Ensemble daily simulations for elucidating cloud–aerosol interactions under a large spread of realistic environmental conditions

Aerosol effects on cloud properties and the atmospheric energy and radiation budgets are studied through ensemble simulations over two month-long periods during the NARVAL campaigns (Next-generation Aircraft Remote-Sensing for Validation Studies, December 2013 and August 2016). For each day, two sim...

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Main Authors: Dagan, G, Stier, P
Format: Journal article
Language:English
Published: European Geosciences Union 2020
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author Dagan, G
Stier, P
author_facet Dagan, G
Stier, P
author_sort Dagan, G
collection OXFORD
description Aerosol effects on cloud properties and the atmospheric energy and radiation budgets are studied through ensemble simulations over two month-long periods during the NARVAL campaigns (Next-generation Aircraft Remote-Sensing for Validation Studies, December 2013 and August 2016). For each day, two simulations are conducted with low and high cloud droplet number concentrations (CDNCs), representing low and high aerosol concentrations, respectively. This large data set, which is based on a large spread of co-varying realistic initial conditions, enables robust identification of the effect of CDNC changes on cloud properties. We show that increases in CDNC drive a reduction in the top-of-atmosphere (TOA) net shortwave flux (more reflection) and a decrease in the lower-tropospheric stability for all cases examined, while the TOA longwave flux and the liquid and ice water path changes are generally positive. However, changes in cloud fraction or precipitation, that could appear significant for a given day, are not as robustly affected, and, at least for the summer month, are not statistically distinguishable from zero. These results highlight the need for using a large sample of initial conditions for cloud–aerosol studies for identifying the significance of the response. In addition, we demonstrate the dependence of the aerosol effects on the season, as it is shown that the TOA net radiative effect is doubled during the winter month as compared to the summer month. By separating the simulations into different dominant cloud regimes, we show that the difference between the different months emerges due to the compensation of the longwave effect induced by an increase in ice content as compared to the shortwave effect of the liquid clouds. The CDNC effect on the longwave flux is stronger in the summer as the clouds are deeper and the atmosphere is more unstable.
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spelling oxford-uuid:02c92b14-2bf9-4f9d-8e97-e3c1aebec62f2022-03-26T08:42:44ZEnsemble daily simulations for elucidating cloud–aerosol interactions under a large spread of realistic environmental conditionsJournal articlehttp://purl.org/coar/resource_type/c_dcae04bcuuid:02c92b14-2bf9-4f9d-8e97-e3c1aebec62fEnglishSymplectic ElementsEuropean Geosciences Union2020Dagan, GStier, PAerosol effects on cloud properties and the atmospheric energy and radiation budgets are studied through ensemble simulations over two month-long periods during the NARVAL campaigns (Next-generation Aircraft Remote-Sensing for Validation Studies, December 2013 and August 2016). For each day, two simulations are conducted with low and high cloud droplet number concentrations (CDNCs), representing low and high aerosol concentrations, respectively. This large data set, which is based on a large spread of co-varying realistic initial conditions, enables robust identification of the effect of CDNC changes on cloud properties. We show that increases in CDNC drive a reduction in the top-of-atmosphere (TOA) net shortwave flux (more reflection) and a decrease in the lower-tropospheric stability for all cases examined, while the TOA longwave flux and the liquid and ice water path changes are generally positive. However, changes in cloud fraction or precipitation, that could appear significant for a given day, are not as robustly affected, and, at least for the summer month, are not statistically distinguishable from zero. These results highlight the need for using a large sample of initial conditions for cloud–aerosol studies for identifying the significance of the response. In addition, we demonstrate the dependence of the aerosol effects on the season, as it is shown that the TOA net radiative effect is doubled during the winter month as compared to the summer month. By separating the simulations into different dominant cloud regimes, we show that the difference between the different months emerges due to the compensation of the longwave effect induced by an increase in ice content as compared to the shortwave effect of the liquid clouds. The CDNC effect on the longwave flux is stronger in the summer as the clouds are deeper and the atmosphere is more unstable.
spellingShingle Dagan, G
Stier, P
Ensemble daily simulations for elucidating cloud–aerosol interactions under a large spread of realistic environmental conditions
title Ensemble daily simulations for elucidating cloud–aerosol interactions under a large spread of realistic environmental conditions
title_full Ensemble daily simulations for elucidating cloud–aerosol interactions under a large spread of realistic environmental conditions
title_fullStr Ensemble daily simulations for elucidating cloud–aerosol interactions under a large spread of realistic environmental conditions
title_full_unstemmed Ensemble daily simulations for elucidating cloud–aerosol interactions under a large spread of realistic environmental conditions
title_short Ensemble daily simulations for elucidating cloud–aerosol interactions under a large spread of realistic environmental conditions
title_sort ensemble daily simulations for elucidating cloud aerosol interactions under a large spread of realistic environmental conditions
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AT stierp ensembledailysimulationsforelucidatingcloudaerosolinteractionsunderalargespreadofrealisticenvironmentalconditions