Analysis of Urban Expansion and Heat-Island Effect of Hefei Based on ENVI
Abstract
:1. Introduction
2. Data Collection
2.1. Study Area
2.2. Image Data
3. Methodology
3.1. Pre-Processing
3.1.1. Radiometric Calibration
3.1.2. Atmospheric Correction
3.2. Land-Use Classification
3.3. Dynamic Monitoring
3.4. NDVI and VFC
3.5. Land Surface Temperature
4. Experiment
4.1. Pre-Processing
4.2. Land-Use Analysis
4.2.1. Classification
4.2.2. Confusion Matrix
4.3. Change Detection
4.3.1. Majority/Minority Analysis
4.3.2. Thematic Change Workflow
4.4. Vegetation Coverage Analysis
4.5. Land Surface Temperature Retrieval
4.5.1. Retrieval of Land Surface Temperature
4.5.2. Raster Normalization
5. Results and Analysis
5.1. Land-Use and Land-Cover Change
5.2. Analysis of Construction Land Expansion
5.3. Drivers of Urban Expansion
5.3.1. Natural Geography
5.3.2. Economic Development
5.3.3. Population Growth
5.3.4. Government Policy
5.4. Analysis of Vegetation Coverage
5.5. Analysis of Heat-Island Effect
5.6. LST and VFC
6. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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File Name | 26 March 1995 | 19 April 2005 | 10 April 2018 |
---|---|---|---|
Location | Hefei | ||
Sensor | Landsat5 TM | Landsat5 TM | Landsat8 OLI |
Spatial | 30 m × 30 m | ||
Temporal | March 1995 | April 2005 | April 2018 |
Spectral (micrometers) | Band 1 = Blue (0.45–0.52) Band 2 = Green (0.52–0.6) Band 3 = Red (0.63–0.69) Band 4 = NIR (0.76–0.9) Band 5 = SWIR (1.55–1.75) Band 6 = TIR (10.4–12.5) Band 7 = SWIR (2.08–2.35) | Band 1 = Blue (0.45–0.52) Band 2 = Green (0.52–0.6) Band 3 = Red (0.63–0.69) Band 4 = NIR (0.76–0.9) Band 5 = SWIR (1.55–1.75) Band 6 = TIR (10.4–12.5) Band 7 = SWIR (2.08–2.35) | Band 1 = Coastal (0.433–0.453) Band 2 = Blue (0.450–0.515) Band 3 = Green (0.525–0.6) Band 4 = Red (0.630–0.680) Band 5 = NIR (0.845–0.885) Band 6 = SWIR 1 (1.560–1.660) Band 7 = SWIR 2 (2.100–2.300) Band 8 = Pan (0.500–0.680) Band 9 = Cirrus (1.360–1.390) Band 10 = TIRS 1 (10.6–11.2) Band 11 = TIRS 2 (12.0–12.5) |
1995 | 2005 | 2018 | |
---|---|---|---|
Overall Accuracy | 84.97% | 81.25% | 88.65% |
Kappa Coefficient | 0.803 | 0.749 | 0.836 |
Confidence Interval | April 2005 | April 2018 |
---|---|---|
NDVImin (5%) | −0.442 | −0.475 |
NDVImax (95%) | 0.174 | 0.788 |
Confidence Interval | April 2005 | April 2018 |
---|---|---|
Tmin (3%) | 17.211 °C | 16.783 °C |
Tmax (97%) | 26.501 °C | 32.642 °C |
Year | Construction Land | Vegetation | Water | Other |
---|---|---|---|---|
1995 | 719.032 km2 | 1605.210 km2 | 699.452 km2 | 8396.535 km2 |
2005 | 1081.202 km2 | 1385.600 km2 | 916.329 km2 | 8037.095 km2 |
2018 | 1518.418 km2 | 1149.689 km2 | 902.601 km2 | 7849.529 km2 |
Year | Original Construction Land | “Vegetation” to “Construction Land” | “Water” to “Construction Land” | “Other” to “Construction Land” | Total Construction Land |
---|---|---|---|---|---|
1995 to 2005 | 161.105 km2 (46.857%) | 9.003 km2 (2.618%) | 4.752 km2 (1.382%) | 168.963 km2 (49.143%) | 343.823 km2 |
2005 to 2018 | 343.823 km2 (42.844%) | 5.823 km2 (0.726%) | 13.852 km2 (1.726%) | 438.998 km2 (54.704%) | 802.496 km2 |
Year | V (Urban Expansion Rate) | AGR (Urban Expansion Intensity) |
---|---|---|
1995 to 2005 | 18.272 (km2/year) | 11.342% |
2005 to 2018 | 35.283 (km2/year) | 12.262% |
1995 to 2018 | 27.887 (km2/year) | 17.310% |
VFC Grade | April 2005 | April 2018 |
---|---|---|
Low Vegetation Coverage (0 to 0.2) | 8.326% | 8.091% |
Sub-low Vegetation Coverage (0.2 to 0.4) | 1.864% | 1.752% |
Medium Vegetation Coverage (0.4 to 0.6) | 8.874% | 10.740% |
Sub-high Vegetation Coverage (0.6 to 0.8) | 49.139% | 39.785% |
High Vegetation Coverage (0.8 to 1.0) | 31.797% | 39.632% |
VFC Grade | 2005 to 2018 |
---|---|
Low Vegetation Coverage (0 to 0.2) | −0.235% |
Sub-low Vegetation Coverage (0.2 to 0.4) | −0.112% |
Medium Vegetation Coverage (0.4 to 0.6) | 1.866% |
Sub-high Vegetation Coverage (0.6 to 0.8) | −9.354% |
High Vegetation Coverage (0.8 to 1.0) | 7.835% |
Range (°C) | Percent (%) |
---|---|
Less than 20 | 8.658 |
20 to 22 | 13.645 |
22 to 24 | 35.593 |
24 to 26 | 37.105 |
More than 26 | 4.999 |
Range (°C) | Percent (%) |
---|---|
Less than 24 | 10.105 |
24 to 26 | 12.569 |
26 to 28 | 31.122 |
28 to 30 | 27.372 |
More than 30 | 18.832 |
Time | |||
---|---|---|---|
19 April 2005 | 14.368 °C | 42.545 °C | 23.460 °C |
10 April 2018 | 16.162 °C | 46.243 °C | 27.487 °C |
LST Grade | April 2005 | April 2018 |
---|---|---|
Low Temperature (0 to 0.2) | 8.201% | 7.282% |
Sub-low Temperature (0.2 to 0.4) | 2.172% | 1.514% |
Medium Temperature (0.4 to 0.6) | 22.518% | 15.734% |
Sub-high Temperature (0.6 to 0.8) | 46.291% | 48.952% |
High Temperature (0.8 to 1.0) | 20.818% | 26.518% |
Mean | 0.632 | 0.673 |
LST Grade | 2005 to 2018 |
---|---|
Low Temperature (0 to 0.2) | −0.919% |
Sub-low Temperature (0.2 to 0.4) | −0.658% |
Medium Temperature (0.4 to 0.6) | −6.784% |
Sub-high Temperature (0.6 to 0.8) | 2.661% |
High Temperature (0.8 to 1.0) | 5.7% |
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Meng, J.; Gao, Y. Analysis of Urban Expansion and Heat-Island Effect of Hefei Based on ENVI. Sustainability 2024, 16, 5893. https://doi.org/10.3390/su16145893
Meng J, Gao Y. Analysis of Urban Expansion and Heat-Island Effect of Hefei Based on ENVI. Sustainability. 2024; 16(14):5893. https://doi.org/10.3390/su16145893
Chicago/Turabian StyleMeng, Junlei, and Yang Gao. 2024. "Analysis of Urban Expansion and Heat-Island Effect of Hefei Based on ENVI" Sustainability 16, no. 14: 5893. https://doi.org/10.3390/su16145893
APA StyleMeng, J., & Gao, Y. (2024). Analysis of Urban Expansion and Heat-Island Effect of Hefei Based on ENVI. Sustainability, 16(14), 5893. https://doi.org/10.3390/su16145893