Rolling element bearing and gear are the typical supporting or rotating parts in mechanical equipment, and it has important economy and security to realize their quick and accurate fault detection. As one kind of powerful cyclostationarity signal analyzing method, spectral correlation (SC) could identify the impulsive characteristic component buried in the vibration signals of rotating machinery effectively. However, the fault feature such as impulsive characteristic component is often interfered by other background noise, and the situation is serious especially in early weak fault stage. Besides, the traditional SC method has a drawback of low computation efficiency which hinders its wide application to some extent. To address the above pr...
Condition-based monitoring of rotating machines requires robust features for accurate fault diag...
Faults in bearings and gearboxes, which are widely used in rotating machines, can lead to heavy inve...
The early fault characteristics of rolling element bearings carried by vibration signals are quite w...
Impulse components in vibration signals are important fault features of complex machines. Sparse cod...
AbstractImpulse components in vibration signals are important fault features of complex machines. Sp...
Cyclostationary analysis has been strongly recognized as an effective demodulation tool in identifyi...
In condition monitoring based on vibrations for rotating machines fault detection, one of the typica...
The sparse decomposition based on matching pursuit is an adaptive sparse expression of the signals. ...
Fault diagnosis of rolling bearings is important for ensuring the safe operation of industrial machi...
The periodical transient impulses caused by localized faults are sensitive and important characteris...
Intelligent fault diagnosis of complex machinery is crucial for industries to reduce the maintenance...
As one of the most important components in rotating machinery, it’s necessary and essential to...
Addressing the problem that it is difficult to extract the features of vibration signal and diagnose...
Rolling bearings are important parts of mechanical equipment. However, the early failures of the bea...
International audienceModern Internet-of-Things (IoT)-driven condition monitoring exploits data from...
Condition-based monitoring of rotating machines requires robust features for accurate fault diag...
Faults in bearings and gearboxes, which are widely used in rotating machines, can lead to heavy inve...
The early fault characteristics of rolling element bearings carried by vibration signals are quite w...
Impulse components in vibration signals are important fault features of complex machines. Sparse cod...
AbstractImpulse components in vibration signals are important fault features of complex machines. Sp...
Cyclostationary analysis has been strongly recognized as an effective demodulation tool in identifyi...
In condition monitoring based on vibrations for rotating machines fault detection, one of the typica...
The sparse decomposition based on matching pursuit is an adaptive sparse expression of the signals. ...
Fault diagnosis of rolling bearings is important for ensuring the safe operation of industrial machi...
The periodical transient impulses caused by localized faults are sensitive and important characteris...
Intelligent fault diagnosis of complex machinery is crucial for industries to reduce the maintenance...
As one of the most important components in rotating machinery, it’s necessary and essential to...
Addressing the problem that it is difficult to extract the features of vibration signal and diagnose...
Rolling bearings are important parts of mechanical equipment. However, the early failures of the bea...
International audienceModern Internet-of-Things (IoT)-driven condition monitoring exploits data from...
Condition-based monitoring of rotating machines requires robust features for accurate fault diag...
Faults in bearings and gearboxes, which are widely used in rotating machines, can lead to heavy inve...
The early fault characteristics of rolling element bearings carried by vibration signals are quite w...