Machine learning reveals climate forcing from aerosols is dominated by increased cloud cover

Aerosol–cloud interactions have a potentially large impact on climate but are poorly quantified and thus contribute a substantial and long-standing uncertainty in climate projections. The impacts derived from climate models are poorly constrained by observations because retrieving robust large-scale...

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Published in:Nature Geoscience
Main Authors: Chen, Ying, Haywood, Jim, Wang, Yu, Malavelle, Florent, Jordan, George, Partridge, Daniel, Fieldsend, Jonathan, De Leeuw, Johannes, Schmidt, Anja, Cho, Nayeong, Oreopoulos, Lazaros, Platnick, Steven, Grosvenor, Daniel P., Field, Paul, Lohmann, Ulrike
Format: Article in Journal/Newspaper
Language:English
Published: Nature Publishing Group 2022
Subjects:
Online Access:https://elib.dlr.de/198390/
https://elib.dlr.de/198390/2/198390_PA_infotext.pdf
https://doi.org/10.1038/s41561-022-00991-6
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author Chen, Ying
Haywood, Jim
Wang, Yu
Malavelle, Florent
Jordan, George
Partridge, Daniel
Fieldsend, Jonathan
De Leeuw, Johannes
Schmidt, Anja
Cho, Nayeong
Oreopoulos, Lazaros
Platnick, Steven
Grosvenor, Daniel P.
Field, Paul
Lohmann, Ulrike
author_facet Chen, Ying
Haywood, Jim
Wang, Yu
Malavelle, Florent
Jordan, George
Partridge, Daniel
Fieldsend, Jonathan
De Leeuw, Johannes
Schmidt, Anja
Cho, Nayeong
Oreopoulos, Lazaros
Platnick, Steven
Grosvenor, Daniel P.
Field, Paul
Lohmann, Ulrike
author_sort Chen, Ying
collection Unknown
container_issue 8
container_start_page 609
container_title Nature Geoscience
container_volume 15
description Aerosol–cloud interactions have a potentially large impact on climate but are poorly quantified and thus contribute a substantial and long-standing uncertainty in climate projections. The impacts derived from climate models are poorly constrained by observations because retrieving robust large-scale signals of aerosol–cloud interactions is frequently hampered by the considerable noise associated with meteorological co-variability. The 2014 Holuhraun effusive eruption in Iceland resulted in a massive aerosol plume in an otherwise near-pristine environment and thus provided an ideal natural experiment to quantify cloud responses to aerosol perturbations. Here we disentangle significant signals from the noise of meteorological co-variability using a satellite-based machine-learning approach. Our analysis shows that aerosols from the eruption increased cloud cover by approximately 10%, and this appears to be the leading cause of climate forcing, rather than cloud brightening as previously thought. We find that volcanic aerosols do brighten clouds by reducing droplet size, but this has a notably smaller radiative impact than changes in cloud fraction. These results add substantial observational constraints on the cooling impact of aerosols. Such constraints are critical for improving climate models, which still inadequately represent the complex macro-physical and microphysical impacts of aerosol–cloud interactions.
format Article in Journal/Newspaper
genre Iceland
genre_facet Iceland
geographic Holuhraun
geographic_facet Holuhraun
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institution Open Polar
language English
long_lat ENVELOPE(-16.831,-16.831,64.852,64.852)
op_collection_id ftdlr
op_container_end_page 614
op_doi https://doi.org/10.1038/s41561-022-00991-6
op_relation https://elib.dlr.de/198390/2/198390_PA_infotext.pdf
Chen, Ying und Haywood, Jim und Wang, Yu und Malavelle, Florent und Jordan, George und Partridge, Daniel und Fieldsend, Jonathan und De Leeuw, Johannes und Schmidt, Anja und Cho, Nayeong und Oreopoulos, Lazaros und Platnick, Steven und Grosvenor, Daniel P. und Field, Paul und Lohmann, Ulrike (2022) Machine learning reveals climate forcing from aerosols is dominated by increased cloud cover. Nature Geoscience, 15 (8), Seiten 609-614. Nature Publishing Group. doi:10.1038/s41561-022-00991-6 <https://doi.org/10.1038/s41561-022-00991-6>. ISSN 1752-0894.
publishDate 2022
publisher Nature Publishing Group
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spelling ftdlr:oai:elib.dlr.de:198390 2025-06-15T14:30:37+00:00 Machine learning reveals climate forcing from aerosols is dominated by increased cloud cover Chen, Ying Haywood, Jim Wang, Yu Malavelle, Florent Jordan, George Partridge, Daniel Fieldsend, Jonathan De Leeuw, Johannes Schmidt, Anja Cho, Nayeong Oreopoulos, Lazaros Platnick, Steven Grosvenor, Daniel P. Field, Paul Lohmann, Ulrike 2022 application/pdf https://elib.dlr.de/198390/ https://elib.dlr.de/198390/2/198390_PA_infotext.pdf https://doi.org/10.1038/s41561-022-00991-6 en eng Nature Publishing Group https://elib.dlr.de/198390/2/198390_PA_infotext.pdf Chen, Ying und Haywood, Jim und Wang, Yu und Malavelle, Florent und Jordan, George und Partridge, Daniel und Fieldsend, Jonathan und De Leeuw, Johannes und Schmidt, Anja und Cho, Nayeong und Oreopoulos, Lazaros und Platnick, Steven und Grosvenor, Daniel P. und Field, Paul und Lohmann, Ulrike (2022) Machine learning reveals climate forcing from aerosols is dominated by increased cloud cover. Nature Geoscience, 15 (8), Seiten 609-614. Nature Publishing Group. doi:10.1038/s41561-022-00991-6 <https://doi.org/10.1038/s41561-022-00991-6>. ISSN 1752-0894. Erdsystem-Modellierung Zeitschriftenbeitrag PeerReviewed 2022 ftdlr https://doi.org/10.1038/s41561-022-00991-6 2025-06-04T04:58:08Z Aerosol–cloud interactions have a potentially large impact on climate but are poorly quantified and thus contribute a substantial and long-standing uncertainty in climate projections. The impacts derived from climate models are poorly constrained by observations because retrieving robust large-scale signals of aerosol–cloud interactions is frequently hampered by the considerable noise associated with meteorological co-variability. The 2014 Holuhraun effusive eruption in Iceland resulted in a massive aerosol plume in an otherwise near-pristine environment and thus provided an ideal natural experiment to quantify cloud responses to aerosol perturbations. Here we disentangle significant signals from the noise of meteorological co-variability using a satellite-based machine-learning approach. Our analysis shows that aerosols from the eruption increased cloud cover by approximately 10%, and this appears to be the leading cause of climate forcing, rather than cloud brightening as previously thought. We find that volcanic aerosols do brighten clouds by reducing droplet size, but this has a notably smaller radiative impact than changes in cloud fraction. These results add substantial observational constraints on the cooling impact of aerosols. Such constraints are critical for improving climate models, which still inadequately represent the complex macro-physical and microphysical impacts of aerosol–cloud interactions. Article in Journal/Newspaper Iceland Unknown Holuhraun ENVELOPE(-16.831,-16.831,64.852,64.852) Nature Geoscience 15 8 609 614
spellingShingle Erdsystem-Modellierung
Chen, Ying
Haywood, Jim
Wang, Yu
Malavelle, Florent
Jordan, George
Partridge, Daniel
Fieldsend, Jonathan
De Leeuw, Johannes
Schmidt, Anja
Cho, Nayeong
Oreopoulos, Lazaros
Platnick, Steven
Grosvenor, Daniel P.
Field, Paul
Lohmann, Ulrike
Machine learning reveals climate forcing from aerosols is dominated by increased cloud cover
title Machine learning reveals climate forcing from aerosols is dominated by increased cloud cover
title_full Machine learning reveals climate forcing from aerosols is dominated by increased cloud cover
title_fullStr Machine learning reveals climate forcing from aerosols is dominated by increased cloud cover
title_full_unstemmed Machine learning reveals climate forcing from aerosols is dominated by increased cloud cover
title_short Machine learning reveals climate forcing from aerosols is dominated by increased cloud cover
title_sort machine learning reveals climate forcing from aerosols is dominated by increased cloud cover
topic Erdsystem-Modellierung
topic_facet Erdsystem-Modellierung
url https://elib.dlr.de/198390/
https://elib.dlr.de/198390/2/198390_PA_infotext.pdf
https://doi.org/10.1038/s41561-022-00991-6