As one of the critical components of rotating machinery, fault diagnosis of rolling bearings has great significance. Although deep learning is useful in diagnosing rolling bearing faults, it is difficult to diagnose the faults of bearings under multiple operating conditions. To overcome the above-mentioned problem, this paper designs a modular federated learning network for fault diagnosis in multiple working conditions by using dynamic routing technology as the federation strategy for federated learning of the multiple modular neural network. First, according to different working conditions, the collected multi-working condition data are divided into different groups for feeding of modular network to extract the local features under differ...
Bearing fault diagnosis is very important for the security and efficiency of electric machines. In r...
Deep learning has extensive application in fault diagnosis regarding the health monitoring of machin...
The insufficient learning ability of traditional convolutional neural network for key fault features...
As one of the critical components of rotating machinery, fault diagnosis of rolling bearings has gre...
In engineering, the fault data unevenly distribute and difficultly share, which causes that the exis...
As a key component of electromechanical equipment in the intelligent manufacturing process, rolling ...
In recent years, intelligent fault diagnosis methods based on deep learning have developed rapidly. ...
Intelligent fault diagnosis for a single wind turbine is hindered by the lack of sufficient useful d...
Intelligent diagnosis applies deep learning algorithms to mechanical fault diagnosis, which can clas...
Intelligent bearing fault diagnosis is a necessary approach to ensure the stable operation of rotati...
Rolling bearings are important in rotating machinery and equipment. This research proposes variation...
SUMMARY: The task of condition monitoring and fault diagnosis of rotating machinery faults is signif...
Accurate and fast rolling bearing fault diagnosis is required for the normal operation of rotating m...
Rotating machinery usually suffers from a type of fault, where the fault feature extracted in the fr...
Due to the problem of load varying or environment changing, machinery equipment often operates in mu...
Bearing fault diagnosis is very important for the security and efficiency of electric machines. In r...
Deep learning has extensive application in fault diagnosis regarding the health monitoring of machin...
The insufficient learning ability of traditional convolutional neural network for key fault features...
As one of the critical components of rotating machinery, fault diagnosis of rolling bearings has gre...
In engineering, the fault data unevenly distribute and difficultly share, which causes that the exis...
As a key component of electromechanical equipment in the intelligent manufacturing process, rolling ...
In recent years, intelligent fault diagnosis methods based on deep learning have developed rapidly. ...
Intelligent fault diagnosis for a single wind turbine is hindered by the lack of sufficient useful d...
Intelligent diagnosis applies deep learning algorithms to mechanical fault diagnosis, which can clas...
Intelligent bearing fault diagnosis is a necessary approach to ensure the stable operation of rotati...
Rolling bearings are important in rotating machinery and equipment. This research proposes variation...
SUMMARY: The task of condition monitoring and fault diagnosis of rotating machinery faults is signif...
Accurate and fast rolling bearing fault diagnosis is required for the normal operation of rotating m...
Rotating machinery usually suffers from a type of fault, where the fault feature extracted in the fr...
Due to the problem of load varying or environment changing, machinery equipment often operates in mu...
Bearing fault diagnosis is very important for the security and efficiency of electric machines. In r...
Deep learning has extensive application in fault diagnosis regarding the health monitoring of machin...
The insufficient learning ability of traditional convolutional neural network for key fault features...