An enhanced Teager Huang transform technique for bearing fault detection
Abstract
Rolling element bearings are widely used in rotating machinery. Bearing health condition
monitoring plays a vital role in predictive maintenance to recognize bearing faults at an early
stage to prevent machinery performance degradation, improve operation quality, and reduce
maintenance costs. Although many signal processing techniques have been proposed in
literature for bearing fault diagnosis, reliable bearing fault detection remains challenging.
This study aims to develop an online condition monitoring system and a signal processing
technique for bearing fault detection. Firstly, a Zigbee-based smart sensor data acquisition
system is developed for wireless vibration signal collection. An enhanced Teager-Huang
transform (eTHT) technique is proposed for bearing fault detection. The eTHT takes the
several processing steps: Firstly, a generalized Teager-Kaiser spectrum analysis method is
suggested to recognize the most representative intrinsic mode functions as a reference.
Secondly, a characteristic relation function is constructed by using cross-correlation. Thirdly,
a denoising filter is adopted to improve the signal-to-noise-ratio. Finally, the average
generalized Teager-Kaiser spectrum analysis is undertaken to identify the bearing
characteristic signatures for bearing fault detection. The effectiveness of the proposed eTHT
technique is examined by experimental tests corresponding to different bearing conditions. Its
robustness in bearing fault detection is examined by the use of the data sets from a different
experimental setup.