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Rolling element bearing fault diagnosis using recursive wavelet and SOM neural network

机译:基于递归小波和SOM神经网络的滚动轴承故障诊断

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This paper is focused on fault diagnosis of rolling element bearing due to localized defects i.e. rolling element and outer raceway on the bearing component, which is essential to the design of high performance rotor bearing system. A new fault diagnosis method based on recursive wavelet (RW) and SOM neural network, RW-SOM neural network is proposed. First, wavelet threshold de-noising is utilized to preprocess the raw vibration signal obtained by QPZZ-II system, which can reduce the influence from the noise and to benefit to extract the characteristic signal. Then, a new method of feature extract based on recursive wavelet is proposed in order to solve the problems of bad real-time and the long window, which are born in traditional wavelet decomposition. Finally, bearing faults are classified using SOM neural network. The simulation results show that recursive wavelet combined with SOM neural network for fault diagnosis is effective and is superior to traditional wavelet decomposition.
机译:本文着重研究由于局部缺陷(即轴承部件上的滚动元件和外滚道)而引起的滚动轴承故障诊断,这对高性能转子轴承系统的设计至关重要。提出了一种基于递归小波(RW)和SOM神经网络的故障诊断新方法,即RW-SOM神经网络。首先,利用小波阈值降噪对QPZZ-II系统获得的原始振动信号进行预处理,以减少噪声的影响,有利于提取特征信号。为了解决传统小波分解中存在的实时性差,窗口长等问题,提出了一种基于递归小波的特征提取方法。最后,使用SOM神经网络对轴承故障进行分类。仿真结果表明,将递归小波与SOM神经网络相结合用于故障诊断是有效的,并且优于传统的小波分解。

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