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Neural Network Ensemble-Based Solar Power Generation Short-Term Forecasting
Author(s) -
Aymen Chaouachi,
Rashad M. Kamel,
Ken Nagasaka
Publication year - 2010
Publication title -
journal of advanced computational intelligence and intelligent informatics
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.172
H-Index - 20
eISSN - 1343-0130
pISSN - 1883-8014
DOI - 10.20965/jaciii.2010.p0069
Subject(s) - computer science , artificial neural network , artificial intelligence , term (time) , ensemble learning , perceptron , generalization , multilayer perceptron , ensemble forecasting , machine learning , mathematical analysis , physics , mathematics , quantum mechanics
This paper presents the applicability of artificial neural networks for 24 hour ahead solar power generation forecasting of a 20 kW photovoltaic system, the developed forecasting is suitable for a reliable Microgrid energy management. In total four neural networks were proposed, namely: multi-layred perceptron, radial basis function, recurrent and a neural network ensemble consisting in ensemble of bagged networks. Forecasting reliability of the proposed neural networks was carried out in terms forecasting error performance basing on statistical and graphical methods. The experimental results showed that all the proposed networks achieved an acceptable forecasting accuracy. In term of comparison the neural network ensemble gives the highest precision forecasting comparing to the conventional networks. In fact, each network of the ensemble over-fits to some extent and leads to a diversity which enhances the noise tolerance and the forecasting generalization performance comparing to the conventional networks. Keywords—Neural network ensemble, Solar power generation, 24 hour forecasting, Comparative study.

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