Correlation analysis of energy consumption, carbon emissions and economic growth

Q2 Energy Energy Informatics Pub Date : 2024-06-12 DOI:10.1186/s42162-024-00349-9
Xiaofei Wang
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Abstract

In today's highly advanced industrialised and modernised world, China's economy is still growing, and its demand for energy is increasing daily. It is crucial to examine the connection between energy consumption, carbon emissions, and economic growth in order to promote economic growth based on energy conservation and emission reduction. Using Dezhou City in Shandong Province as an example, the study builds a VAR model of carbon emission, energy consumption, and economic growth in Dezhou City based on simplified macroeconomic sub-models, energy sub-models, and environmental sub-models. It then determines the correlation and influence mechanism between the three using tests like ADF unit root and Granger causality. The pertinent elements affecting Dezhou's carbon emissions were then investigated using grey correlation analysis. Finally, based on the study's findings, policy suggestions are made regarding energy use, carbon emissions, and economic expansion. It is necessary not only to restrain high-energy consumption industries and fundamentally optimize the energy consumption structure, but also to find new economic growth points and improve economic growth channels, so as to optimize the industrial structure. In this process, increasing the proportion of the tertiary industry is a key measure. In addition, the government needs to advocate the citizens to adopt a low-carbon lifestyle, and the concept of low-carbon environmental protection will be deeply rooted in the hearts of the people. This study will provide suggestions and theoretical guidance for China's energy consumption and carbon emissions, and help achieve high-quality growth of China and even the world economy.

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能源消耗、碳排放和经济增长的相关性分析
在工业化和现代化高度发达的今天,中国的经济仍在不断增长,对能源的需求也与日俱增。为了在节能减排的基础上促进经济增长,研究能源消耗、碳排放和经济增长之间的联系至关重要。本研究以山东省德州市为例,基于简化的宏观经济子模型、能源子模型和环境子模型,建立了德州市碳排放、能源消耗和经济增长的 VAR 模型。然后利用 ADF 单位根和格兰杰因果关系等检验方法确定三者之间的相关性和影响机制。然后,利用灰色关联分析对影响德州市碳排放的相关因素进行研究。最后,根据研究结果,提出了有关能源利用、碳排放和经济扩张的政策建议。既要抑制高耗能产业,从根本上优化能源消费结构,又要寻找新的经济增长点,完善经济增长渠道,从而优化产业结构。在这一过程中,提高第三产业比重是关键措施。此外,政府还需倡导国民采取低碳的生活方式,让低碳环保的理念深入人心。本研究将为中国的能源消耗和碳排放提供建议和理论指导,有助于实现中国乃至世界经济的高质量增长。
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来源期刊
Energy Informatics
Energy Informatics Computer Science-Computer Networks and Communications
CiteScore
5.50
自引率
0.00%
发文量
34
审稿时长
5 weeks
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