Predicting global energy demand for the next decade: A time-series model using nonlinear autoregressive neural networks

被引:5
作者
Abu Al-Haija, Qasem [1 ]
Mohamed, Omar [2 ]
Abu Elhaija, Wejdan [2 ]
机构
[1] Princess Sumaya Univ Technol PSUT, Dept Cybersecur, Amman, Jordan
[2] Princess Sumaya Univ Technol PSUT, Dept Elect Engn, Amman, Jordan
关键词
Energy demand; neural networks; short-term prediction; nonlinear autoregressive neural networks; time series regression; time series forecasting; coefficient of determination (R-value);
D O I
10.1177/01445987231181919
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 has been an indispensable research target for academics, which has led to creative solutions for energy utilities in terms of power system design, control, and planning. The usefulness of energy demand forecasting is confined to the power engineering industry but globally exceeds such outcomes to contribute to the environment and health sectors. Despite the large number of research projects published on this topic, the challenge of energy demand forecasting still exists, especially with the developments in modeling concepts via artificial intelligence, which motivates more attractive solutions for the variables involved in energy demand forecasting. Mathematical correlation or extrapolation-like methods cannot be effective in all situations; however, when a time series neural network is presented, most statistical, empirical, and theoretical problems can be easily handled. This paper presents a simple and easy-to-understand method for the next decade of energy demand forecasting based on a nonlinear autoregressive (NAR) neural network. From its time series past values, NAR structurally is an optimal predictor for a future variable. A publicly available data set for global energy consumption has been used to construct the network model with sufficiently accurate results. The evidence has appeared in precisely following the exponential trend of energy consumption as well as the regressions for training, testing, and validation, which ensures the model's robustness and avoids getting involved in overfitting. The proposed model concepts and results can be easily used in undergraduate engineering education, training graduates, and future research.
引用
收藏
页码:1884 / 1898
页数:15
相关论文
共 22 条
[1]  
Al-Haija QA., 2022, 2022 INT C EL ENG CO
[2]  
Al-Haija QA., 2019, 2019 10 INT C INF CO
[3]   Improvement on a Traffic Data Generator for Networking AI Algorithm Development [J].
Alsulami, Khalil ;
Zhang, Jielun ;
Ye, Feng .
2021 IEEE GLOBAL COMMUNICATIONS CONFERENCE (GLOBECOM), 2021,
[4]   An Application of Non-Linear Autoregressive Neural Networks to Predict Energy Consumption in Public Buildings [J].
Baca Ruiz, Luis Gonzaga ;
Pegalajar Cuellar, Manuel ;
Delgado Calvo-Flores, Miguel ;
Pegalajar Jimenez, Maria Del Carmen .
ENERGIES, 2016, 9 (09)
[5]   Beyond the environmental Kuznets Curve in E7 economies: Accounting for the combined impacts of institutional quality and renewables [J].
Bekun, Festus Victor ;
Gyamfi, Bright Akwasi ;
Onifade, Stephen Taiwo ;
Agboola, Mary Oluwatoyin .
JOURNAL OF CLEANER PRODUCTION, 2021, 314
[6]  
Bekun FV., 2022, INT J ENERGY EC POLI, V12, P188, DOI [10.32479/ijeep.12652, DOI 10.32479/IJEEP.12652]
[7]   Determinants of CO2 emissions in the BRICS economies: The role of partnerships investment in energy and economic complexity [J].
Caglar, Abdullah Emre ;
Zafar, Muhammad Wasif ;
Bekun, Festus Victor ;
Mert, Mehmet .
SUSTAINABLE ENERGY TECHNOLOGIES AND ASSESSMENTS, 2022, 51
[8]  
Cavallaro F., 2013, ASSESSMENT SIMULATIO
[9]   Short-Term Energy Forecasting Framework Using an Ensemble Deep Learning Approach [J].
Ishaq, Muhammad ;
Kwon, Soonil .
IEEE ACCESS, 2021, 9 :94262-94271
[10]  
Islam M.A., 2020, Energy for Sustainable Development, P105, DOI [10.1016/B978-0-12-814645-3.00005-5, DOI 10.1016/B978-0-12-814645-3.00005-5]