Quantitative exploration of the mechanisms behind the urban thermal environment in Beijing

The driving mechanism behind the formation of urban thermal environments is the result of a combination of factors. Beijing was chosen as the study area, and the technique of principal component analysis (PCA) was used. A spatial regression method was also applied for quantitative explanation of the...

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Published inProgress in natural science Vol. 19; no. 12; pp. 1757 - 1763
Main Authors Meng, Dan, Li, Xiaojuan, Zhao, Wenji, Gong, Huili
Format Journal Article
LanguageEnglish
Published Elsevier Ltd 10.12.2009
Key Laboratory of 3D Information Acquisition and Application,Ministry of Education,Key Laboratory of Resource,Environment and GIS in Beijing,College of Resources Environment and Tourism,Capital Normal University,Beijing 100048,China
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ISSN1002-0071
DOI10.1016/j.pnsc.2009.07.005

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Abstract The driving mechanism behind the formation of urban thermal environments is the result of a combination of factors. Beijing was chosen as the study area, and the technique of principal component analysis (PCA) was used. A spatial regression method was also applied for quantitative explanation of the thermal mechanism. Multiple Landsat thematic mapper images were used to quantify potential causing factors. Considering the eigenvalues of each factor and its relationship with land surface temperature, the first three principal components (PCs) are regarded as the main causative factors explaining the mechanism as independent variables. The first three PCs mainly reflect urban construction, road density and the normalized difference vegetation index (NDVI), respectively. Ordinary least squares, spatial lag and spatial error regression models were established separately for the relationships between the first three PCs and land surface temperature (LST). In the two spatial regression models, z-statistics for both the spatial lag parameter (p) and spatial residual parameter (2) are significant, indicating the necessity of using spatial regression to replace the OLS regression model, as well as indicating that the spatial error regression model is superior to the spatial lag regression model. Overall, the normalized difference builtup index (NDBI) and road density are the most significant positive contributions to LST.
AbstractList The driving mechanism behind the formation of urban thermal environments is the result of a combination of factors. Beijing was chosen as the study area, and the technique of principal component analysis (PCA) was used. A spatial regression method was also applied for quantitative explanation of the thermal mechanism. Multiple Landsat thematic mapper images were used to quantify potential causing factors. Considering the eigenvalues of each factor and its relationship with land surface temperature, the first three principal components (PCs) are regarded as the main causative factors explaining the mechanism as independent variables. The first three PCs mainly reflect urban construction, road density and the normalized difference vegetation index (NDVI), respectively. Ordinary least squares, spatial lag and spatial error regression models were established separately for the relationships between the first three PCs and land surface temperature (LST). In the two spatial regression models, z-statistics for both the spatial lag parameter (p) and spatial residual parameter (2) are significant, indicating the necessity of using spatial regression to replace the OLS regression model, as well as indicating that the spatial error regression model is superior to the spatial lag regression model. Overall, the normalized difference builtup index (NDBI) and road density are the most significant positive contributions to LST.
The driving mechanism behind the formation of urban thermal environments is the result of a combination of factors. Beijing was chosen as the study area, and the technique of principal component analysis (PCA) was used. A spatial regression method was also applied for quantitative explanation of the thermal mechanism. Multiple Landsat thematic mapper images were used to quantify potential causing factors. Considering the eigenvalues of each factor and its relationship with land surface temperature, the first three principal components (PCs) are regarded as the main causative factors explaining the mechanism as independent variables. The first three PCs mainly reflect urban construction, road density and the normalized difference vegetation index (NDVI), respectively. Ordinary least squares, spatial lag and spatial error regression models were established separately for the relationships between the first three PCs and land surface temperature (LST). In the two spatial regression models, z-statistics for both the spatial lag parameter ( ρ) and spatial residual parameter ( λ) are significant, indicating the necessity of using spatial regression to replace the OLS regression model, as well as indicating that the spatial error regression model is superior to the spatial lag regression model. Overall, the normalized difference built-up index (NDBI) and road density are the most significant positive contributions to LST.
O4; The driving mechanism behind the formation of urban thermal environments is the result of a combination of factors.Beijing was chosen as the study area,and the technique of principal component analysis (PCA) was used.A spatial regression method was also applied for quantitative explanation of the thermal mechanism.Multiple Landsat thematic mapper images were used to quantify potential causing factors.Considering the eigenvalues of each factor and its relationship with land surface temperature,the first three principal components (PCs) are regarded as the main causative factors explaining the mechanism as independent variables.The first three PCs mainly reflect urban construction,road density and the normalized difference vegetation index (NDVI),respectively.Ordinary least squares,spatial lag and spatial error regression models were established separately for the relationships between the first three PCs and land surface temperature (LST).In the two spatial regression models,z-statistics for both the spatial lag parameter (ρ) and spatial residual parameter (λ) are significant,indicating the necessity of using spatial regression to replace the OLS regression model,as well as indicating that the spatial error regression model is superior to the spatial lag regression model.Overall,the normalized difference builtup index (NDBI) and road density are the most significant positive contributions to LST.
The driving mechanism behind the formation of urban thermal environments is the result of a combination of factors. Beijing was chosen as the study area, and the technique of principal component analysis (PCA) was used. A spatial regression method was also applied for quantitative explanation of the thermal mechanism. Multiple Landsat thematic mapper images were used to quantify potential causing factors. Considering the eigenvalues of each factor and its relationship with land surface temperature, the first three principal components (PCs) are regarded as the main causative factors explaining the mechanism as independent variables. The first three PCs mainly reflect urban construction, road density and the normalized difference vegetation index (NDVI), respectively. Ordinary least squares, spatial lag and spatial error regression models were established separately for the relationships between the first three PCs and land surface temperature (LST). In the two spatial regression models, z-statistics for both the spatial lag parameter ([rho]) and spatial residual parameter (l) are significant, indicating the necessity of using spatial regression to replace the OLS regression model, as well as indicating that the spatial error regression model is superior to the spatial lag regression model. Overall, the normalized difference built-up index (NDBI) and road density are the most significant positive contributions to LST.
Author Dan Meng Xiaojuan Li Wenji Zhao Huili Gong
AuthorAffiliation Key Laboratory of 3D Information Acquisition and Application, Ministry of Education, Key Laboratory of Resource, Environment and GIS in Beijing, College of Resources Environment and Tourism, Capital Normal University, Beijing 100048, China
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10.1080/01431160010006971
10.1111/j.1745-9125.2001.tb00933.x
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Issue 12
Keywords Beijing
Drive mechanism
Spatial regression
Urban thermal environment
Language English
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Notes Beijing
Spatial regression
Urban thermal environment
P541
Drive mechanism
Urban thermal environment; Drive mechanism; Spatial regression; Beijing
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Snippet The driving mechanism behind the formation of urban thermal environments is the result of a combination of factors. Beijing was chosen as the study area, and...
O4; The driving mechanism behind the formation of urban thermal environments is the result of a combination of factors.Beijing was chosen as the study area,and...
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SubjectTerms Beijing
Drive mechanism
Spatial regression
Urban thermal environment
个人电脑
回归模型
城市热环境
归一化植被指数
空间误差
陆地表面温度
驱动机制
Title Quantitative exploration of the mechanisms behind the urban thermal environment in Beijing
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