Early fault diagnosis in rolling bearings is crucial to maintenance and safety in industry. To highlight the weak fault features from complex signals combined with multiple interferences and heavy background noise, a novel approach for bearing fault diagnosis based on higher-order analytic energy operator (HO-AEO) and adaptive local iterative filtering (ALIF) is put forward. HO-AEO has better effect in dealing with heavy noise. However, it is subjected to the limitation of mono-components. To solve this limitation, ALIF is adopted firstly to decompose the nonlinear, non-stationary signals into multiple mono-components adaptively. In the next, the resonance frequency band as the optimal intrinsic mode function (IMF) is selected according to ...
Feature extraction of vibration signal is the key factor of machine fault diagnosis. This paper prop...
Multipoint optimal minimum entropy deconvolution adjusted (MOMEDA) is a powerful method that can ext...
Faults in rolling element bearings often cause the breakdown of rotating machinery. Not only the fau...
A intelligent rolling bearing fault diagnosis method is proposed on Empirical Mode Decomposition (EM...
Rolling bearings are key components that support the rotation of motor shafts, operating with a quit...
As a novel time-frequency analysis method, adaptive local iterative filtering (ALIF) can decompose t...
Rolling element bearings are one of the most significant elements and frequently-used components in ...
In order to extract impulse components from bearing vibration signals with strong background noise, ...
In this paper, a rolling bearing fault detection method based on Local Characteristic-scale Decompos...
Bearing is one of the most important components of rotating machinery. The vibration signals are gen...
AbstractThe fault spectral precision plays a significant role in the field of mechanical diagnosis. ...
Vibration signals of rolling bearings usually are corrupted by heavy noise and it is very important ...
There are always the nonlinear and non-stationary characteristics and periodic pulse in vibration si...
In view of the shortcomings of mode mixing in EMD, the excess IMF component in the low frequency ban...
Due to the interference of various strong background signals, it is often difficult to extract effec...
Feature extraction of vibration signal is the key factor of machine fault diagnosis. This paper prop...
Multipoint optimal minimum entropy deconvolution adjusted (MOMEDA) is a powerful method that can ext...
Faults in rolling element bearings often cause the breakdown of rotating machinery. Not only the fau...
A intelligent rolling bearing fault diagnosis method is proposed on Empirical Mode Decomposition (EM...
Rolling bearings are key components that support the rotation of motor shafts, operating with a quit...
As a novel time-frequency analysis method, adaptive local iterative filtering (ALIF) can decompose t...
Rolling element bearings are one of the most significant elements and frequently-used components in ...
In order to extract impulse components from bearing vibration signals with strong background noise, ...
In this paper, a rolling bearing fault detection method based on Local Characteristic-scale Decompos...
Bearing is one of the most important components of rotating machinery. The vibration signals are gen...
AbstractThe fault spectral precision plays a significant role in the field of mechanical diagnosis. ...
Vibration signals of rolling bearings usually are corrupted by heavy noise and it is very important ...
There are always the nonlinear and non-stationary characteristics and periodic pulse in vibration si...
In view of the shortcomings of mode mixing in EMD, the excess IMF component in the low frequency ban...
Due to the interference of various strong background signals, it is often difficult to extract effec...
Feature extraction of vibration signal is the key factor of machine fault diagnosis. This paper prop...
Multipoint optimal minimum entropy deconvolution adjusted (MOMEDA) is a powerful method that can ext...
Faults in rolling element bearings often cause the breakdown of rotating machinery. Not only the fau...