Ensemble Machine Learning Approaches for Prediction of Türkiye's Energy Demand

被引:3
作者
Kayaci codur, Merve [1 ]
机构
[1] Erzurum Tech Univ, Fac Engn & Architecture, Ind Engn Dept, TR-25200 Erzurum, Turkiye
基金
英国科研创新办公室;
关键词
energy demand; ensemble machine learning; SDGs; Turkiye; ELECTRICITY CONSUMPTION; OPTIMIZATION APPROACH; SWARM INTELLIGENCE; NEURAL-NETWORKS; TURKEY; ALGORITHM; IMPROVEMENT; REGRESSION; PROJECTION; SELECTION;
D O I
10.3390/en17010074
中图分类号
TE [石油、天然气工业]; TK [能源与动力工程];
学科分类号
0807 ; 0820 ;
摘要
Energy demand forecasting is a fundamental aspect of modern energy management. It impacts resource planning, economic stability, environmental sustainability, and energy security. This importance is making it critical for countries worldwide, particularly in cases like Turkiye, where the energy dependency ratio is notably high. The goal of this study is to propose ensemble machine learning methods such as boosting, bagging, blending, and stacking with hyperparameter tuning and k-fold cross-validation, and investigate the application of these methods for predicting Turkiye's energy demand. This study utilizes population, GDP per capita, imports, and exports as input parameters based on historical data from 1979 to 2021 in Turkiye. Eleven combinations of all predictor variables were analyzed, and the best one was selected. It was observed that a very high correlation exists among population, GDP, imports, exports, and energy demand. In the first phase, the preliminary performance was investigated of 19 different machine learning algorithms using 5-fold cross-validation, and their performance was measured using five different metrics: MSE, RMSE, MAE, R-squared, and MAPE. Secondly, ensemble models were constructed by utilizing individual machine learning algorithms, and the performance of these ensemble models was compared, both with each other and the best-performing individual machine learning algorithm. The analysis of the results revealed that placing Ridge as the meta-learner and using ET, RF, and Ridge as the base learners in the stacking ensemble model yielded the highest R-squared value, which was 0.9882, indicating its superior performance. It is anticipated that the findings of this research can be applied globally and prove valuable for energy policy planning in any country. The results obtained not only highlight the accuracy and effectiveness of the predictive model but also underscore the broader implications of this study within the framework of the United Nations' Sustainable Development Goals (SDGs).
引用
收藏
页数:25
相关论文
共 50 条
  • [1] BIMSSA: enhancing cancer prediction with salp swarm optimization and ensemble machine learning approaches
    Panda, Pinakshi
    Bisoy, Sukant Kishoro
    Panigrahi, Amrutanshu
    Pati, Abhilash
    Sahu, Bibhuprasad
    Guo, Zheshan
    Liu, Haipeng
    Jain, Prince
    FRONTIERS IN GENETICS, 2025, 15
  • [2] Prediction of natural gas demand by considering implications of energy-related policies: The case of Türkiye
    Avni, E. S. Huseyin
    Baban, Pinar
    Hamzacebi, Coskun
    ENERGY SOURCES PART B-ECONOMICS PLANNING AND POLICY, 2023, 18 (01)
  • [3] Machine learning based energy demand prediction
    Kamoona, Ammar
    Song, Hui
    Keshavarzian, Kian
    Levy, Kedem
    Jalili, Mahdi
    Wilkinson, Richardt
    Yu, Xinghuo
    McGrath, Brendan
    Meegahapola, Lasantha
    ENERGY REPORTS, 2023, 9 : 171 - 176
  • [4] Analysis and price prediction of secondhand vehicles in T?rkiye with big data and machine learning techniques
    Gulmez, Burak
    Kulluk, Sinem
    JOURNAL OF THE FACULTY OF ENGINEERING AND ARCHITECTURE OF GAZI UNIVERSITY, 2023, 38 (04): : 2279 - 2289
  • [5] Parkinson's Disease Prediction Using Machine Learning Approaches
    Gokul, S.
    Sivachitra, M.
    Vijayachitra, S.
    2013 FIFTH INTERNATIONAL CONFERENCE ON ADVANCED COMPUTING (ICOAC), 2013, : 246 - 252
  • [6] A novel energy demand prediction strategy for residential buildings based on ensemble learning
    Huang, Yao
    Yuan, Yue
    Chen, Huanxin
    Wang, Jiangyu
    Guo, Yabin
    Ahmad, Tanveer
    INNOVATIVE SOLUTIONS FOR ENERGY TRANSITIONS, 2019, 158 : 3411 - 3416
  • [7] Prediction of transportation energy demand in Turkiye using stacking ensemble models: Methodology and comparative analysis
    Hoxha, Julian
    Codur, Muhammed Yasin
    Mustafaraj, Enea
    Kanj, Hassan
    El Masri, Ali
    APPLIED ENERGY, 2023, 350
  • [8] Prediction of energy content of biomass based on hybrid machine learning ensemble algorithm
    Dodo, Usman Alhaji
    Ashigwuike, Evans Chinemezu
    Emechebea, Jonas Nwachukwu
    Abbac, Sani Isah
    ENERGY NEXUS, 2022, 8
  • [9] T?rkiye?s energy projection for 2050
    Cekinir, Selen
    Ozgener, Onder
    Ozgener, Leyla
    RENEWABLE ENERGY FOCUS, 2022, 43 : 93 - 116
  • [10] Predicting peak day and peak hour of electricity demand with ensemble machine learning
    Fu, Tao
    Zhou, Huifen
    Ma, Xu
    Hou, Z. Jason
    Wu, Di
    FRONTIERS IN ENERGY RESEARCH, 2022, 10