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Forecasting Minute Averaged Solar Irradiance Using Machine Learning for Solar Collector Applications

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dc.contributor.advisor Jhamba, I.
dc.contributor.advisor Kirui, J. K.
dc.contributor.advisor Sigauke, C.
dc.contributor.author Nemalili, Ronewa Collen
dc.date 2023
dc.date.accessioned 2023-05-29T19:12:13Z
dc.date.available 2023-05-29T19:12:13Z
dc.date.issued 2023-05-19
dc.identifier.citation Nemalili, R. C. (2023) Forecasting Minute Averaged Solar Irradiance Using Machine Learning for Solar Collector Applications.. University of Venda. South Africa.<http://hdl.handle.net/11602/2494>.
dc.identifier.uri http://hdl.handle.net/11602/2494
dc.description MSc in e-Science en_ZA
dc.description Department of Physics
dc.description.abstract Challenges in utilising fossil fuels for generating energy call for the use of renewable energy. This study focuses on modelling and forecasting solar energy and optimum tilt angle of solar energy acceptance using historical time series data collected from one of the South African radiometric stations, USAid Venda station in Limpopo province. In the study we carried out a comparative analysis of Random Forest and Bayesian linear regression in short-term forecasting of global horizontal irradiance (GHI). To compare the predictive accuracy of the models, k-Nearest Neighbors (KNN) and Long short-term memory (LSTM) are used as benchmark models. The top two models with the best performances were then used in hourly forecasting of optimum tilt angles for harvesting solar energy. The performance measures such as MAE, MSE, and RMSE were used and the results showed RF to have better performance in forecasting GHI than other models, followed by the LSTM and the third best model was the KNN whereas the BLR was the least performing model. RF and LSTM were then used in modelling and forecasting the tilt angles of optimal solar energy acceptance and as thus, the LSTM outperformed the RF by a small margin. en_ZA
dc.description.sponsorship NRF en_ZA
dc.format.extent 1 online resource (viii, 37 leaves) : color illustrations
dc.language.iso en en_ZA
dc.rights University of Venda
dc.subject.ddc 333.79320968257
dc.subject.lcsh Solar energy -- South Africa -- Limpopo
dc.subject.lcsh Solar collectors -- South Africa -- Limpopo
dc.subject.lcsh Renewable energy -- South Africa -- Limpopo
dc.subject.lcsh Solar cells -- South Africa -- Limpopo
dc.title Forecasting Minute Averaged Solar Irradiance Using Machine Learning for Solar Collector Applications en_ZA
dc.type Dissertation en_ZA


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