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A novel rolling bearing fault detect method based on empirical wavelet transform

机译:基于经验小波变换的滚动轴承故障检测新方法

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A new self-adaptive signal decomposition method called empirical wavelet transform (EWT), inherits the advantages of empirical mode decomposition and wavelet transform. In this method, the vibration signal of rolling bearing is decomposed by the EWT, several frequencies modulation components (AM-FM) are obtained. This paper presents a new method for bearing fault detect based on EWT. First applied EWT to rolling bearing vibration signals. Then calculated the normalized correlation coefficients of each order IMF with original signal respectively. The sensitive IMF is selected according to the normalized correlation coefficient and each order IMF kurtosis factor. Finally, the Hilbert transform to the sensitive IMF and using this envelope spectrum to bearing fault diagnosis. The experiment results show that the proposed method provides a good performance in the detection of outer and inner race faults.
机译:一种新的自适应信号分解方法称为经验小波变换(EWT),它继承了经验模态分解和小波变换的优点。在这种方法中,滚动轴承的振动信号通过EWT分解,获得了几个调频分量(AM-FM)。提出了一种基于EWT的轴承故障检测新方法。首先将EWT应用于滚动轴承振动信号。然后分别用原始信号计算各阶IMF的归一化相关系数。根据归一化的相关系数和每个IMF峰度因子选择敏感的IMF。最后,希尔伯特(Hilbert)转换为敏感的IMF,并使用该包络频谱进行故障诊断。实验结果表明,该方法在检测内外圈故障方面具有良好的性能。

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