PM2.5 Estimation and Spatial-Temporal Pattern Analysis Based on the Modified Support Vector Regression Model and the 1 km Resolution MAIAC AOD in Hubei, China
Abstract
:1. Introduction
2. Materials and Methodology
2.1. Study Area
2.2. Experimental Data
2.2.1. MAIAC and MODIS AOD Data
2.2.2. Auxiliary Variables
- Meteorological data
- Land cover data
2.2.3. Ground PM2.5 Measurements
2.2.4. Data Pre-Processing and Integration
2.2.5. Model Constructing and Training
2.3. Principle of SVR
2.4. Basi Idea of MSVR
3. Experiments and Results
3.1. MSVR Model Construction and PM2.5 Estimations
3.1.1. Statistical Features of the Variables
3.1.2. Estimated PM2.5 by MSVR
3.2. Pattern Analysis of PM2.5 Concentrations
3.2.1. Spatial Pattern of the Estimated PM2.5
3.2.2. Seasonal Pattern of the Estimated PM2.5
4. Discussion
4.1. Performance of the MSVR Model
4.2. Advantages of MAIAC AOD
4.3. Analyses of the Spatiotemporal Pattern of PM2.5
4.4. Limitations
5. Conclusions
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
References
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Variables | Unit | Description | Temporal Period |
---|---|---|---|
PM2.5 | μg/m3 | Particulate matter smaller than 2.5 in aerodynamic diameter | Hourly average of 10:00 am to 13:00 pm |
AOD | Satellite-retrieved Aerosol Optical Depth | Daily data | |
RH | % | Relative Humidity | Hourly instantaneous data |
BLH | (m) | Boundary Layer Height | |
T | °C | 2 m Temperature | |
Land Cover | Vegetation coverage and construction factors | Remote sensing monitoring data of China’s land use status in 2015 |
Variables | Mean | Max | Min | Std.Dev. |
---|---|---|---|---|
PM2.5 | 66.79 | 344.66 | 4.00 | 43.40 |
AOD (unit less) | 0.48 | 3.27 | 0.09 | 0.31 |
Relative humidity (%) | 3.5 | 13.8 | 0.6 | 4.7 |
BLH (km) | 1.35 | 2.01 | 0.79 | 0.43 |
2m temperature (°C) | 14.25 | 33.23 | 4.06 | 5.52 |
Variables | Mean | Max | Min | Std.Dev. |
---|---|---|---|---|
PM2.5 | 52.91 | 328.00 | 2.33 | 34.70 |
AOD (unit less) | 0.43 | 3.57 | 0.00 | 0.36 |
Relative humidity (%) | 3.8 | 14.2 | 0.8 | 4.5 |
BLH (km) | 1.41 | 2.86 | 0.84 | 0.58 |
2m temperature (°C) | 14.73 | 36.44 | 2.36 | 6.89 |
Model | Time Period | R2 | ||
---|---|---|---|---|
SVR | Whole year (2017) | 0.60 | 11.16 | 12.58 |
Spring | 0.61 | 12.14 | 14.53 | |
Summer | 0.50 | 10.54 | 12.55 | |
Autumn | 0.56 | 12.63 | 15.31 | |
Winter | 0.64 | 13.35 | 15.68 | |
Modified SVR (MSVR) | Whole year (2017) | 0.74 | 9.74 | 10.85 |
Spring | 0.69 | 10.69 | 13.76 | |
Summer | 0.53 | 8.33 | 10.36 | |
Autumn | 0.70 | 10.01 | 14.02 | |
Winter | 0.82 | 12.35 | 14.71 |
Model | Time Period | R2 | ||
---|---|---|---|---|
SVR | Whole year (2018) | 0.66 | 10.11 | 12.85 |
Spring | 0.53 | 11.04 | 13.66 | |
Summer | 0.52 | 9.62 | 11.47 | |
Autumn | 0.60 | 11.39 | 13.18 | |
Winter | 0.72 | 12.65 | 14.92 | |
Modified SVR (MSVR) | Whole year (2018) | 0.78 | 8.92 | 11.32 |
Spring | 0.61 | 9.58 | 11.89 | |
Summer | 0.59 | 8.27 | 11.01 | |
Autumn | 0.76 | 10.17 | 12.22 | |
Winter | 0.80 | 11.64 | 12.15 |
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Chen, N.; Yang, M.; Du, W.; Huang, M. PM2.5 Estimation and Spatial-Temporal Pattern Analysis Based on the Modified Support Vector Regression Model and the 1 km Resolution MAIAC AOD in Hubei, China. ISPRS Int. J. Geo-Inf. 2021, 10, 31. https://doi.org/10.3390/ijgi10010031
Chen N, Yang M, Du W, Huang M. PM2.5 Estimation and Spatial-Temporal Pattern Analysis Based on the Modified Support Vector Regression Model and the 1 km Resolution MAIAC AOD in Hubei, China. ISPRS International Journal of Geo-Information. 2021; 10(1):31. https://doi.org/10.3390/ijgi10010031
Chicago/Turabian StyleChen, Nengcheng, Meijuan Yang, Wenying Du, and Min Huang. 2021. "PM2.5 Estimation and Spatial-Temporal Pattern Analysis Based on the Modified Support Vector Regression Model and the 1 km Resolution MAIAC AOD in Hubei, China" ISPRS International Journal of Geo-Information 10, no. 1: 31. https://doi.org/10.3390/ijgi10010031