LAPSE:2023.16636
Published Article

LAPSE:2023.16636
Residential Short-Term Load Forecasting during Atypical Consumption Behavior
March 3, 2023
Abstract
Short-term load forecasting (STLF) is a fundamental tool for power networks’ proper functionality. As large consumers need to provide their own STLF, the residential consumers are the ones that need to be monitored and forecasted by the power network. There is a huge bibliography on all types of residential load forecast in which researchers have struggled to reach smaller forecasting errors. Regarding atypical consumption, we could see few titles before the coronavirus pandemic (COVID-19) restrictions, and afterwards all titles referred to the case of COVID-19. The purpose of this study was to identify, among the most used STLF methods—linear regression (LR), autoregressive integrated moving average (ARIMA) and artificial neural network (ANN)—the one that had the best response in atypical consumption behavior and to state the best action to be taken during atypical consumption behavior on the residential side. The original contribution of this paper regards the forecasting of loads that do not have reference historic data. As the most recent available scenario, we evaluated our forecast with respect to the database of consumption behavior altered by different COVID-19 pandemic restrictions and the cause and effect of the factors influencing residential consumption, both in urban and rural areas. To estimate and validate the results of the forecasts, multiyear hourly residential consumption databases were used. The main findings were related to the huge forecasting errors that were generated, three times higher, if the forecasting algorithm was not set up for atypical consumption. Among the forecasting algorithms deployed, the best results were generated by ANN, followed by ARIMA and LR. We concluded that the forecasting methods deployed retained their hierarchy and accuracy in forecasting error during atypical consumer behavior, similar to forecasting in normal conditions, if a trigger/alarm mechanism was in place and there was sufficient time to adapt/deploy the forecasting algorithm. All results are meant to be used as best practices during power load uncertainty and atypical consumption behavior.
Short-term load forecasting (STLF) is a fundamental tool for power networks’ proper functionality. As large consumers need to provide their own STLF, the residential consumers are the ones that need to be monitored and forecasted by the power network. There is a huge bibliography on all types of residential load forecast in which researchers have struggled to reach smaller forecasting errors. Regarding atypical consumption, we could see few titles before the coronavirus pandemic (COVID-19) restrictions, and afterwards all titles referred to the case of COVID-19. The purpose of this study was to identify, among the most used STLF methods—linear regression (LR), autoregressive integrated moving average (ARIMA) and artificial neural network (ANN)—the one that had the best response in atypical consumption behavior and to state the best action to be taken during atypical consumption behavior on the residential side. The original contribution of this paper regards the forecasting of loads that do not have reference historic data. As the most recent available scenario, we evaluated our forecast with respect to the database of consumption behavior altered by different COVID-19 pandemic restrictions and the cause and effect of the factors influencing residential consumption, both in urban and rural areas. To estimate and validate the results of the forecasts, multiyear hourly residential consumption databases were used. The main findings were related to the huge forecasting errors that were generated, three times higher, if the forecasting algorithm was not set up for atypical consumption. Among the forecasting algorithms deployed, the best results were generated by ANN, followed by ARIMA and LR. We concluded that the forecasting methods deployed retained their hierarchy and accuracy in forecasting error during atypical consumer behavior, similar to forecasting in normal conditions, if a trigger/alarm mechanism was in place and there was sufficient time to adapt/deploy the forecasting algorithm. All results are meant to be used as best practices during power load uncertainty and atypical consumption behavior.
Record ID
Keywords
atypical consumption behavior, COVID 19, load profile, power load uncertainty, short term load forecast
Suggested Citation
Hora C, Dan FC, Bendea G, Secui C. Residential Short-Term Load Forecasting during Atypical Consumption Behavior. (2023). LAPSE:2023.16636
Author Affiliations
Hora C: Faculty of Energy Engineering and Industrial Management (ROMANIA), University of Oradea, 410087 Oradea, Romania [ORCID]
Dan FC: Faculty of Energy Engineering and Industrial Management (ROMANIA), University of Oradea, 410087 Oradea, Romania [ORCID]
Bendea G: Faculty of Energy Engineering and Industrial Management (ROMANIA), University of Oradea, 410087 Oradea, Romania
Secui C: Faculty of Energy Engineering and Industrial Management (ROMANIA), University of Oradea, 410087 Oradea, Romania
Dan FC: Faculty of Energy Engineering and Industrial Management (ROMANIA), University of Oradea, 410087 Oradea, Romania [ORCID]
Bendea G: Faculty of Energy Engineering and Industrial Management (ROMANIA), University of Oradea, 410087 Oradea, Romania
Secui C: Faculty of Energy Engineering and Industrial Management (ROMANIA), University of Oradea, 410087 Oradea, Romania
Journal Name
Energies
Volume
15
Issue
1
First Page
291
Year
2022
Publication Date
2022-01-01
ISSN
1996-1073
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Original Submission
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PII: en15010291, Publication Type: Journal Article
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LAPSE:2023.16636
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https://doi.org/10.3390/en15010291
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