Intelligent fault diagnosis for a single wind turbine is hindered by the lack of sufficient useful data, while multi-turbines have various faults, resulting in complex distributions. Collaborative intelligence can better solve these problems. Therefore, a peer-to-peer network is constructed with one node corresponding to one wind turbine in a cluster. Each node is equivalent and functional replicable with a new federated transfer learning method, including model transfer based on multi-task learning and model fusion based on dynamic adaptive weight adjustment. Models with convolutional neural networks are trained locally and transmitted among the nodes. A solution for the processes of data management, information transmission, model transfe...
Most of the existing research on unsupervised cross-domain intelligent fault diagnosis is based on s...
The fault diagnosis of wind turbine systems has been proven to be a challenging task and motivates t...
International audienceDeep learning methods have promoted the vibration-based machinery fault diagno...
With the increase in the installed capacity of wind power systems, the fault diagnosis and condition...
As one of the critical components of rotating machinery, fault diagnosis of rolling bearings has gre...
As the most complex component in the transmission system, the operating state of the wind turbine ge...
Deep learning methods have become popular among researchers in the field of fault detection. However...
The rapid development of artificial intelligence offers more opportunities for intelligent mechanica...
In engineering, the fault data unevenly distribute and difficultly share, which causes that the exis...
As a classification model, a broad learning system is widely used in wind turbine fault diagnosis. H...
Best Paper AwardImplementing machine learning and deep learning algorithms for wind turbine (WT) fau...
In this paper, a set of best practice data sharing guidelines for wind turbine fault detection model...
The technology of fault diagnosis is helpful to improve the reliability of wind turbines, and furthe...
Wind power has gained wide popularity due to the increasingly serious energy and environmental crisi...
In the large amount of available data, information insensitive to faults in historical data interfer...
Most of the existing research on unsupervised cross-domain intelligent fault diagnosis is based on s...
The fault diagnosis of wind turbine systems has been proven to be a challenging task and motivates t...
International audienceDeep learning methods have promoted the vibration-based machinery fault diagno...
With the increase in the installed capacity of wind power systems, the fault diagnosis and condition...
As one of the critical components of rotating machinery, fault diagnosis of rolling bearings has gre...
As the most complex component in the transmission system, the operating state of the wind turbine ge...
Deep learning methods have become popular among researchers in the field of fault detection. However...
The rapid development of artificial intelligence offers more opportunities for intelligent mechanica...
In engineering, the fault data unevenly distribute and difficultly share, which causes that the exis...
As a classification model, a broad learning system is widely used in wind turbine fault diagnosis. H...
Best Paper AwardImplementing machine learning and deep learning algorithms for wind turbine (WT) fau...
In this paper, a set of best practice data sharing guidelines for wind turbine fault detection model...
The technology of fault diagnosis is helpful to improve the reliability of wind turbines, and furthe...
Wind power has gained wide popularity due to the increasingly serious energy and environmental crisi...
In the large amount of available data, information insensitive to faults in historical data interfer...
Most of the existing research on unsupervised cross-domain intelligent fault diagnosis is based on s...
The fault diagnosis of wind turbine systems has been proven to be a challenging task and motivates t...
International audienceDeep learning methods have promoted the vibration-based machinery fault diagno...