Fault diagnosis of bearing based on variational mode decomposition (VMD)-phase space reconstruction (PSR)-singular value decomposition (SVD) and improved binary particle swarm optimization (IBPSO)-K-nearest neighbor (KNN) which is abbreviated as VPS-IBPSOKNN is presented in this study, among which VMD-PSR-SVD (VPS) is presented to obtain the features of the bearing vibration signal (BVS), and IBPSO is presented to select the parameter K of KNN. In IBPSO, the calculation of the next position of each particle is improved to fit the evolution of the particles. The traditional KNN with different parameter K and trained by the training samples with the features based on VMD-SVD (VS-KNN) can be used to compare with the proposed VPS-IBPSOKNN metho...
In order to effectively improve the fault diagnosis accuracy of motor bearing, a new fault diagnosis...
In this paper, a novel model for fault detection of rolling bearing is proposed. It is based on a hi...
In view of the incipient fault characteristics are difficult to be extracted from the raw bearing fa...
To improve the accuracy of fault diagnosis of bearing, the improved particle swarm optimization vari...
Abstract In order to make accurate judgements of rolling bearing main fault types using the small sa...
Variational mode decomposition (VMD) is a new method of signal adaptive decomposition. In the VMD fr...
In order to further improve the accuracy of fault identification of rolling bearings, a fault diagno...
Rolling bearings are key components of rotary machines. To ensure early effective fault diagnosis fo...
This paper proposes a novel method to improve the variational mode decomposition (VMD) method and to...
In order to improve the fault diagnosis accuracy of bearings, an intelligent fault diagnosis method ...
According to the statistics, over 30 % of rotating equipment faults occurred in bearings. Therefore,...
To improve the accuracy of bearing fault recognition, a novel bearing fault diagnosis (PAVMD-EE-PNN)...
Aiming at the problem that the classification effect of support vector machine (SVM) is not satisfac...
Due to the fact that measured vibration signals from a bearing are complex and non-stationary in nat...
The fault diagnosis method of bearing based on lifting wavelet transform (LWT)-self-adaptive phase s...
In order to effectively improve the fault diagnosis accuracy of motor bearing, a new fault diagnosis...
In this paper, a novel model for fault detection of rolling bearing is proposed. It is based on a hi...
In view of the incipient fault characteristics are difficult to be extracted from the raw bearing fa...
To improve the accuracy of fault diagnosis of bearing, the improved particle swarm optimization vari...
Abstract In order to make accurate judgements of rolling bearing main fault types using the small sa...
Variational mode decomposition (VMD) is a new method of signal adaptive decomposition. In the VMD fr...
In order to further improve the accuracy of fault identification of rolling bearings, a fault diagno...
Rolling bearings are key components of rotary machines. To ensure early effective fault diagnosis fo...
This paper proposes a novel method to improve the variational mode decomposition (VMD) method and to...
In order to improve the fault diagnosis accuracy of bearings, an intelligent fault diagnosis method ...
According to the statistics, over 30 % of rotating equipment faults occurred in bearings. Therefore,...
To improve the accuracy of bearing fault recognition, a novel bearing fault diagnosis (PAVMD-EE-PNN)...
Aiming at the problem that the classification effect of support vector machine (SVM) is not satisfac...
Due to the fact that measured vibration signals from a bearing are complex and non-stationary in nat...
The fault diagnosis method of bearing based on lifting wavelet transform (LWT)-self-adaptive phase s...
In order to effectively improve the fault diagnosis accuracy of motor bearing, a new fault diagnosis...
In this paper, a novel model for fault detection of rolling bearing is proposed. It is based on a hi...
In view of the incipient fault characteristics are difficult to be extracted from the raw bearing fa...