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Fault Diagnosis of High-Speed Train Bogie by Residual-Squeeze Net

机译:残压网在高速列车转向架故障诊断中的应用

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摘要

Fault diagnosis of high-speed train (HST) bogie is essential in guaranteeing the normal daily operation of an HST. In prior works, feature extraction from multisensor vibration signals mainly relies on signal processing methods, which is independent of the classification process. Based on convolutional neural networks (CNNs), this paper presents a novel fault diagnosis system using the residual-squeeze net (RSNet), which is directly applicable to raw data (time sequences) and does not require any signal transformation or postprocessing. In this network, information fusion is achieved by using the convolutional layer. More specifically, via the squeeze operation, an optimal combination of channels is learnt by training the network. Experimental results obtained by using SIMPACK simulation data demonstrate the effectiveness of the proposed approach in both complete failure case and single failure case, with diagnosis accuracy near 100%. The proposed approach also shows good performance in identifying the locations of faulty components. Comparisons between RSNet and competitive methods shows the advantages of RSNet for fault classification.
机译:高速列车(HST)转向架的故障诊断对于保证HST的日常正常运行至关重要。在现有技术中,从多传感器振动信号中提取特征主要依赖于信号处理方法,这与分类过程无关。基于卷积神经网络(CNN),本文提出了一种使用残差挤压网(RSNet)的新型故障诊断系统,该系统直接适用于原始数据(时间序列),不需要任何信号转换或后处理。在该网络中,信息融合是通过使用卷积层实现的。更具体地,通过挤压操作,通过训练网络来学习信道的最佳组合。通过使用SIMPACK仿真数据获得的实验结果证明了该方法在完全故障案例和单个故障案例中的有效性,诊断准确性接近100%。所提出的方法在识别故障组件的位置方面也表现出良好的性能。 RSNet和竞争方法之间的比较显示了RSNet在故障分类方面的优势。

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