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Evaluating TROPOMI and MODIS performance to capture the dynamic of air pollution in São Paulo state: A case study during the COVID-19 outbreak

Atmospheric pollutant data retrieved through satellite sensors are continually used to assess changes in air quality in the lower atmosphere. During the COVID-19 pandemic, several studies started to use satellite measurements to evaluate changes in air quality in many different regions worldwide. Ho...

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Detalles Bibliográficos
Autores principales: Rudke, A.P., Martins, J.A., Hallak, R., Martins, L.D., de Almeida, D.S., Beal, A., Freitas, E.D., Andrade, M.F., Koutrakis, P., Albuquerque, T.T.A.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Elsevier Inc. 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9941323/
https://www.ncbi.nlm.nih.gov/pubmed/36846486
http://dx.doi.org/10.1016/j.rse.2023.113514
Descripción
Sumario:Atmospheric pollutant data retrieved through satellite sensors are continually used to assess changes in air quality in the lower atmosphere. During the COVID-19 pandemic, several studies started to use satellite measurements to evaluate changes in air quality in many different regions worldwide. However, although satellite data is continuously validated, it is known that its accuracy may vary between monitored areas, requiring regionalized quality assessments. Thus, this study aimed to evaluate whether satellites could measure changes in the air quality of the state of São Paulo, Brazil, during the COVID-19 outbreak; and to verify the relationship between satellite-based data [Tropospheric NO(2) column density and Aerosol Optical Depth (AOD)] and ground-based concentrations [NO(2) and particulate material (PM; coarse: PM(10) and fine: PM(2.5))]. For this purpose, tropospheric NO(2) obtained from the TROPOMI sensor and AOD retrieved from MODIS sensor data by using the Multi-Angle Implementation of Atmospheric Correction (MAIAC) algorithm were compared with concentrations obtained from 50 automatic ground monitoring stations. The results showed low correlations between PM and AOD. For PM(10), most stations showed correlations lower than 0.2, which were not significant. The results for PM(2.5) were similar, but some stations showed good correlations for specific periods (before or during the COVID-19 outbreak). Satellite-based Tropospheric NO(2) proved to be a good predictor for NO(2) concentrations at ground level. Considering all stations with NO(2) measurements, correlations >0.6 were observed, reaching 0.8 for specific stations and periods. In general, it was observed that regions with a more industrialized profile had the best correlations, in contrast with rural areas. In addition, it was observed about 57% reductions in tropospheric NO(2) throughout the state of São Paulo during the COVID-19 outbreak. Variations in air pollutants were linked to the region economic vocation, since there were reductions in industrialized areas (at least 50% of the industrialized areas showed >20% decrease in NO(2)) and increases in areas with farming and livestock characteristics (about 70% of those areas showed increase in NO(2)). Our results demonstrate that Tropospheric NO(2) column densities can serve as good predictors of NO(2) concentrations at ground level. For MAIAC-AOD, a weak relationship was observed, requiring the evaluation of other possible predictors to describe the relationship with PM. Thus, it is concluded that regionalized assessment of satellite data accuracy is essential for assertive estimates on a regional/local level. Good quality information retrieved at specific polluted areas does not assure a worldwide use of remote sensor data.