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Acquisition of Dispatching Rules for Job-Shop Scheduling Problem by Artificial Neural Networks Using PSO

机译:使用PSO的人工神经网络获取作业车间调度问题的调度规则。

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摘要

A Job-shop Scheduling Problem (JSP) constitutes the basic scheduling problem that is observed in manufacturing systems. In conventional JSP, feature values of work and queue times are used to formulate dispatching rules for scheduling. In this paper, an Artificial Neural Network (ANN) is used to create an index for job priority. Furthermore, in order to optimize the output of the ANN, Particle Swarm Optimization (PSO) is used in unsupervised learning of the synaptic weights for the ANN. The functions of the proposed method are discussed in this paper.
机译:作业车间调度问题(JSP)构成了在制造系统中观察到的基本调度问题。在传统的JSP中,工作和队列时间的特征值用于制定调度规则。在本文中,人工神经网络(ANN)用于创建工作优先级的索引。此外,为了优化ANN的输出,在无监督的ANN突触权重学习中使用了粒子群优化(PSO)。本文讨论了该方法的功能。

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