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The Identification Technology of Rolling Bearing Acoustic Emission Fault Pattern based on Harmonic Wavelet Packet and SVM

机译:基于谐波小波包和SVM的滚动轴承声发射故障模式的识别技术

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As the energy distribution in each frequency band of rolling bearing acoustic emission (AE) signal is related to its fault type, so we can use the harmonic wavelet packet to decompose the rolling bearing AE signal of different fault into different frequency band, combine energy in each frequency band together to be a feature vector of the Support Vector Machines (SVM), then being applied to identify the fault through SVM. This paper also compared the Harmonic wavelet packet and Daubechies wavelet packet as well as the SVM and neural networks. The experimental result shows that for the fault pattern identification, the method that combines harmonic wavelet packet decomposition and SVM together can be effective.
机译:随着滚动轴承声发射(AE)信号的每个频带中的能量分布与其故障类型有关,因此我们可以使用谐波小波包将滚动轴承AE信号分解为不同的频带,相结合能量每个频带一起成为支持向量机(SVM)的特征向量,然后应用于通过SVM识别故障。本文还比较了谐波小波包和Daubechies小波包以及SVM和神经网络。实验结果表明,对于故障模式识别,将谐波小波分组分解和SVM结合在一起的方法可以是有效的。

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