Ensemble climate predictions using climate models and observational constraints

Author:

Stott Peter A1,Forest Chris E2

Affiliation:

1. Hadley Centre for Climate Change (Reading Unit), Meteorology Building, University of ReadingReading RG6 6BB, UK

2. Joint Program on the Science and Policy of Global Change, Massachusetts Institute of TechnologyCambridge, MA 02139, USA

Abstract

Two different approaches are described for constraining climate predictions based on observations of past climate change. The first uses large ensembles of simulations from computationally efficient models and the second uses small ensembles from state-of-the-art coupled ocean–atmosphere general circulation models. Each approach is described and the advantages of each are discussed. When compared, the two approaches are shown to give consistent ranges for future temperature changes. The consistency of these results, when obtained using independent techniques, demonstrates that past observed climate changes provide robust constraints on probable future climate changes. Such probabilistic predictions are useful for communities seeking to adapt to future change as well as providing important information for devising strategies for mitigating climate change.

Publisher

The Royal Society

Subject

General Physics and Astronomy,General Engineering,General Mathematics

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