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Energy Consumption Prediction in Iran: A Hybrid Machine Learning and Genetic Algorithm Method with Sustainable Development Considerations

Author

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  • Fatemi Bushehri, Seyyed Mohammad Mehdi
  • Dehghan Khavari, Saeed
  • Mirjalili, Seyed Hossein
  • Babaei Meybodi, Hamid
  • Sardari Zarchi, Mohsen

Abstract

Ensuring energy security is a major concern of policymakers and economic planners. This objective could be achieved by managing the energy supply and its demand. The latter has received less attention, especially in developing countries. Neglect of energy consumption and its accurate forecasting leads to potential outages and also unsustainable development. Nonlinear methods that are consistent with the nature of energy consumption have led to better results. Therefore, in the present study, both aspects of sustainable development in the determinants of energy demand and the nonlinear hybrid method have been used. We introduced a model based on sustainable development indicators to forecast energy consumption in Iran in which the relevant indicators are specified by the determination phase. To forecast energy consumption, we provided a new standard dataset for energy consumption in Iran (IREC) based on the data extracted from the World Bank and Ministry of Energy dataset in Iran. The highlight of this research is that it provided the most efficient features from the dataset using the genetic algorithm and five forecasting approaches based on machine learning methods. The algorithm was able to select 14 features as the most effective indicators in predicting energy consumption from all the 104 ones in the IREC with 500 repetitions. The empirical results indicated that the model can provide important indicators for energy consumption forecasting. The experiment result of the model using the GA-Based feature selection indicates that the hybrid model has had better results and GA-SVM and GA-MLP have the best result respectively.

Suggested Citation

  • Fatemi Bushehri, Seyyed Mohammad Mehdi & Dehghan Khavari, Saeed & Mirjalili, Seyed Hossein & Babaei Meybodi, Hamid & Sardari Zarchi, Mohsen, 2022. "Energy Consumption Prediction in Iran: A Hybrid Machine Learning and Genetic Algorithm Method with Sustainable Development Considerations," EconStor Open Access Articles and Book Chapters, ZBW - Leibniz Information Centre for Economics, vol. 6(2).
  • Handle: RePEc:zbw:espost:251823
    DOI: 10.22097/EEER.2022.307251.1224
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    References listed on IDEAS

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    1. Pino-Mejías, Rafael & Pérez-Fargallo, Alexis & Rubio-Bellido, Carlos & Pulido-Arcas, Jesús A., 2017. "Comparison of linear regression and artificial neural networks models to predict heating and cooling energy demand, energy consumption and CO2 emissions," Energy, Elsevier, vol. 118(C), pages 24-36.
    2. Deb, Chirag & Zhang, Fan & Yang, Junjing & Lee, Siew Eang & Shah, Kwok Wei, 2017. "A review on time series forecasting techniques for building energy consumption," Renewable and Sustainable Energy Reviews, Elsevier, vol. 74(C), pages 902-924.
    3. Xiao, Jin & Li, Yuxi & Xie, Ling & Liu, Dunhu & Huang, Jing, 2018. "A hybrid model based on selective ensemble for energy consumption forecasting in China," Energy, Elsevier, vol. 159(C), pages 534-546.
    4. Hu, Huanling & Wang, Lin & Peng, Lu & Zeng, Yu-Rong, 2020. "Effective energy consumption forecasting using enhanced bagged echo state network," Energy, Elsevier, vol. 193(C).
    5. Somu, Nivethitha & M R, Gauthama Raman & Ramamritham, Krithi, 2020. "A hybrid model for building energy consumption forecasting using long short term memory networks," Applied Energy, Elsevier, vol. 261(C).
    6. Sabri Boughorbel & Fethi Jarray & Mohammed El-Anbari, 2017. "Optimal classifier for imbalanced data using Matthews Correlation Coefficient metric," PLOS ONE, Public Library of Science, vol. 12(6), pages 1-17, June.
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