Zaghdoudi Taha, Tissaoui Kais, Hakimi Abdelaziz, Ben Amor Lamia
Management Information Systems Department, Applied College, University of Ha'il, PO Box 2440, Hail City, Saudi Arabia.
LR-LEFA, IHEC Carthage, University of Carthage, Carthage, Tunisia.
Ann Oper Res. 2023 Jan 28:1-22. doi: 10.1007/s10479-023-05181-0.
This study uses two empirical approaches to explore the asymmetric effects of oil and coal prices on renewable energy consumption (REC) in China from 1970 to 2019. As a conventional approach, we used the nonlinear autoregressive distributed lags (NARDL) model, while machine learning was used as a non-conventional approach. The empirical findings of the NARDL indicate that oil and coal price fluctuations have a significant effect on REC for both the short and long term. The results of the non-conventional approaches based on machine learning indicated that the SVM model was more efficient than the KNN model in terms of accuracy, performance, and convergence. Referring to the SVM model findings, the results show that an increase in the coal price has a higher ability to predict REC than the oil price. As a robustness check, we also find that an increase in Brent prices significantly decreases REC. The findings of this study support the view that there is a substitution effect from oil to coal before initiating the use of renewable energy in China.
本研究采用两种实证方法,探究1970年至2019年期间石油和煤炭价格对中国可再生能源消费(REC)的非对称影响。作为传统方法,我们使用了非线性自回归分布滞后(NARDL)模型,而机器学习则作为一种非传统方法。NARDL的实证结果表明,石油和煤炭价格波动在短期和长期内均对可再生能源消费有显著影响。基于机器学习的非传统方法结果表明,在准确性、性能和收敛性方面,支持向量机(SVM)模型比K近邻(KNN)模型更有效。参照支持向量机模型的结果,结果显示煤炭价格上涨比石油价格具有更高的预测可再生能源消费的能力。作为稳健性检验,我们还发现布伦特原油价格上涨会显著降低可再生能源消费。本研究结果支持以下观点:在中国开始使用可再生能源之前,存在从石油到煤炭的替代效应。