PSO Based Emotional BPN and RBF Neural Network Models for Wind Speed Prediction | Book Publisher International
The present research focuses on
developing certain proposed machine learning neural network architectures along
with certain mathematical criterion and stochastic population based swarm
intelligence technique particle swarm optimization inspired by nature behavior
to carry out wind speed prediction in renewable energy systems with real time
wind farm datasets. In the developed machine learning model, the work
concentrated on developing emotional neural network architecture models that
are optimized employing the particle swarm optimization approach and the
optimized emotional models are employed to carry out effective wind speed
prediction for the given real time wind farm data. Four neural network models
are proposed – PSO – EBPN (Emotional Back Propagation Neural Network) model,
PSO – ERBFNN (Emotional Radial Basis Function Neural Network) model, PSO – EBPN
model with hidden neuron criterion and PSO – ERBFNN model with hidden neuron
criterion and as well all these four network models are employed to compute the
predicted wind speed output. The developed models for wind speed prediction has
performed in a better manner avoiding local and global minima problem and as
well had a reasonable better convergence rate.
Author(s) Details
Dr. V. Ranganayaki
Department of Electrical and
Electronics Engineering, Dr. N.G.P. Institute of Technology, Coimbatore, Tamil
Nadu, India.
S. N. Deepa
Department of Electrical and
Electronics Engineering, Anna University, Regional Campus, Coimbatore, Tamil
Nadu, India.
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