Improved Satellite Retrieval of Tropospheric NO2 Column Density via Updating of Air Mass Factor (AMF): Case Study of Southern China
Abstract
:1. Introduction
2. Methodologies for Satellite Retrieval
2.1. Principles of NO2 Remote Sensing
2.2. BEHR Algorithm for NO2 Column Retrieval
2.2.1. Calculation of AMF and Tropospheric VCDs
2.2.2. Differences in BEHR-HK v3.0A, v3.0B and v3.0C Retrieval
2.3. CMAQ Tropospheric VCD Simulation
3. Study Areas and Datasets
3.1. Region of Interest
3.2. Datasets
3.3. Grid Formation and Decomposition
4. Results
4.1. Comparison of OMI-NASA, BEHR-HK and WRF-CMAQ VCDs
4.2. BEHR-HK v3.0C vs. OMI-NASA NO2 VCD
5. Correction of BEHR-HK v3.0B and Improvement to v3.0C
5.1. Causes of Abnormally Large VCDs in BEHR-HK v3.0B
5.2. BEHR-HK v3.0B vs. BEHR-HK v3.0C
6. Discussion
6.1. MAX-DOAS Validation in Guangzhou
6.2. Numerical Uncertainties of Each Satellite Retrieval Method
7. Conclusions
Supplementary Materials
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
References
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Attribute | Description | Units | Array Structures and Size (x, y, z) | Dataset/Product Name |
---|---|---|---|---|
T | Perturbation potential temperature | K | 3D array: 222 × 162 ×38 | WRF D2 1 |
P | Perturbation pressure | Pa | 3D array: 222 × 162 × 38 | WRF D2 |
PB | Base state pressure | Pa | 3D array: 222 × 162 ×38 | WRF D2 |
PH | Perturbation geopotential | m2 s−2 | 3D array: 222 × 162 ×39 | WRF D2 |
PHB | Base-state geopotential | m2 s−2 | 3D array: 222 × 162 ×39 | WRF D2 |
NO2 | Nitrogen dioxide | ppmv | 3D array: 98 × 74 × 25 | CMAQ D2 |
Albedo | MODIS BRDF reflectance from MCD43D07-09 2 [39] | |||
Terrain pressure | GLOBE v.1 [40] | |||
NO2 tropospheric SCD | NO2 tropospheric column density | molecules/cm2 | Depends | NASA OMI NO2 SP v3.0 3 [41] |
f | Cloud Radiance Fraction | NASA OMI NO2 SP v3.0 3 [41] |
Date (and Time) | No. of Affected Pixels (Out of 8181) | Detailed Numerical Descriptions |
---|---|---|
15 July 2015 (0600 UTC) | 3 | 2 of them >1017 molecules/cm2 |
18 July 2015 (0500 and 0600 UTC) | 20 (for 0500 UTC) 31 (for 0600 UTC) | All of them >1019 molecules/cm2, with 12 and 9 pixels >1020 molecules/cm2 in 0500 UTC and 0600 UTC respectively |
22 July 2015 (0600 UTC) | 23 | All of them >1019 molecules/cm2, with 15 pixels >1020 molecules/cm2 |
23 July 2015 (0500 UTC) | 57 | All of them >1019 molecules/cm2, with 41 pixels >1020 molecules/cm2 |
26 July 2015 (0600 UTC) | 20 | All of them >1019 molecules/cm2, with 13 pixels >1020 molecules/cm2 |
30 July 2015 (0500 UTC) | 12 | All of them >1019 molecules/cm2, with 10 pixels >1020 molecules/cm2 |
Month | Equation of Best-Fit Line (y = mx + c) | t-Stat | Pearson Correlation Coefficient (R) | RMSE (Molecules/cm2) |
---|---|---|---|---|
January 2015 | m = 0.713 c = 1.778 × 1013 | 1213.3 | 0.9958 | 2.55 × 1014 |
April 2015 | m = 0.926 c = −3.623 × 1013 | 1809.9 | 0.9983 | 1.16 × 1014 |
July 2015 1 | (Before filtering) | |||
m = 0.123 c = 1.025 × 1016 | 2.835 | 0.0123 | 8.37 × 1015 | |
(After filtering) | ||||
m = 0.7519 c = 5.029 × 1012 | 482.7 | 0.9728 | 2.82 × 1014 | |
October 2015 | m = 0.782 c = −1.195 × 1013 | 579.6 | 0.9806 | 3.06 × 1014 |
Satellite Retrieval Algorithm | Equation of Best-Fit Line (y = mx + c) | t-Stat | p-Value | Pearson Correlation Coefficient (R) | RMSE (Molecules/cm2) |
---|---|---|---|---|---|
OMI-NASA | m = 0.4323 c = −7.391 × 1014 | 12.36 | 7.334 × 10−13 | 0.7644 | 8.961 × 1015 |
BEHR-HK v3.0A | m = 0.8548 c = 1.883 × 1015 | 19.22 | 1.152 × 10−17 | 0.8468 | 6.055 × 1015 |
BEHR-HK v3.0B | m = 0.9121 c = 3.954 × 1014 | 29.80 | 9.469 × 10−23 | 0.9338 | 3.920 × 1015 |
BEHR-HK v3.0C | m = 0.9947 c = −9.679 × 1014 | 57.72 | 1.172 × 10−30 | 0.9839 | 2.083 × 1015 |
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Mak, H.W.L.; Laughner, J.L.; Fung, J.C.H.; Zhu, Q.; Cohen, R.C. Improved Satellite Retrieval of Tropospheric NO2 Column Density via Updating of Air Mass Factor (AMF): Case Study of Southern China. Remote Sens. 2018, 10, 1789. https://doi.org/10.3390/rs10111789
Mak HWL, Laughner JL, Fung JCH, Zhu Q, Cohen RC. Improved Satellite Retrieval of Tropospheric NO2 Column Density via Updating of Air Mass Factor (AMF): Case Study of Southern China. Remote Sensing. 2018; 10(11):1789. https://doi.org/10.3390/rs10111789
Chicago/Turabian StyleMak, Hugo Wai Leung, Joshua L. Laughner, Jimmy Chi Hung Fung, Qindan Zhu, and Ronald C. Cohen. 2018. "Improved Satellite Retrieval of Tropospheric NO2 Column Density via Updating of Air Mass Factor (AMF): Case Study of Southern China" Remote Sensing 10, no. 11: 1789. https://doi.org/10.3390/rs10111789