A climate model projection weighting scheme accounting for performance and interdependence

Uncertainties of climate projections are routinely assessed by considering simulations from different models. Observations are used to evaluate models, yet there is a debate about whether and how to explicitly weight model projections by agreement with observations. Here we present a straightforward...

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Veröffentlicht in:Geophysical research letters 2017-02, Vol.44 (4), p.1909-1918
Hauptverfasser: Knutti, Reto, Sedláček, Jan, Sanderson, Benjamin M., Lorenz, Ruth, Fischer, Erich M., Eyring, Veronika
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Sprache:eng
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Zusammenfassung:Uncertainties of climate projections are routinely assessed by considering simulations from different models. Observations are used to evaluate models, yet there is a debate about whether and how to explicitly weight model projections by agreement with observations. Here we present a straightforward weighting scheme that accounts both for the large differences in model performance and for model interdependencies, and we test reliability in a perfect model setup. We provide weighted multimodel projections of Arctic sea ice and temperature as a case study to demonstrate that, for some questions at least, it is meaningless to treat all models equally. The constrained ensemble shows reduced spread and a more rapid sea ice decline than the unweighted ensemble. We argue that the growing number of models with different characteristics and considerable interdependence finally justifies abandoning strict model democracy, and we provide guidance on when and how this can be achieved robustly. Key Points Model weighting can constrain future projections Ensemble projections must also account for model interdependence Finding appropriate metrics to weight models remains challenging
ISSN:0094-8276
1944-8007
DOI:10.1002/2016GL072012