Modeling urban air pollution in Sao Paulo, Brazil: Sensitivity of model predicted concentrations to different turbulence parameterizations
Production and transport of urban air pollution were studied at Sao Paulo, Brazil, due to the importance of the megacity as source of pollutants and the flow pattern and topography of the region. An Eulerian air quality model was applied. An improved method for calculating vertical diffusivities was...
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Acceso en línea: | http://hdl.handle.net/20.500.12110/paper_13522310_v35_n10_p1747_Ulke |
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todo:paper_13522310_v35_n10_p1747_Ulke2023-10-03T16:10:10Z Modeling urban air pollution in Sao Paulo, Brazil: Sensitivity of model predicted concentrations to different turbulence parameterizations Ulke, A.G. Andrade, M.F. Dispersion model Ozone Photochemical model Turbulent parameterization Urban air pollution model atmospheric modeling atmospheric pollution pollutant source urban atmosphere accuracy air pollution air quality Brazil methodology model pollution transport priority journal prognosis review topography turbulent flow urban area Brazil Sao Paulo Production and transport of urban air pollution were studied at Sao Paulo, Brazil, due to the importance of the megacity as source of pollutants and the flow pattern and topography of the region. An Eulerian air quality model was applied. An improved method for calculating vertical diffusivities was introduced in the model and the impact on the behavior of pollutants was analyzed. The approach includes both shear generated and buoyancy-driven turbulence in a continuous formulation that adequately represents turbulence evolution in the atmospheric boundary layer. Dispersion and transformation processes are well described by model simulations. The application of the proposed parameterization leads to increased predicted concentrations. Relative changes range from 1.2 to 2. Uncertainties in the emissions result in some disagreement between measured and simulated concentrations. Copyright © 2001 Elsevier Science Ltd. JOUR info:eu-repo/semantics/openAccess http://creativecommons.org/licenses/by/2.5/ar http://hdl.handle.net/20.500.12110/paper_13522310_v35_n10_p1747_Ulke |
institution |
Universidad de Buenos Aires |
institution_str |
I-28 |
repository_str |
R-134 |
collection |
Biblioteca Digital - Facultad de Ciencias Exactas y Naturales (UBA) |
topic |
Dispersion model Ozone Photochemical model Turbulent parameterization Urban air pollution model atmospheric modeling atmospheric pollution pollutant source urban atmosphere accuracy air pollution air quality Brazil methodology model pollution transport priority journal prognosis review topography turbulent flow urban area Brazil Sao Paulo |
spellingShingle |
Dispersion model Ozone Photochemical model Turbulent parameterization Urban air pollution model atmospheric modeling atmospheric pollution pollutant source urban atmosphere accuracy air pollution air quality Brazil methodology model pollution transport priority journal prognosis review topography turbulent flow urban area Brazil Sao Paulo Ulke, A.G. Andrade, M.F. Modeling urban air pollution in Sao Paulo, Brazil: Sensitivity of model predicted concentrations to different turbulence parameterizations |
topic_facet |
Dispersion model Ozone Photochemical model Turbulent parameterization Urban air pollution model atmospheric modeling atmospheric pollution pollutant source urban atmosphere accuracy air pollution air quality Brazil methodology model pollution transport priority journal prognosis review topography turbulent flow urban area Brazil Sao Paulo |
description |
Production and transport of urban air pollution were studied at Sao Paulo, Brazil, due to the importance of the megacity as source of pollutants and the flow pattern and topography of the region. An Eulerian air quality model was applied. An improved method for calculating vertical diffusivities was introduced in the model and the impact on the behavior of pollutants was analyzed. The approach includes both shear generated and buoyancy-driven turbulence in a continuous formulation that adequately represents turbulence evolution in the atmospheric boundary layer. Dispersion and transformation processes are well described by model simulations. The application of the proposed parameterization leads to increased predicted concentrations. Relative changes range from 1.2 to 2. Uncertainties in the emissions result in some disagreement between measured and simulated concentrations. Copyright © 2001 Elsevier Science Ltd. |
format |
JOUR |
author |
Ulke, A.G. Andrade, M.F. |
author_facet |
Ulke, A.G. Andrade, M.F. |
author_sort |
Ulke, A.G. |
title |
Modeling urban air pollution in Sao Paulo, Brazil: Sensitivity of model predicted concentrations to different turbulence parameterizations |
title_short |
Modeling urban air pollution in Sao Paulo, Brazil: Sensitivity of model predicted concentrations to different turbulence parameterizations |
title_full |
Modeling urban air pollution in Sao Paulo, Brazil: Sensitivity of model predicted concentrations to different turbulence parameterizations |
title_fullStr |
Modeling urban air pollution in Sao Paulo, Brazil: Sensitivity of model predicted concentrations to different turbulence parameterizations |
title_full_unstemmed |
Modeling urban air pollution in Sao Paulo, Brazil: Sensitivity of model predicted concentrations to different turbulence parameterizations |
title_sort |
modeling urban air pollution in sao paulo, brazil: sensitivity of model predicted concentrations to different turbulence parameterizations |
url |
http://hdl.handle.net/20.500.12110/paper_13522310_v35_n10_p1747_Ulke |
work_keys_str_mv |
AT ulkeag modelingurbanairpollutioninsaopaulobrazilsensitivityofmodelpredictedconcentrationstodifferentturbulenceparameterizations AT andrademf modelingurbanairpollutioninsaopaulobrazilsensitivityofmodelpredictedconcentrationstodifferentturbulenceparameterizations |
_version_ |
1807316731235926016 |