The classification frameworks for fault diagnosis of rolling element bearings in rotating machinery are mostly based on analysis in a single time-frequency domain, where sensitive features are not completely extracted. To solve this problem, a new fault diagnosis technique is proposed in the mixed domain, based on the crossover-mutation chaotic particle swarm optimization support vector machine. Firstly, fault features are generated using techniques in the time domain, the frequency domain, and the time-frequency domain. Secondly, the weighted maximum relevance minimum redundancy (WMRMR) algorithm is adopted to reduce the dimension of the feature set and to establish the representative feature set. Thirdly, a new crossover-mutation strategy...
Variational mode decomposition (VMD) is a new method of signal adaptive decomposition. In the VMD fr...
Overstudy or understudy phenomena can sometimes occur due to the strong dependence of support vector...
Bearings are among the most widely used core components in mechanical equipment. Their failure creat...
To improve the accuracy of fault diagnosis of bearing, the improved particle swarm optimization vari...
In order to further improve the accuracy of fault identification of rolling bearings, a fault diagno...
To solve the problem that the bearing fault of variable working conditions is challenging to identif...
In this paper, a novel model for fault detection of rolling bearing is proposed. It is based on a hi...
Abstract In order to make accurate judgements of rolling bearing main fault types using the small sa...
Bearing is one of the key components of a rotating machine. Hence, monitoring health condition of th...
Fault diagnosis of rolling bearings is important for ensuring the safe operation of industrial machi...
Aiming at the problem that the classification effect of support vector machine (SVM) is not satisfac...
The accurate localization of the rolling element failure is very important to ensure the reliability...
According to the statistics, over 30 % of rotating equipment faults occurred in bearings. Therefore,...
Rolling bearings are key components of rotary machines. To ensure early effective fault diagnosis fo...
This study proposes an effective bearing fault diagnosis model based on an optimized approach for fe...
Variational mode decomposition (VMD) is a new method of signal adaptive decomposition. In the VMD fr...
Overstudy or understudy phenomena can sometimes occur due to the strong dependence of support vector...
Bearings are among the most widely used core components in mechanical equipment. Their failure creat...
To improve the accuracy of fault diagnosis of bearing, the improved particle swarm optimization vari...
In order to further improve the accuracy of fault identification of rolling bearings, a fault diagno...
To solve the problem that the bearing fault of variable working conditions is challenging to identif...
In this paper, a novel model for fault detection of rolling bearing is proposed. It is based on a hi...
Abstract In order to make accurate judgements of rolling bearing main fault types using the small sa...
Bearing is one of the key components of a rotating machine. Hence, monitoring health condition of th...
Fault diagnosis of rolling bearings is important for ensuring the safe operation of industrial machi...
Aiming at the problem that the classification effect of support vector machine (SVM) is not satisfac...
The accurate localization of the rolling element failure is very important to ensure the reliability...
According to the statistics, over 30 % of rotating equipment faults occurred in bearings. Therefore,...
Rolling bearings are key components of rotary machines. To ensure early effective fault diagnosis fo...
This study proposes an effective bearing fault diagnosis model based on an optimized approach for fe...
Variational mode decomposition (VMD) is a new method of signal adaptive decomposition. In the VMD fr...
Overstudy or understudy phenomena can sometimes occur due to the strong dependence of support vector...
Bearings are among the most widely used core components in mechanical equipment. Their failure creat...