The Spatial Patterns of Land Surface Temperature and Its Impact Factors: Spatial Non-Stationarity and Scale Effects Based on a Geographically-Weighted Regression Model
Abstract
:1. Introduction
2. Study Area
3. Methods
3.1. Image Pre-Processing and Land-Cover Classification
3.2. Derivation of the Variables
3.2.1. Dependent Variable: LST
3.2.2. Explanatory Variables: FVC, IS, Population Density (PD), Fossil-Fuel CO2 Emission, SHDI and PAFRAC
Fractional Vegetation Cover (FVC)
Extraction of Impervious Surface (IS)
Population Density (PD) Data
Fossil-Fuel CO2 Emission Data (FFCOE)
The Shannon Diversity Index (SHDI)
Perimeter-Area Fractal Dimension (PAFRAC)
Geographically-Weighted Regression (GWR) Model
3.3. Hot Spot Analysis
4. Results
4.1. Hot and Cold Spots in Zhengzhou City
4.2. The Relationships between the LST and Explanatory Variables at a Single Scale
4.2.1. Contrastive Analysis between the GWR and OLS Models
4.2.2. The Spatial Non-Stationarity between LST and the Impact Factors
4.3. Effects of the Relationships between the LST and Explanatory Variables at Different Resolutions
4.4. Variations of the GWR and OLS Models at Different Scales
5. Discussion
5.1. Implications of the Relationships between LST and Its Impact Factors
5.2. Implications for Choosing GWR and OLS Models
5.3. Limitations
5.4. Implications of Suitable Spatial Scales in GWR and OLS Models
6. Conclusions
- (1)
- This study indicates that the intensity of UHI is significantly spatial clustering in Zhengzhou City. Hot spot zones were clustered in urban center and the western and southern industrial areas. The Cold spots zones were located in the city periphery areas (in the North and Southwest directions).
- (2)
- Study results from the single-factor models indicates that these influence factors can affect LST significantly. LST is strongly positively related to the IS variable. However, a negative relationship exists between LST and FVC. It should be pointed out that population density (PD) and Fossil-fuel CO2 emission (FFCOE) variables are positively correlated to the LST, implying that these social-ecological variables can affect the magnitude of LST to some extent. In addition, the SHDI and PAFRAC variables, indicating the diversity and shape complexity of land cover types, respectively, have both negative and positive correlations to the LST in different areas. This reveals the unstable relationships between LST and PAFRAC and SHDI variables.
- (3)
- Overall, compared with the OLS model, the GWR model has a better ability to characterize spatial non-stationarity and analyze the relationships between the LST and its impact factors by considering the space-varying relationships of different variables, especially at the fine spatial scales (30–480 m). However, the strength of GWR model has become relatively weak with the increase of spatial scales (720–1200 m). Given the important principles of the higher R2 and lower AICc values for finding the optimal scales, we can infer that the GWR model is recommended to be applied in the analysis of UHI problems and related impact factors at scales finer than 480 m in the plain city. If the spatial scale of remote sensing data is coarser than 720 m, both OLS and GWR models are suitable for illustrating the correct relationships between UHI effect and its influence factors in the plain city due to their undifferentiated performance. In general, these findings provide valuable information for urban planners and researchers to select appropriate models and spatial scales seeking to mitigate the negative effect of urbanization on urban thermal environment.
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
Abbreviations
LST | Land surface temperature |
UHI | Urban heat island |
GWR | Geographically-Weighted regression |
OLS | Ordinary Least squares |
FVC | Fractional Vegetation Cover |
IS | Impervious surface |
PD | Population Density |
FFCOE | Fossil-fuel CO2 emission |
SHDI | Shannon diversity index |
PAFRAC | Perimeter-area fractal dimension |
NDVI | Normalized difference vegetation index |
AICc | Corrected Akaike Information Criterion |
R2 | Coefficient of determination |
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Explanatory Variables | Model | AICc | Adjusted R2 | F |
---|---|---|---|---|
FVC | OLS | 15,620.53 | 0.53 | |
GWR | 6848.84 | 0.90 | 44.53 | |
IS | OLS | 15,626.42 | 0.52 | |
GWR | 6793.64 | 0.92 | 44.62 | |
PD | OLS | 16,778.61 | 0.59 | |
GWR | 7055.72 | 0.89 | 67.76 | |
FFCOE | OLS | 16,712.64 | 0.51 | |
GWR | 7081.27 | 0.91 | 57.64 | |
SHDI | OLS | 16,763.61 | 0.59 | |
GWR | 13,991.03 | 0.76 | 135.75 | |
PAFRAC | OLS | 16,763.61 | 0.59 | |
GWR | 13,957.68 | 0.77 | 135.65 | |
All explanatory variables | OLS | 15,460.78 | 0.59 | |
GWR | 11,818.52 | 0.82 | 56.08 |
GWR ANOVA Table | ||||
---|---|---|---|---|
Source | SS | DF | MS | F |
OLS Residuals | 8744.31 | 5792.00 | ||
GWR Improvement | 7176.65 | 1306.93 | 5.49 | |
GWR Residuals | 1567.66 | 4485.07 | 0.35 | 15.71 |
30 m | 120 m | 300 m | 480 m | 720 m | 960 m | 1080 m | 1200 m | |
---|---|---|---|---|---|---|---|---|
Minimum | −2.45 | −2.16 | −2.12 | −2.26 | −2.16 | −2.05 | −1.93 | −1.82 |
Maximum | 2.98 | 2.81 | 2.91 | 2.49 | 2.45 | 2.14 | 2.05 | 1.98 |
SD | 0.79 | 0.75 | 0.73 | 0.71 | 0.69 | 0.67 | 0.57 | 0.51 |
Moran’s I | 0.12 | 0.15 | 0.16 | 0.18 | 0.21 | 0.24 | 0.27 | 0.31 |
Model | Parameters | 30 m | 120 m | 300 m | 480 m | 720 m | 960 m | 1080 m | 1200 m |
---|---|---|---|---|---|---|---|---|---|
GWR | AICc | 11,818.52 | 10,519.81 | 10,384.11 | 9721.24 | 5630.83 | 3093.41 | 2422.88 | 1951.86 |
Adjusted R2 | 0.82 | 0.83 | 0.83 | 0.84 | 0.86 | 0.87 | 0.88 | 0.89 | |
OLS | AICc | 15,460.78 | 13,870.41 | 12,963.29 | 11,076.07 | 6907.66 | 3765.59 | 2989.28 | 2432.02 |
Adjusted R2 | 0.59 | 0.60 | 0.63 | 0.65 | 0.68 | 0.70 | 0.72 | 0.75 |
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Zhao, H.; Ren, Z.; Tan, J. The Spatial Patterns of Land Surface Temperature and Its Impact Factors: Spatial Non-Stationarity and Scale Effects Based on a Geographically-Weighted Regression Model. Sustainability 2018, 10, 2242. https://doi.org/10.3390/su10072242
Zhao H, Ren Z, Tan J. The Spatial Patterns of Land Surface Temperature and Its Impact Factors: Spatial Non-Stationarity and Scale Effects Based on a Geographically-Weighted Regression Model. Sustainability. 2018; 10(7):2242. https://doi.org/10.3390/su10072242
Chicago/Turabian StyleZhao, Hongbo, Zhibin Ren, and Juntao Tan. 2018. "The Spatial Patterns of Land Surface Temperature and Its Impact Factors: Spatial Non-Stationarity and Scale Effects Based on a Geographically-Weighted Regression Model" Sustainability 10, no. 7: 2242. https://doi.org/10.3390/su10072242
APA StyleZhao, H., Ren, Z., & Tan, J. (2018). The Spatial Patterns of Land Surface Temperature and Its Impact Factors: Spatial Non-Stationarity and Scale Effects Based on a Geographically-Weighted Regression Model. Sustainability, 10(7), 2242. https://doi.org/10.3390/su10072242