Diffuse solar energy

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Modeling of Daily Solar Energy on a Horizontal Surface for Five Main Sites in Malaysia

Journal Title, Volume, Page: 
International Journal of Green Energy. 11/2011; 8:795-819. DOI: 10.1080/15435075.2011.602156
Year of Publication: 
2011
Authors: 
Tamer Khatib
Department of Electrical, Electronic & System Engineering, Faculty of Engineering & Built Environment , Universiti Kebangsaan Malaysia , Selangor , Malaysia
Azah Mohamed
Department of Electrical, Electronic & System Engineering, Faculty of Engineering & Built Environment , Universiti Kebangsaan Malaysia , Selangor , Malaysia
Marwan Mahmoud
Department of Electrical Engineering, Faculty of Engineering and Information Technology, An-Najah National University, Nablus. Palestine
Current Affiliation: 
Department of Electrical Engineering, Faculty of Engineering and Information Technology, An-Najah National University, Nablus. Palestine
K. Sopian
Solar Energy Research Institute, Universiti Kebangsaan Malaysia , Selangor , Malaysia
Preferred Abstract (Original): 

This paper presents models for global and diffuse solar energy on a horizontal surface for main five sites in Malaysia. The global solar energy is modeled using linear, nonlinear, fuzzy logic, and artificial neural network (ANN) models, while the diffuse solar energy is modeled using linear, nonlinear, and ANN models. Three statistical values are used to evaluate the developed solar energy models, namely, the mean absolute percentage error, MAPE; root mean square error, RMSE; and mean bias error, MBE. The results showed that the ANN models are superior compared with the other models in which the MAPE in calculating the global solar energy in Malaysia by the ANN model is 5.38%, while the MAPE for the linear, nonlinear, and fuzzy logic models are 8.13%, 6.93%, and 6.71%, respectively. The results for the diffuse solar energy showed that the MAPE of the ANN model is 1.53%, while the MAPE of the linear and nonlinear models are 4.35% and 3.74%, respectively. The accurate ANN models can therefore be used to predict solar energy in Malaysia and nearby regions.

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