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Partitioning climate projection uncertainty with multiple Large Ensembles and CMIP5/6

Flavio Lehner, Clara Deser, Nicola Maher, Jochem Marotzke, Erich Fischer, Lukas Brunner, Reto Knutti, Ed Hawkins

202061 citationsDOIOpen Access PDF

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 iconic framework from Hawkins and Sutton (2009) for uncertainty partitioning is revisited for temperature and precipitation projections using seven SMILEs and the Climate Model Intercomparison Projects CMIP5 and CMIP6 archives. The original approach is shown to work well at global scales (potential method error

Topics & Concepts

Coupled model intercomparison projectClimatologyPrecipitationClimate modelProjection (relational algebra)Uncertainty quantificationClimate changeGeneral Circulation ModelEnvironmental scienceComputer scienceEnsemble averageMeteorologyEconometricsAlgorithmMathematicsGeologyMachine learningGeographyOceanographyClimate variability and modelsAtmospheric and Environmental Gas DynamicsMeteorological Phenomena and Simulations
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