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中国碳排放强度的多尺度变化及其影响因素。

Multi-scale variations and impact factors of carbon emission intensity in China.

机构信息

School of Geography and Ocean Science, Nanjing University, Nanjing 210023, China; Key Laboratory of Carbon Neutrality and Territory Optimization, Ministry of Natural Resources, Nanjing 210023, China.

School of Geography and Ocean Science, Nanjing University, Nanjing 210023, China; Key Laboratory of Carbon Neutrality and Territory Optimization, Ministry of Natural Resources, Nanjing 210023, China; Natural Resources Research Center, Nanjing University, Nanjing, 210023, China.

出版信息

Sci Total Environ. 2023 Jan 20;857(Pt 1):159403. doi: 10.1016/j.scitotenv.2022.159403. Epub 2022 Oct 13.

Abstract

China's carbon emissions have developed swiftly in recent decades, which will not only affect the nation's own sustainable development, but have a potentially negative impact on global climate stability. Given that socioeconomic development is susceptible to regional heterogeneity and geographic scales, a systematic exploration of spatiotemporal variations of carbon emission intensity (CEI) and their drivers across different levels is conducive to enacting more reasonable and efficient measures for emission reduction. However, there is still a lack of comprehensive analysis of these issues. In this paper, we attempted to quantify and compare the spatiotemporal evolution and spatial spillover effects of impact factors on CEI from nighttime light imagery and socioeconomic data at two China's administrative levels by utilizing the variation coefficient, spatial autocorrelation model and spatial econometric methods. The results showed that the spatiotemporal variations of CEI were greater at the prefecture level compared to the provincial level during 2000-2017. There were significant positive spatial autocorrelation of CEI at two administrative levels, and self-reinforcing agglomeration was more substantial at the prefectural level than that provincial level. While the local spatial clustering of CEI of each administrative level altered with scale dependence, the binary spatial structure (High-High and Low-Low) of CEI remained relatively steady in China. Various driver factors not only had direct effects on local CEI, but had spatial spillover effects on neighboring areas. Our findings illustrate that China's CEI is sensitive to the space-time hierarchy of multi-mechanisms, and suggest that "proceed in the light of local conditions" strategies can assist the Chinese government for CEI mitigation.

摘要

中国的碳排放近几十年来迅速发展,这不仅将影响国家自身的可持续发展,而且可能对全球气候稳定产生负面影响。鉴于社会经济发展容易受到区域异质性和地理尺度的影响,系统地探索碳排放强度(CEI)在不同层面上的时空变化及其驱动因素,有利于制定更合理、更有效的减排措施。然而,目前仍然缺乏对这些问题的全面分析。本文利用变异系数、空间自相关模型和空间计量经济学方法,从夜间灯光图像和社会经济数据两个层面,尝试量化和比较了 2000-2017 年中国两个行政级别上的 CEI 及其影响因素的时空演变和空间溢出效应。结果表明,2000-2017 年,中国 CEI 的时空变化在市级层面大于省级层面。两个行政级别上 CEI 均存在显著的正空间自相关,市级层面的自我强化集聚程度高于省级层面。尽管各行政级别上 CEI 的局部空间聚类随尺度依赖性而变化,但 CEI 的二元空间结构(高高和低低)在中国仍然相对稳定。各种驱动因素不仅对本地 CEI 具有直接影响,而且对相邻地区也具有空间溢出效应。我们的研究结果表明,中国的 CEI 对多机制的时空层次非常敏感,并建议“因地制宜”的策略可以帮助中国政府实现 CEI 减排。

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