1Laboratoire des Matériaux et Environnement (LA.M.E.), Unité de Formation et de Recherche en Sciences Exactes et Appliquée
2(UFR/SEA), Université Pr KI-ZERBO, Ouagadougou, Burkina Faso
3Laboratoire de Sciences et Technologies (LaST), Unité de Formation et de Recherche en Sciences et Techniques (UFR/ST), Université Thomas SANKARA, Ouagadougou, Burkina Faso
International Journal of Physics.
2024,
Vol. 12 No. 2, 83-88
DOI: 10.12691/ijp-12-2-4
Copyright © 2024 Science and Education PublishingCite this paper: Toussaint Tilado Guingane, Mouhamadou Falilou Ndiaye, Sosthène Tassembedo, Éric Korsaga, Dominique Bonkoungou, Zacharie Koalaga, François Zougmore. Choice of the Best Regression Model for Estimating the Global Solar Radiation Component in the City of Ouagadougou in Burkina-Faso.
International Journal of Physics. 2024; 12(2):83-88. doi: 10.12691/ijp-12-2-4.
Correspondence to: Toussaint Tilado Guingane, Laboratoire des Matériaux et Environnement (LA.M.E.), Unité de Formation et de Recherche en Sciences Exactes et Appliquée. Email:
tilado88@yahoo.frAbstract
The aim of the study was to identify the best-performing regression model for estimating the solar radiation component in Ouagadougou, Burkina Faso, a region characterised by high levels of sunshine. Of the four models evaluated, the Bristow Campbell model emerged as the optimal choice, outperforming the others in terms of accuracy. The importance of this research lies in the need to select a regression model adapted to the specific climatic conditions of the region, thus contributing to more accurate energy planning and sustainable use of solar energy. The evaluation of the models was based on metrics such as RMSE, MBE, t-statistic, R2, and the d metric, reinforced by detailed graphical visualisations and correlations between the models and real data. The results clearly demonstrated the performance of the Bristow Campbell model, underlining its reliability and efficiency in estimating global solar radiation. This conclusion is supported by an in-depth analysis of the metrics and graphs, providing valuable insights for researchers, energy planners and policy makers.
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