Aiming at the problem of wind turbine generator fault early warning, a wind turbine fault early warning method based on nonlinear decreasing inertia weight and exponential change learning factor particle swarm optimization is proposed to optimize the deep belief network (DBN). With the data of wind farm supervisory control and data acquisition (SCADA) as input, the weights and biases of the network are pre-trained layer by layer. Then the BP neural network is used to fine-tune the parameters of the whole network. The improved particle swarm optimization algorithm (IPSO) is used to determine the number of neurons in the hidden layer of the model, pre-training learning rate, reverse fine-tuning learning rate, pre-training times and reverse fi...
The intermittency and uncertainty of wind power result in challenges for large-scale wind power inte...
AbstractThis paper presents an intelligent diagnosis technique for wind turbine imbalance fault iden...
The uncertainty and regularity of wind power generation are caused by wind resources’ intermittent a...
A fault early warning method based on genetic algorithm to optimize the BP neural network for the wi...
As a classification model, a broad learning system is widely used in wind turbine fault diagnosis. H...
The construction of large-scale wind farms results in a dramatic increase of wind turbine (WT) fault...
Wind turbine condition-monitoring and fault diagnosis have important practical value for wind farms ...
Aiming at improving the convergence performance of conventional BP neural network, this paper presen...
With the improvement in wind turbine (WT) operation and maintenance (O&M) technologies and the rise ...
Higher proportion wind power penetration has great impact on grid operation and dispatching, intelli...
The current paper proposes intelligent Fault Detection and Diagnosis (FDD) approaches, aimed to ensu...
This paper deals with a novel prediction method for wind turbine by using neural network and operati...
Accurate wind power forecasting is essential for efficient operation and maintenance (O&M) of wi...
As the proportion of wind power in the world’s electricity generation increases, improving wi...
Due to the problem of poor recognition of data with deep fault attribute in the case of traditional ...
The intermittency and uncertainty of wind power result in challenges for large-scale wind power inte...
AbstractThis paper presents an intelligent diagnosis technique for wind turbine imbalance fault iden...
The uncertainty and regularity of wind power generation are caused by wind resources’ intermittent a...
A fault early warning method based on genetic algorithm to optimize the BP neural network for the wi...
As a classification model, a broad learning system is widely used in wind turbine fault diagnosis. H...
The construction of large-scale wind farms results in a dramatic increase of wind turbine (WT) fault...
Wind turbine condition-monitoring and fault diagnosis have important practical value for wind farms ...
Aiming at improving the convergence performance of conventional BP neural network, this paper presen...
With the improvement in wind turbine (WT) operation and maintenance (O&M) technologies and the rise ...
Higher proportion wind power penetration has great impact on grid operation and dispatching, intelli...
The current paper proposes intelligent Fault Detection and Diagnosis (FDD) approaches, aimed to ensu...
This paper deals with a novel prediction method for wind turbine by using neural network and operati...
Accurate wind power forecasting is essential for efficient operation and maintenance (O&M) of wi...
As the proportion of wind power in the world’s electricity generation increases, improving wi...
Due to the problem of poor recognition of data with deep fault attribute in the case of traditional ...
The intermittency and uncertainty of wind power result in challenges for large-scale wind power inte...
AbstractThis paper presents an intelligent diagnosis technique for wind turbine imbalance fault iden...
The uncertainty and regularity of wind power generation are caused by wind resources’ intermittent a...