LAPSE:2023.12285
Published Article

LAPSE:2023.12285
Energy Consumption Forecasting in Korea Using Machine Learning Algorithms
February 28, 2023
Abstract
In predicting energy consumption, classic econometric and statistical models are used to forecast energy consumption. These models may have limitations in an increasingly fast-changing energy market, which requires big data analysis of energy consumption patterns and relevant variables using complex mathematical tools. In current literature, there are minimal comparison studies reviewing machine learning algorithms to predict energy consumption in Korea. To bridge this gap, this paper compared three different machine learning algorithms, namely the Random Forest (RF) model, XGBoost (XGB) model, and Long Short-Term Memory (LSTM) model. These algorithms were applied in Period 1 (prior to the onset of the COVID-19 pandemic) and Period 2 (after the onset of the COVID-19 pandemic). Period 1 was characterized by an upward trend in energy consumption, while Period 2 showed a reduction in energy consumption. LSTM performed best in its prediction power specifically in Period 1, and RF outperformed the other models in Period 2. Findings, therefore, suggested the applicability of machine learning to forecast energy consumption and also demonstrated that traditional econometric approaches may outperform machine learning when there is less unknown irregularity in the time series, but machine learning can work better with unexpected irregular time series data.
In predicting energy consumption, classic econometric and statistical models are used to forecast energy consumption. These models may have limitations in an increasingly fast-changing energy market, which requires big data analysis of energy consumption patterns and relevant variables using complex mathematical tools. In current literature, there are minimal comparison studies reviewing machine learning algorithms to predict energy consumption in Korea. To bridge this gap, this paper compared three different machine learning algorithms, namely the Random Forest (RF) model, XGBoost (XGB) model, and Long Short-Term Memory (LSTM) model. These algorithms were applied in Period 1 (prior to the onset of the COVID-19 pandemic) and Period 2 (after the onset of the COVID-19 pandemic). Period 1 was characterized by an upward trend in energy consumption, while Period 2 showed a reduction in energy consumption. LSTM performed best in its prediction power specifically in Period 1, and RF outperformed the other models in Period 2. Findings, therefore, suggested the applicability of machine learning to forecast energy consumption and also demonstrated that traditional econometric approaches may outperform machine learning when there is less unknown irregularity in the time series, but machine learning can work better with unexpected irregular time series data.
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Keywords
Artificial Intelligence, deep learning, energy consumption, forecasting, Korea, LSTM, neural network, random forest, Total Energy Supply, XGBoost
Suggested Citation
Shin SY, Woo HG. Energy Consumption Forecasting in Korea Using Machine Learning Algorithms. (2023). LAPSE:2023.12285
Author Affiliations
Shin SY: Korea Energy Economics Institute, 405-11, Jongga-ro, Jung-gu, Ulsan 44543, Korea
Woo HG: Ulsan National Institute of Science and Technology, Ulsan 44543, Korea
Woo HG: Ulsan National Institute of Science and Technology, Ulsan 44543, Korea
Journal Name
Energies
Volume
15
Issue
13
First Page
4880
Year
2022
Publication Date
2022-07-02
ISSN
1996-1073
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Original Submission
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PII: en15134880, Publication Type: Journal Article
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LAPSE:2023.12285
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https://doi.org/10.3390/en15134880
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Feb 28, 2023
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