Loading…

Nonlinear effects of urban multidimensional characteristics on daytime and nighttime land surface temperature in highly urbanized regions: A case study in Beijing, China

•Interpretable machine learning methods were used to examine nonlinear thermal effects.•Dominant urban characteristics affecting diurnal/nocturnal LST were investigated.•Daytime LST is sensitive to the landscape proportion of trees in UGS.•Influence of building height on LST is opposite during dayti...

Full description

Saved in:
Bibliographic Details
Published in:International journal of applied earth observation and geoinformation 2024-08, Vol.132, p.104067, Article 104067
Main Authors: Liu, Wenxiu, Zhang, Linlin, Hu, Xinli, Meng, Qingyan, Qian, Jiangkang, Gao, Jianfeng, Li, Ting
Format: Article
Language:English
Subjects:
Citations: Items that this one cites
Online Access:Get full text
Tags: Add Tag
No Tags, Be the first to tag this record!
Description
Summary:•Interpretable machine learning methods were used to examine nonlinear thermal effects.•Dominant urban characteristics affecting diurnal/nocturnal LST were investigated.•Daytime LST is sensitive to the landscape proportion of trees in UGS.•Influence of building height on LST is opposite during daytime and nighttime.•Diurnal thermal effect of water body is related to its edge density characteristic. It is crucial to clarify the nonlinear effects of urban multidimensional characteristics on land surface temperature (LST). However, the combined consideration of the urban green space (UGS), water bodies, buildings, and socio-economic factors is limited. And the diurnal differences in their thermal effects have been less considered. In this study, central Beijing was taken as study area. Local climate zones (LCZ) were firstly applied to reveal spatiotemporal heterogeneity of LST. Then, the interpretable machine learning methods were utilized to quantitatively reveal nonlinear thermal effects of urban multidimensional characteristics, i.e., the UGS, water bodies, and building landscape features, and socio-economic features. The results indicated that built type LCZs have a higher average LST compared to natural type LCZs. And the LST of built type LCZs is simultaneously influenced by buildings’ density and height characteristics. Daytime LST is mainly affected by the landscape proportions of UGS, buildings, and trees, while nighttime LST is more influenced by socio-economic and building characteristics. The thermal effects of key factors exhibit nonlinear characteristics. Whether during the day or night, the impact of building coverage on LST is greater than that of building height, consistently exhibiting a warming effect. While, the building height and water body edge density factors both exhibited a reversal trend in their thermal impact between day and night. Our study also emphasized the importance of trees type in UGS and provided recommendations for UGS planning based on sensitivity and contribution considerations. These findings can help to regulate urban LST and promote sustainable urban development.
ISSN:1569-8432
DOI:10.1016/j.jag.2024.104067