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A Novel Fault Detection Method for Rolling Bearings Based on Non-Stationary Vibration Signature Analysis

机译:基于非平稳振动签名分析的滚动轴承故障检测新方法

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摘要

To realize the accurate fault detection of rolling element bearings, a novel fault detection method based on non-stationary vibration signal analysis using weighted average ensemble empirical mode decomposition (WAEEMD) and modulation signal bispectrum (MSB) is proposed in this paper. Bispectrum is a third-order statistic, which can not only effectively suppress Gaussian noise, but also help identify phase coupling. However, it cannot effectively decompose the modulation components which are inherent in vibration signals. To alleviate this issue, MSB based on the modulation characteristics of the signals is developed for demodulation and noise reduction. Still, the direct application of MSB has some interfering frequency components when extracting fault features from non-stationary signals. Ensemble empirical mode decomposition (EEMD) is an advanced nonlinear and non-stationary signal processing approach that can decompose the signal into a list of stationary intrinsic mode functions (IMFs). The proposed method takes advantage of WAEEMD and MSB for bearing fault diagnosis based on vibration signature analysis. Firstly, the vibration signal is decomposed into IMFs with a different frequency band using EEMD. Then, the IMFs are reconstructed into a new signal by the weighted average method, called WAEEMD, based on Teager energy kurtosis (TEK). Finally, MSB is applied to decompose the modulated components in the reconstructed signal and extract the fault characteristic frequencies for fault detection. Furthermore, the efficiency and performance of the proposed WAEEMD-MSB approach is demonstrated on the fault diagnosis for a motor bearing outer race fault and a gearbox bearing inner race fault. The experimental results verify that the WAEEMD-MSB has superior performance over conventional MSB and EEMD-MSB in extracting fault features and has precise and effective advantages for rolling element bearing fault detection.
机译:为了实现滚动轴承的精确故障检测,提出了一种基于非平稳振动信号分析的加权平均整体经验模式分解(WAEEMD)和调制信号双谱(MSB)的故障检测方法。双谱是一种三阶统计量,它不仅可以有效地抑制高斯噪声,而且可以帮助识别相位耦合。但是,它不能有效地分解振动信号中固有的调制分量。为了缓解此问题,开发了基于信号调制特性的MSB来进行解调和降噪。从非平稳信号中提取故障特征时,MSB的直接应用仍然具有一些干扰频率分量。集成经验模式分解(EEMD)是一种先进的非线性和非平稳信号处理方法,可以将信号分解为一系列平稳的固有模式函数(IMF)。该方法利用WAEEMD和MSB的优势,基于振动特征分析对轴承进行故障诊断。首先,使用EEMD将振动信号分解为具有不同频带的IMF。然后,基于Teager能量峰度(TEK),通过加权平均方法WAEEMD将IMF重建为新信号。最后,应用MSB分解重构信号中的调制分量,并提取故障特征频率以进行故障检测。此外,在电机轴承外圈故障和变速箱轴承内圈故障的故障诊断中,证明了所提出的WAEEMD-MSB方法的效率和性能。实验结果证明,WAEEMD-MSB在提取故障特征方面具有优于常规MSB和EEMD-MSB的性能,并且在滚动轴承故障检测中具有精确有效的优势。

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