In order to extract and enhance the weak fault feature of rolling element bearings in strong noise conditions, the Empirical Wavelet Transform (EWT) is improved and a novel fault feature extraction and enhancement method is proposed by combining the Maximum Correlated Kurtosis Deconvolution (MCKD) and improved EWT method. At first, the MCKD method is conducted to de-noise the signal by eliminating the non-impact components. Then, the Fourier spectrum is segmented by local maxima or minima in the envelope of the amplitude spectrum with a pre-set threshold based on the noise level. By building up the wavelet filter banks based on the spectrum segmentation result, the signal is adaptively decomposed into several sub-signals. Finally, by choosi...
The early weak fault characteristics of rolling bearings are extremely weak and are easily overwhelm...
When the vibration signals of the rolling bearings contain strong interference noise, the spectrum d...
The early fault characteristics of rolling element bearings carried by vibration signals are quite w...
Fault diagnosis of rolling bearings is not a trivial task because fault-induced periodic transient i...
Rolling element bearings have been widely used in mechanical systems, such as electric motors, gener...
As essential but easily damaged parts of rotating machinery, rolling bearings have been deeply resea...
Machinery failure diagnosis is an important component of the condition based maintenance (CBM) activ...
Kurtograms have been verified to be an efficient tool in bearing fault detection and diagnosis becau...
Kurtograms have been verified to be an efficient tool in bearing fault detection and diagnosis becau...
The fault feature of the rolling bearing is difficult to extract when weak fault occurs and interfer...
Vibration signals of rolling element bearings faults are usually immersed in background noise, which...
Rolling element bearings are widely used in rotating machinery to support shafts, whose failures may...
Abstract: Fault diagnosis depends largely on feature analysis of vibration signals. However, feature...
Rolling bearings are important parts of mechanical equipment. However, the early failures of the bea...
Rolling bearings are important parts of mechanical equipment. However, the early failures of the bea...
The early weak fault characteristics of rolling bearings are extremely weak and are easily overwhelm...
When the vibration signals of the rolling bearings contain strong interference noise, the spectrum d...
The early fault characteristics of rolling element bearings carried by vibration signals are quite w...
Fault diagnosis of rolling bearings is not a trivial task because fault-induced periodic transient i...
Rolling element bearings have been widely used in mechanical systems, such as electric motors, gener...
As essential but easily damaged parts of rotating machinery, rolling bearings have been deeply resea...
Machinery failure diagnosis is an important component of the condition based maintenance (CBM) activ...
Kurtograms have been verified to be an efficient tool in bearing fault detection and diagnosis becau...
Kurtograms have been verified to be an efficient tool in bearing fault detection and diagnosis becau...
The fault feature of the rolling bearing is difficult to extract when weak fault occurs and interfer...
Vibration signals of rolling element bearings faults are usually immersed in background noise, which...
Rolling element bearings are widely used in rotating machinery to support shafts, whose failures may...
Abstract: Fault diagnosis depends largely on feature analysis of vibration signals. However, feature...
Rolling bearings are important parts of mechanical equipment. However, the early failures of the bea...
Rolling bearings are important parts of mechanical equipment. However, the early failures of the bea...
The early weak fault characteristics of rolling bearings are extremely weak and are easily overwhelm...
When the vibration signals of the rolling bearings contain strong interference noise, the spectrum d...
The early fault characteristics of rolling element bearings carried by vibration signals are quite w...