Mapping and Analyzing the Park Cooling Effect on Urban Heat Island in an Expanding City: A Case Study in Zhengzhou City, China
Abstract
:1. Introduction
2. Study Area
3. Data Sources and Methods
3.1. Data Used
3.2. Retrieval of LST and the Average LST Calculation
- (1)
- Conversion to Spectral Radiance [49];
- (2)
- Conversion to top of Atmosphere Radiance [49];
- (3)
- Conversion to Top of Atmosphere Brightness Temperature [49];
- (4)
- Calculation of Proportion of Vegetation [50];
- (5)
- Estimation of estimate land surface emissivity (LSE) [48];
- (6)
- Retrieval of land surface temperature (LST).
3.3. Sample Selection
3.4. Determination of the Park Cooling Intensity (PCI)
3.5. Patch Descriptors of the Park
3.6. Analysis Methods
4. Results
4.1. Relation between Park Types, LST and PCI
4.2. Relation between Park LST and Its Impact Factor
4.3. Relation between PCI and Its Impact Factor
5. Discussion
5.1. Impact Factors of PCI
5.2. Impact Factors of Park LST
5.3. Implications for Urban Planning and Landscape Design
- (1)
- In urban planning and design: increase the number of theme park types in the city, increase the park size and number in a new town/district planning;
- (2)
- In landscape design and renewal: increase the park size, plan more vegetation and water area in parks, as well as reduce the impervious surface. At the same time, in case we follow PCI aspect of decreasing UHI we could make the park shape less complex in site design with less curving boundaries and less waving edges (based on Frac_Dim), we can consider the options of lowering the perimeter area ratio of the park by designing compact layout (Figure 9). Of course, in urban planning and design there are many other aspects to be considered, such as existing ecological corridors, road network, residential areas, wind corridors, visual preferences;
- (3)
- Add more parks (green spaces) in the area within high impervious surface ratio, in central urban area, represented by tall buildings and impervious surfaces of commercial and built-up areas. In addition, increase the park type of high cooling effect such as theme parks and urban parks in Zhengzhou.
6. Conclusions
- (1)
- The characteristics of the park defined by its size, perimeter area ratio and fractal dimensions all affect the PCI directly. Because of these defining factors, there seems to be a positive correlation with FVC and NDWI, while NDISI has a negative impact on the PCI;
- (2)
- The PCI is influenced by the surrounding land cover types coupled with the type of vegetation cover and water coverage. Because of these surrounding influences, the PCI has a directly proportional relationship to the surrounding impervious surface cover. A park’s PCI has many factors to consider when understanding its mitigating effects on the UHI of its surrounding context. By first considering the factors that influence a park’s temperature, we can start to change the cooling properties which help mitigate the UHI effects seen throughout cities.
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
References
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Date | Path/Row | Band | Wavelength (μm) | Resolution (m) |
---|---|---|---|---|
07 July 2019 | 124/36 | Band 1—Ultra Blue | 0.435–0.451 | 30 |
Band 2—Blue (B) | 0.452–0.512 | 30 | ||
Band 3—Green (G) | 0.533–0.590 | 30 | ||
Band 4—Red (R) | 0.636–0.673 | 30 | ||
Band 5—Near Infrared (NIR) | 0.851–0.879 | 30 | ||
Band 6—Shortwave Infrared (SWIR) 1 | 1.566–1.651 | 30 | ||
Band 7—Shortwave Infrared (SWIR) 2 | 2.107–2.294 | 30 | ||
Band 10 *—Thermal Infrared (TIR) | 10.60–11.19 | 100 * (30) |
Types | Number | Percentage | Maximal Area (ha) | Minimal Area (ha) | Main Example |
---|---|---|---|---|---|
Urban Park | 59 | 48% | 87.16 | 3.12 | City park, District park |
Theme Park | 10 | 8% | 108.53 | 10.61 | Botanical garden, Zoo |
Street Park | 28 | 23% | 25.26 | 1.23 | Pocket park, community park. |
Linear Park | 19 | 15% | 62.02 | 2.13 | Riverside park, roadside park |
Urban Square | 7 | 6% | 6.64 | 2.15 | Square |
Name | Equation | Description |
---|---|---|
Perimeter-Area Ratio * | Pi = perimeter (m) of patch i. Ai = area (m2) of patch i. Paratio equals the ratio of the patch perimeter (m) to area (m2) [54]. | |
Landscape Shape Index * | Landscape shape index provides a standardized measure of total edge or edge density that adjusts for the size of the landscape [54]. | |
Fractal Dimension Index * | Fractal Dimension Index reflects the extent of shape complexity across a range of spatial scales [54]. |
Name | Equation | Description |
---|---|---|
NDWI | Normalize Difference Water Index (NDWI) is a remote sensing based indicator sensitive to the open water surface and water content of leaves [55]. | |
NDVI | Normalize Difference Vegetation Index (NDVI) is used o determine the density of green on a patch of land [10]. | |
FVC* | The Fractional Vegetation Cover (FVC) is mainly depicts the vegetation abundance of ground surface [58]. | |
MNDWI | Modified Normalize Difference Water Index (MNDWI) is an indicator used to determine the open water area [59]. | |
NDISI | Normalize Difference Impervious Surface Index (NDISI) indicator is used to estimate impervious surface [57]. |
Code | Type | Number | Mean LST (°C) | Max (°C) | Min (°C) | Average PCI (°C) |
---|---|---|---|---|---|---|
1 | Urban park | 59 | 30.43 | 33.63 | 27.63 | 1.71 |
2 | Theme park | 10 | 30.01 | 34.62 | 25.97 | 2.76 |
3 | Street park | 28 | 31.32 | 37.80 | 25.34 | 0.8 |
4 | Linear park | 19 | 31.47 | 35.42 | 28.56 | 0.64 |
5 | Urban square | 7 | 32.13 | 33.90 | 31.10 | 1.44 |
6 | Zhengzhou city | - | 32.15 | 46.09 | 20.11 | - |
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Li, H.; Wang, G.; Tian, G.; Jombach, S. Mapping and Analyzing the Park Cooling Effect on Urban Heat Island in an Expanding City: A Case Study in Zhengzhou City, China. Land 2020, 9, 57. https://doi.org/10.3390/land9020057
Li H, Wang G, Tian G, Jombach S. Mapping and Analyzing the Park Cooling Effect on Urban Heat Island in an Expanding City: A Case Study in Zhengzhou City, China. Land. 2020; 9(2):57. https://doi.org/10.3390/land9020057
Chicago/Turabian StyleLi, Huawei, Guifang Wang, Guohang Tian, and Sándor Jombach. 2020. "Mapping and Analyzing the Park Cooling Effect on Urban Heat Island in an Expanding City: A Case Study in Zhengzhou City, China" Land 9, no. 2: 57. https://doi.org/10.3390/land9020057