Regional inequality, spatial spillover effects, and the factors influencing city-level energy-related carbon emissions in China

被引:0
作者
Wensong Su
Yanyan Liu
Shaojian Wang
Yabo Zhao
Yongxian Su
Shijie Li
机构
[1] CAS,Institute of Geographic Sciences and Natural Resources Research
[2] University of Chinese Academy of Sciences,School of Geography and Tourism
[3] Zhongguancun Development Group Co.,Guangdong Provincial Key Laboratory of Urbanization and Geo
[4] Ltd.,simulation, School of Geography and Planning
[5] Guangdong University of Finance and Economics,School of Architecture and Urban Planning
[6] Sun Yat-sen University,undefined
[7] Guangdong University of Technology,undefined
[8] Guangzhou Institute of Geography,undefined
来源
Journal of Geographical Sciences | 2018年 / 28卷
关键词
carbon emissions; spatial spillover effects; dynamic spatial panel data model; Chinese carbon emission reduction policies; environmental Kuznets curve;
D O I
暂无
中图分类号
学科分类号
摘要
Data show that carbon emissions are increasing due to human energy consumption associated with economic development. As a result, a great deal of attention has been focused on efforts to reduce this growth in carbon emissions as well as to formulate policies to address and mitigate climate change. Although the majority of previous studies have explored the driving forces underlying Chinese carbon emissions, few have been carried out at the city-level because of the limited availability of relevant energy consumption statistics. Here, we utilize spatial autocorrelation, Markov-chain transitional matrices, a dynamic panel model, and system generalized distance estimation (Sys-GMM) to empirically evaluate the key determinants of carbon emissions at the city-level based on Chinese remote sensing data collected between 1992 and 2013. We also use these data to discuss observed spatial spillover effects taking into account spatiotemporal lag and a range of different geographical and economic weighting matrices. The results of this study suggest that regional discrepancies in city-level carbon emissions have decreased over time, which are consistent with a marked spatial spillover effect, and a ‘club’ agglomeration of high-emissions. The evolution of these patterns also shows obvious path dependence, while the results of panel data analysis reveal the presence of a significant U-shaped relationship between carbon emissions and per capita GDP. Data also show that per capita carbon emissions have increased in concert with economic growth in most cities, and that a high-proportion of secondary industry and extensive investment growth have also exerted significant positive effects on city-level carbon emissions across China. In contrast, rapid population agglomeration, improvements in technology, increasing trade openness, and the accessibility and density of roads have all played a role in inhibiting carbon emissions. Thus, in order to reduce emissions, the Chinese government should legislate to inhibit the effects of factors that promote the release of carbon while at the same time acting to encourage those that mitigate this process. On the basis of the analysis presented in this study, we argue that optimizing industrial structures, streamlining extensive investment, increasing the level of technology, and improving road accessibility are all effective approaches to increase energy savings and reduce carbon emissions across China.
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页码:495 / 513
页数:18
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