Energies, Vol. 18, Pages 5932: Research on Monthly Energy Consumption Intensity Prediction and Climate Correlation of Public Institutions Based on Machine Learning

Energies, Vol. 18, Pages 5932: Research on Monthly Energy Consumption Intensity Prediction and Climate Correlation of Public Institutions Based on Machine Learning

Energies doi: 10.3390/en18225932

Authors:
Zhiming Gao
Miao Wang
Cheng Chen
Xuan Zhou
Wanchun Sun
Junwei Yan

Energy consumption forecasting offers a foundation for governmental agencies to establish energy consumption benchmarks for public institutions. Meanwhile, correlation analysis of institutional energy use provides clear guidance for building energy-efficient retrofits. This study employed five machine learning models to train and predict monthly energy consumption intensity data from 2020 to 2022 for three types of public institutions in China’s eastern coastal regions. A novel ensemble model was proposed and applied for energy consumption prediction. Additionally, the SHAP model was utilized to analyze the correlation between influencing factors and energy consumption data. Finally, the relationship between climatic factors and monthly energy consumption intensity was investigated. Results indicate that the ensemble model achieves higher predictive accuracy compared to other models, with regression metrics on the training set generally exceeding 0.9. Although XGBoost also demonstrated strong performance, it was less stable than the ensemble model. Energy intensity across different building types exhibited strong correlations with the number of energy users, floor area, electricity use, and water consumption. Linear analysis of temperature and energy consumption intensity revealed a directional linear relationship between the two for both medical and administrative buildings.

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