Optimizing Energy Consumption Efficiency in Global Industrial Systems Using the Random Forest Algorithm

Authors

  • Abdelsamiea Tahsin Abdelsamiea Department of Economics, College of Business, Imam Mohammad Ibn Saud Islamic University, Riyadh, Saudi Arabia
  • Mohamed F. Abd El-Aal Department of Economics, Faculty of Commerce, Arish University, North Sinai, Egypt

DOI:

https://doi.org/10.32479/ijeep.18796

Keywords:

Machine Learning, Random Forest, Energy Efficiency, Industrial CO2 Emissions, Industrial Energy Consumption

Abstract

This study employs the Random Forest method, a type of machine learning, to investigate strategies for improving industrial energy use. The algorithm accurately estimated energy consumption efficiency in this industry, with results indicating (MSE: 0.001, MAPE: 0.049, R2: 96.4). The findings highlight that industrial value added significantly impacts energy consumption efficiency, representing 60.2%, while industrial CO2 emissions account for 39.8%. The study uncovered a significant negative correlation between Energy consumption efficiency in the industrial sector and all industrial value added, including industrial CO2 emissions. Energy consumption efficiency in the industrial sector diminishes as industrial growth accelerates, resulting in higher emissions. Economic growth frequently leads to increased energy consumption and environmental damage. The conclusion is that the industrial sector does not use energy efficiently; the expansion of this sector will lead to inefficiency in energy use on the one hand and, on the other, an increase in emissions, which negatively affects energy use efficiency.

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Published

2025-04-21

How to Cite

Abdelsamiea, A. T., & El-Aal, M. F. A. (2025). Optimizing Energy Consumption Efficiency in Global Industrial Systems Using the Random Forest Algorithm. International Journal of Energy Economics and Policy, 15(3), 239–244. https://doi.org/10.32479/ijeep.18796

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Section

Articles