Fine-scale modeling of the urban heat island: A comparison of multiple linear regression and random forest approaches

被引:76
|
作者
Oukawa, Gabriel Yoshikazu [1 ]
Krecl, Patricia [2 ]
Targino, Admir Creso [2 ]
机构
[1] Fed Univ Technol, Dept Environm Engn, Av Pioneiros 3131, BR-86036370 Londrina, PR, Brazil
[2] Fed Univ Technol, Grad Program Environm Engn, Av Pioneiros 3131, BR-86036370 Londrina, PR, Brazil
关键词
Multiple linear regression; Random forest; Machine learning; SHAP values; Explainable artificial intelligence; LAND-USE REGRESSION; ATMOSPHERIC CIRCULATION; ANTHROPOGENIC HEAT; CLIMATE; GREEN; CLASSIFICATION; TEMPERATURE; CITY;
D O I
10.1016/j.scitotenv.2021.152836
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
Characterizing the spatiotemporal variability of the Urban I lent Island (UHI) and its drivers is a key step in leveraging thermal comfort to create not only healthier cities, but also to enhance urban resilience to climate change. In this study, we developed specific daytime and nighttime multiple linear regression (MLR) and random forest (RF) models to analyze and predict the spatiotemporal evolution of the Urban I lent Island intensity (UHII), using the air temperature (T-air) as the response variable. We profited from the wealth of in Situ T-air data and a comprehensive pool of predictors variables - including land cover, population, traffic, urban geometry, weather data and atmospheric vertical indices. Cluster analysis divided the study period into three main groups, each dominated by a combination of weather systems that, in turn, influenced the onset and strength of the UHII. Anticyclonic circulations favored the emergence of the largest UHII (hourly mean of 5.06 degrees C), while cyclonic circulations dampened its development. 'I'he MLR models were only able to explain a modest percentage of variance (64 and 34% for daytime and nighttime, respectively), which we interpret as part of their inability to capture key factors controlling T-air. The RE models, on the other hand, performed considerably better, with explanatory power over 96% of the variance for daytime and nighttime conditions, capturing and mapping the fine-scale T-air spatiotemporal variability in both periods and under each cluster condition. The feature importance analysis showed that the meteorological variables and the land cover were the main predictors of the Urban planners could benefit from these results, using the high-performing RF models as a robust framework for forecasting and mitigating the effects of the UHI.
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页数:12
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