中国城市植被绿化的空间格局与驱动力:包含 289 个城市的案例研究

IF 8 1区 环境科学与生态学 Q1 GEOGRAPHY, PHYSICAL Geography and Sustainability Pub Date : 2024-03-21 DOI:10.1016/j.geosus.2024.03.001
Yansong Jin , Fei Wang , Quanli Zong , Kai Jin , Chunxia Liu , Peng Qin
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摘要

近几十年来,由于快速的城市化和剧烈的气候变化,中国的城市植被发生了巨大变化。然而,人们对中国主要城市之间的绿化空间分异及其演变过程和驱动因素仍然知之甚少。本研究通过归一化差异植被指数(NDVI)的空间自相关分析,研究了2000年、2005年、2010年、2015年和2018年中国289个城市植被绿度的空间格局;然后,利用基于最优参数的地理探测器(OPGD)模型和18个自然和人为指标分析了影响因素。研究结果表明,2000-2018 年间,所选城市的整体绿化水平明显提高。在六个次区域中,西北地区和华东地区城市的绿化速度分别最快和最慢。289 个城市在不同时期的绿化率之间存在明显的空间正相关,但随着时间的推移,相关强度有所减弱。华南和华东的热点和极热点城市逐渐向西南方向转移。中国城市绿化的空间格局主要受风速(WS)和降水量(PRE)的影响,而风速(PRE)与国内生产总值(GDP)的交互作用具有最高的解释力。大多数自然因素的解释力下降,相反,人为因素的影响普遍上升。这些发现强调了多种因素对城市绿化模式影响强度的差异,在理解和适应不断变化的城市生态系统时应考虑到这一点。
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Spatial patterns and driving forces of urban vegetation greenness in China: A case study comprising 289 cities

Urban vegetation in China has changed substantially in recent decades due to rapid urbanization and dramatic climate change. Nevertheless, the spatial differentiation of greenness among major cities of China and its evolution process and drivers are still poorly understood. This study examined the spatial patterns of vegetation greenness across 289 cities in China in 2000, 2005, 2010, 2015, and 2018 by using spatial autocorrelation analysis on the Normalized Difference Vegetation Index (NDVI); then, the influencing factors were analyzed by using the optimal parameters-based geographical detector (OPGD) model and 18 natural and anthropogenic indicators. The findings demonstrated a noticeable rise in the overall greenness of the selected cities during 2000–2018. The cities in northwest China and east China exhibited the rapidest and slowest greening, respectively, among the six sub-regions. A significant positive spatial correlation was detected between the greenness of the 289 cities in different periods, but the correlation strength weakened over time. The hot and very hot spots in southern and eastern China gradually shifted to the southwest. While the spatial pattern of urban greenness in China is primarily influenced by wind speed (WS) and precipitation (PRE), the interaction between PRE and gross domestic product (GDP) has the highest explanatory power. The explanatory power of most natural factors decreased and, conversely, the influence of anthropogenic factors generally increased. These findings emphasize the variations in the influence strength of multiple factors on urban greenness pattern, which should be taken into account to understand and adapt to the changing urban ecosystem.

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来源期刊
Geography and Sustainability
Geography and Sustainability Social Sciences-Geography, Planning and Development
CiteScore
16.70
自引率
3.10%
发文量
32
审稿时长
41 days
期刊介绍: Geography and Sustainability serves as a central hub for interdisciplinary research and education aimed at promoting sustainable development from an integrated geography perspective. By bridging natural and human sciences, the journal fosters broader analysis and innovative thinking on global and regional sustainability issues. Geography and Sustainability welcomes original, high-quality research articles, review articles, short communications, technical comments, perspective articles and editorials on the following themes: Geographical Processes: Interactions with and between water, soil, atmosphere and the biosphere and their spatio-temporal variations; Human-Environmental Systems: Interactions between humans and the environment, resilience of socio-ecological systems and vulnerability; Ecosystem Services and Human Wellbeing: Ecosystem structure, processes, services and their linkages with human wellbeing; Sustainable Development: Theory, practice and critical challenges in sustainable development.
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