Rolling bearings are critical to the normal operation of mechanical systems, which often undergo time-varying working conditions. When the local defects appear on a rolling bearing, the transient impulses will generate and be covered by the strong background noise. Therefore, extracting the rolling bearing weak fault feature with time-varying speed is critical to mechanical system diagnosis. A weak fault feature extraction strategy of rolling bearing under time-varying working conditions is proposed. Firstly, the order-frequency spectral correlation (OFSC) is computed for transferring the measured signal into a higher dimensional space. Then, the joint sparsity and low-rankness constraint is imposed on OFSC to detect the time-varying faulty...
Rolling bearings are important components of rotating machines. For their preventive maintenance, it...
With the increase complexity of bearings’ processing algorithms and the growing trend of using compu...
Incipient bearing fault characteristic is extremely weak and interfered by strong noise, which makes...
Due to the interference of various strong background signals, it is often difficult to extract effec...
To extract the weak fault features hidden in strong background interference in the event of the earl...
It is very difficult to extract the feature frequency of the vibration signal of the rolling bearing...
Envelope analysis is a widely used method in fault diagnoses of rolling bearings. An optimal narrowb...
The health condition of rolling bearing can directly influence to the efficiency and lifecycle of ro...
A rolling element signal has a long transmission path in the acquisition process. The fault feature ...
When operating under harsh condition (e.g., time-varying speed and load, large shocks), the vibratio...
Abstract This study is focused on the application of automated techniques on low-speed bearing diag...
According to the rolling bearing local fault vibration mechanism, a monopulse feature extraction and...
[[abstract]]An envelope order tracking analysis scheme is proposed in the paper for the fault detect...
In response to the problem that nonlinear and non-stationary rolling bearing fault signals are easil...
The compressive sensing (CS) theory provides a new slight to the big-data problem led by the Shannon...
Rolling bearings are important components of rotating machines. For their preventive maintenance, it...
With the increase complexity of bearings’ processing algorithms and the growing trend of using compu...
Incipient bearing fault characteristic is extremely weak and interfered by strong noise, which makes...
Due to the interference of various strong background signals, it is often difficult to extract effec...
To extract the weak fault features hidden in strong background interference in the event of the earl...
It is very difficult to extract the feature frequency of the vibration signal of the rolling bearing...
Envelope analysis is a widely used method in fault diagnoses of rolling bearings. An optimal narrowb...
The health condition of rolling bearing can directly influence to the efficiency and lifecycle of ro...
A rolling element signal has a long transmission path in the acquisition process. The fault feature ...
When operating under harsh condition (e.g., time-varying speed and load, large shocks), the vibratio...
Abstract This study is focused on the application of automated techniques on low-speed bearing diag...
According to the rolling bearing local fault vibration mechanism, a monopulse feature extraction and...
[[abstract]]An envelope order tracking analysis scheme is proposed in the paper for the fault detect...
In response to the problem that nonlinear and non-stationary rolling bearing fault signals are easil...
The compressive sensing (CS) theory provides a new slight to the big-data problem led by the Shannon...
Rolling bearings are important components of rotating machines. For their preventive maintenance, it...
With the increase complexity of bearings’ processing algorithms and the growing trend of using compu...
Incipient bearing fault characteristic is extremely weak and interfered by strong noise, which makes...