基于神经网络模型的网络化制造作业调度及其实现

Jianrong Wang, Haifeng Zhao, Jianwei Du, Tianbiao Yu, Wanshan Wang
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引用次数: 1

摘要

在分析网络化制造环境下离散企业车间管理特点的基础上,设计并开发了基于离散Hopfield网络模型的指令调度管理系统。通过改变联想记忆模式下神经网络的权值因子或阈值,设计出适合于作业调度的模型,发挥神经网络的优势。采用多目标优化计算方法对调度结果进行了分析。然后将仿真结果与实际调度数据进行对比,表明神经网络调度模型倾向于综合考虑评价指标,相应调度方案的各项指标保持平衡。
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Neural Network Model Based Job Scheduling and Its Implementation in Networked Manufacturing
On analysis of the workshop management characteristics of discrete enterprises in networked manufacturing environment, an instruction scheduling management system was designed and developed based on the discrete Hopfield network model. While changing weight factors or thresholds of neural network under associative memory mode, a suitable model for job scheduling was designed, which will bring advantages of neural network into play. The scheduling results were analyzed with multi-objective optimization computing method. Then this paper presented the comparison of simulation results and actual scheduling data,which shown that neural network scheduling model tends to consider evaluation indicators comprehensively, and all indicators of the corresponding scheduling solution keep balance.
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