DocumentCode :
3577579
Title :
Prediction and extrapolation of global solar irradiation on tilted surfaces from horizontal ones using an artificial neural network
Author :
Maamar, Laidi ; el hadj Abdallah, Abdellah ; Salah, Hanini ; Ahmed, Rezrazi
Author_Institution :
Saad Dahlab Univ., Blida, Algeria
fYear :
2014
Firstpage :
1
Lastpage :
6
Abstract :
The present work investigated the potential of Artificial Neural Network (ANN) model to estimate Global Solar radiation on tilted surface (GSRT) from the horizontal ones. The collected experimental data (from meteorological station located in renewable energy development center of Algiers) were divided in to two different subsets as follows training and testing subsets. The training subset was selected in a way that covers all the ranges of the experimental data and operating conditions. Then, the accuracy of the proposed ANN model was evaluated through a test data set not used in the training stage. The optimal configuration of the proposed model was obtained based on the error analysis including Mean Absolute Percentage Error Percent (MAPE %) and the appropriate (close to one) correlation coefficient (R) of test data set. The obtained results show that the optimum neural network architecture was able to predict the GSRT with an acceptable level of accuracy of MAPE (0.48%) and R of 0.999. The low error found with the proposed model indicates that it can estimate GSRT with better accuracy than other methods available in the literature. Also, this model can be used for predicting the GSR for locations where only horizontal global solar radiation data is available, or predict missing values of GSRT due to recording problems.
Keywords :
error analysis; extrapolation; learning (artificial intelligence); neural nets; power engineering computing; prediction theory; solar power; solar radiation; ANN model; GSRT prediction; MAPE analysis; R; correlation coefficient; global solar irradiation extrapolation; global solar radiation on tilted surface; horizontal surfaces; mean absolute percentage error; optimum artificial neural network architecture; testing subset; training subset; Artificial neural networks; Data models; MATLAB; Mathematical model; Neurons; Solar radiation; Training; air temperature; artificial neural network; humidity; solar radiation; wind speed;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Environmental Friendly Energies and Applications (EFEA), 2014 3rd International Symposium on
Type :
conf
DOI :
10.1109/EFEA.2014.7059998
Filename :
7059998
Link To Document :
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