Harvesting Solar Energy: Prediction of Daily Global Horizontal Irradiance Using Artificial Neural Networks and Assessment of Electrical Energy of Photovoltaic at North Eastern Ethiopia
Tegenu A. Woldegiyorgis,
Abera D. Assamnew,
Gezahegn A. Desalegn
et al.
Abstract:The difficulty and high price of measuring devices make the utilization of solar energy impractical, particularly in developing countries like Ethiopia. Because of its variability and nonlinear characteristics, it needs accurate prediction techniques in a specific location. Thus, the objectives of this article were: (i) assessing daily global horizontal irradiance using network types‐activation functions of artificial neural network (ANN); and (ii) evaluating the daily energy delivered to and available on phot… Show more
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