2021
DOI: 10.5194/esd-2021-8
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Balanced estimate and uncertainty assessment of European climate change using the large EURO-CORDEX regional climate model ensemble

Abstract: Abstract. Large Multiscenarios Multimodel Ensembles (MMEs) of regional climate model (RCM) experiments driven by Global Climate Models (GCM) 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 are however very unbalanced, which makes uncertainty analyses impossible with standard approaches. In this paper, the… Show more

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Cited by 5 publications
(8 citation statements)
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“…A methodology to enlarge the number of simulations, which are strictly limited by the huge computational time of climate model runs, thus increasing the statistical representatives of the ensemble, has been previously presented by the authors in [54,55]. Statistical adjustment procedures based on data augmentation and Bayesian inference are presented in [56] and recently applied to large RCM ensemble for the assessment of uncertainty associated to the expected changes in mean temperature and total precipitation in Europe [57].…”
Section: Datasetsmentioning
confidence: 99%
“…A methodology to enlarge the number of simulations, which are strictly limited by the huge computational time of climate model runs, thus increasing the statistical representatives of the ensemble, has been previously presented by the authors in [54,55]. Statistical adjustment procedures based on data augmentation and Bayesian inference are presented in [56] and recently applied to large RCM ensemble for the assessment of uncertainty associated to the expected changes in mean temperature and total precipitation in Europe [57].…”
Section: Datasetsmentioning
confidence: 99%
“…RCMs are the most modern tool for projecting climate conditions in specific areas (Stefanidis et al, 2020). Estimates of future changes in the climate are expressed in terms of mean changes (Evin et al, 2021) or predictions of future trends in wind speeds, temperature, and radiation. These estimates can also be converted to impacts such as changes in energy production.…”
Section: Introductionmentioning
confidence: 99%
“…Their quantification in ensembles of climate projections supports the understanding of where targeting efforts reduce them (Evin et al, 2019). The methods to characterize the different sources of uncertainty associated with the projections of climate variables include advanced Bayesian analysis of variance (ANOVA) (Bichet et al, 2020) and QUALYPSO (Evin et al, 2021), which is another statistical approach to calculate the total uncertainty of projections. These methods are computationally expensive and time-consuming procedures.…”
Section: Introductionmentioning
confidence: 99%
“…In order to deliver robust information about future local responses to climate change, it is necessary to explore the uncertainty associated with RCM simulations. Déqué et al (2007) and Evin et al (2021) assess that four sources of uncertainty are at play in a regional climate simulation: the choice of the driving GCM, the greenhouse gas scenario, the choice of the RCM itself and the internal variability. Their relative importance depends on the considered variables, spatial scale, and timeline.…”
Section: Introductionmentioning
confidence: 99%
“…Their relative importance depends on the considered variables, spatial scale, and timeline. According to these results, it is important (Déqué et al, 2012;Evin et al, 2021;Fernández et al, 2019) However, the main limitation of RCM is their high computational costs, and completion of such matrices is impossible.…”
Section: Introductionmentioning
confidence: 99%