Title of article :
Estimation of solar radiation components incident on Helwan site using neural networks
Author/Authors :
Hamdy K. Elminir، نويسنده , , *، نويسنده , , Faiz F. Areed b، نويسنده , , Tarek S. Elsayed a، نويسنده ,
Issue Information :
ماهنامه با شماره پیاپی سال 2005
Pages :
10
From page :
270
To page :
279
Abstract :
Field testing carried out for solar energy applications is costly, time consuming and depends heavily on prevailing weather conditions. Adequate security and weather protection must be provided at the test site. Measurements may also suffer from delays that can be caused by system failures and bad weather. To overcome these problems the need for accurate model becomes evermore important. To achieve such prediction task, an artificial neural network, ANN, model is regarded as a cost-effective technique superior to traditional statistical methods. In this paper, Levenberg optimization function is adopted to predict insolation data in different spectral bands for Helwan (Egypt) monitoring station. The predicted values were then compared with the actual values and presented in terms of usual statistics. The results hint that, the ANN model predicted infrared, ultraviolet, and global insolation with a good accuracy of approximately 95%, 93% and 96%, respectively. In addition, ANN model was tested to predict the same components for Aswan over an 11 month period. The predicted values of the ANN model compared to the actual values for Aswan produced an accuracy of 95%, 91% and 92%, respectively. Data for Aswan were not included as a part of ANN training set. Hence, these results demonstrate the generalization capability of this approach over unseen data and its ability to produce accurate estimates. 2004 Elsevier Ltd. All rights reserved
Keywords :
Infrared solar radiation , Artificial neural network , Regression model , Ultraviolet solar radiation , Global solar radiation , Meteorological parameters
Journal title :
Solar Energy
Serial Year :
2005
Journal title :
Solar Energy
Record number :
939519
Link To Document :
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