Estimation of PM2.5 and PM10 Mass Concentrations in Beijing Using Gaofen-1 Data at 100 m Resolution
Abstract
:1. Introduction
2. Study Area and Data
2.1. Study Region
2.2. PM2.5/10 Measurement Data
2.3. AOD Data
2.4. Meteorological Data
2.5. Land-Use Variables
2.6. Simulation Data Fields
2.7. Data Integration
3. Methods
3.1. Proportional Relationship Formula
3.2. IGTWR
4. Results and Validation
4.1. Results of the Model Fitting and Validation
4.2. PM Estimation Using Satellite Remotely Sensed Data
5. Discussion
5.1. Effects of the Refined PM2.5/10 Measurement Stations
5.2. Comparisons with Other Studies
6. Conclusions
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Number | Designation | Number | Designation | Number | Designation |
---|---|---|---|---|---|
11 | Paddy field | 41 | Channel | 61 | Sand |
12 | Dry land | 42 | Lake | 62 | Gobi |
21 | Woodland | 43 | Reservoir pond | 63 | Saline alkali soil |
22 | Shrub wood | 44 | Permanent glacier and snow | 64 | Swamp land |
23 | Sparse woodland | 45 | Tidal flat | 65 | Bare land |
24 | Other woodlands | 46 | Beach land | 66 | Bare rock texture |
31 | High-coverage grassland | 51 | Urban land use | 67 | Other |
32 | Medium-coverage grassland | 52 | Rural settlements | 99 | Undefined |
33 | Low-coverage grassland | 53 | Other construction land |
Term | Unit | Definition |
---|---|---|
Simulated PM2.5 concentration | mg/m3 | PM2.5 or PM10 provided by CAMS, verification results with the 12 monitoring stations of the Ministry of Environmental Protection (MEP) within Beijing in 2020 show that the average R values are 0.59 and 0.43, respectively (https://cams2-82.aeroval.met.no/, accessed on 27 January 2024). |
Simulated AOD | unitless | AOD provided by CAMS, verification results with the AeronetL1.5-d of Beijing station in 2020 show that the R and R2 values are 0.80 and 0.89, respectively (https://cams2-82.aeroval.met.no/, accessed on 27 January 2024). |
GF AOD | unitless | The TERRA and AQUA satellite MODIS data were first downscaled by GF-1 WFV data, then calculated the AOD by the SRAP algorithm. |
GF PRF PM2.5/10 concentration | µg/m3 | PM2.5 or PM10 concentrations at 10:00 or 14:00 local time. |
Method | R2/RMSE | Coverage |
---|---|---|
PM2.5 GWC | 0.778/34.702 µg/m3 | 92.91% |
PM2.5 GWR | 0.660/25.434 µg/m3 | 40.73% |
PM10 GWC | 0.741/49.757 µg/m3 | 92.95% |
PM10 GWR | 0.550/38.052 µg/m3 | 40.93% |
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Wu, S.; Sun, Y.; Bai, R.; Jiang, X.; Jin, C.; Xue, Y. Estimation of PM2.5 and PM10 Mass Concentrations in Beijing Using Gaofen-1 Data at 100 m Resolution. Remote Sens. 2024, 16, 604. https://doi.org/10.3390/rs16040604
Wu S, Sun Y, Bai R, Jiang X, Jin C, Xue Y. Estimation of PM2.5 and PM10 Mass Concentrations in Beijing Using Gaofen-1 Data at 100 m Resolution. Remote Sensing. 2024; 16(4):604. https://doi.org/10.3390/rs16040604
Chicago/Turabian StyleWu, Shuhui, Yuxin Sun, Rui Bai, Xingxing Jiang, Chunlin Jin, and Yong Xue. 2024. "Estimation of PM2.5 and PM10 Mass Concentrations in Beijing Using Gaofen-1 Data at 100 m Resolution" Remote Sensing 16, no. 4: 604. https://doi.org/10.3390/rs16040604
APA StyleWu, S., Sun, Y., Bai, R., Jiang, X., Jin, C., & Xue, Y. (2024). Estimation of PM2.5 and PM10 Mass Concentrations in Beijing Using Gaofen-1 Data at 100 m Resolution. Remote Sensing, 16(4), 604. https://doi.org/10.3390/rs16040604