Abstract

Abstract. Large multiscenario multimodel ensembles (MMEs) of regional climate model (RCM) experiments driven by global climate models (GCMs) are made available worldwide and aim at providing robust estimates of climate changes and associated uncertainties. Due to many missing combinations of emission scenarios and climate models leading to sparse scenario–GCM–RCM matrices, these large ensembles, however, are very unbalanced, which makes uncertainty analyses impossible with standard approaches. In this paper, the uncertainty assessment is carried out by applying an advanced statistical approach, called QUALYPSO, to a very large ensemble of 87 EURO-CORDEX climate projections, the largest MME based on regional climate models ever produced in Europe. This analysis provides a detailed description of this MME, including (i) balanced estimates of mean changes for near-surface temperature and precipitation in Europe, (ii) the total uncertainty of projections and its partition as a function of time, and (iii) the list of the most important contributors to the model uncertainty. For changes in total precipitation and mean temperature in winter (DJF) and summer (JJA), the uncertainty due to RCMs can be as large as the uncertainty due to GCMs at the end of the century (2071–2099). Both uncertainty sources are mainly due to a small number of individual models clearly identified. Due to the highly unbalanced character of the MME, mean estimated changes can drastically differ from standard average estimates based on the raw ensemble of opportunity. For the RCP4.5 emission scenario in central–eastern Europe for instance, the difference between balanced and direct estimates is up to 0.8 ∘C for summer temperature changes and up to 20 % for summer precipitation changes at the end of the century.

Highlights

  • Climate change studies usually rely on multiscenario multimodel multimember ensembles (MMEs) of transient climate projections

  • This paper proposes a thorough assessment of mean climate change responses and related uncertainties over Europe for mean seasonal temperature and total seasonal precipitation

  • We provide a comprehensive estimation of the relative contribution of global climate models (GCMs) and RCMs, RCP scenarios, and internal variability to the total variance of the largest ensemble based on regional climate models publicly available to date 1

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Summary

Introduction

Climate change studies usually rely on multiscenario multimodel multimember ensembles (MMEs) of transient climate projections. Large MMEs are available and exploited to assess mean changes and related uncertainties. Among these MMEs, many dynamical downscaled ensembles rely on regional climate models (RCMs), which are used to downscale global climate model (GCM) projection simulations for a given set of scenarios. The European part of the COordinated Regional Downscaling EXperiment (EURO-CORDEX) has led to a very large MME at 0.11◦ horizontal resolution, which is so far the largest ensemble ever produced with regional climate models (Jacob et al, 2014; Kotlarski et al, 2014; Coppola et al, 2020; Vautard et al, 2020). As a result of this long-standing effort of the regional climate modeling community, strength-

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