基于小波包和主成分分析的齿轮箱早期故障特征提取方法

Ding Jing, Ling Zhao, Darong Huang
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引用次数: 6

摘要

提出了一种基于主成分分析和小波包的故障特征提取模型来描述齿轮箱故障特征,该故障特征表现为振动信号幅值低、易受系统和噪声干扰。首先,利用主成分分析对数据维数与数据的相关性进行降维;然后,对齿轮箱信号进行小波包分解,根据频率带宽特征重构信号;选取反映故障引起的信号变化的主频段,并对所选频段进行归一化,即可得到故障特征值。最后以齿轮箱振动信号为例,验证了该方法的有效性。对比分析表明,主成分分析与小波包的结合比小波包更有效。
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Incipient fault feature extraction method of gearbox based on wavelet package and PCA
A fault feature extraction model based on the PCA and wavelet packet is proposed to describe the characteristics of gearbox fault feature, which is expressed by low amplitude of the vibration signals, and easy to be disturbed by system and noise. Firstly, the PCA is used to reduce the correlation between the data dimension and the data. Then, the gearbox signals are decomposed by wavelet packet, and reconstructed based on the frequency bandwidth characteristics. After choosing those main frequency band which reflects the change of signal caused by the fault, and normalizing the selected frequency band, then the fault characteristic value is obtained. Finally, the vibration signal of the gearbox is treated as an example to verify the effectiveness of the method. The comparative analysis shows that the combination of PCA and wavelet packet is more effective than the wavelet packet.
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