Research on Water Jet Fault Diagnosis Model Based on PNN Network

Zhuohao Zhang, Ming Chen, Z. Ren, Wei Shi
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Abstract

The structure of water jet cutting machine is complex and the components are closely related. Its fault characteristics often have the characteristics of nonlinearity, coupling, uncertainty and complex causality. Traditional fault diagnosis methods have been difficult to solve the problem of water jet cutting machine fault detection quickly and effectively. As a new talent in the field of intelligent fault diagnosis, machine learning can independently mine the representative diagnostic information hidden in the original data and directly establish the accurate mapping relationship between the original data and the operating state, which has been increasingly applied in industrial diagnosis. In this paper, the application of intelligent fault diagnosis method for water jet cutting machine is explored. Data acquisition system of water jet cutting machine is built. Aiming at several common faults of water jet cutting machine, a fault diagnosis model is established based on PNN network, and the network is trained and tested with actual collected data. The results show that the probabilistic neural network model can better realize the fault diagnosis of common faults of water jet cutting machine.
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基于PNN网络的水射流故障诊断模型研究
水射流切割机结构复杂,各部件关系密切。其故障特征往往具有非线性、耦合性、不确定性和复杂因果关系等特点。传统的故障诊断方法已难以快速有效地解决水射流切割机故障检测问题。机器学习作为智能故障诊断领域的新人才,可以独立挖掘隐藏在原始数据中的代表性诊断信息,直接建立原始数据与运行状态之间的精确映射关系,在工业诊断中得到越来越多的应用。本文探讨了智能故障诊断方法在水射流切割机中的应用。建立了水射流切割机数据采集系统。针对水射流切割机的几种常见故障,建立了基于PNN网络的故障诊断模型,并用实际采集的数据对网络进行了训练和测试。结果表明,概率神经网络模型能较好地实现水射流切割机常见故障的故障诊断。
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