Abstract
This paper presents an algorithm of Artificial Neural Network (ANN) pattern recognition method which is applied to the operations of wind turbine control system (WTCS). This paper presents two kinds of improved algorithms of Neural Network (NN) based on the basic principles to improve the convergence speed of the network. To avoid the network falling into the local minimum the genetic algorithm for optimization of neural network fault diagnosis method has been successfully applied to the WTCS. Firstly, this paper proposes several improved training algorithms of neural network. It also makes simulation using the existing data. Then, several WTCS sensor faults which are made by artificial are simulated. Finally, six kinds of WTCS failures that often occur are simulated by using the neural network mode which is optimized by genetic algorithm. The simulation results prove that the improved algorithm is a fast and efficient method which avoids the network falling into the local minimum and it also shows that the used neural network has excellent ability which is famous for parallel processing ability, associative memory, self organizing and self learning.
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