The technology of fault diagnosis is helpful to improve the reliability of wind turbines, and further reduce the operation and maintenance cost at wind farms. However, in reality, wind turbines are not allowed to operate with faults, so few fault samples could be obtained. With a small amount of training data, traditional fault diagnosis models that need huge samples under a deep learning framework are difficult to maintain with high accuracy and effectiveness. Few-shot learning can effectively solve the problem of overfitting caused by fewer fault samples in model training. In view of model-agnostic meta-learning (MAML), this paper proposes a model for few-shot fault diagnosis of the wind turbines drivetrain, which is named model-agnostic ...
The reliability requirements of wind turbine (WT) components have increased significantly in recent ...
The goal of this paper is to develop, implement, and validate a methodology for wind turbines’ main ...
The main goal of this paper is to review and evaluate how we can take advantage of state-of-the-art ...
The rapid development of artificial intelligence offers more opportunities for intelligent mechanica...
With the increase in the installed capacity of wind power systems, the fault diagnosis and condition...
Recently, intelligent fault diagnosis technology based on deep learning has been extensively researc...
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...
To meet the latest strike price, the cost of energy from wind turbines needs to decrease.One of the ...
Increasing awareness about climate change and increasing interest in renewable energy is fueling the...
As a classification model, a broad learning system is widely used in wind turbine fault diagnosis. H...
Wind power has gained wide popularity due to the increasingly serious energy and environmental crisi...
This dataset is mainly used for the Paper named "Metric-based meta-learning model for few-shot fault...
In this research an early warning methodological framework is developed that is able to detect prema...
The goal of this paper is to develop, implement, and validate a methodology for wind turbines’ main ...
The reliability requirements of wind turbine (WT) components have increased significantly in recent ...
The goal of this paper is to develop, implement, and validate a methodology for wind turbines’ main ...
The main goal of this paper is to review and evaluate how we can take advantage of state-of-the-art ...
The rapid development of artificial intelligence offers more opportunities for intelligent mechanica...
With the increase in the installed capacity of wind power systems, the fault diagnosis and condition...
Recently, intelligent fault diagnosis technology based on deep learning has been extensively researc...
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...
To meet the latest strike price, the cost of energy from wind turbines needs to decrease.One of the ...
Increasing awareness about climate change and increasing interest in renewable energy is fueling the...
As a classification model, a broad learning system is widely used in wind turbine fault diagnosis. H...
Wind power has gained wide popularity due to the increasingly serious energy and environmental crisi...
This dataset is mainly used for the Paper named "Metric-based meta-learning model for few-shot fault...
In this research an early warning methodological framework is developed that is able to detect prema...
The goal of this paper is to develop, implement, and validate a methodology for wind turbines’ main ...
The reliability requirements of wind turbine (WT) components have increased significantly in recent ...
The goal of this paper is to develop, implement, and validate a methodology for wind turbines’ main ...
The main goal of this paper is to review and evaluate how we can take advantage of state-of-the-art ...