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Health monitoring of rolling element bearings using improved wavelet cross spectrum technique and support vector machines

机译:利用改进的小波跨光谱技术和支持向量机的滚动元件轴承健康监测

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An improved wavelet cross spectrum (IWCS) scheme is proposed in this paper for the health monitoring of the rolling element bearings. The parameters under investigation are the axial preload, the lubricant condition and the surface roughness of the contact surfaces. These parameters determine the performance and the life of ball bearings, especially in the space application which demands low torque noise during the mission life and operating under varying conditions of temperature and speed. The developed method takes the advantages of the wavelet cross spectrum technique for the feature extraction from the non-stationary vibration signatures. The vibration signals of the Rolling Element Bearings (REB) are first analysed by a continuous wavelet transform (CWT) over the selected scales corresponding to the bearing fundamental fault frequencies. Further, cross correlation is utilised to enhance the defect-related periodic features. In this improved scheme, the contributive bandwidth selection from the Jarque-Bera (JB) statistic index is carried out with the assistance of an outlier technique. This method removes any outliers in the JB index data by using the linear interpolation and thereby enhancing the index value of the other cross-correlated scales. Experiments are conducted to verify the validity of the IWCS and found to be very effective in diagnosing the bearing health conditions. Using the support vector machines (SVM), the classification of the health conditions is obtained based on the novel improved wavelet cross spectrum analysis.
机译:提出了一种改进的小波互谱(IWCS)方法用于滚动轴承的健康监测。所研究的参数包括轴向预载、润滑条件和接触表面的表面粗糙度。这些参数决定了滚珠轴承的性能和寿命,尤其是在太空应用中,在任务寿命期间以及在不同温度和速度条件下运行时,需要低扭矩噪声。该方法利用小波互谱技术对非平稳振动信号进行特征提取。滚动轴承(REB)的振动信号首先通过连续小波变换(CWT)在与轴承基本故障频率对应的选定尺度上进行分析。此外,利用互相关增强与缺陷相关的周期性特征。在该改进方案中,利用异常值技术从Jarque Bera(JB)统计指数中选择贡献带宽。该方法通过使用线性插值去除JB指数数据中的任何异常值,从而提高其他互相关标度的指数值。通过实验验证了IWCS的有效性,发现IWCS在诊断轴承健康状况方面非常有效。利用支持向量机(SVM),基于改进的小波互谱分析对健康状况进行分类。

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