In this paper, several models to forecast the hourly solar irradiance with a day in advance using artificial neural network techniques have been developed and analyzed. The forecast irradiance is the one incident on the plane of the modules array of a photovoltaic plant. Pure statistical (ST) models that use only local measured data and model output statistics (MOS) approaches to refine numerical weather prediction data are tested for the University of Rome "Tor Vergata" site. The performance of ST and MOS, together with the persistence model (PM), is compared. The ST models improve the performance of the PM of around 20%. The combination of ST and NWP in the MOS approach gives the best performance, improving the forecast of approximately 39% with respect to the PM.

Cornaro, C., Bucci, F., Pierro, M., DEL FRATE, F., Peronaci, S., Taravat, A. (2015). Twenty-four hour solar irradiance forecast based on neural networks and numerical weather prediction. JOURNAL OF SOLAR ENERGY ENGINEERING, 137(3), 031011 [10.1115/1.4029452].

Twenty-four hour solar irradiance forecast based on neural networks and numerical weather prediction

CORNARO, CRISTINA;DEL FRATE, FABIO;
2015-01-01

Abstract

In this paper, several models to forecast the hourly solar irradiance with a day in advance using artificial neural network techniques have been developed and analyzed. The forecast irradiance is the one incident on the plane of the modules array of a photovoltaic plant. Pure statistical (ST) models that use only local measured data and model output statistics (MOS) approaches to refine numerical weather prediction data are tested for the University of Rome "Tor Vergata" site. The performance of ST and MOS, together with the persistence model (PM), is compared. The ST models improve the performance of the PM of around 20%. The combination of ST and NWP in the MOS approach gives the best performance, improving the forecast of approximately 39% with respect to the PM.
2015
Pubblicato
Rilevanza internazionale
Articolo
Esperti anonimi
Settore ING-IND/11 - FISICA TECNICA AMBIENTALE
English
Forecast; Grid stability; Neural networks; Photovoltaic; Solar radiation
Cornaro, C., Bucci, F., Pierro, M., DEL FRATE, F., Peronaci, S., Taravat, A. (2015). Twenty-four hour solar irradiance forecast based on neural networks and numerical weather prediction. JOURNAL OF SOLAR ENERGY ENGINEERING, 137(3), 031011 [10.1115/1.4029452].
Cornaro, C; Bucci, F; Pierro, M; DEL FRATE, F; Peronaci, S; Taravat, A
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/2108/134099
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