Monthly average daily solar radiation simulation in northern KwaZulu-Natal: A physical approach

Solar energy is a poorly tapped energy source in northern KwaZulu-Natal (South Africa) and many locations in the region have no available measured solar radiation data. Unfortunately, these areas are among the rural, non-commercial farming areas in South Africa that need to harness solar radiation a...

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Main Author: Betty Kibirige
Format: Article
Language:English
Published: Academy of Science of South Africa 2018-09-01
Series:South African Journal of Science
Subjects:
Online Access:https://www.sajs.co.za/article/view/4452
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author Betty Kibirige
author_facet Betty Kibirige
author_sort Betty Kibirige
collection DOAJ
description Solar energy is a poorly tapped energy source in northern KwaZulu-Natal (South Africa) and many locations in the region have no available measured solar radiation data. Unfortunately, these areas are among the rural, non-commercial farming areas in South Africa that need to harness solar radiation as an alternative energy source for their needs. These communities are mostly disadvantaged and unable to access the currently sophisticated approaches available for the prediction of such data. For this reason, a modelling tool accessible to these communities has been created using data from the South African Sugarcane Research Institute at eight stations in the region. This article presents the physical approach which can be used within readily available resources such as Microsoft Excel to develop a simulation environment that can predict monthly daily average solar radiation at locations. A preliminary model was later customised by considering the physical condition at each individual location. The validated tool provides estimations with a percentage root mean square error (%RMSE) of less than 1% for all locations except for Nkwaleni which had 1.645%. This is an extremely promising estimation process as compared to other methods that achieve estimations with %RMSE of above 10%. The simulation environment developed here is being extended to predict the performance of solar photovoltaic systems in the region. Using data from other sources, the approach is also being extended to other regions in South Africa.  Significance: • The study modifies the physical approach that is deemed complicated to something that can be accessible to many communities. • The accuracies achieved with this approach (<0.9%RMSE) in the considered region are commendable. • The approach can be extended to other regions in South Africa.
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spelling doaj.art-899aa77518de4fef93f32439804118e72022-12-21T23:41:37ZengAcademy of Science of South AfricaSouth African Journal of Science1996-74892018-09-011149/1010.17159/sajs.2018/44524452Monthly average daily solar radiation simulation in northern KwaZulu-Natal: A physical approachBetty Kibirige0Department of Physics and Engineering, University of Zululand, KwaDlangezwa, South AfricaSolar energy is a poorly tapped energy source in northern KwaZulu-Natal (South Africa) and many locations in the region have no available measured solar radiation data. Unfortunately, these areas are among the rural, non-commercial farming areas in South Africa that need to harness solar radiation as an alternative energy source for their needs. These communities are mostly disadvantaged and unable to access the currently sophisticated approaches available for the prediction of such data. For this reason, a modelling tool accessible to these communities has been created using data from the South African Sugarcane Research Institute at eight stations in the region. This article presents the physical approach which can be used within readily available resources such as Microsoft Excel to develop a simulation environment that can predict monthly daily average solar radiation at locations. A preliminary model was later customised by considering the physical condition at each individual location. The validated tool provides estimations with a percentage root mean square error (%RMSE) of less than 1% for all locations except for Nkwaleni which had 1.645%. This is an extremely promising estimation process as compared to other methods that achieve estimations with %RMSE of above 10%. The simulation environment developed here is being extended to predict the performance of solar photovoltaic systems in the region. Using data from other sources, the approach is also being extended to other regions in South Africa.  Significance: • The study modifies the physical approach that is deemed complicated to something that can be accessible to many communities. • The accuracies achieved with this approach (<0.9%RMSE) in the considered region are commendable. • The approach can be extended to other regions in South Africa.https://www.sajs.co.za/article/view/4452ZululandsimulationMicrosoft Excelmodelestimates
spellingShingle Betty Kibirige
Monthly average daily solar radiation simulation in northern KwaZulu-Natal: A physical approach
South African Journal of Science
Zululand
simulation
Microsoft Excel
model
estimates
title Monthly average daily solar radiation simulation in northern KwaZulu-Natal: A physical approach
title_full Monthly average daily solar radiation simulation in northern KwaZulu-Natal: A physical approach
title_fullStr Monthly average daily solar radiation simulation in northern KwaZulu-Natal: A physical approach
title_full_unstemmed Monthly average daily solar radiation simulation in northern KwaZulu-Natal: A physical approach
title_short Monthly average daily solar radiation simulation in northern KwaZulu-Natal: A physical approach
title_sort monthly average daily solar radiation simulation in northern kwazulu natal a physical approach
topic Zululand
simulation
Microsoft Excel
model
estimates
url https://www.sajs.co.za/article/view/4452
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