Assessing observational constraints on future European climate in an out-of-sample framework

Author:

O’Reilly Christopher H.ORCID,Brunner LukasORCID,Qasmi Saïd,Nogherotto Rita,Ballinger Andrew P.ORCID,Booth BenORCID,Befort Daniel J.ORCID,Knutti RetoORCID,Schurer Andrew P.,Ribes Aurélien,Weisheimer AntjeORCID,Coppola ErikaORCID,McSweeney Carol

Abstract

AbstractObservations are increasingly used to constrain multi-model projections for future climate assessments. This study assesses the performance of five constraining methods, which have previously been applied to attempt to improve regional climate projections from CMIP5-era models. We employ an out-of-sample testing approach to assess the efficacy of these constraining methods when applied to “pseudo-observational” datasets to constrain future changes in the European climate. These pseudo-observations are taken from CMIP6 simulations, for which future changes were withheld and used for verification. The constrained projections are more accurate and broadly more reliable for regional temperature projections compared to the unconstrained projections, especially in the summer season, which was not clear prior to this study. However, the constraining methods do not improve regional precipitation projections. We also analysed the performance of multi-method projections by combining the constrained projections, which are found to be competitive with the best-performing individual methods and demonstrate improvements in reliability for some temperature projections. The performance of the multi-method projection highlights the potential of combining constraints for the development of constraining methods.

Funder

Royal Society

EC | Horizon 2020 Framework Programme

Publisher

Springer Science and Business Media LLC

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