Publication | Open Access
Combing GOME-2B and OMI Satellite Data to Estimate Near-Surface NO<sub>2</sub> of Mainland China
13
Citations
65
References
2021
Year
Earth ObservationEnvironmental MonitoringEngineeringAir Pollution MeasurementAir QualityDaily Ns-no2Earth ScienceGeophysicsNear-surface No2Satellite MeasurementAtmospheric ScienceSatellite ImagingGeodesyGeographyRadiation MeasurementEarth Observation DataOmi Satellite DataMainland ChinaAir Pollution ClimatologyAtmospheric Impact AssessmentRemote SensingSatellite MeteorologyPopulation-weighted No2Air Pollution
Near-surface NO2 (NS-NO2) is closely related to human health and the atmospheric environment. While top-down approaches have been widely applied to estimate NS-NO2 using satellite-based NO2 column measurements, there still exist significant defects, resulting in a low overall fit and significant amount of bias. This paper combines GOME-2B and OMI satellite data to estimate daily NS-NO2 with a spatial resolution of 0.1° × 0.1° from 2014 to 2018 over Mainland China, using a machine learning method. The estimated result has four important characteristics. First, the sample-based cross validation with surface observations shows a good result with R 2 = 0.80 and RMSE= 9.0μg/m 3. Second, the underestimation in high concentration areas and overestimation in low concentration areas are both reduced, compared with the case of using OMI data alone. Third, the estimated NS-NO2 is consistent with surface observations in spatial distribution, and successfully represent both inter-annual changes and seasonal characteristics. Furthermore, the population-weighted NO2 based estimated dataset shows a significant decline of pollution exposure levels from 2014 to 2018.
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