Fault diagnosis of rolling bearings is important for ensuring the safe operation of industrial machinery. How to effectively extract the fault features and select a classifier with high precision is the key to realizing the fault recognition of bearings. Accordingly, a new fault diagnosis method of rolling bearings based on improved fast spectral correlation and optimized random forest (i.e., particle swarm optimization-random forest (PSO-RF)) is proposed in this paper. The main contributions of this study are made from two aspects. One is that an improved fast spectral correlation approach was developed to extract the fault features of bearings and form the feature vector more effectively. The other is that an optimized random forest class...
Rolling bearing fault diagnosis is a meaningful and challenging task. Most methods first extract sta...
The accurate localization of the rolling element failure is very important to ensure the reliability...
This paper proposes a novel method to improve the variational mode decomposition (VMD) method and to...
Fault diagnosis of rolling bearings is important for ensuring the safe operation of industrial machi...
The random forest (RF) algorithm is a typical representative of ensemble learning, which is widely u...
Abstract In order to make accurate judgements of rolling bearing main fault types using the small sa...
The weak-signal detection technologies based on stochastic resonance (SR) play important roles in th...
When rolling bearings fail, it is usually difficult to determine the degree of damage. To address th...
Traditionally Envelope Detection (ED) is implemented for detection of rolling element bearing faults...
A method based on multiscale base-scale entropy (MBSE) and random forests (RF) for roller bearings f...
Bearings are among the most widely used core components in mechanical equipment. Their failure creat...
To solve the problem that the bearing fault of variable working conditions is challenging to identif...
In order to further improve the accuracy of fault identification of rolling bearings, a fault diagno...
Rolling bearings are the vital components of large electromechanical equipment, thus it is of great ...
The classification frameworks for fault diagnosis of rolling element bearings in rotating machinery ...
Rolling bearing fault diagnosis is a meaningful and challenging task. Most methods first extract sta...
The accurate localization of the rolling element failure is very important to ensure the reliability...
This paper proposes a novel method to improve the variational mode decomposition (VMD) method and to...
Fault diagnosis of rolling bearings is important for ensuring the safe operation of industrial machi...
The random forest (RF) algorithm is a typical representative of ensemble learning, which is widely u...
Abstract In order to make accurate judgements of rolling bearing main fault types using the small sa...
The weak-signal detection technologies based on stochastic resonance (SR) play important roles in th...
When rolling bearings fail, it is usually difficult to determine the degree of damage. To address th...
Traditionally Envelope Detection (ED) is implemented for detection of rolling element bearing faults...
A method based on multiscale base-scale entropy (MBSE) and random forests (RF) for roller bearings f...
Bearings are among the most widely used core components in mechanical equipment. Their failure creat...
To solve the problem that the bearing fault of variable working conditions is challenging to identif...
In order to further improve the accuracy of fault identification of rolling bearings, a fault diagno...
Rolling bearings are the vital components of large electromechanical equipment, thus it is of great ...
The classification frameworks for fault diagnosis of rolling element bearings in rotating machinery ...
Rolling bearing fault diagnosis is a meaningful and challenging task. Most methods first extract sta...
The accurate localization of the rolling element failure is very important to ensure the reliability...
This paper proposes a novel method to improve the variational mode decomposition (VMD) method and to...