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Southeast Atmosphere Studies: learning from model-observation syntheses

Concentrations of atmospheric trace species in the United States have changed dramatically over the past several decades in response to pollution control strategies, shifts in domestic energy policy and economics, and economic development (and resulting emission changes) elsewhere in the world. Reli...

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Autores principales: Mao, Jingqiu, Carlton, Annmarie, Cohen, Ronald C., Brune, William H., Brown, Steven S., Wolfe, Glenn M., Jimenez, Jose L., Pye, Havala O. T., Ng, Nga Lee, Xu, Lu, McNeill, V. Faye, Tsigaridis, Kostas, McDonald, Brian C., Warneke, Carsten, Guenther, Alex, Alvarado, Matthew J., de Gouw, Joost, Mickley, Loretta J., Leibensperger, Eric M., Mathur, Rohit, Nolte, Christopher G., Portmann, Robert W., Unger, Nadine, Tosca, Mika, Horowitz, Larry W.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: 2018
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6020695/
https://www.ncbi.nlm.nih.gov/pubmed/29963079
http://dx.doi.org/10.5194/acp-18-2615-2018
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author Mao, Jingqiu
Carlton, Annmarie
Cohen, Ronald C.
Brune, William H.
Brown, Steven S.
Wolfe, Glenn M.
Jimenez, Jose L.
Pye, Havala O. T.
Ng, Nga Lee
Xu, Lu
McNeill, V. Faye
Tsigaridis, Kostas
McDonald, Brian C.
Warneke, Carsten
Guenther, Alex
Alvarado, Matthew J.
de Gouw, Joost
Mickley, Loretta J.
Leibensperger, Eric M.
Mathur, Rohit
Nolte, Christopher G.
Portmann, Robert W.
Unger, Nadine
Tosca, Mika
Horowitz, Larry W.
author_facet Mao, Jingqiu
Carlton, Annmarie
Cohen, Ronald C.
Brune, William H.
Brown, Steven S.
Wolfe, Glenn M.
Jimenez, Jose L.
Pye, Havala O. T.
Ng, Nga Lee
Xu, Lu
McNeill, V. Faye
Tsigaridis, Kostas
McDonald, Brian C.
Warneke, Carsten
Guenther, Alex
Alvarado, Matthew J.
de Gouw, Joost
Mickley, Loretta J.
Leibensperger, Eric M.
Mathur, Rohit
Nolte, Christopher G.
Portmann, Robert W.
Unger, Nadine
Tosca, Mika
Horowitz, Larry W.
author_sort Mao, Jingqiu
collection PubMed
description Concentrations of atmospheric trace species in the United States have changed dramatically over the past several decades in response to pollution control strategies, shifts in domestic energy policy and economics, and economic development (and resulting emission changes) elsewhere in the world. Reliable projections of the future atmosphere require models to not only accurately describe current atmospheric concentrations, but to do so by representing chemical, physical and biological processes with conceptual and quantitative fidelity. Only through incorporation of the processes controlling emissions and chemical mechanisms that represent the key transformations among reactive molecules can models reliably project the impacts of future policy, energy and climate scenarios. Efforts to properly identify and implement the fundamental and controlling mechanisms in atmospheric models benefit from intensive observation periods, during which collocated measurements of diverse, speciated chemicals in both the gas and condensed phases are obtained. The Southeast Atmosphere Studies (SAS, including SENEX, SOAS, NOMADSS and SEAC4RS) conducted during the summer of 2013 provided an unprecedented opportunity for the atmospheric modeling community to come together to evaluate, diagnose and improve the representation of fundamental climate and air quality processes in models of varying temporal and spatial scales. This paper is aimed at discussing progress in evaluating, diagnosing and improving air quality and climate modeling using comparisons to SAS observations as a guide to thinking about improvements to mechanisms and parameterizations in models. The effort focused primarily on model representation of fundamental atmospheric processes that are essential to the formation of ozone, secondary organic aerosol (SOA) and other trace species in the troposphere, with the ultimate goal of understanding the radiative impacts of these species in the southeast and elsewhere. Here we address questions surrounding four key themes: gas-phase chemistry, aerosol chemistry, regional climate and chemistry interactions, and natural and anthropogenic emissions. We expect this review to serve as a guidance for future modeling efforts.
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spelling pubmed-60206952018-06-27 Southeast Atmosphere Studies: learning from model-observation syntheses Mao, Jingqiu Carlton, Annmarie Cohen, Ronald C. Brune, William H. Brown, Steven S. Wolfe, Glenn M. Jimenez, Jose L. Pye, Havala O. T. Ng, Nga Lee Xu, Lu McNeill, V. Faye Tsigaridis, Kostas McDonald, Brian C. Warneke, Carsten Guenther, Alex Alvarado, Matthew J. de Gouw, Joost Mickley, Loretta J. Leibensperger, Eric M. Mathur, Rohit Nolte, Christopher G. Portmann, Robert W. Unger, Nadine Tosca, Mika Horowitz, Larry W. Atmos Chem Phys Article Concentrations of atmospheric trace species in the United States have changed dramatically over the past several decades in response to pollution control strategies, shifts in domestic energy policy and economics, and economic development (and resulting emission changes) elsewhere in the world. Reliable projections of the future atmosphere require models to not only accurately describe current atmospheric concentrations, but to do so by representing chemical, physical and biological processes with conceptual and quantitative fidelity. Only through incorporation of the processes controlling emissions and chemical mechanisms that represent the key transformations among reactive molecules can models reliably project the impacts of future policy, energy and climate scenarios. Efforts to properly identify and implement the fundamental and controlling mechanisms in atmospheric models benefit from intensive observation periods, during which collocated measurements of diverse, speciated chemicals in both the gas and condensed phases are obtained. The Southeast Atmosphere Studies (SAS, including SENEX, SOAS, NOMADSS and SEAC4RS) conducted during the summer of 2013 provided an unprecedented opportunity for the atmospheric modeling community to come together to evaluate, diagnose and improve the representation of fundamental climate and air quality processes in models of varying temporal and spatial scales. This paper is aimed at discussing progress in evaluating, diagnosing and improving air quality and climate modeling using comparisons to SAS observations as a guide to thinking about improvements to mechanisms and parameterizations in models. The effort focused primarily on model representation of fundamental atmospheric processes that are essential to the formation of ozone, secondary organic aerosol (SOA) and other trace species in the troposphere, with the ultimate goal of understanding the radiative impacts of these species in the southeast and elsewhere. Here we address questions surrounding four key themes: gas-phase chemistry, aerosol chemistry, regional climate and chemistry interactions, and natural and anthropogenic emissions. We expect this review to serve as a guidance for future modeling efforts. 2018-02-22 2018 /pmc/articles/PMC6020695/ /pubmed/29963079 http://dx.doi.org/10.5194/acp-18-2615-2018 Text en http://creativecommons.org/licenses/by/3.0/ This work is distributed under the Creative Commons Attribution 3.0 License.
spellingShingle Article
Mao, Jingqiu
Carlton, Annmarie
Cohen, Ronald C.
Brune, William H.
Brown, Steven S.
Wolfe, Glenn M.
Jimenez, Jose L.
Pye, Havala O. T.
Ng, Nga Lee
Xu, Lu
McNeill, V. Faye
Tsigaridis, Kostas
McDonald, Brian C.
Warneke, Carsten
Guenther, Alex
Alvarado, Matthew J.
de Gouw, Joost
Mickley, Loretta J.
Leibensperger, Eric M.
Mathur, Rohit
Nolte, Christopher G.
Portmann, Robert W.
Unger, Nadine
Tosca, Mika
Horowitz, Larry W.
Southeast Atmosphere Studies: learning from model-observation syntheses
title Southeast Atmosphere Studies: learning from model-observation syntheses
title_full Southeast Atmosphere Studies: learning from model-observation syntheses
title_fullStr Southeast Atmosphere Studies: learning from model-observation syntheses
title_full_unstemmed Southeast Atmosphere Studies: learning from model-observation syntheses
title_short Southeast Atmosphere Studies: learning from model-observation syntheses
title_sort southeast atmosphere studies: learning from model-observation syntheses
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6020695/
https://www.ncbi.nlm.nih.gov/pubmed/29963079
http://dx.doi.org/10.5194/acp-18-2615-2018
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