Forecasting based on neural network approach of solar potential in Turkey
Article Ecrit par: Sozen, Adnan ; Arcaklioglu, Erol ; Ozalp, Mehmet ; Caglar, Naci ;
Résumé: As Turkey lies near the sunny belt between 36 and 42.... N latitudes, most of the locations in Turkey receive abundant solar energy. Average annual temperature is 18– 20 8 C on the south coast, falls down to 14– 16 8 C on the west coast, and fluctuates 4– 18 8 C in the central parts. The yearly average solar radiation is 3.6 kW h/ m2 day, and the total yearly radiation period is w2610 h. The main focus of this study is put forward to solar energy potential in Turkey using artificial neural networks (ANNs). Scaled conjugate gradient (SCG), Pola- Ribiere conjugate gradient (CGP), and Levenberg– Marquardt (LM) learning algorithms and logistic sigmoid transfer function were used in the network. In order to train the neural network, meteorological data for last 4 years (2000– 2003) from 12 cities (C¸ anakkale, Kars, Hakkari, Sakarya, Erzurum, Zonguldak, Bal.kesir, Artvin, C¸ orum, Konya, Siirt, Tekirdag. ) spread over Turkey were used as training (nine stations) and testing (threestations) data. Meteorological and geographical data (latitude, longitude, altitude, month, mean sunshine duration, and mean temperature) is used as input to the network. Solar radiation is the output. The maximum mean absolute percentage error was found to be less than 6.78% and R 2 values to be about 99.7768% for the testing stations. These values were found to be 5.283 and 99.897% forthe training stations. The trained and tested ANN models show greater accuracy for evaluating solar resource posibilities in regions where a network of monitoring stations have not been established in
Langue:
Anglais