Hourly photovoltaics power output prediction for Malaysia using support vector regression
Reliable solar energy forecasting enables grid operators to manage the grid better as PV penetration level increases. This research explores the use of support vector regression to forecast hourly power output from a grid-connected PV system in Malaysia. Data is obtained from a grid-connected PV sys...
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my.utm.614582017-08-07T00:36:54Z http://eprints.utm.my/id/eprint/61458/ Hourly photovoltaics power output prediction for Malaysia using support vector regression Baharin, Kyairul Azmi Abdul Rahman, Hasimah Hassan, Mohammad Yusri Chin, Kim Gan TJ Mechanical engineering and machinery Reliable solar energy forecasting enables grid operators to manage the grid better as PV penetration level increases. This research explores the use of support vector regression to forecast hourly power output from a grid-connected PV system in Malaysia. Data is obtained from a grid-connected PV system that is equipped with a weather monitoring station. Three parameters are used as input to the forecast model; global irradiance, tilted irradiance and ambient temperature. Results were compared against a persistence model. The SVR model manages to forecast hourly power production with satisfactory accuracy. 2015 Conference or Workshop Item PeerReviewed Baharin, Kyairul Azmi and Abdul Rahman, Hasimah and Hassan, Mohammad Yusri and Chin, Kim Gan (2015) Hourly photovoltaics power output prediction for Malaysia using support vector regression. In: 2015 9th International Power Engineering and Optimization Conference, 18-19 Mar, 2015, Melaka, Malaysia. https://eventegg.com/peoco-2015/ |
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TJ Mechanical engineering and machinery Baharin, Kyairul Azmi Abdul Rahman, Hasimah Hassan, Mohammad Yusri Chin, Kim Gan Hourly photovoltaics power output prediction for Malaysia using support vector regression |
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Reliable solar energy forecasting enables grid operators to manage the grid better as PV penetration level increases. This research explores the use of support vector regression to forecast hourly power output from a grid-connected PV system in Malaysia. Data is obtained from a grid-connected PV system that is equipped with a weather monitoring station. Three parameters are used as input to the forecast model; global irradiance, tilted irradiance and ambient temperature. Results were compared against a persistence model. The SVR model manages to forecast hourly power production with satisfactory accuracy. |
format |
Conference or Workshop Item |
author |
Baharin, Kyairul Azmi Abdul Rahman, Hasimah Hassan, Mohammad Yusri Chin, Kim Gan |
author_facet |
Baharin, Kyairul Azmi Abdul Rahman, Hasimah Hassan, Mohammad Yusri Chin, Kim Gan |
author_sort |
Baharin, Kyairul Azmi |
title |
Hourly photovoltaics power output prediction for Malaysia using support vector regression |
title_short |
Hourly photovoltaics power output prediction for Malaysia using support vector regression |
title_full |
Hourly photovoltaics power output prediction for Malaysia using support vector regression |
title_fullStr |
Hourly photovoltaics power output prediction for Malaysia using support vector regression |
title_full_unstemmed |
Hourly photovoltaics power output prediction for Malaysia using support vector regression |
title_sort |
hourly photovoltaics power output prediction for malaysia using support vector regression |
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2015 |
url |
http://eprints.utm.my/id/eprint/61458/ https://eventegg.com/peoco-2015/ |
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1643655172240441344 |