Novel Approach for Estimating Monthly Sunshine Duration Using Artificial Neural Networks: A Case Study

This work deals with the potential application of artificial neural networks to model sunshine duration in three cities in Algeria using ten input parameters. These latter are: year and month, longitude, latitude and altitude of the site, minimum, mean and maximum air temperature, wind speed and rel...

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Bibliographic Details
Published inJournal of Sustainable Development of Energy, Water and Environment Systems Vol. 6; no. 3; pp. 405 - 414
Main Authors Laidi, Maamar, Hanini, Salah, El Hadj Abdallah, Abdallah
Format Journal Article Paper
LanguageEnglish
Published Međunarodni centar za održivi razvoj, energetike, voda i okoliša 01.09.2018
SDEWES Centre
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Summary:This work deals with the potential application of artificial neural networks to model sunshine duration in three cities in Algeria using ten input parameters. These latter are: year and month, longitude, latitude and altitude of the site, minimum, mean and maximum air temperature, wind speed and relative humidity. They were selected according to their availability in meteorological stations and based on the fact that they are considered as the most used parameters by researchers to model sunshine duration using artificial neural networks. Several network architectures were tested to choose the most accurate and simple scheme. The optimum number of layers and neurons was determined by trial and error method. The optimized network was obtained using Levenberg-Marquardt back-propagation algorithm, one hidden layer including 25 neurons with Tan-sigmoid transfer function. The model developed in this study has the ability to estimate sunshine duration with a mean absolute percentage error value equals to 2.015%, a percentage root mean square error of 2.741% and a determination coefficient of 0.9993 during test stage.
Bibliography:206022
ISSN:1848-9257
1848-9257
DOI:10.13044/j.sdewes.d6.0226