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Ensemble Empirical Mode Decomposition-Based Teager Energy Spectrum for Bearing Fault Diagnosis

机译:基于经验模式分解的集成Teager能谱用于轴承故障诊断

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摘要

Periodic impulses in vibration signals and its repeating frequency are the key indicators for diagnosing the local damage of rolling element bearings. A new method based on ensemble empirical mode decomposition (EEMD) and the Teager energy operator is proposed to extract the characteristic frequency of bearing fault. The signal is firstly decomposed into monocomponents by means of EEMD to satisfy the monocomponent requirement by the Teager energy operator. Then, the intrinsic mode function (IMF) of interest is selected according to its correlation with the original signal and its kurtosis. Next, the Teager energy operator is applied to the selected IMF to detect fault-induced impulses. Finally, Fourier transform is applied to the obtained Teager energy series to identify the repeating frequency of fault-induced periodic impulses and thereby to diagnose bearing faults. The principle of the method is illustrated by the analyses of simulated bearing vibration signals. Its effectiveness in extracting the characteristic frequency of bearing faults, and especially its performance in identifying the symptoms of weak and compound faults, are validated by the experimental signal analyses of both seeded fault experiments and a run-to-failure test. Comparison studies show its better performance than, or complements to, the traditional spectral analysis and the squared envelope spectral analysis methods.
机译:振动信号的周期性脉冲及其重复频率是诊断滚动轴承局部损伤的关键指标。提出了一种基于集成经验模态分解(EEMD)和Teager能量算子的新方法来提取轴承故障特征频率。首先通过EEMD将信号分解为单分量,以满足Teager能量运算符对单分量的要求。然后,根据感兴趣的固有模式函数(IMF)与原始信号的相关性和峰度来选择。接下来,将Teager能量运算符应用于所选的IMF,以检测故障引起的脉冲。最后,对获得的Teager能量序列进行傅里叶变换,以识别故障引起的周期性脉冲的重复频率,从而诊断轴承故障。通过分析轴承振动信号来说明该方法的原理。通过对种子故障实验和运行失败测试进行实验信号分析,验证了其在提取轴承故障特征频率方面的有效性,尤其是在识别弱故障和复合故障症状方面的性能。比较研究表明,其性能优于或补充了传统光谱分析和平方包络光谱分析方法。

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