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On the relationship between cloud water composition and cloud droplet number concentration

Aerosol-cloud interactions are the largest source of uncertainty in quantifying anthropogenic radiative forcing. The large uncertainty is, in part, due to the difficulty of predicting cloud microphysical parameters, such as the cloud droplet number concentration (N(d)). Even though rigorous first-pr...

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Autores principales: MacDonald, Alexander B., Hossein Mardi, Ali, Dadashazar, Hossein, Azadi Aghdam, Mojtaba, Crosbie, Ewan, Jonsson, Haflidi H., Flagan, Richard C., Seinfeld, John H., Sorooshian, Armin
Formato: Online Artículo Texto
Lenguaje:English
Publicado: 2020
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7709908/
https://www.ncbi.nlm.nih.gov/pubmed/33273899
http://dx.doi.org/10.5194/acp-20-7645-2020
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author MacDonald, Alexander B.
Hossein Mardi, Ali
Dadashazar, Hossein
Azadi Aghdam, Mojtaba
Crosbie, Ewan
Jonsson, Haflidi H.
Flagan, Richard C.
Seinfeld, John H.
Sorooshian, Armin
author_facet MacDonald, Alexander B.
Hossein Mardi, Ali
Dadashazar, Hossein
Azadi Aghdam, Mojtaba
Crosbie, Ewan
Jonsson, Haflidi H.
Flagan, Richard C.
Seinfeld, John H.
Sorooshian, Armin
author_sort MacDonald, Alexander B.
collection PubMed
description Aerosol-cloud interactions are the largest source of uncertainty in quantifying anthropogenic radiative forcing. The large uncertainty is, in part, due to the difficulty of predicting cloud microphysical parameters, such as the cloud droplet number concentration (N(d)). Even though rigorous first-principle approaches exist to calculate N(d), the cloud and aerosol research community also relies on empirical approaches such as relating N(d) to aerosol mass concentration. Here we analyze relationships between N(d) and cloud water chemical composition, in addition to the effect of environmental factors on the degree of the relationships. Warm, marine, stratocumulus clouds off the California coast were sampled throughout four summer campaigns between 2011 and 2016. A total of 385 cloud water samples were collected and analyzed for 80 chemical species. Single- and multispecies log-log linear regressions were performed to predict N(d) using chemical composition. Single-species regressions reveal that the species that best predicts N(d) is total sulfate ([Formula: see text]). Multispecies regressions reveal that adding more species does not necessarily produce a better model, as six or more species yield regressions that are statistically insignificant. A commonality among the multispecies regressions that produce the highest correlation with N(d) was that most included sulfate (either total or non-sea-salt), an ocean emissions tracer (such as sodium), and an organic tracer (such as oxalate). Binning the data according to turbulence, smoke influence, and in-cloud height allowed for examination of the effect of these environmental factors on the composition-N(d) correlation. Accounting for turbulence, quantified as the standard deviation of vertical wind speed, showed that the correlation between N(d) with both total sulfate and sodium increased at higher turbulence conditions, consistent with turbulence promoting the mixing between ocean surface and cloud base. Considering the influence of smoke significantly improved the correlation with N(d) for two biomass burning tracer species in the study region, specifically oxalate and iron. When binning by in-cloud height, non-sea-salt sulfate and sodium correlated best with N(d) at cloud top, whereas iron and oxalate correlated best with N(d) at cloud base.
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spelling pubmed-77099082020-12-02 On the relationship between cloud water composition and cloud droplet number concentration MacDonald, Alexander B. Hossein Mardi, Ali Dadashazar, Hossein Azadi Aghdam, Mojtaba Crosbie, Ewan Jonsson, Haflidi H. Flagan, Richard C. Seinfeld, John H. Sorooshian, Armin Atmos Chem Phys Article Aerosol-cloud interactions are the largest source of uncertainty in quantifying anthropogenic radiative forcing. The large uncertainty is, in part, due to the difficulty of predicting cloud microphysical parameters, such as the cloud droplet number concentration (N(d)). Even though rigorous first-principle approaches exist to calculate N(d), the cloud and aerosol research community also relies on empirical approaches such as relating N(d) to aerosol mass concentration. Here we analyze relationships between N(d) and cloud water chemical composition, in addition to the effect of environmental factors on the degree of the relationships. Warm, marine, stratocumulus clouds off the California coast were sampled throughout four summer campaigns between 2011 and 2016. A total of 385 cloud water samples were collected and analyzed for 80 chemical species. Single- and multispecies log-log linear regressions were performed to predict N(d) using chemical composition. Single-species regressions reveal that the species that best predicts N(d) is total sulfate ([Formula: see text]). Multispecies regressions reveal that adding more species does not necessarily produce a better model, as six or more species yield regressions that are statistically insignificant. A commonality among the multispecies regressions that produce the highest correlation with N(d) was that most included sulfate (either total or non-sea-salt), an ocean emissions tracer (such as sodium), and an organic tracer (such as oxalate). Binning the data according to turbulence, smoke influence, and in-cloud height allowed for examination of the effect of these environmental factors on the composition-N(d) correlation. Accounting for turbulence, quantified as the standard deviation of vertical wind speed, showed that the correlation between N(d) with both total sulfate and sodium increased at higher turbulence conditions, consistent with turbulence promoting the mixing between ocean surface and cloud base. Considering the influence of smoke significantly improved the correlation with N(d) for two biomass burning tracer species in the study region, specifically oxalate and iron. When binning by in-cloud height, non-sea-salt sulfate and sodium correlated best with N(d) at cloud top, whereas iron and oxalate correlated best with N(d) at cloud base. 2020-07-02 2020-07 /pmc/articles/PMC7709908/ /pubmed/33273899 http://dx.doi.org/10.5194/acp-20-7645-2020 Text en This work is distributed under the Creative Commons Attribution 4.0 License (https://creativecommons.org/licenses/by/4.0/) .
spellingShingle Article
MacDonald, Alexander B.
Hossein Mardi, Ali
Dadashazar, Hossein
Azadi Aghdam, Mojtaba
Crosbie, Ewan
Jonsson, Haflidi H.
Flagan, Richard C.
Seinfeld, John H.
Sorooshian, Armin
On the relationship between cloud water composition and cloud droplet number concentration
title On the relationship between cloud water composition and cloud droplet number concentration
title_full On the relationship between cloud water composition and cloud droplet number concentration
title_fullStr On the relationship between cloud water composition and cloud droplet number concentration
title_full_unstemmed On the relationship between cloud water composition and cloud droplet number concentration
title_short On the relationship between cloud water composition and cloud droplet number concentration
title_sort on the relationship between cloud water composition and cloud droplet number concentration
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7709908/
https://www.ncbi.nlm.nih.gov/pubmed/33273899
http://dx.doi.org/10.5194/acp-20-7645-2020
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