Intercomparison of air quality models in a megacity: Toward an operational ensemble forecasting system for São Paulo

An intercomparison of four regional air quality models is performed in the tropical megacity of Sao Paulo with the perspective of developing a forecasting system based on a model ensemble. Modeled concentrations of the main regulated pollutants are compared with combined observations in the megacity center, after analyzing the spatial scale of representativeness of air monitoring stations. During three contrasting periods characterized by different types of pollution events, the hourly concentrations of carbon monoxide (CO), nitrogen oxides (NOx), sulfur dioxide (SO2), and particulate matter (PM2.5 and PM10) modeled by the ensemble are in moderate agreement with observations. The median of the ensemble provides the best performance (R approximate to 0.7 for CO, 0.7 for NOx, 0.5 for SO2, 0.5 for PM2.5, and 0.4 for PM10) because each model has periods and pollutants for which it has the best agreement. NOx concentration is modeled with a large inter-model variability, highlighting potential for improvement of anthropogenic emissions. Pollutants transported by biomass burning events strongly affect the air quality in Sao Paulo and are associated with significant inter-model variability. Modeled hourly concentration of ozone (O3) is overestimated during the day (approximate to 20 ppb) and underestimated at night (approximate to 10 ppb), while nitrogen dioxide (NO2) is overestimated at night (approximate to 20 ppb). The observed O3 concentration is best reproduced by the median of the ensemble (R approximate to 0.8), taking advantage of the variable performance of the models. Therefore, an operational air quality forecast system based on a regional model ensemble is promising for Sao Paulo.

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Related Dataset #1 : CESM2.1/CAM-chem Instantaneous Output for Boundary Conditions

Related Dataset #2 : MODIS/Terra+Aqua Burned Area Monthly L3 Global 500m SIN Grid V061

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Author Deroubaix, A.
Hoelzemann, J. J.
Ynoue, R. Y.
Toledo de Almeida Albuquerque, T.
Alves, R. C.
de Fatima Andrade, M.
Andreão, W. L.
Bouarar, I.
de Souza Fernandes Duarte, E.
Elbern, H.
Franke, P.
Lange, A. C.
Lichtig, P.
Lugon, L.
Martins, L. D.
de Arruda Moreira, G.
Pedruzzi, R.
Rosario, N.
Brasseur, Guy
Publisher UCAR/NCAR - Library
Publication Date 2024-01-16T00:00:00
Digital Object Identifier (DOI) Not Assigned
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Topic Category geoscientificInformation
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Metadata Date 2025-07-10T20:05:06.576163
Metadata Record Identifier edu.ucar.opensky::articles:26902
Metadata Language eng; USA
Suggested Citation Deroubaix, A., Hoelzemann, J. J., Ynoue, R. Y., Toledo de Almeida Albuquerque, T., Alves, R. C., de Fatima Andrade, M., Andreão, W. L., Bouarar, I., de Souza Fernandes Duarte, E., Elbern, H., Franke, P., Lange, A. C., Lichtig, P., Lugon, L., Martins, L. D., de Arruda Moreira, G., Pedruzzi, R., Rosario, N., Brasseur, Guy. (2024). Intercomparison of air quality models in a megacity: Toward an operational ensemble forecasting system for São Paulo. UCAR/NCAR - Library. https://n2t.org/ark:/85065/d7tt4w21. Accessed 11 August 2025.

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