Dynamic regression intervention modeling for the Malaysian daily load
Malaysia is a unique country due to having both fixed and moving holidays. These moving holidays may overlap with other fixed holidays and therefore, increase the complexity of the load forecasting activities. The errors due to holidays' effects in the load forecasting are known to be higher th...
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University of the Punjab
2023
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my.uniten.dspace-221412023-05-16T10:47:46Z Dynamic regression intervention modeling for the Malaysian daily load Razak F.A. Shitan M. Hashim A.H. Abidin I.Z. 36988285400 23568523100 24447656300 35606640500 Malaysia is a unique country due to having both fixed and moving holidays. These moving holidays may overlap with other fixed holidays and therefore, increase the complexity of the load forecasting activities. The errors due to holidays' effects in the load forecasting are known to be higher than other factors. If these effects can be estimated and removed, the behavior of the series could be better viewed. Thus, the aim of this paper is to improve the forecasting errors by using a dynamic regression model with intervention analysis. Based on the linear transfer function method, a daily load model consists of either peak or average is developed. The developed model outperformed the seasonal ARIMA model in estimating the fixed and moving holidays' effects and achieved a smaller Mean Absolute Percentage Error (MAPE) in load forecast. Final 2023-05-16T02:47:46Z 2023-05-16T02:47:46Z 2014 Article 10.18187/pjsor.v10i1.600 2-s2.0-84901489745 https://www.scopus.com/inward/record.uri?eid=2-s2.0-84901489745&doi=10.18187%2fpjsor.v10i1.600&partnerID=40&md5=d17aeba4136eea774e9b59de68ce8e1f https://irepository.uniten.edu.my/handle/123456789/22141 10 1 41 55 All Open Access, Hybrid Gold, Green University of the Punjab Scopus |
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Malaysia is a unique country due to having both fixed and moving holidays. These moving holidays may overlap with other fixed holidays and therefore, increase the complexity of the load forecasting activities. The errors due to holidays' effects in the load forecasting are known to be higher than other factors. If these effects can be estimated and removed, the behavior of the series could be better viewed. Thus, the aim of this paper is to improve the forecasting errors by using a dynamic regression model with intervention analysis. Based on the linear transfer function method, a daily load model consists of either peak or average is developed. The developed model outperformed the seasonal ARIMA model in estimating the fixed and moving holidays' effects and achieved a smaller Mean Absolute Percentage Error (MAPE) in load forecast. |
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36988285400 |
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36988285400 Razak F.A. Shitan M. Hashim A.H. Abidin I.Z. |
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Razak F.A. Shitan M. Hashim A.H. Abidin I.Z. |
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Razak F.A. Shitan M. Hashim A.H. Abidin I.Z. Dynamic regression intervention modeling for the Malaysian daily load |
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Razak F.A. |
title |
Dynamic regression intervention modeling for the Malaysian daily load |
title_short |
Dynamic regression intervention modeling for the Malaysian daily load |
title_full |
Dynamic regression intervention modeling for the Malaysian daily load |
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Dynamic regression intervention modeling for the Malaysian daily load |
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Dynamic regression intervention modeling for the Malaysian daily load |
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dynamic regression intervention modeling for the malaysian daily load |
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University of the Punjab |
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2023 |
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1806427782551437312 |