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基于地理加权回归的省域碳排放影响因素研究

杨青 彭若慧 刘星星 曹兰娟

杨青,彭若慧,刘星星,等.基于地理加权回归的省域碳排放影响因素研究[J].环境工程技术学报,2023,13(1):54-62 doi: 10.12153/j.issn.1674-991X.20210523
引用本文: 杨青,彭若慧,刘星星,等.基于地理加权回归的省域碳排放影响因素研究[J].环境工程技术学报,2023,13(1):54-62 doi: 10.12153/j.issn.1674-991X.20210523
YANG Q,PENG R H,LIU X X,et al.Study on influencing factors of provincial carbon emission based on geographically weighted regression[J].Journal of Environmental Engineering Technology,2023,13(1):54-62 doi: 10.12153/j.issn.1674-991X.20210523
Citation: YANG Q,PENG R H,LIU X X,et al.Study on influencing factors of provincial carbon emission based on geographically weighted regression[J].Journal of Environmental Engineering Technology,2023,13(1):54-62 doi: 10.12153/j.issn.1674-991X.20210523

基于地理加权回归的省域碳排放影响因素研究

doi: 10.12153/j.issn.1674-991X.20210523
基金项目: 国家社科基金重大项目(16ZDA045);教育部人文社会科学研究项目(17YJAZH074)
详细信息
    作者简介:

    杨青(1962—),男,教授,博士,主要从事复杂系统智能管理研究,yangq@whut.edu.cn

  • 中图分类号: X822

Study on influencing factors of provincial carbon emission based on geographically weighted regression

  • 摘要:

    碳减排已经成为新时代生态文明建设亟待解决的问题,碳排放量与地域空间位置密切相关,为更好地促进碳减排、碳达峰,碳排放影响因素的区域性差异以及趋势分析已成为碳减排分析的焦点。通过地理加权回归方法研究我国30个省(区、市)2007—2017年的人口因素、能源消费、城镇化建设发展对碳排放量的影响,进而揭示碳排放量与区域社会经济发展的关系。结果表明,碳排放量的空间聚集性较强,各影响因素的空间分布格局差异较大,其中电力消费总量和化石能源消费总量的增加对碳排放量的正向影响作用最大,人口规模对碳排放量也有一定的正向促进作用,城市公共汽电车辆和主要建材消耗总量对碳排放量的影响作用并不显著,均呈不稳定的正负相关关系。我国碳减排应调整能源消费结构,进一步提高清洁能源技术创新,将城镇化建设与碳减排分阶段融合,加大绿色消费、绿色建筑和绿色出行的支持力度。

     

  • 图  1  碳排放量空间分布结果

    Figure  1.  Spatial distribution results of carbon emission

    图  2  碳排放量局部空间自相关结果

    Figure  2.  Local spatial autocorrelation results of carbon emission

    图  3  人口规模回归系数

    Figure  3.  Regression coefficient of population size

    图  4  电力消费总量回归系数

    Figure  4.  Regression coefficient of total power consumption

    图  5  化石能源消费总量回归系数

    Figure  5.  Regression coefficient of total fossil energy consumption

    图  6  城市公共汽电车辆回归系数

    Figure  6.  Regression coefficient of urban buses and trolley buses

    图  7  主要建材消耗总量回归系数

    Figure  7.  Regression coefficient of total consumption of main building materials

    表  1  GWR模型的估计结果

    Table  1.   Estimation results of GWR Model

    指标2007年2012年2017年
    R20.990.980.98
    调整R20.980.980.97
    残差平方和1.093.514.17
    带宽431.09431.0957.41
    AICc557.39592.47598.59
    下载: 导出CSV
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  • 收稿日期:  2021-09-22

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