Abstract
The article aims to predict the wind speed by two artificial neural network’s models. The first model is a multilayer perceptron (MLP) treated by backpropagation algorithm and the second one is a recurrent neuron network type, processed by the NARX model. The two models having the same Network’s structure, which they are composed by 4 Inputs layers (Wind Speed, Pressure Temperature and Humidity), an intermediate layer defined by 20 neurons and an activation function, as well as a single output layer characterized by wind speed and a linear function. NARX shows the best results with a regression coefficient R = 0.984 et RMSE = 0.314.
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CITATION STYLE
Amellas, Y., Bakkali, O. E., Djebil, A., & Echchelh, A. (2019). Short-term wind speed prediction based on MLP and NARX network models. Indonesian Journal of Electrical Engineering and Computer Science, 18(1), 150–157. https://doi.org/10.11591/ijeecs.v18.i1.pp150-157
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