基于GWR模型的京津冀县域碳排放强度 时空演变及影响因素分析
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GWR-Model-Based Analysis of Spatialtemporal Evolution with Its Influencing Factors of Carbon Emission Intensity in Beijing-Tianjin-Hebei Counties
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    摘要:

    为探究京津冀各县域碳减排潜力,在计算2008—2017年165个县域碳排放强度的基础上,采用标准差椭圆、探索性空间数据分析及地理加权回归等空间统计工具进行定性分析与定量研究。研究发现:河北省平均碳排放强度明显高于北京、天津两地,研究期间各区县碳排放强度下降明显,表明近年来的碳减排取得了良好成效。其次,分析重心-标准差椭圆发现碳排放强度重心始终位于保定市高阳县,重心逐渐向南迁移,标准差椭圆在空间上呈“东北-西南”分布格局。最后对碳排放强度影响因素进行了分析,发现人口密度、产业结构多元化、固定资产投资和财政收支在不同区域影响效果不同,但在多数地区可以有效降低碳排放强度。

    Abstract:

    In view of an inquiry into the carbon emission reduction potential of each county in Beijing-Tianjin-Hebei agglomeration, a qualitative and quantitative analysis has thus been conducted by using such spatial statistical tools as standard deviation ellipse, exploratory spatial data analysis, and geographic weighted regression based on the calculation of carbon emission intensity in 165 counties from 2008 to 2017. The research results show that the average carbon emission intensity in Hebei Province is significantly higher than that in Beijing and Tianjin. During the study period, the carbon emission intensity of each district and county shows a significantly decreasing trend, indicating a favorable achieved reults of carbon reduction in recent years. Secondly, based on the center of gravity standard deviation ellipse, it is found that the center of gravity of carbon emission intensity is always located in Gaoyang County, Baoding City, with the center of gravity gradually moving to the south; meanwhile, the standard deviation ellipse shows a “northeast southwest” spatial distribution pattern. Finally, an analysis is made of the impact factors of carbon emission intensity: population density, diversification of industrial structure, fixed assets investment and fiscal revenue and expenditure, all of which exert different effects in different regions, while in most regions, carbon emission intensity can be effectively reduced.

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韩 聪,张立新,岳美亭.基于GWR模型的京津冀县域碳排放强度 时空演变及影响因素分析[J].湖南工业大学学报,2023,37(5):68-77.

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  • 收稿日期:2022-06-27
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  • 在线发布日期: 2023-07-04
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