TY - GEN
T1 - Electricity Load Prediction Using Machine Learning
AU - Gaboitaolelwe, Jwaone
AU - Zungeru, Adamu Murtala
AU - Yahya, Abid
AU - Lebekwe, Casper K.
N1 - Publisher Copyright:
© 2022 IEEE.
PY - 2022
Y1 - 2022
N2 - The prediction of household or building electricity load energy consumption is a problem that is being tackled and many solutions such as statistical, machine learning and physical modes have been developed to better improve prediction accuracy. Electricity consumption predictions play an important role for both consumers (end users) and producers of electricity. The Electric utility industry uses electric load predictions to assist in electric power supply and load balancing, hence ensuring that the electricity provided reaches its customers, while meeting the standards of the quality set. For consumers, understanding and prediction of their electricity consumption offer consumers the capability to plan and manage their electricity expenses, even more so for off-grid systems where power cuts due to in availability of or insufficient energy supply lead to disruptions of planned activities and supplement with other energy sources is not possible or costly to do so. Using the dataset of an individual household electricity consumption, this article analyses the dataset and explores the application of statistical and machine learning methods to develop regression models for electric load energy consumption prediction. The study further compares the accuracy of the different regression model designs. The developed load prediction models are designed to perform electric load consumption prediction on 24h ahead. Results of the study show low prediction accuracy in all of the models. This is evident in the high MAPE scores close to 100%, which indicate that the prediction error of the model is large, furthermore, low R^2 scores close to 0 or below, of which indicate that the prediction models provide little explanation of the variation in the target variable, hence resulting in low accuracy.
AB - The prediction of household or building electricity load energy consumption is a problem that is being tackled and many solutions such as statistical, machine learning and physical modes have been developed to better improve prediction accuracy. Electricity consumption predictions play an important role for both consumers (end users) and producers of electricity. The Electric utility industry uses electric load predictions to assist in electric power supply and load balancing, hence ensuring that the electricity provided reaches its customers, while meeting the standards of the quality set. For consumers, understanding and prediction of their electricity consumption offer consumers the capability to plan and manage their electricity expenses, even more so for off-grid systems where power cuts due to in availability of or insufficient energy supply lead to disruptions of planned activities and supplement with other energy sources is not possible or costly to do so. Using the dataset of an individual household electricity consumption, this article analyses the dataset and explores the application of statistical and machine learning methods to develop regression models for electric load energy consumption prediction. The study further compares the accuracy of the different regression model designs. The developed load prediction models are designed to perform electric load consumption prediction on 24h ahead. Results of the study show low prediction accuracy in all of the models. This is evident in the high MAPE scores close to 100%, which indicate that the prediction error of the model is large, furthermore, low R^2 scores close to 0 or below, of which indicate that the prediction models provide little explanation of the variation in the target variable, hence resulting in low accuracy.
UR - http://www.scopus.com/inward/record.url?scp=85146628812&partnerID=8YFLogxK
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U2 - 10.1109/SmartNets55823.2022.9993990
DO - 10.1109/SmartNets55823.2022.9993990
M3 - Conference contribution
AN - SCOPUS:85146628812
T3 - 2022 International Conference on Smart Applications, Communications and Networking, SmartNets 2022
BT - 2022 International Conference on Smart Applications, Communications and Networking, SmartNets 2022
PB - Institute of Electrical and Electronics Engineers Inc.
T2 - 2022 International Conference on Smart Applications, Communications and Networking, SmartNets 2022
Y2 - 29 November 2022 through 1 December 2022
ER -