4.7 Article

Exploring the Relationships between Land Surface Temperature and Its Influencing Factors Using Multisource Spatial Big Data: A Case Study in Beijing, China

期刊

REMOTE SENSING
卷 15, 期 7, 页码 -

出版社

MDPI
DOI: 10.3390/rs15071783

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land surface temperature; MODIS; human daily activities; Weibo Check-in; spatial autoregressive model; spatial big data; Beijing

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This study focuses on the potential effect of human daily activities on land surface temperature (LST) from a short-term perspective. The results show that human daily activities have a significant and positive effect on LST at night, which can last and accumulate over hours. The study also reveals that different land use and building forms have varying impacts on LST during different time periods. This research enriches the literature on LST and provides meaningful and practical suggestions for using remote sensing technology and spatial big data sources in monitoring, early warning, and management of urban thermal environment.
A better understanding of the relationship between land surface temperature (LST) and its influencing factors is important to the livable, healthy, and sustainable development of cities. In this study, we focused on the potential effect of human daily activities on LST from a short-term perspective. Beijing was selected as a case city, and Weibo check-in data were employed to measure the intensity of human daily activities. MODIS data were analyzed and used for urban LST measurement. We adopted spatial autocorrelation analysis, Pearson correlation analysis, and spatial autoregressive model to explore the influence mechanism of LST, and the study was performed at both the pixel scale and subdistrict scale. The results show that there is a significant and positive spatial autocorrelation between LSTs, and urban landscape components are strong explainers of LST. A significant and positive effect of human daily activities on LST is captured at night, and this effect can last and accumulate over a few hours. The variables of land use functions and building forms show varying impacts on LST from daytime to nighttime. Moreover, the comparison between results at different scales indicates that the relationships between LST and some explainers are sensitive to the study scale. The current study enriches the literature on LST and offers meaningful and practical suggestions for the monitoring, early warning, and management of urban thermal environment with remote sensing technology and spatial big data sources.

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