Partitioning climate projection uncertainty with multiple large ensembles and CMIP5/6
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Published:2020-05-29
Issue:2
Volume:11
Page:491-508
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ISSN:2190-4987
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Container-title:Earth System Dynamics
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language:en
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Short-container-title:Earth Syst. Dynam.
Author:
Lehner FlavioORCID, Deser Clara, Maher NicolaORCID, Marotzke JochemORCID, Fischer Erich M.ORCID, Brunner LukasORCID, Knutti RetoORCID, Hawkins EdORCID
Abstract
Abstract. Partitioning uncertainty in projections of future climate change
into contributions from internal variability, model response uncertainty
and emissions scenarios has historically relied on making assumptions about
forced changes in the mean and variability. With the advent of multiple
single-model initial-condition large ensembles (SMILEs), these assumptions
can be scrutinized, as they allow a more robust separation between sources
of uncertainty. Here, the framework from Hawkins and Sutton (2009) for
uncertainty partitioning is revisited for temperature and precipitation
projections using seven SMILEs and the Coupled Model Intercomparison Project CMIP5 and CMIP6 archives. The original approach is shown to work
well at global scales (potential method bias < 20 %), while at
local to regional scales such as British Isles temperature or Sahel
precipitation, there is a notable potential method bias (up to 50 %), and
more accurate partitioning of uncertainty is achieved through the use of
SMILEs. Whenever internal variability and forced changes therein are
important, the need to evaluate and improve the representation of
variability in models is evident. The available SMILEs are shown to be a
good representation of the CMIP5 model diversity in many situations, making
them a useful tool for interpreting CMIP5. CMIP6 often shows larger absolute
and relative model uncertainty than CMIP5, although part of this difference
can be reconciled with the higher average transient climate response in
CMIP6. This study demonstrates the added value of a collection of SMILEs for
quantifying and diagnosing uncertainty in climate projections.
Funder
Division of Atmospheric and Geospace Sciences European Commission National Centre for Atmospheric Science
Publisher
Copernicus GmbH
Subject
General Earth and Planetary Sciences
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