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Forecasting of preprocessed daily solar radiation time series using neural networks Presenter : Cheng-Han Tsai Authors : Christophe Paoli, Cyril Voyant, Marc Muselli, Marie-Laure Nivet SOLAR ENERGY, 2010 1
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Outlines Motivation Objectives Methodology Experiments Conclusions Comments 2
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Motivation A lot of methods’ performance be affected by disruptors such as diffuse, ground-reflected and seasonal climate. 3
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Objectives This paper has used a MLP and pre-processing for the daily prediction of global solar radiation to deal with the above problems. 4
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Methodology 5
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ARIMABayesian Markov chains KNN 6
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Methodology ARIMABayesian Markov chains KNN 7
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Methodology ARIMABayesian Markov chains KNN 8
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Methodology ARIMABayesian Markov chains KNN 9
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Experiments 10
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Experiments 11 Cleaning the measure errors Ad-hoc time series preprocessing Corrected time series Forecasting methods & Predicted irradiation
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Experiments 12 Ad-hoc time series preprocessing Clearness index Clear sky index
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Experiments 13
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Experiments 14
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Experiments 15
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Conclusions This prediction model has been compared to other prediction methods These simulation tools have been successfully validated on the DC energy prediction 16
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Comments Advantages – This paper considers seasonal factors Applications – Solar radiation prediction 17
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