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Machine-Learning Reveals Climate Forcing From Aerosols is Dominated by Increased Cloud CoverAerosol-cloud interactions have a potentially large impact on climate, but are poorly quantified and thus contribute a significant 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 are frequently hampered by the considerable noise associated with meteorological co-variability. The Iceland-Holuhraun effusive eruption in 2014 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 significantly 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 micro-physical impacts of aerosol-cloud interactions.
Document ID
20220013765
Acquisition Source
Goddard Space Flight Center
Document Type
Accepted Manuscript (Version with final changes)
Authors
Ying Chen ORCID
(University of Exeter Exeter, United Kingdom)
Jim Haywood​ ORCID
(University of Exeter Exeter, United Kingdom)
Yu Wang ORCID
(ETH Zurich Zurich, Switzerland)
Florent Malavelle
(Met Office Exeter, United Kingdom)
George Jordan ORCID
(Met Office Exeter, United Kingdom)
Daniel Partridge ORCID
(University of Exeter Exeter, United Kingdom)
Jonathan Fieldsend
(University of Exeter Exeter, United Kingdom)
Johannes de Leeuw ORCID
(University of Cambridge Cambridge, United Kingdom)
Anja Schmidt ORCID
(University of Cambridge Cambridge, United Kingdom)
Nayeong Cho ORCID
(Universities Space Research Association Columbia, Maryland, United States)
Lazaros Oreopoulos ORCID
(Goddard Space Flight Center Greenbelt, Maryland, United States)
Steven Platnick ORCID
(Goddard Space Flight Center Greenbelt, Maryland, United States)
Daniel Grosvenor
(National Centre for Atmospheric Science Leeds, England, United Kingdom)
Paul Field
(Met Office Exeter, United Kingdom)
Ulrike Lohmann ORCID
(ETH Zurich Zurich, Switzerland)
Date Acquired
September 8, 2022
Publication Date
August 1, 2022
Publication Information
Publication: Nature Geoscience
Publisher: Nature Research
Volume: 15
Issue: 8
Issue Publication Date: August 1, 2022
ISSN: 1752-0894
e-ISSN: 1752-0908
Subject Category
Meteorology and Climatology
Funding Number(s)
WBS: 953005.02.01.01.44
Distribution Limits
Public
Copyright
Use by or on behalf of the US Gov. Permitted.
Technical Review
External Peer Committee
Keywords
Aerosols
Machine learning
Clouds
Atmospheric science
Climate change
Climate sciences
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