[Network Structural Characteristics of Urban Green Innovation of China and Its Impact on Carbon Emissions].

Q2 Environmental Science 环境科学 Pub Date : 2025-03-08 DOI:10.13227/j.hjkx.202402005
Hui-Ping Wang, Pei-Ling Liu
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引用次数: 0

Abstract

Based on the social network analysis method, panel data from 254 cities in China spanning from 2006 to 2019 was utilized. A green innovation network was established using a modified gravity model, which described the overall and individual characteristics of the network. It also analyzed the impact utility and mechanisms of centrality features within the network on carbon emissions. The conclusions showed that: ① From 2006 to 2019, the green innovation level of 254 cities in China presented obvious spatial correlation network characteristics. The overall structure of the network was relatively stable, with a steady increase in the number of related relationships and the overall network density value showing an upward trend. The eastern cities represented by Shenzhen, Suzhou, and Wuxi occupied a central position in the green innovation network. ② The improvement of the central location of the urban network had significantly exacerbated carbon emissions, and this impact had certain heterogeneity in different geographical locations and city sizes. Among them, the improvement of the network center position in the northeast, eastern, and western regions had exacerbated carbon emissions, whereas the impact in the central region was not significant. In large cities, the increase in network center location exacerbated carbon emissions; however, it was not significant in small and medium-sized cities. ③ The mesomeric effect showed that the promotion of the network center location could promote carbon emissions through energy consumption.

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[中国城市绿色创新网络结构特征及其对碳排放的影响]。
基于社会网络分析方法,利用2006 - 2019年中国254个城市的面板数据。利用修正的重力模型建立了绿色创新网络,该模型描述了绿色创新网络的整体和个体特征。分析了网络中心性特征对碳排放的影响效用和机制。研究结果表明:①2006 - 2019年,中国254个城市绿色创新水平呈现明显的空间关联网络特征;网络整体结构相对稳定,相关关系数量稳步增加,整体网络密度值呈上升趋势。以深圳、苏州、无锡为代表的东部城市在绿色创新网络中处于中心位置。②城市网络中心位置的改善显著加剧了碳排放,且这种影响在不同地理位置和城市规模上存在一定的异质性。其中,东北、东部和西部地区网络中心地位的提升加剧了碳排放,而中部地区的影响不显著。在大城市中,网络中心位置的增加加剧了碳排放,而在中小城市中则不显著。③中介效应表明,网络中心位置的提升可以通过能源消耗促进碳排放。
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来源期刊
环境科学
环境科学 Environmental Science-Environmental Science (all)
CiteScore
4.40
自引率
0.00%
发文量
15329
期刊介绍:
期刊最新文献
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