我们调查了GANN调度系统改进了江甘安排系统对重新安排效率的影响,当新的工作与一些缓冲箱附加在化学过程中时。在结果中,可以开发前江南调度方法,以实现用于过程问题的实际实时调度系统。

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