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A joint wavelet lifting and independent component analysis approach to fault detection of rolling element bearings

机译:联合小波提升和独立分量分析的滚动轴承故障检测方法

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摘要

Though wavelet transforms have been used to extract bearing fault signatures from vibration signals in the literature, detection results often rely on a proper wavelet function and deep wavelet decomposition. The selection of a proper wavelet function is time consuming and deep decomposition demands more computing effort. This is unsuitable for on-line fault detection. As such, we propose a joint wavelet lifting scheme and independent component analysis (ICA) approach to detecting weak signatures of bearing faults. The optimal envelope spectrum of independent components for signature extraction is selected based on the maximum energy and total energy of each independent component. The performance of the proposed method is evaluated by comparing with several other methods using both simulated and real vibration signals. The results reveal that the proposed method is more effective and robust in extracting bearing fault signatures. The following advantages of the proposed method have also been observed: ( a) it is insensitive to wavelet selection and hence is less susceptible to ill selected wavelet function; (b) it is insensitive to the depth of wavelet decomposition, leading to an efficient algorithm; and ( c) it takes advantage of ICA in fault detection without using multiple sensors as required in the original ICA.
机译:尽管在文献中小波变换已用于从振动信号中提取轴承故障特征,但检测结果通常依赖于适当的小波函数和深小波分解。选择合适的小波函数非常耗时,深度分解需要更多的计算工作。这不适用于在线故障检测。因此,我们提出了一种联合小波提升方案和独立分量分析(ICA)方法来检测轴承故障的弱信号。基于每个独立组件的最大能量和总能量,选择用于签名提取的独立组件的最佳包络谱。通过与使用模拟振动信号和实际振动信号的其他几种方法进行比较,评估了所提出方法的性能。结果表明,该方法在提取轴承故障特征码方面更有效,更鲁棒。还观察到了所提出方法的以下优点:(a)它对小波选择不敏感,因此对不良的小波函数不敏感; (b)对小波分解的深度不敏感,从而导致一种有效的算法; (c)它利用ICA进行故障检测,而无需使用原始ICA要求的多个传感器。

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