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Bearing fault diagnosis based on Shannon entropy and wavelet package decomposition

机译:基于香农熵和小波包分解的轴承故障诊断

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摘要

A new feature extraction method based on WPD and Entropy is proposed in this paper.Firstly, WPD is utilized to decompose the signal into different frequency bands to obtain different frequency sub-signal.Secondly, root-mean-squire (RMS) value, kurtosis (K) and peak factor (PF)parameters are extracted from each sub-signal to obtain the fault feature vector.Thirdly the Entropy of each feature vector is calculated to realize the bearing fault diagnosis.Finally,experimental results indicate that the bearing fault diagnosis method proposed in this paper is effective.
机译:提出了一种基于WPD和熵的特征提取方法:首先,利用WPD将信号分解为不同的频段,以获得不同的频率子信号;其次,均方根值(RMS)值,峰度从每个子信号中提取(K)和峰值因数(PF)参数以获得故障特征向量。第三,计算每个特征向量的熵以实现轴承故障诊断。最后,实验结果表明轴承故障诊断本文提出的方法是有效的。

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