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Clouds and Convective Self-Aggregation in a Multi-Model Ensemble of Radiative-Convective Equilibrium SimulationsThe Radiative-Convective Equilibrium Model Intercomparison Project (RCEMIP) is an intercomparison of multiple types of numerical models configured in radiative-convective56equilibrium (RCE). RCE is an idealization of the tropical atmosphere that has long been used to study basic questions in climate science. Here, we employ RCE to investigate the role that clouds and convective activity play in determining cloud feedbacks, climatecsensitivity, the state of convective aggregation, and the equilibrium climate. RCEMIP is unique amongst intercomparisons in its inclusion of a wide range of model types, including atmospheric general circulation models (GCMs), single column models (SCMs), cloud-resolving models (CRMs), large eddy simulations (LES), and global cloud-resolving models (GCRMs). The first results are presented from the RCEMIP ensemble of more than 30 models. While there are large differences across the RCEMIP ensemble in the representation of mean profiles of temperature, humidity, and cloudiness, in a majority of models anvil clouds rise, warm, and decrease in area coverage in response to an increase in sea surface temperature (SST). Nearly all models exhibit self-aggregation in large domains and agree that self-aggregation acts to dry and warm the troposphere, reduce high cloudiness, and increase cooling to space. The degree of self-aggregation exhibits no clear tendency with warming. There is a wide range of climate sensitivities, but models with parameterized convection tend to have lower climate sensitivities than models with explicit convection. In models with parameterized convection, aggregated simulations have lower climate sensitivities than un-aggregated simulations.

Plain Language Summary

This study investigates tropical clouds and climate using results from more than 30 different numerical models set up in a simplified framework. The dataset of model simulations is unique in that it includes a wide range of model types configured in a consistent manner. We address some of the biggest open questions in climate science, including how cloud properties change with warming and the role that the tendency of clouds to form clusters plays in determining the average climate and how climate changes. While there are large differences in how the different models simulate average temperature, humidity, and cloudiness, in a majority of models, the amount of high clouds decreases as climate warms. Nearly all models simulate a tendency for clouds to cluster together. There is agreement that when the clouds are clustered, the atmosphere is drier with fewer clouds overall. We don’t find a conclusive result for how cloud clustering changes as the climate warms.
Document ID
20205006831
Acquisition Source
Goddard Space Flight Center
Document Type
Accepted Manuscript (Version with final changes)
Authors
Allison A. Wing
(Florida State University Tallahassee, Florida, United States)
Catherine L. Stauffer
(Florida State University Tallahassee, Florida, United States)
Tobias Becker
(Max Planck Institute for Meteorology Hamburg, Germany)
Kevin A. Reed
(Stony Brook University Stony Brook, New York, United States)
Min-seop Ahn
(Science Collaborator)
Nathan P Arnold
(Goddard Space Flight Center Greenbelt, Maryland, United States)
Sandrine Bony
(Laboratoire de Meteorologie Dynamique Paris, France)
Mark Branson
(Colorado State University Fort Collins, Colorado, United States)
George H. Bryan
(National Center for Atmospheric Research Boulder, Colorado, United States)
Jean-Pierre Chaboureau
(Universite de Toulouse)
Stephan R. de Roode
(Delft University of Technology Delft, Zuid-Holland, Netherlands)
Kulkarni Gayatri
(Indian Institute of Tropical Meteorology Pune, India)
Cathy Hohenegger
(Max Planck Institute for Meteorology Hamburg, Germany)
I-Kuan Hu
(University of Miami Coral Gables, Florida, United States)
Fredrik Jansson
(Delft University of Technology Delft, Zuid-Holland, Netherlands)
Todd R. Jones
(University of Reading Reading, United Kingdom)
Marat Khairoutdinov
(Stony Brook University Stony Brook, New York, United States)
Daehyun Kim
(Science Collaborator)
Zane K Martin
(Columbia University New York, New York, United States)
Shuhei Matsugishi
(Florida State University Tallahassee, Florida, United States)
Brian Medeiros
(Colorado State University Fort Collins, Colorado, United States)
Hiroaki Miura
(The University of Tokyo)
Yumin Moon
(Science Collaborator)
Sebastian K Muller
(Max Planck Institute for Meteorology Hamburg, Germany)
Tomoki Ohno
(Japan Agency for Marine-Earth Science and Technology Yokosuka, Japan)
Max Popp
(Laboratoire de Meteorologie Dynamique Paris, France)
Thara Prabhakaran
(Indian Institute of Tropical Meteorology Pune, India)
David Randall
(Colorado State University Fort Collins, Colorado, United States)
Rosimar Rios-Berrios
(National Center for Atmospheric Research Boulder, Colorado, United States)
Nicolas Rochetin
(Max Planck Institute for Meteorology Hamburg, Germany)
Romain Roehrig
(Universite de Toulouse)
David M. Romps
(University of California, Berkeley Berkeley, California, United States)
James H. Ruppert Jr.
(Pennsylvania State University State College, Pennsylvania, United States)
Masaki Satoh
(University of Tokyo)
Levi G Silvers
(Stony Brook University Stony Brook, New York, United States)
Martin S Singh
(Monash University Melbourne, Victoria, Australia)
Bjorn Stevens
(Max Planck Institute for Meteorology Hamburg, Germany)
Lorenso Tomassini
(Met Office Exeter, United Kingdom)
Chiel C van Heerwaarden
(Wageningen University & Research Wageningen, Netherlands)
Shugang Wang
(Columbia University New York, New York, United States)
Ming Zhao
(Geophysical Fluid Dynamics Laboratory Princeton, New Jersey, United States)
Date Acquired
August 26, 2020
Publication Date
July 20, 2020
Publication Information
Publication: Journal of Advances in Modeling Earth Systems (JAMES)
Publisher: AGU
Volume: 12
Issue: 9
Issue Publication Date: September 1, 2020
e-ISSN: 1942-2466
Subject Category
Meteorology And Climatology
Funding Number(s)
WBS: 802678.02.17.01.33
Distribution Limits
Public
Copyright
Use by or on behalf of the US Gov. Permitted.
Technical Review
External Peer Committee
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