Satellite Remote Sensing of Surface Urban Heat Islands: Progress, Challenges, and Perspectives
Abstract
:1. Introduction
2. Historical Review
2.1. Characteristics of Research Output
2.1.1. Criteria Used to Select Literature
2.1.2. Historical Trend
2.1.3. Geographic Patterns
2.1.4. The Study Time of Day and Season
2.1.5. Research Foci
2.2. Milestones in Remote Sensing of SUHI
3. Satellite Sensors for SUHI Studies
3.1. Landsat
3.2. MODIS
3.3. ASTER
4. Methods for Measuring the SUHI
4.1. Using LST as a Proxy of SUHI
4.2. LST Differences between Urban and Surrounding Reference Areas
4.3. Statistical Models
5. Key Research Findings
5.1. Understanding the Energy Basics for SUHI
5.2. SUHI Variations at a Local Scale and Their Drivers
5.3. SUHI Variations among Cities and Their Drivers
5.4. Relationship between Surface and Air UHIs
6. Research Challenges
6.1. Differences between Satellite-Derived LST and Air Temperatures
6.2. Impacts of Clouds and Other Factors on LST Data
6.3. Trade-Off Between Spatial and Temporal Resolutions
6.4. Methods to Calculate SUHI Intensity
6.5. Concurrent Land Cover and Use Mapping
6.6. Accuracy Assessment
6.7. Methods to Attribute SUHI
6.8. Methodological Problems and Recommendation
7. Future Directions
7.1. More Attention to the Understudied Regions or Cities
7.2. New Methods to Quantify SUHI Intensity
7.3. Interannual Variability and Long-Term Trends of SUHI
7.4. Scale Issues of SUHI
7.5. Relationship with Subsurface Temperature
7.6. Integration of Remote Sensing with Field Observation and Numeric Modeling
8. Summary
Supplementary Materials
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
Abbreviations
SUHI | Surface urban heat island |
LST | Land surface temperature difference |
UHI | Urban heat island |
CLHI | Canopy layer heat island |
BLHI | Boundary layer heat island |
NDVI | Normalized difference vegetation index |
ISA | Impervious surface area |
USCs | Urban site characteristics |
IBI | Index-based built-up index |
NDBI | Normalized difference built-up index |
UI | Urbanization index |
FAI | Frontal area index |
FAR | Floor area ratio |
SVF | Sky view factor |
VF | Vegetation fraction |
NDWI | Normalized difference water index |
Tair | Air temperature |
LCZ | Local climate zone |
SubUHI | Subsurface urban heat island |
SubST | Subsurface temperature |
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Sensor | Landsat Series | MODIS | ASTER | Multiple Sensors | AVHRR | Others 1 |
---|---|---|---|---|---|---|
Proportion | 53% | 25% | 7% | 6% | 4% | 5% |
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Zhou, D.; Xiao, J.; Bonafoni, S.; Berger, C.; Deilami, K.; Zhou, Y.; Frolking, S.; Yao, R.; Qiao, Z.; Sobrino, J.A. Satellite Remote Sensing of Surface Urban Heat Islands: Progress, Challenges, and Perspectives. Remote Sens. 2019, 11, 48. https://doi.org/10.3390/rs11010048
Zhou D, Xiao J, Bonafoni S, Berger C, Deilami K, Zhou Y, Frolking S, Yao R, Qiao Z, Sobrino JA. Satellite Remote Sensing of Surface Urban Heat Islands: Progress, Challenges, and Perspectives. Remote Sensing. 2019; 11(1):48. https://doi.org/10.3390/rs11010048
Chicago/Turabian StyleZhou, Decheng, Jingfeng Xiao, Stefania Bonafoni, Christian Berger, Kaveh Deilami, Yuyu Zhou, Steve Frolking, Rui Yao, Zhi Qiao, and José A. Sobrino. 2019. "Satellite Remote Sensing of Surface Urban Heat Islands: Progress, Challenges, and Perspectives" Remote Sensing 11, no. 1: 48. https://doi.org/10.3390/rs11010048