Inverse modeling of cloud-aerosol interactions -- Part 2: Sensitivity tests on liquid phase clouds using a Markov Chain Monte Carlo based simulation approach

This paper presents a novel approach to investigate cloud-aerosol interactions by coupling a Markov chain Monte Carlo (MCMC) algorithm to an adiabatic cloud parcel model. Despite the number of numerical cloud-aerosol sensitivity studies previously conducted few have used statistical analysis tools t...

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Published in:Atmospheric Chemistry and Physics
Main Authors: Partridge, D.G., Vrugt, J.A., Tunved, P., Ekman, A.M.L., Struthers, H., Sooroshian, A.
Format: Article in Journal/Newspaper
Language:English
Published: 2012
Subjects:
Online Access:https://dare.uva.nl/personal/pure/en/publications/inverse-modeling-of-cloudaerosol-interactions--part-2-sensitivity-tests-on-liquid-phase-clouds-using-a-markov-chain-monte-carlo-based-simulation-approach(074d9950-6a0c-43cb-bd98-4c82728508f2).html
https://doi.org/10.5194/acp-12-2823-2012
https://pure.uva.nl/ws/files/1150896/107552_360258.pdf
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spelling ftunivamstpubl:oai:dare.uva.nl:openaire_cris_publications/074d9950-6a0c-43cb-bd98-4c82728508f2 2024-09-30T14:31:40+00:00 Inverse modeling of cloud-aerosol interactions -- Part 2: Sensitivity tests on liquid phase clouds using a Markov Chain Monte Carlo based simulation approach Partridge, D.G. Vrugt, J.A. Tunved, P. Ekman, A.M.L. Struthers, H. Sooroshian, A. 2012 application/pdf https://dare.uva.nl/personal/pure/en/publications/inverse-modeling-of-cloudaerosol-interactions--part-2-sensitivity-tests-on-liquid-phase-clouds-using-a-markov-chain-monte-carlo-based-simulation-approach(074d9950-6a0c-43cb-bd98-4c82728508f2).html https://doi.org/10.5194/acp-12-2823-2012 https://pure.uva.nl/ws/files/1150896/107552_360258.pdf eng eng https://dare.uva.nl/personal/pure/en/publications/inverse-modeling-of-cloudaerosol-interactions--part-2-sensitivity-tests-on-liquid-phase-clouds-using-a-markov-chain-monte-carlo-based-simulation-approach(074d9950-6a0c-43cb-bd98-4c82728508f2).html info:eu-repo/semantics/openAccess Partridge , D G , Vrugt , J A , Tunved , P , Ekman , A M L , Struthers , H & Sooroshian , A 2012 , ' Inverse modeling of cloud-aerosol interactions -- Part 2: Sensitivity tests on liquid phase clouds using a Markov Chain Monte Carlo based simulation approach ' , Atmospheric Chemistry and Physics , vol. 12 , no. 6 , pp. 2823-2847 . https://doi.org/10.5194/acp-12-2823-2012 article 2012 ftunivamstpubl https://doi.org/10.5194/acp-12-2823-2012 2024-09-12T16:38:25Z This paper presents a novel approach to investigate cloud-aerosol interactions by coupling a Markov chain Monte Carlo (MCMC) algorithm to an adiabatic cloud parcel model. Despite the number of numerical cloud-aerosol sensitivity studies previously conducted few have used statistical analysis tools to investigate the global sensitivity of a cloud model to input aerosol physiochemical parameters. Using numerically generated cloud droplet number concentration (CDNC) distributions (i.e. synthetic data) as cloud observations, this inverse modelling framework is shown to successfully estimate the correct calibration parameters, and their underlying posterior probability distribution. The employed analysis method provides a new, integrative framework to evaluate the global sensitivity of the derived CDNC distribution to the input parameters describing the lognormal properties of the accumulation mode aerosol and the particle chemistry. To a large extent, results from prior studies are confirmed, but the present study also provides some additional insights. There is a transition in relative sensitivity from very clean marine Arctic conditions where the lognormal aerosol parameters representing the accumulation mode aerosol number concentration and mean radius and are found to be most important for determining the CDNC distribution to very polluted continental environments (aerosol concentration in the accumulation mode >1000 cm−3) where particle chemistry is more important than both number concentration and size of the accumulation mode. The competition and compensation between the cloud model input parameters illustrates that if the soluble mass fraction is reduced, the aerosol number concentration, geometric standard deviation and mean radius of the accumulation mode must increase in order to achieve the same CDNC distribution. This study demonstrates that inverse modelling provides a flexible, transparent and integrative method for efficiently exploring cloud-aerosol interactions with respect to parameter ... Article in Journal/Newspaper Arctic Universiteit van Amsterdam: Digital Academic Repository (UvA DARE) Arctic Atmospheric Chemistry and Physics 12 6 2823 2847
institution Open Polar
collection Universiteit van Amsterdam: Digital Academic Repository (UvA DARE)
op_collection_id ftunivamstpubl
language English
description This paper presents a novel approach to investigate cloud-aerosol interactions by coupling a Markov chain Monte Carlo (MCMC) algorithm to an adiabatic cloud parcel model. Despite the number of numerical cloud-aerosol sensitivity studies previously conducted few have used statistical analysis tools to investigate the global sensitivity of a cloud model to input aerosol physiochemical parameters. Using numerically generated cloud droplet number concentration (CDNC) distributions (i.e. synthetic data) as cloud observations, this inverse modelling framework is shown to successfully estimate the correct calibration parameters, and their underlying posterior probability distribution. The employed analysis method provides a new, integrative framework to evaluate the global sensitivity of the derived CDNC distribution to the input parameters describing the lognormal properties of the accumulation mode aerosol and the particle chemistry. To a large extent, results from prior studies are confirmed, but the present study also provides some additional insights. There is a transition in relative sensitivity from very clean marine Arctic conditions where the lognormal aerosol parameters representing the accumulation mode aerosol number concentration and mean radius and are found to be most important for determining the CDNC distribution to very polluted continental environments (aerosol concentration in the accumulation mode >1000 cm−3) where particle chemistry is more important than both number concentration and size of the accumulation mode. The competition and compensation between the cloud model input parameters illustrates that if the soluble mass fraction is reduced, the aerosol number concentration, geometric standard deviation and mean radius of the accumulation mode must increase in order to achieve the same CDNC distribution. This study demonstrates that inverse modelling provides a flexible, transparent and integrative method for efficiently exploring cloud-aerosol interactions with respect to parameter ...
format Article in Journal/Newspaper
author Partridge, D.G.
Vrugt, J.A.
Tunved, P.
Ekman, A.M.L.
Struthers, H.
Sooroshian, A.
spellingShingle Partridge, D.G.
Vrugt, J.A.
Tunved, P.
Ekman, A.M.L.
Struthers, H.
Sooroshian, A.
Inverse modeling of cloud-aerosol interactions -- Part 2: Sensitivity tests on liquid phase clouds using a Markov Chain Monte Carlo based simulation approach
author_facet Partridge, D.G.
Vrugt, J.A.
Tunved, P.
Ekman, A.M.L.
Struthers, H.
Sooroshian, A.
author_sort Partridge, D.G.
title Inverse modeling of cloud-aerosol interactions -- Part 2: Sensitivity tests on liquid phase clouds using a Markov Chain Monte Carlo based simulation approach
title_short Inverse modeling of cloud-aerosol interactions -- Part 2: Sensitivity tests on liquid phase clouds using a Markov Chain Monte Carlo based simulation approach
title_full Inverse modeling of cloud-aerosol interactions -- Part 2: Sensitivity tests on liquid phase clouds using a Markov Chain Monte Carlo based simulation approach
title_fullStr Inverse modeling of cloud-aerosol interactions -- Part 2: Sensitivity tests on liquid phase clouds using a Markov Chain Monte Carlo based simulation approach
title_full_unstemmed Inverse modeling of cloud-aerosol interactions -- Part 2: Sensitivity tests on liquid phase clouds using a Markov Chain Monte Carlo based simulation approach
title_sort inverse modeling of cloud-aerosol interactions -- part 2: sensitivity tests on liquid phase clouds using a markov chain monte carlo based simulation approach
publishDate 2012
url https://dare.uva.nl/personal/pure/en/publications/inverse-modeling-of-cloudaerosol-interactions--part-2-sensitivity-tests-on-liquid-phase-clouds-using-a-markov-chain-monte-carlo-based-simulation-approach(074d9950-6a0c-43cb-bd98-4c82728508f2).html
https://doi.org/10.5194/acp-12-2823-2012
https://pure.uva.nl/ws/files/1150896/107552_360258.pdf
geographic Arctic
geographic_facet Arctic
genre Arctic
genre_facet Arctic
op_source Partridge , D G , Vrugt , J A , Tunved , P , Ekman , A M L , Struthers , H & Sooroshian , A 2012 , ' Inverse modeling of cloud-aerosol interactions -- Part 2: Sensitivity tests on liquid phase clouds using a Markov Chain Monte Carlo based simulation approach ' , Atmospheric Chemistry and Physics , vol. 12 , no. 6 , pp. 2823-2847 . https://doi.org/10.5194/acp-12-2823-2012
op_relation https://dare.uva.nl/personal/pure/en/publications/inverse-modeling-of-cloudaerosol-interactions--part-2-sensitivity-tests-on-liquid-phase-clouds-using-a-markov-chain-monte-carlo-based-simulation-approach(074d9950-6a0c-43cb-bd98-4c82728508f2).html
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op_doi https://doi.org/10.5194/acp-12-2823-2012
container_title Atmospheric Chemistry and Physics
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