egu2020-19922 bi-temporal monitoring the spatial pattern ...surface urban heat island (suhi) in...

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Land Cover/Use Land Surface Temperatures SUHI Clustering Figure 3. Spatiotemporal layouts of LCU Figure 4. Spatiotemporal layouts of LST Figure 5. Spatial evolutions of SUHI The side-effect of booming urbanization on the ecosystem and climate system has been continuously exacerbating. The coastal metropolises are located at the interface between land and ocean, unavoidably influenced by multiple aspects of the terrestrial environments, aquatic ecosystems, and urban developments. In recent decades, drastic metropolitan and urban agglomerations in the Chinese coastal areas significantly affects their urban thermal environments in the context of climate change. Natural lands are substantially replaced by various anthropogenic land use/cover (LCU) types. This process generates a mass of energies to alter the properties of the ecosystem and the interactions between the land surface and atmosphere, which is also the primary driving force for initiating the urban heat island (UHI) effect. Therefore, assessing Chinese megacities' UHI effect and formulating corresponding mitigation strategies have always been frontier issues on human health and urban sustainability. Bi-temporal Monitoring the Spatial Pattern and Variations of the Surface Urban Heat Island in Three Chinese Coastal Megacities A Comparative Study of Guangzhou, Hangzhou, and Shanghai. Fei LIU Division of Spatial Information Science, Graduate School of Life and Environmental Sciences, University of Tsukuba, Japan E-mail: [email protected]; Web : http://giswin.geo.tsukuba.ac.jp/sis Land surface temperature (LST), namely the radiative surface temperature of the land retrieved from solar radiation, is treated as an essential proxy in the diagnosis of the surface UHI (SUHI) by the World Meteorological Organization. In this study, taking of the three Chinese bay metropolises Guangzhou, Hangzhou, Shanghai—we attempt to 1) to delineate the spatiotemporal patterns and variations of surface urban heat island (SUHI) in three coastal metropolises of China based on bi-temporal Landsat- derived LST and LCU, 2) to clarify the spatial causalities between SUHI intensity and LUC using remote sensing quantified analysis, and 3) to sustainably regulate and optimize the urban environment and further create urban planning and policies for relieving urban thermal effect. Since the implementation of China's Belt and Road Initiative (BRI), there have been growing attention to the sustainable planning and development of the Pearl River Delta and Yangtze River Delta. The study targets are Guangzhou metropolitan area (GMA), Hangzhou metropolitan area (HMA) and Shanghai Metropolitan area (SMA) in China. They are: One of the most highly developed regions in China; The superiority of geographical and economic situation. The abundant development potentiality; The urgent ecological risk and pressure; Similar position and function in the urban agglomeration. Overall, within a nearly 15-year interval, the extents of hot spots in three metropolises were significantly expanded, the spatial patterns of SUHI have been transformed from monocentric to polycentric high-LST clusters, which were identical to the trend of urban expansion. However, these three metropolises possess distinct features in terms of the thermal layouts and land cover/use composition. The urban thermal environments in three coastal metropolises are different because of the land surface conditions including the attribute, composition, configuration, and variation of land cover. Although the total area of SUHI hot spots in Shanghai has surged, the intensity of some hot spots has been a shrink. The interactions and associations between SUHI and urban development were investigated using spatial regression analysis. The urban composition and configuration considerably affected the intensity of SUHI. Terrain morphology constrained the SUHI. Prolific population growth had a continuing effect on SUHI formation. The proportion of forests displayed a consistently critical influence on easing the adverse of SUHI. It is essential to appropriately consider the impacts of water in the comparative analysis of different thermal environments. However, water might be treated as a time-invariant factor and have a limited effect on the bi-temporal comparison for each metropolis. These findings suggest the policy-makers and urban planners should balance and optimize the land cover/use configurations with accommodating the increasing population, reasonably maximize the reservations of the greenbelt and green space under improving the utilization of urban infrastructures and constructions. Objectives Introduction Study Area Methodology Results Key Findings and Conclusion Figure 1. Study Area LST retrieval: Radiative Transfer Equation (RTE) and standardize derived LST; SUHI intensity: Subtracting the average normalized LST (NDLST) values of non-urban pixels from the NDLST value of each pixel within the study area. Land cover thematic maps: support vector machine (SVM) Formation of SUHI: ordinary least square (OLS) and geographically weighted regression (GWR) model. Figure 2. Technical flowchart EGU2020-19922

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Page 1: EGU2020-19922 Bi-temporal Monitoring the Spatial Pattern ...surface urban heat island (SUHI) in three coastal metropolises of China based on bi-temporal Landsat-derived LST and LCU,

Land Cover/Use Land Surface Temperatures SUHI Clustering

Figure 3. Spatiotemporal layouts of LCU Figure 4. Spatiotemporal layouts of LST Figure 5. Spatial evolutions of SUHI

The side-effect of booming urbanization on the ecosystemand climate system has been continuously exacerbating.The coastal metropolises are located at the interfacebetween land and ocean, unavoidably influenced bymultiple aspects of the terrestrial environments, aquaticecosystems, and urban developments.

In recent decades, drastic metropolitan and urbanagglomerations in the Chinese coastal areas significantlyaffects their urban thermal environments in the context ofclimate change.

Natural lands are substantially replaced by variousanthropogenic land use/cover (LCU) types. This processgenerates a mass of energies to alter the properties of theecosystem and the interactions between the land surfaceand atmosphere, which is also the primary driving force forinitiating the urban heat island (UHI) effect. Therefore,assessing Chinese megacities' UHI effect and formulatingcorresponding mitigation strategies have always beenfrontier issues on human health and urban sustainability.

Bi-temporal Monitoring the Spatial Pattern and Variations of the Surface Urban Heat Island in Three Chinese Coastal Megacities

A Comparative Study of Guangzhou, Hangzhou, and Shanghai.Fei LIU

Division of Spatial Information Science, Graduate School of Life and Environmental Sciences, University of Tsukuba, Japan

E-mail: [email protected]; Web : http://giswin.geo.tsukuba.ac.jp/sis

Land surface temperature (LST), namely the radiativesurface temperature of the land retrieved from solarradiation, is treated as an essential proxy in the diagnosisof the surface UHI (SUHI) by the World MeteorologicalOrganization. In this study, taking of the three Chinese baymetropolises — Guangzhou, Hangzhou, Shanghai—weattempt to

1) to delineate the spatiotemporal patterns and variations ofsurface urban heat island (SUHI) in three coastalmetropolises of China based on bi-temporal Landsat-derived LST and LCU,

2) to clarify the spatial causalities between SUHI intensityand LUC using remote sensing quantified analysis,

and 3) to sustainably regulate and optimize the urbanenvironment and further create urban planning andpolicies for relieving urban thermal effect.

Since the implementation of China's Belt and RoadInitiative (BRI), there have been growing attention tothe sustainable planning and development of the PearlRiver Delta and Yangtze River Delta. The study targetsare Guangzhou metropolitan area (GMA), Hangzhoumetropolitan area (HMA) and Shanghai Metropolitanarea (SMA) in China. They are:

▪ One of the most highly developed regions in China;

▪ The superiority of geographical and economicsituation.

▪ The abundant development potentiality;

▪ The urgent ecological risk and pressure;

▪ Similar position and function in the urbanagglomeration.

Overall, within a nearly 15-year interval, the extents of hot spots in three metropolises were significantly expanded, thespatial patterns of SUHI have been transformed from monocentric to polycentric high-LST clusters, which were identical tothe trend of urban expansion.

However, these three metropolises possess distinct features in terms of the thermal layouts and land cover/use composition.The urban thermal environments in three coastal metropolises are different because of the land surface conditions includingthe attribute, composition, configuration, and variation of land cover. Although the total area of SUHI hot spots in Shanghaihas surged, the intensity of some hot spots has been a shrink.

The interactions and associations between SUHI and urban development were investigated using spatial regression analysis.The urban composition and configuration considerably affected the intensity of SUHI. Terrain morphology constrained theSUHI. Prolific population growth had a continuing effect on SUHI formation. The proportion of forests displayed aconsistently critical influence on easing the adverse of SUHI.

It is essential to appropriately consider the impacts of water in the comparative analysis of different thermal environments.However, water might be treated as a time-invariant factor and have a limited effect on the bi-temporal comparison for eachmetropolis.

These findings suggest the policy-makers and urban planners should balance and optimize the land cover/use configurationswith accommodating the increasing population, reasonably maximize the reservations of the greenbelt and green spaceunder improving the utilization of urban infrastructures and constructions.

Objectives

Introduction Study Area

Methodology

Results

Key Findings and Conclusion

Figure 1. Study Area

LST retrieval: Radiative Transfer Equation (RTE) andstandardize derived LST;

SUHI intensity: Subtracting the average normalizedLST (NDLST) values of non-urban pixels from theNDLST value of each pixel within the study area.

Land cover thematic maps: support vector machine(SVM)

Formation of SUHI: ordinary least square (OLS) andgeographically weighted regression (GWR) model.

Figure 2. Technical flowchart

EGU2020-19922