College of Economics and Management, Tarim University, Alar, Xinjiang, 843300, China.
College of Hydraulic and Architectural Engineering, Tarim University, Alar, Xinjiang, 843300, China.
Environ Sci Pollut Res Int. 2024 Jan;31(5):7751-7774. doi: 10.1007/s11356-023-31539-9. Epub 2024 Jan 3.
Based on the panel data of 30 provinces (municipalities and autonomous regions) in China from 2005 to 2019, this paper uses Gini coefficient decomposition and kernel density estimation to investigate the regional differences and dynamic evolution trend of rural energy carbon emission intensity in China. Then, the convergence model is used to analyze the convergence characteristics and influencing factors of carbon emission intensity. The study found the following: (1) During the observation period, the carbon emissions of coal energy and oil energy were much higher than those of gas energy. The carbon emissions of rural energy consumption experienced three stages of development, and the carbon emission intensity showed a downward trend as a whole. The spatial distribution pattern of total carbon emissions present an "adder" distribution, and the spatial agglomeration phenomenon gradually strengthens with the passage of time. (2) The Gini coefficient of China's rural energy consumption carbon emission intensity shows a trend of "Inverted N-shaped." The Gini coefficient of carbon emission intensity in the eastern and northeastern regions shows an increasing trend, while the Gini coefficient of carbon emission intensity in the western and central regions shows a downward trend. The super variable density is the main source of carbon emission intensity difference. The peak value of the main peak of the nuclear density curve of the carbon emission intensity increased significantly, the bimodal form evolved into a single peak form, and the density center moved to the left. (3) The carbon emission intensity of rural energy consumption in the whole, central, and western regions of China has the characteristic of σ convergence, while the carbon emission intensity in the eastern and northeastern regions does not have the characteristic of σ convergence. There is a significant spatial positive correlation in the carbon emission intensity, there is also a significant β convergence characteristic, the speed of conditional β convergence is significantly higher than that of absolute β convergence, and the spatial interaction will further improve the convergence speed. Industrial structure, industrial agglomeration, and energy efficiency will increase the convergence speed. In terms of sub-regions, the conditional convergence rate of carbon emission intensity in the four regions shows a decreasing trend in the northeast, central, eastern, and western regions.
基于 2005-2019 年中国 30 个省(自治区、直辖市)的面板数据,本文运用基尼系数分解和核密度估计法,研究了中国农村能源碳排放强度的区域差异和动态演变趋势。然后,利用收敛模型分析了碳排放强度的收敛特征及其影响因素。研究发现:(1)在观测期间,煤炭能源和石油能源的碳排放远远高于天然气能源。农村能源消费的碳排放经历了三个发展阶段,整体碳排放强度呈下降趋势。总碳排放量的空间分布格局呈现“阶梯”分布,随着时间的推移,空间集聚现象逐渐增强。(2)中国农村能源消费碳排放强度的基尼系数呈“倒 N 型”趋势。东部和东北地区的碳排强度基尼系数呈上升趋势,而西部地区和中部地区的碳排强度基尼系数呈下降趋势。超变密度是碳排强度差异的主要来源。碳排强度核密度曲线主峰的峰值显著增加,双峰形式演变为单峰形式,密度中心向左移动。(3)中国农村能源消费的整体、中部和西部地区的碳排放强度具有σ收敛特征,而东部和东北地区的碳排放强度不具有σ收敛特征。农村能源消费碳排放强度在全样本、中部和西部地区存在显著的空间正相关,也具有显著的β收敛特征,条件β收敛速度明显高于绝对β收敛速度,空间交互作用将进一步提高收敛速度。产业结构、产业集聚和能源效率将提高收敛速度。分区域来看,东北、中部、东部和西部地区农村能源消费碳排放强度的条件收敛速度呈递减趋势。