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Fault Diagnosis of Railway Axlebox Bearing based on Wavelet Packet and Neural Network

机译:基于小波包和神经网络的铁路轴箱轴承故障诊断

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A real time and effective axlebox bearing fault diagnostic method is significant in the condition-based maintenance.In the axlebox bearing fault diagnostic system, fault features extraction and fault patterns classification are two important aspects to identify whether a axlebox bearing is failure or not.This paper presents a method of axlebox bearing fault diagnosis based on wavelet packet decomposition and BP neural network.First decompose the vibration signal into a finite number of coefficients by wavelet packet decomposition.Then calculate energy moment of each coefficient and take the energy moment as an eigenvector to effectively express the failure feature.Finally BP neural network is used for fault classification.The experimental results show that combining wavelet packet decomposition with BP neural network could identify the axlebox bearing fault effectively.The average diagnosis accuracy rate is 96.67%.
机译:实时有效的轴箱轴承故障诊断方法在基于状态的维护中具有重要意义。在轴箱轴承故障诊断系统中,故障特征提取和故障模式分类是确定轴箱轴承是否故障的两个重要方面。提出了一种基于小波包分解和BP神经网络的轴箱轴承故障诊断方法,首先通过小波包分解将振动信号分解为有限个系数,然后计算每个系数的能量矩并将其作为特征向量最后采用BP神经网络对故障进行分类。实验结果表明,将小波包分解与BP神经网络相结合可以有效地识别出轴箱轴承的故障,平均诊断准确率为96.67%。

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