Spatial Interconnections of Land Surface Temperatures with Land Cover/Use: A Case Study of Tokyo
Abstract
:1. Introduction
2. Study Area and Methods
2.1. Study Site
2.2. Working Flowchart
2.3. Land Cover/Use Specifications
2.4. LST Retrieval and SUHI Assessment
2.5. Spatial Aggregation Pattern and Variations of SUHI
2.6. Spatial Regression Analysis
2.6.1. Geographically Weighted Regression Analysis
2.6.2. Selection of Spatial Determinants
- (1)
- Land cover/use composition variables—In terms of land cover/use composition, the proportion of urban fabric area (UFP), normalized difference built-up index (NDBI), forest proportion (FP), normalized difference vegetation index (NDVI), and water proportion (WP) were considered as candidate explanatory variables. UFP, FP, and WP came from the UF and FL categories of reprocessed CCI-LC layers. NDVI and NDBI were calculated using Landsat multispectral images;
- (2)
- Landscape metric pattern variables—Determining the size, morphology, and spatial arrangement of urban landscapes is vital to explain urban temperature anomalies. Here, four landscape metric parameters were chosen to quantify the characteristics of diversity, aggregation, and evenness in urban landscapes: Shannon’s diversity index (SHDI), contagion index (CONTAG), patch density (PD), and patch richness (PR). Raster maps of landscape metrics were involved in further tests of explanatory regression;
- (3)
- Population variable—Population or population density indirectly affects the urban thermal field. Along with the vast production of anthropogenic heat, the concentration and overcrowding of the population impose serious pressure and demands on urban settlements and infrastructure constructions. This is why we incorporated the population as one of the essential determinants of SUHI formation. In this study, we used spatial demographic data at a high resolution of 100 m provided by the WorldPop Project, University of Southampton, UK (https://www.worldpop.org/) [79], to map the population distribution in TMA in 2001, 2006, 2013, and 2015. Numerous studies have gained valuable findings using this population data archive [80,81];
- (4)
- Terrain variables—The urban terrain is an important influencing factor of the stark temperature difference between urban and rural zones. Fluctuations of the topography alter the intensity of solar radiation and the thermal properties of surface materials. Here, elevation, slope, and aspect were included as potential explanatory variables. The elevation data at 3 arc-second resolution were extracted from the digital elevation model (DEM) archives of USGS’s Shuttle Radar Topography Mission (SRTM) [82]. Slope and aspect are calculated in ArcGIS based on the elevation.
2.6.3. Implementation of Spatial Regression Model
3. Results
3.1. Spatiotemporal Characteristics of Tokyo’s Urban Landscapes and Thermal Environment
3.2. Interconnections of SUHII with Urban Development
3.3. Spatial Relationships of SUHII and Land Cover/Use
4. Discussion
4.1. Land Use Policies and SUHI Magnitude
4.2. Toward a Livable Urban Environment
5. Conclusions
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
Appendix A
Serial no. (year) | Centroid_X (Longitude °) | Centroid_Y (Latitude °) | Long Axis (m) | Short Axis (m) | Long Axis/Short Axis | Rotation (°) |
---|---|---|---|---|---|---|
2001 | 139.54 | 35.68 | 29,227.03 | 18,516.53 | 1.58 | 23.73 |
2006 | 139.55 | 35.64 | 30,823.80 | 16,857.33 | 1.83 | 24.67 |
2013 | 139.64 | 35.68 | 28,311.34 | 19,289.65 | 1.47 | 43.86 |
2015 | 139.57 | 35.67 | 27,584.21 | 20,305.18 | 1.36 | 16.44 |
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LC Class | Description |
---|---|
Agricultural land (AL) | Rainfed cropland, irrigated cropland, mosaic cropland (>50%); natural vegetation (trees, shrubs, herbaceous cover) (<50%), mosaic natural vegetation (>50%); cropland (<50%) |
Forest land (FL) | Tree cover: broadleaved, evergreen, deciduous, needle-leaved, closed to open (>15%); mixed leaf, mosaic tree, and shrub (>50%); herbaceous cover (<50%) |
Mixed land (ML) | Bare area, wetland, shrubland, lichens, and mosses, sparse vegetation |
Urban fabric (UF) | Urban settlements, buildings, roads, and artificially surfaced areas |
Water area (WA) | Water |
Spacecraft | Landsat Sensor | Acquisition Time | GMT Time | Band Average Atmospheric Transmission | Effective Bandpass Upwelling Radiance | Effective Bandpass Downwelling Radiance |
---|---|---|---|---|---|---|
LANDSAT_7 | ETM | 24/9/2001 | 1:04:17 | 0.87 | 0.97 | 1.61 |
LANDSAT_5 | TM | 16/10/2006 | 1:09:59 | 0.79 | 1.57 | 2.54 |
LANDSAT_8 | OLI_TIRS | 17/9/2013 | 1:17:48 | 0.82 | 1.47 | 2.42 |
LANDSAT_8 | OLI_TIRS | 9/10/2015 | 1:15:51 | 0.88 | 0.9 | 1.54 |
Significance Level | 99.9% Significant | 99% Significant | 95% Significant | 90% Significant | Not Significant |
---|---|---|---|---|---|
Classification criteria (z) | z > 3.29 or z < −3.29 | z > 2.58 or z < −2.58 | z > 1.96 or z < −1.96 | z > 1.65 or z < −1.65 | −1.65 < z < 1.65 |
Variable | Signif. | OLS | GWR | ||||
---|---|---|---|---|---|---|---|
Coefficient | SE | t | VIF | Mean Coefficient | Std. dev Coefficient | ||
2001 | |||||||
Intercept | *** | −2.200 | 0.039 | −56.795 | −1.418 | 1.983 | |
CONTAG | *** | 0.042 | 0.002 | 23.191 | 1.202 | 0.009 | 0.034 |
Elevation | . | −2.154 | 0.716 | −3.010 | 1.009 | −1.095 | 4.237 |
Population | *** | 0.019 | 0.001 | 17.605 | 3.320 | 0.068 | 0.097 |
UFP | *** | 3.597 | 0.081 | 44.420 | 3.311 | 2.055 | 1.236 |
FP | *** | −3.028 | 0.095 | −31.972 | 1.178 | −3.030 | −3.573 |
2006 | |||||||
Intercept | *** | −2.689 | 0.042 | −63.446 | −1.510 | 2.428 | |
CONTAG | *** | 0.055 | 0.002 | 28.557 | 1.216 | 0.016 | 0.039 |
Elevation | −2.245 | 0.770 | −2.914 | 1.009 | −0.396 | 5.130 | |
Population | ** | 0.015 | 0.001 | 14.442 | 3.041 | 0.051 | 0.072 |
UFP | *** | 4.043 | 0.083 | 48.612 | 3.022 | 2.414 | 1.601 |
FP | *** | −2.158 | 0.105 | −20.628 | 1.184 | −2.457 | 3.354 |
2013 | |||||||
Intercept | *** | −3.796 | 0.035 | −107.340 | −2.801 | 1.605 | |
CONTAG | *** | 0.034 | 0.001 | 22.936 | 1.253 | 0.008 | 0.029 |
Elevation | −1.235 | 0.590 | −2.092 | 1.011 | −0.148 | 3.805 | |
Population | *** | 0.030 | 0.001 | 42.321 | 2.635 | 0.068 | 0.066 |
UFP | *** | 5.571 | 0.058 | 96.675 | 2.523 | 3.793 | 1.521 |
FP | *** | −1.267 | 0.083 | −15.351 | 1.201 | −0.819 | 2.412 |
2015 | |||||||
Intercept | *** | −3.687 | 0.040 | −91.403 | −2.023 | 2.061 | |
CONTAG | *** | 0.060 | 0.002 | 36.415 | 1.253 | 0.017 | 0.036 |
Elevation | ** | −2.512 | 0.655 | −3.835 | 1.010 | −0.781 | 3.332 |
Population | *** | 0.017 | 0.001 | 22.201 | 2.560 | 0.039 | 0.046 |
UFP | *** | 4.962 | 0.064 | 77.940 | 2.452 | 3.080 | 1.853 |
FP | *** | −0.393 | 0.092 | −4.268 | 1.202 | −0.832 | 3.089 |
Diagnostics | ||||||||
---|---|---|---|---|---|---|---|---|
2001 | 2006 | 2013 | 2015 | |||||
OLS | ||||||||
AICc | 30,707.0348 | 31,876.9032 | 27,633.9224 | 29,298.5158 | ||||
R-squared | 0.6527 | 0.6215 | 0.8479 | 0.7284 | ||||
Adjusted R-squared | 0.6524 | 0.6213 | 0.8478 | 0.7282 | ||||
Sigma2 | 2.8064 | 3.2524 | 1.9051 | 2.3499 | ||||
Moran’s I (MI) | 0.7563 | *** | 0.7531 | *** | 0.5881 | *** | 0.6539 | *** |
GWR | ||||||||
Bandwidth | 7865.0869 | 7927.2010 | 9178.8466 | 9324.3980 | ||||
Residual squares | 5654.6935 | 6006.6736 | 6529.5922 | 5784.9793 | ||||
Effective Number | 304.8643 | 301.9406 | 235.4162 | 229.2992 | ||||
AICc | 20,265.3305 | 20,739.8789 | 21,305.8567 | 20,336.6583 | ||||
R-squared | 0.9117 | 0.9118 | 0.9342 | 0.9157 | ||||
Adjusted R-squared | 0.9082 | 0.9083 | 0.9322 | 0.9132 | ||||
Sigma2 | 0.8610 | 0.8872 | 0.9210 | 0.8666 | ||||
Moran’s I (MI) | 0.3316 | *** | 0.3532 | *** | 0.3417 | *** | 0.3930 | *** |
F of GWR Improvement | 8.0804 | *** | 7.0857 | *** | 5.1831 | *** | 7.3013 | *** |
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Liu, F.; Hou, H.; Murayama, Y. Spatial Interconnections of Land Surface Temperatures with Land Cover/Use: A Case Study of Tokyo. Remote Sens. 2021, 13, 610. https://doi.org/10.3390/rs13040610
Liu F, Hou H, Murayama Y. Spatial Interconnections of Land Surface Temperatures with Land Cover/Use: A Case Study of Tokyo. Remote Sensing. 2021; 13(4):610. https://doi.org/10.3390/rs13040610
Chicago/Turabian StyleLiu, Fei, Hao Hou, and Yuji Murayama. 2021. "Spatial Interconnections of Land Surface Temperatures with Land Cover/Use: A Case Study of Tokyo" Remote Sensing 13, no. 4: 610. https://doi.org/10.3390/rs13040610
APA StyleLiu, F., Hou, H., & Murayama, Y. (2021). Spatial Interconnections of Land Surface Temperatures with Land Cover/Use: A Case Study of Tokyo. Remote Sensing, 13(4), 610. https://doi.org/10.3390/rs13040610