Dynamic scheduling of flexible manufacturing systems using neural networks and inductive learning

P. Priore, D. Fuente, R. Pino, J. Puente
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引用次数: 18

Abstract

Dispatching rules are usually applied dynamically to schedule jobs in flexible manufacturing systems. Despite their frequent use, one of the drawbacks that they display is that the state the manufacturing system is in dictates the level of performance of the rule. As no rule is better than all the other rules for all system states, it would be highly desirable to know which rule is the most appropriate for each given condition, and to this end this paper proposes a scheduling approach that employs inductive learning and backpropagation neural networks. Using these latter techniques, and by analysing the earlier performance of the system, “scheduling knowledge” is obtained whereby the right dispatching rule at each particular moment can be determined. A module that generates new control attributes is also designed in order to improve the “scheduling knowledge” that is obtained. Simulation results show that the proposed approach leads to significant performance improvements over existing dispatching rules.
基于神经网络和归纳学习的柔性制造系统动态调度
在柔性制造系统中,调度规则通常是动态应用于作业调度的。尽管它们经常被使用,但它们显示的缺点之一是制造系统所处的状态决定了规则的性能水平。由于对于所有系统状态,没有任何规则优于所有其他规则,因此非常希望知道对于每个给定条件,哪个规则是最合适的,为此,本文提出了一种采用归纳学习和反向传播神经网络的调度方法。利用后一种技术,并通过分析系统的早期性能,获得“调度知识”,从而确定每个特定时刻的正确调度规则。为了改进所获得的“调度知识”,还设计了一个生成新控件属性的模块。仿真结果表明,与现有的调度规则相比,该方法具有显著的性能改进。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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