Analysis of Carbon Emissions and Influencing Factors in China Based on City Scale

被引:5
|
作者
Wu J.-S. [1 ]
Jin X.-R. [1 ]
Wang H. [1 ]
Feng Z. [2 ]
Zhang D.-N. [1 ]
Li X.-C. [1 ]
机构
[1] School of Urban Planning and Design, Peking University, Shenzhen
[2] School of Land Science and Technology, China University of Geosciences, Beijing
来源
Huanjing Kexue/Environmental Science | 2023年 / 44卷 / 05期
关键词
Bayesian belief network(BBN); carbon emissions; China; driving factors; multiscale geographically weighted regression(MGWR);
D O I
10.13227/j.hjkx.202205326
中图分类号
学科分类号
摘要
Assessing regional carbon emissions and their relationship with socio-economic conditions is very important for developing strategies for carbon emission reduction. This study explored the impact of the proportion of non-fossil energy, the land development degree, the urbanization rate of permanent residents, the proportion of secondary industry, per capita GDP, and per capita construction land area on per capita CO2 emissions in 339 prefecture-level and above cities in China (excluding some cities in Xinjiang, Hong Kong, Macao, and Taiwan). A Bayesian belief network modeling carbon emissions was constructed to identify the global effects of various factors on per capita CO2 emissions, and multiscale geographically weighted regression was used to analyze their local effects. The results showed that first, per capita CO2 emissions of cities in China increased from the south to the north and decreased from the eastern coast to the inland region. Second, globally, the sensitivity of per capita CO2 emissions to various factors from high to low was in the order of per capita construction land area > per capita GDP > urbanization rate of permanent residents > land development degree > proportion of secondary industry > proportion of non-fossil energy. Third, locally, the direction of the spatial relationship between each factor and per capita CO2 emissions was consistent with the global relationship, and there was spatial heterogeneity in the strength of the relationship. Finally, clean energy, decarbonization technologies, saving and intensive use of land, and green living were effective ways to achieve the dual-carbon goal. © 2023 Science Press. All rights reserved.
引用
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页码:2974 / 2982
页数:8
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共 48 条
  • [11] Liu Y, Li X Y, Lin J Y, Et al., Factor decomposition of carbon intensity in Xiamen city based on LMDI method, Acta Ecologica Sinica, 34, 9, pp. 2378-2387, (2014)
  • [12] Liu Z, Guan D B, Wei W, Et al., Reduced carbon emission estimates from fossil fuel combustion and cement production in China, Nature, 524, 7565, pp. 335-338, (2015)
  • [13] Liu Z, Guan D B, Wei W., Carbon emission accounting in China, Scientia Sinica Terrae, 48, 7, pp. 878-887, (2018)
  • [14] Shan Y L, Guan D B, Zheng H R, Et al., China CO<sub>2</sub> emission accounts 1997- 2015 [J], Scientific Data, 5, (2018)
  • [15] Jiang Z R, Jin H H, Wang C J, Et al., Measurement of traffic carbon emissions and pattern of efficiency in the Yangtze River Economic Belt (1985- 2016), Environmental Science, 41, 6, pp. 2972-2980, (2020)
  • [16] Cai B F, Liang S, Zhou J, Et al., China high resolution emission database (CHRED) with point emission sources, gridded emission data, and supplementary socioeconomic data, Resources, Conservation and Recycling, 129, pp. 232-239, (2018)
  • [17] Cai B F, Liu X M, Lu J, Et al., China city CO<sub>2</sub> emissions in 2005, China Population, Resources and Environment, 28, 4, pp. 1-7, (2018)
  • [18] Li J B, Huang X J, Wu C Y, Et al., Analysis of spatial heterogeneity impact factors on carbon emissions in China, Economic Geography, 35, 11, pp. 21-28, (2015)
  • [19] Sun X F, Shi K F, Wu J P., Spatiotemporal dynamics of CO<sub>2</sub> emissions in Chongqing: An empirical analysis at the county level, Environmental Science, 39, 6, pp. 2971-2981, (2018)
  • [20] Huang L L, Wang Y, Zhang C, Et al., A spatial-temporal decomposition analysis of CO<sub>2</sub> emissions in Fujian Southeast Triangle Region, China Environmental Science, 40, 5, pp. 2312-2320, (2020)