Please use this identifier to cite or link to this item: https://hdl.handle.net/20.500.14279/10039
Title: Machine learning methods for solar radiation forecasting: A review
Authors: Voyant, Cyril 
Notton, Gilles 
Kalogirou, Soteris A. 
Nivet, Marie Laure 
Paoli, Christophe 
Motte, Fabrice 
Fouilloy, Alexis 
Major Field of Science: Engineering and Technology
Field Category: Mechanical Engineering
Keywords: Artificial neural networks;Support vector machines;Machine learning;Regression;Solar radiation forecasting
Issue Date: May-2017
Source: Renewable Energy, 2017, vol. 105, pp. 569-582
Volume: 105
Start page: 569
End page: 582
Journal: Renewable Energy 
Abstract: Forecasting the output power of solar systems is required for the good operation of the power grid or for the optimal management of the energy fluxes occurring into the solar system. Before forecasting the solar systems output, it is essential to focus the prediction on the solar irradiance. The global solar radiation forecasting can be performed by several methods; the two big categories are the cloud imagery combined with physical models, and the machine learning models. In this context, the objective of this paper is to give an overview of forecasting methods of solar irradiation using machine learning approaches. Although, a lot of papers describes methodologies like neural networks or support vector regression, it will be shown that other methods (regression tree, random forest, gradient boosting and many others) begin to be used in this context of prediction. The performance ranking of such methods is complicated due to the diversity of the data set, time step, forecasting horizon, set up and performance indicators. Overall, the error of prediction is quite equivalent. To improve the prediction performance some authors proposed the use of hybrid models or to use an ensemble forecast approach.
URI: https://hdl.handle.net/20.500.14279/10039
ISSN: 09601481
DOI: 10.1016/j.renene.2016.12.095
Rights: © Elsevier
Type: Article
Affiliation : Universita di Corsica Pascal Paoli 
Cyprus University of Technology 
CHD Castelluccio 
Galatasaray University 
Publication Type: Peer Reviewed
Appears in Collections:Άρθρα/Articles

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