碳纤维
温室气体
城市化
环境科学
电
空间化
遥感
环境经济学
自然资源经济学
环境工程
环境保护
计算机科学
地理
工程类
生态学
经济增长
经济
电气工程
社会学
复合数
生物
人类学
算法
作者
Feng Gao,Jie Wu,Jinghao Xiao,Xiaohui Li,Shunyi Liao,Wangyang Chen
标识
DOI:10.1016/j.envres.2023.115257
摘要
Scientific simulation of carbon emissions is an important prerequisite for achieving low-carbon green development and carbon peak and carbon neutralization. This study proposed a carbon emissions spatialization method based on nighttime light (NTL) remote sensing and municipal electricity social sensing. First, the economics-energy comprehensive index (EECI) was proposed by integrating the NTL and municipal electricity consumption (EC) data. Second, the carbon emissions were spatialized at a fine scale based on NTL, EC, and EECI, respectively. Finally, the geographical detector model was applied to quantify the influencing factors on carbon emissions from the perspectives of individuals and interactions. Results show that combining remote sensing and social sensing data helps depict carbon emissions accurately. The factor analysis found that GDP and population were the basis of carbon emissions, while the secondary industry and urbanization rate were the direct factors. This study is expected to provide constructive suggestions and methods for emission reduction, carbon peak, and carbon neutrality in high-density cities in China.
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