基于 SDM-STIRPAT 的空间测量模型在测量交通设施碳排放方面的有效性

Q2 Energy Energy Informatics Pub Date : 2024-06-26 DOI:10.1186/s42162-024-00354-y
Guozhi Li, Yidan Yuan, Xunuo Chen, Dandan Fu, Mengying Jiang
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引用次数: 0

摘要

为深入理解交通设施碳排放机制,根据中国 30 个地区的面板数据,识别并分析了影响区域交通设施碳排放的所有系统要素。以 2004 年至 2022 年为研究时段,利用空间 Dolbin 模型构建了交通设施碳排放的空间计量经济模型。结果表明,交通设施二氧化碳排放量从 2004 年的 3.18 亿吨增加到 2022 年的 7.52 亿吨,年均增长率为 4.9%。全球空间自相关系数在 5%范围内显著,地理范围内的二氧化碳排放量存在明显的空间相关性。此外,通过稳定性检验,模型在空间滞后检验和空间误差检验中均表现出较高的稳定性,显示出较强的数据解释能力。研究表明,碳排放受人口、经济、技术、交通等自变量的影响,在不同地区、不同年份呈现出显著的空间分布特征,为政策制定和碳排放管理提供了依据。
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Effectiveness of spatial measurement model based on SDM-STIRPAT in measuring carbon emissions from transportation facilities
To gain a deeper understanding of the carbon emission mechanism from transportation facilities, all system elements affecting carbon emissions from regional transportation facilities are identified and analyzed according to panel data from 30 regions in China. A spatial econometric model for carbon emissions from transportation facilities is constructed using the Spatial Dolbin model from 2004 to 2022 as the research period. From the results, the carbon dioxide emissions from transportation facilities added from 318 million tons in 2004 to 752 million tons in 2022, with an average annual growth rate of 4.9%. The global spatial auto-correlation coefficient was significant at the 5%, with an obvious spatial correlation between carbon dioxide emissions within a geographical range. In addition, through stability testing, the model showed high stability in both spatial lag testing and spatial error testing, demonstrating strong ability to interpret data. The research shows that the carbon emission is affected by independent variables, including population, economy, technology, and transportation, and exhibit significant spatial distribution characteristics in different regions and years, providing a basis for policy formulation and carbon emission management.
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来源期刊
Energy Informatics
Energy Informatics Computer Science-Computer Networks and Communications
CiteScore
5.50
自引率
0.00%
发文量
34
审稿时长
5 weeks
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