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  • 한국과학기술정보연구원(KISTI) 서울분원 대회의실(별관 3층)
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  • E-ISSN 3022-5388

회귀 모델을 활용한 철강 기업의 에너지 소비 예측

Forecasting Energy Consumption of Steel Industry Using Regression Model

한국인공지능학회지 / Journal of Korean Artificial Intelligence Association, (E)3022-5388
2023, v.1 no.2, pp.21-25
https://doi.org/10.24225/jkaia.2023.1.2.21
강성호(Sung-Ho KANG) (을지대학교)
김현기(Hyun-Ki KIM) (신남정보통)
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Abstract

The purpose of this study was to compare the performance using multiple regression models to predict the energy consumption of steel industry. Specific independent variables were selected in consideration of correlation among various attributes such as CO2 concentration, NSM, Week Status, Day of week, and Load Type, and preprocessing was performed to solve the multicollinearity problem. In data preprocessing, we evaluated linear and nonlinear relationships between each attribute through correlation analysis. In particular, we decided to select variables with high correlation and include appropriate variables in the final model to prevent multicollinearity problems. Among the many regression models learned, Boosted Decision Tree Regression showed the best predictive performance. Ensemble learning in this model was able to effectively learn complex patterns while preventing overfitting by combining multiple decision trees. Consequently, these predictive models are expected to provide important information for improving energy efficiency and management decision-making at steel industry. In the future, we plan to improve the performance of the model by collecting more data and extending variables, and the application of the model considering interactions with external factors will also be considered.

keywords
Machine Learning, Energy Consumption Prediction, Regression Models, Correlation Analysis


투고일Submission Date
2023-10-30
수정일Revised Date
2023-11-16
게재확정일Accepted Date
2023-12-30
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