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不同社会经济驱动因素如何影响中国的碳排放?多尺度地理加权回归模型的新证据。

How do varying socio-economic driving forces affect China's carbon emissions? New evidence from a multiscale geographically weighted regression model.

机构信息

College of Public Administration, Huazhong University of Science and Technology, Wuhan, 430079, China.

School of Civil Engineering, University of South China, Hengyang, 421001, China.

出版信息

Environ Sci Pollut Res Int. 2021 Aug;28(30):41242-41254. doi: 10.1007/s11356-021-13444-1. Epub 2021 Mar 29.

Abstract

The increase in carbon emissions has had great negative impacts on the healthy developments of the human environment and economic society. However, it is unclear how specific socio-economic factors are driving carbon emissions. Based on the multiscale geographically weighted regression (MGWR) model, this paper analyzes the impact mechanism of China's carbon emission data during 2010-2017. The results show that (1) during the study period, China's carbon emissions have obvious positive correlations in the spatial distribution, and the spatial autocorrelation of carbon emissions on the time scale has a further strengthening trend. (2) Compared with the results of the geographically weighted regression (GWR) model, the MGWR model is more robust, and the results are more realistic and reliable. The impacts of energy intensity, proportion of green coverage in built-up areas, and industrial structure on provincial carbon emissions are close to the global scale, and their spatial heterogeneity is weak. Other factors have spatially heterogeneous impacts on carbon emissions with different scale effects. (3) Except for proportion of green coverage in built-up areas, the industrial structure and trade openness have insignificant impacts on carbon emissions, but other variables have significant impacts. The total population, urbanization rate, energy intensity, and energy structure have positive impacts on carbon emissions, while the GDP per capita and foreign direct investment have negative impacts on it. This study shows that the main socio-economic factors have different degrees of impacts on carbon emissions with different scale, and we can refer to it to formulate more scientific measures to reduce carbon emissions.

摘要

碳排放的增加对人类环境和经济社会的健康发展产生了巨大的负面影响。然而,目前尚不清楚特定的社会经济因素是如何推动碳排放的。本文基于多尺度地理加权回归(MGWR)模型,分析了 2010-2017 年中国碳排放数据的影响机制。结果表明:(1)在研究期间,中国碳排放的空间分布具有明显的正相关性,且碳排放在时间尺度上的空间自相关趋势进一步增强。(2)与地理加权回归(GWR)模型的结果相比,MGWR 模型更稳健,结果更真实可靠。能源强度、建成区绿地率和产业结构对省级碳排放的影响接近全球尺度,其空间异质性较弱。其他因素对碳排放的影响具有空间异质性,且具有不同的尺度效应。(3)除建成区绿地率外,产业结构和贸易开放度对碳排放的影响不显著,而其他变量对碳排放的影响显著。总人口、城镇化率、能源强度和能源结构对碳排放有正向影响,而人均 GDP 和外商直接投资对碳排放有负向影响。本研究表明,主要社会经济因素对碳排放的影响具有不同的尺度,我们可以据此制定更科学的减排措施。

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