Ren Yin, Deng Lu-Ying, Zuo Shu-Di, Song Xiao-Dong, Liao Yi-Lan, Xu Cheng-Dong, Chen Qi, Hua Li-Zhong, Li Zheng-Wei
Key Laboratory of Urban Environment and Health, Key Laboratory of Urban Metabolism of Xiamen, Institute of Urban Environment, Chinese Academy of Sciences, Xiamen, 361021, China; Ningbo Urban Environment Observation and Research Station-NUEORS, Chinese Academy of Sciences, Ningbo, 315800, China.
Key Laboratory of Urban Environment and Health, Key Laboratory of Urban Metabolism of Xiamen, Institute of Urban Environment, Chinese Academy of Sciences, Xiamen, 361021, China; University of Chinese Academy of Sciences, Beijing, 100049, China.
Environ Pollut. 2016 Sep;216:519-529. doi: 10.1016/j.envpol.2016.06.004. Epub 2016 Jun 16.
Identifying factors that influence the land surface temperature (LST) of urban forests can help improve simulations and predictions of spatial patterns of urban cool islands. This requires a quantitative analytical method that combines spatial statistical analysis with multi-source observational data. The purpose of this study was to reveal how human activities and ecological factors jointly influence LST in clustering regions (hot or cool spots) of urban forests. Using Xiamen City, China from 1996 to 2006 as a case study, we explored the interactions between human activities and ecological factors, as well as their influences on urban forest LST. Population density was selected as a proxy for human activity. We integrated multi-source data (forest inventory, digital elevation models (DEM), population, and remote sensing imagery) to develop a database on a unified urban scale. The driving mechanism of urban forest LST was revealed through a combination of multi-source spatial data and spatial statistical analysis of clustering regions. The results showed that the main factors contributing to urban forest LST were dominant tree species and elevation. The interactions between human activity and specific ecological factors linearly or nonlinearly increased LST in urban forests. Strong interactions between elevation and dominant species were generally observed and were prevalent in either hot or cold spots areas in different years. In conclusion, quantitative studies based on spatial statistics and GeogDetector models should be conducted in urban areas to reveal interactions between human activities, ecological factors, and LST.
识别影响城市森林地表温度(LST)的因素有助于改进对城市冷岛空间格局的模拟和预测。这需要一种将空间统计分析与多源观测数据相结合的定量分析方法。本研究的目的是揭示人类活动和生态因素如何共同影响城市森林聚类区域(热点或冷点)的LST。以1996年至2006年的中国厦门市为例,我们探讨了人类活动与生态因素之间的相互作用,以及它们对城市森林LST的影响。选择人口密度作为人类活动的代理指标。我们整合了多源数据(森林资源清查、数字高程模型(DEM)、人口和遥感影像),以在统一的城市尺度上建立一个数据库。通过多源空间数据与聚类区域的空间统计分析相结合,揭示了城市森林LST的驱动机制。结果表明,影响城市森林LST的主要因素是优势树种和海拔。人类活动与特定生态因素之间的相互作用使城市森林的LST呈线性或非线性增加。海拔与优势树种之间通常存在强烈的相互作用,并且在不同年份的热点或冷点区域普遍存在。总之,应在城市地区开展基于空间统计和地理探测器模型的定量研究,以揭示人类活动、生态因素和LST之间的相互作用。