Sparse signal representations attract much attention in the community of signal processing because only a few coefficients are required to represent a signal and these coefficients make the signal understandable. For bearing faults’ diagnosis, bearing faults signals collected from transducers are often overwhelmed by strong low-frequency periodic signals and heavy noises. In this paper, a joint signal processing method is proposed to extract sparse envelope coefficients, which are the sparse signal representations of bearing fault signals. Firstly, to enhance bearing fault signals, particle swarm optimization is introduced to tune the parameters of wavelet transform and the optimal wavelet transform is used for retaining one of the resonant...
A comprehensive fault diagnosis method of rolling bearing about noise interference, fault feature ex...
Rolling element bearings have been widely used in mechanical systems, such as electric motors, gener...
In order to improve the fault detection accuracy for rolling bearings, an automated fault diagnosis ...
The feature extraction of wheelset-bearing fault is important for the safety service of high-speed t...
When fault such as pit failure arises in the rolling element bearing the vibration signal of which w...
Early identification of failures in rolling element bearings is an important research issue in mecha...
The research on gearbox fault diagnosis has been gaining increasing attention in recent years, espec...
Abstract A new signal processing technique, wavelet spectrum analysis, is proposed in this paper for...
Bearings are among the most widely used core components in mechanical equipment. Their failure creat...
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...
In order to enhance the performance of bearing fault diagnosis and classification, features extracti...
Vibration signals captured from faulty mechanical components are often associated with transients wh...
The traditional approaches for condition monitoring of roller bearings are almost always achieved un...
A comprehensive fault diagnosis method of rolling bearing about noise interference, fault feature ex...
Rolling element bearings have been widely used in mechanical systems, such as electric motors, gener...
In order to improve the fault detection accuracy for rolling bearings, an automated fault diagnosis ...
The feature extraction of wheelset-bearing fault is important for the safety service of high-speed t...
When fault such as pit failure arises in the rolling element bearing the vibration signal of which w...
Early identification of failures in rolling element bearings is an important research issue in mecha...
The research on gearbox fault diagnosis has been gaining increasing attention in recent years, espec...
Abstract A new signal processing technique, wavelet spectrum analysis, is proposed in this paper for...
Bearings are among the most widely used core components in mechanical equipment. Their failure creat...
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...
In order to enhance the performance of bearing fault diagnosis and classification, features extracti...
Vibration signals captured from faulty mechanical components are often associated with transients wh...
The traditional approaches for condition monitoring of roller bearings are almost always achieved un...
A comprehensive fault diagnosis method of rolling bearing about noise interference, fault feature ex...
Rolling element bearings have been widely used in mechanical systems, such as electric motors, gener...
In order to improve the fault detection accuracy for rolling bearings, an automated fault diagnosis ...