Author :
Assas, Ouarda ; Bouzgou, H. ; Fetah, S. ; Salmi, M. ; Boursas, A.
Author_Institution :
Lab. de Phys. et Chim. des Mater. (LPCM), Univ. de M´sila, M´sila, Algeria
Abstract :
This paper presents a set of artificial neural network models (ANN) to estimate daily global solar radiation (GSR) on a horizontal surface using meteorological variables: (mean daily extraterrestrial solar radiation intensity G0, the maximum possible sunshine hours S0, mean daily relative humidity H, mean daily maximum air temperature T, mean daily atmospheric pressure P and wind speed Vx) for Djelfa city in Algeria. In order to consider the effect of the different meteorological parameters on daily global solar radiation prediction, four following combinations of input features are considered: 1) Day of the year, G0, S0, T and Vx. 2) Day of the year, G0, S0, T, P and Vx. 3) Day of the year, G0, S0, T, H, P and Vx. 4) Day of the year, G0, S0, T, H and Vx. These models were compared using three evaluation criteria: Mean square error (MSE), mean absolute error (MAE), and root mean square error (RMSE). The results show that the two parameters: atmospheric pressure and relative humidity affect the prediction output of global solar radiation. In addition, the results show that the relative humidity is the most important features influencing the prediction performance. It can be concluded that fourth model can be used for forecasting daily global solar radiation in other locations in Algeria.
Keywords :
atmospheric humidity; atmospheric pressure; atmospheric techniques; atmospheric temperature; neural nets; sunlight; weather forecasting; Algeria; Djelfa city; artificial neural network; atmospheric pressure; daily global solar radiation; global solar radiation; horizontal surface; maximum possible sunshine hours; mean absolute error; mean daily atmospheric pressure; mean daily extraterrestrial solar radiation intensity; mean daily maximum air temperature; mean daily relative humidity; mean square error; meteorological data; meteorological variables; root mean square error; wind speed; Artificial neural networks; Cities and towns; Computer architecture; Humidity; Root mean square; Solar radiation; Global solar radiation; artificial neural network models (ANN); climatic parameters; modelling;