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中国城市碳排放强度的空间溢出效应及驱动因素探究(英文)
引用本文:王少剑,黄永源,周钰荃.中国城市碳排放强度的空间溢出效应及驱动因素探究(英文)[J].地理学报(英文版),2019(2):231-252.
作者姓名:王少剑  黄永源  周钰荃
作者单位:Guangdong Provincial Key Laboratory of Urbanization and Geo-simulation
基金项目:National Natural Science Foundation of China,No.41601151;Natural Science Foundation of Guangdong Province,No.2016A030310149;Pearl River S&T Nova Program of Guangzhou(201806010187)
摘    要:In this study, we adopt kernel density estimation, spatial autocorrelation, spatial Markov chain, and panel quantile regression methods to analyze spatial spillover effects and driving factors of carbon emission intensity in 283 Chinese cities from 1992 to 2013. The following results were obtained.(1) Nuclear density estimation shows that the overall average carbon intensity of cities in China has decreased, with differences gradually narrowing.(2) The spatial autocorrelation Moran's I index indicates significant spatial agglomeration of carbon emission intensity is gradually increasing; however, differences between regions have remained stable.(3) Spatial Markov chain analysis shows a Matthew effect in China's urban carbon emission intensity. In addition, low-intensity and high-intensity cities characteristically maintain their initial state during the transition period. Furthermore, there is a clear "Spatial Spillover" effect in urban carbon emission intensity and there is heterogeneity in the spillover effect in different regional contexts; that is, if a city is near a city with low carbon emission intensity, the carbon emission intensity of the first city has a higher probability of upward transfer, and vice versa.(4) Panel quantile results indicate that in cities with low carbon emission intensity, economic growth, technological progress, and appropriate population density play an important role in reducing emissions. In addition, foreign investment intensity and traffic emissions are the main factors that increase carbon emission intensity. In cities with high carbon intensity, population density is an important emission reduction factor, and technological progress has no significant effect. In contrast, industrial emissions, extensive capital investment, and urban land expansion are the main factors driving the increase in carbon intensity.

关 键 词:Chinese  cities  KERNEL  density  estimation  SPATIAL  AUTOCORRELATION  SPATIAL  SPILLOVER  effect  SPATIAL  Markov  chain  QUANTILE  regression  panel  model

Spatial spillover effect and driving forces of carbon emission intensity at the city level in China
WANG Shaojian,HUANG Yongyuan,ZHOU Yuquan.Spatial spillover effect and driving forces of carbon emission intensity at the city level in China[J].Journal of Geographical Sciences,2019(2):231-252.
Authors:WANG Shaojian  HUANG Yongyuan  ZHOU Yuquan
Abstract:In this study, we adopt kernel density estimation, spatial autocorrelation, spatial Markov chain, and panel quantile regression methods to analyze spatial spillover effects and driving factors of carbon emission intensity in 283 Chinese cities from 1992 to 2013. The following results were obtained.(1) Nuclear density estimation shows that the overall average carbon intensity of cities in China has decreased, with differences gradually narrowing.(2) The spatial autocorrelation Moran's I index indicates significant spatial agglomeration of carbon emission intensity is gradually increasing; however, differences between regions have remained stable.(3) Spatial Markov chain analysis shows a Matthew effect in China's urban carbon emission intensity. In addition, low-intensity and high-intensity cities characteristically maintain their initial state during the transition period. Furthermore, there is a clear "Spatial Spillover" effect in urban carbon emission intensity and there is heterogeneity in the spillover effect in different regional contexts; that is, if a city is near a city with low carbon emission intensity, the carbon emission intensity of the first city has a higher probability of upward transfer, and vice versa.(4) Panel quantile results indicate that in cities with low carbon emission intensity, economic growth, technological progress, and appropriate population density play an important role in reducing emissions. In addition, foreign investment intensity and traffic emissions are the main factors that increase carbon emission intensity. In cities with high carbon intensity, population density is an important emission reduction factor, and technological progress has no significant effect. In contrast, industrial emissions, extensive capital investment, and urban land expansion are the main factors driving the increase in carbon intensity.
Keywords:Chinese cities  kernel density estimation  spatial autocorrelation  spatial spillover effect  spatial Markov chain  quantile regression panel model
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