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Evaluation of global simulations of aerosol particle and cloud condensation nuclei number, with implications for cloud droplet formation

A total of 16 global chemistry transport models and general circulation models have participated in this study; 14 models have been evaluated with regard to their ability to reproduce the near-surface observed number concentration of aerosol particles and cloud condensation nuclei (CCN), as well as...

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Autores principales: Fanourgakis, George S., Kanakidou, Maria, Nenes, Athanasios, Bauer, Susanne E., Bergman, Tommi, Carslaw, Ken S., Grini, Alf, Hamilton, Douglas S., Johnson, Jill S., Karydis, Vlassis A., Kirkevåg, Alf, Kodros, John K., Lohmann, Ulrike, Luo, Gan, Makkonen, Risto, Matsui, Hitoshi, Neubauer, David, Pierce, Jeffrey R., Schmale, Julia, Stier, Philip, Tsigaridis, Kostas, van Noije, Twan, Wang, Hailong, Watson-Parris, Duncan, Westervelt, Daniel M., Yang, Yang, Yoshioka, Masaru, Daskalakis, Nikos, Decesari, Stefano, Gysel-Beer, Martin, Kalivitis, Nikos, Liu, Xiaohong, Mahowald, Natalie M., Myriokefalitakis, Stelios, Schrödner, Roland, Sfakianaki, Maria, Tsimpidi, Alexandra P., Wu, Mingxuan, Yu, Fangqun
Formato: Online Artículo Texto
Lenguaje:English
Publicado: 2019
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7709872/
https://www.ncbi.nlm.nih.gov/pubmed/33273898
http://dx.doi.org/10.5194/acp-19-8591-2019
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author Fanourgakis, George S.
Kanakidou, Maria
Nenes, Athanasios
Bauer, Susanne E.
Bergman, Tommi
Carslaw, Ken S.
Grini, Alf
Hamilton, Douglas S.
Johnson, Jill S.
Karydis, Vlassis A.
Kirkevåg, Alf
Kodros, John K.
Lohmann, Ulrike
Luo, Gan
Makkonen, Risto
Matsui, Hitoshi
Neubauer, David
Pierce, Jeffrey R.
Schmale, Julia
Stier, Philip
Tsigaridis, Kostas
van Noije, Twan
Wang, Hailong
Watson-Parris, Duncan
Westervelt, Daniel M.
Yang, Yang
Yoshioka, Masaru
Daskalakis, Nikos
Decesari, Stefano
Gysel-Beer, Martin
Kalivitis, Nikos
Liu, Xiaohong
Mahowald, Natalie M.
Myriokefalitakis, Stelios
Schrödner, Roland
Sfakianaki, Maria
Tsimpidi, Alexandra P.
Wu, Mingxuan
Yu, Fangqun
author_facet Fanourgakis, George S.
Kanakidou, Maria
Nenes, Athanasios
Bauer, Susanne E.
Bergman, Tommi
Carslaw, Ken S.
Grini, Alf
Hamilton, Douglas S.
Johnson, Jill S.
Karydis, Vlassis A.
Kirkevåg, Alf
Kodros, John K.
Lohmann, Ulrike
Luo, Gan
Makkonen, Risto
Matsui, Hitoshi
Neubauer, David
Pierce, Jeffrey R.
Schmale, Julia
Stier, Philip
Tsigaridis, Kostas
van Noije, Twan
Wang, Hailong
Watson-Parris, Duncan
Westervelt, Daniel M.
Yang, Yang
Yoshioka, Masaru
Daskalakis, Nikos
Decesari, Stefano
Gysel-Beer, Martin
Kalivitis, Nikos
Liu, Xiaohong
Mahowald, Natalie M.
Myriokefalitakis, Stelios
Schrödner, Roland
Sfakianaki, Maria
Tsimpidi, Alexandra P.
Wu, Mingxuan
Yu, Fangqun
author_sort Fanourgakis, George S.
collection PubMed
description A total of 16 global chemistry transport models and general circulation models have participated in this study; 14 models have been evaluated with regard to their ability to reproduce the near-surface observed number concentration of aerosol particles and cloud condensation nuclei (CCN), as well as derived cloud droplet number concentration (CDNC). Model results for the period 2011–2015 are compared with aerosol measurements (aerosol particle number, CCN and aerosol particle composition in the submicron fraction) from nine surface stations located in Europe and Japan. The evaluation focuses on the ability of models to simulate the average across time state in diverse environments and on the seasonal and short-term variability in the aerosol properties. There is no single model that systematically performs best across all environments represented by the observations. Models tend to underestimate the observed aerosol particle and CCN number concentrations, with average normalized mean bias (NMB) of all models and for all stations, where data are available, of −24% and −35% for particles with dry diameters > 50 and > 120nm, as well as −36% and −34% for CCN at supersaturations of 0.2% and 1.0%, respectively. However, they seem to behave differently for particles activating at very low supersaturations (< 0.1 %) than at higher ones. A total of 15 models have been used to produce ensemble annual median distributions of relevant parameters. The model diversity (defined as the ratio of standard deviation to mean) is up to about 3 for simulated N(3) (number concentration of particles with dry diameters larger than 3 nm) and up to about 1 for simulated CCN in the extra-polar regions. A global mean reduction of a factor of about 2 is found in the model diversity for CCN at a supersaturation of 0.2% (CCN(0.2)) compared to that for N(3), maximizing over regions where new particle formation is important. An additional model has been used to investigate potential causes of model diversity in CCN and bias compared to the observations by performing a perturbed parameter ensemble (PPE) accounting for uncertainties in 26 aerosol-related model input parameters. This PPE suggests that biogenic secondary organic aerosol formation and the hygroscopic properties of the organic material are likely to be the major sources of CCN uncertainty in summer, with dry deposition and cloud processing being dominant in winter. Models capture the relative amplitude of the seasonal variability of the aerosol particle number concentration for all studied particle sizes with available observations (dry diameters larger than 50, 80 and 120 nm). The short-term persistence time (on the order of a few days) of CCN concentrations, which is a measure of aerosol dynamic behavior in the models, is underestimated on average by the models by 40% during winter and 20% in summer. In contrast to the large spread in simulated aerosol particle and CCN number concentrations, the CDNC derived from simulated CCN spectra is less diverse and in better agreement with CDNC estimates consistently derived from the observations (average NMB −13% and −22% for updraft velocities 0.3 and 0.6 ms(−1), respectively). In addition, simulated CDNC is in slightly better agreement with observationally derived values at lower than at higher updraft velocities (index of agreement 0.64 vs. 0.65). The reduced spread of CDNC compared to that of CCN is attributed to the sublinear response of CDNC to aerosol particle number variations and the negative correlation between the sensitivities of CDNC to aerosol particle number concentration (∂N(d)/∂N(a)) and to updraft velocity (∂N(d)/∂w). Overall, we find that while CCN is controlled by both aerosol particle number and composition, CDNC is sensitive to CCN at low and moderate CCN concentrations and to the updraft velocity when CCN levels are high. Discrepancies are found in sensitivities ∂N(d)/∂N(a) and ∂N(d)/∂w; models may be predisposed to be too “aerosol sensitive” or “aerosol insensitive” in aerosol–cloud–climate interaction studies, even if they may capture average droplet numbers well. This is a subtle but profound finding that only the sensitivities can clearly reveal and may explain inter-model biases on the aerosol indirect effect.
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spelling pubmed-77098722020-12-02 Evaluation of global simulations of aerosol particle and cloud condensation nuclei number, with implications for cloud droplet formation Fanourgakis, George S. Kanakidou, Maria Nenes, Athanasios Bauer, Susanne E. Bergman, Tommi Carslaw, Ken S. Grini, Alf Hamilton, Douglas S. Johnson, Jill S. Karydis, Vlassis A. Kirkevåg, Alf Kodros, John K. Lohmann, Ulrike Luo, Gan Makkonen, Risto Matsui, Hitoshi Neubauer, David Pierce, Jeffrey R. Schmale, Julia Stier, Philip Tsigaridis, Kostas van Noije, Twan Wang, Hailong Watson-Parris, Duncan Westervelt, Daniel M. Yang, Yang Yoshioka, Masaru Daskalakis, Nikos Decesari, Stefano Gysel-Beer, Martin Kalivitis, Nikos Liu, Xiaohong Mahowald, Natalie M. Myriokefalitakis, Stelios Schrödner, Roland Sfakianaki, Maria Tsimpidi, Alexandra P. Wu, Mingxuan Yu, Fangqun Atmos Chem Phys Article A total of 16 global chemistry transport models and general circulation models have participated in this study; 14 models have been evaluated with regard to their ability to reproduce the near-surface observed number concentration of aerosol particles and cloud condensation nuclei (CCN), as well as derived cloud droplet number concentration (CDNC). Model results for the period 2011–2015 are compared with aerosol measurements (aerosol particle number, CCN and aerosol particle composition in the submicron fraction) from nine surface stations located in Europe and Japan. The evaluation focuses on the ability of models to simulate the average across time state in diverse environments and on the seasonal and short-term variability in the aerosol properties. There is no single model that systematically performs best across all environments represented by the observations. Models tend to underestimate the observed aerosol particle and CCN number concentrations, with average normalized mean bias (NMB) of all models and for all stations, where data are available, of −24% and −35% for particles with dry diameters > 50 and > 120nm, as well as −36% and −34% for CCN at supersaturations of 0.2% and 1.0%, respectively. However, they seem to behave differently for particles activating at very low supersaturations (< 0.1 %) than at higher ones. A total of 15 models have been used to produce ensemble annual median distributions of relevant parameters. The model diversity (defined as the ratio of standard deviation to mean) is up to about 3 for simulated N(3) (number concentration of particles with dry diameters larger than 3 nm) and up to about 1 for simulated CCN in the extra-polar regions. A global mean reduction of a factor of about 2 is found in the model diversity for CCN at a supersaturation of 0.2% (CCN(0.2)) compared to that for N(3), maximizing over regions where new particle formation is important. An additional model has been used to investigate potential causes of model diversity in CCN and bias compared to the observations by performing a perturbed parameter ensemble (PPE) accounting for uncertainties in 26 aerosol-related model input parameters. This PPE suggests that biogenic secondary organic aerosol formation and the hygroscopic properties of the organic material are likely to be the major sources of CCN uncertainty in summer, with dry deposition and cloud processing being dominant in winter. Models capture the relative amplitude of the seasonal variability of the aerosol particle number concentration for all studied particle sizes with available observations (dry diameters larger than 50, 80 and 120 nm). The short-term persistence time (on the order of a few days) of CCN concentrations, which is a measure of aerosol dynamic behavior in the models, is underestimated on average by the models by 40% during winter and 20% in summer. In contrast to the large spread in simulated aerosol particle and CCN number concentrations, the CDNC derived from simulated CCN spectra is less diverse and in better agreement with CDNC estimates consistently derived from the observations (average NMB −13% and −22% for updraft velocities 0.3 and 0.6 ms(−1), respectively). In addition, simulated CDNC is in slightly better agreement with observationally derived values at lower than at higher updraft velocities (index of agreement 0.64 vs. 0.65). The reduced spread of CDNC compared to that of CCN is attributed to the sublinear response of CDNC to aerosol particle number variations and the negative correlation between the sensitivities of CDNC to aerosol particle number concentration (∂N(d)/∂N(a)) and to updraft velocity (∂N(d)/∂w). Overall, we find that while CCN is controlled by both aerosol particle number and composition, CDNC is sensitive to CCN at low and moderate CCN concentrations and to the updraft velocity when CCN levels are high. Discrepancies are found in sensitivities ∂N(d)/∂N(a) and ∂N(d)/∂w; models may be predisposed to be too “aerosol sensitive” or “aerosol insensitive” in aerosol–cloud–climate interaction studies, even if they may capture average droplet numbers well. This is a subtle but profound finding that only the sensitivities can clearly reveal and may explain inter-model biases on the aerosol indirect effect. 2019-07-08 2019-07 /pmc/articles/PMC7709872/ /pubmed/33273898 http://dx.doi.org/10.5194/acp-19-8591-2019 Text en This work is distributed under the Creative Commons Attribution 4.0 License. http://creativecommons.org/licenses/by/4.0/
spellingShingle Article
Fanourgakis, George S.
Kanakidou, Maria
Nenes, Athanasios
Bauer, Susanne E.
Bergman, Tommi
Carslaw, Ken S.
Grini, Alf
Hamilton, Douglas S.
Johnson, Jill S.
Karydis, Vlassis A.
Kirkevåg, Alf
Kodros, John K.
Lohmann, Ulrike
Luo, Gan
Makkonen, Risto
Matsui, Hitoshi
Neubauer, David
Pierce, Jeffrey R.
Schmale, Julia
Stier, Philip
Tsigaridis, Kostas
van Noije, Twan
Wang, Hailong
Watson-Parris, Duncan
Westervelt, Daniel M.
Yang, Yang
Yoshioka, Masaru
Daskalakis, Nikos
Decesari, Stefano
Gysel-Beer, Martin
Kalivitis, Nikos
Liu, Xiaohong
Mahowald, Natalie M.
Myriokefalitakis, Stelios
Schrödner, Roland
Sfakianaki, Maria
Tsimpidi, Alexandra P.
Wu, Mingxuan
Yu, Fangqun
Evaluation of global simulations of aerosol particle and cloud condensation nuclei number, with implications for cloud droplet formation
title Evaluation of global simulations of aerosol particle and cloud condensation nuclei number, with implications for cloud droplet formation
title_full Evaluation of global simulations of aerosol particle and cloud condensation nuclei number, with implications for cloud droplet formation
title_fullStr Evaluation of global simulations of aerosol particle and cloud condensation nuclei number, with implications for cloud droplet formation
title_full_unstemmed Evaluation of global simulations of aerosol particle and cloud condensation nuclei number, with implications for cloud droplet formation
title_short Evaluation of global simulations of aerosol particle and cloud condensation nuclei number, with implications for cloud droplet formation
title_sort evaluation of global simulations of aerosol particle and cloud condensation nuclei number, with implications for cloud droplet formation
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7709872/
https://www.ncbi.nlm.nih.gov/pubmed/33273898
http://dx.doi.org/10.5194/acp-19-8591-2019
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