A multi-model ensemble method that combines imperfect models through learning

In the current multi-model ensemble approach climate model simulations are combined a posteriori. In the method of this study the models in the ensemble exchange information during simulations and learn from historical observations to combine their strengths into a best representation of the observe...

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Main Authors: L. A. van den Berge, F. M. Selten, W. Wiegerinck, G. S. Duane
Format: Article
Language:English
Published: Copernicus Publications 2011-06-01
Series:Earth System Dynamics
Online Access:http://www.earth-syst-dynam.net/2/161/2011/esd-2-161-2011.pdf
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spelling doaj-6fcb2ca179124ac1bd51d4607ec2de402020-11-25T01:25:59ZengCopernicus PublicationsEarth System Dynamics2190-49792190-49872011-06-012116117710.5194/esd-2-161-2011A multi-model ensemble method that combines imperfect models through learningL. A. van den BergeF. M. SeltenW. WiegerinckG. S. DuaneIn the current multi-model ensemble approach climate model simulations are combined a posteriori. In the method of this study the models in the ensemble exchange information during simulations and learn from historical observations to combine their strengths into a best representation of the observed climate. The method is developed and tested in the context of small chaotic dynamical systems, like the Lorenz 63 system. Imperfect models are created by perturbing the standard parameter values. Three imperfect models are combined into one super-model, through the introduction of connections between the model equations. The connection coefficients are learned from data from the unperturbed model, that is regarded as the truth. <br><br> The main result of this study is that after learning the super-model is a very good approximation to the truth, much better than each imperfect model separately. These illustrative examples suggest that the super-modeling approach is a promising strategy to improve weather and climate simulations.http://www.earth-syst-dynam.net/2/161/2011/esd-2-161-2011.pdf
collection DOAJ
language English
format Article
sources DOAJ
author L. A. van den Berge
F. M. Selten
W. Wiegerinck
G. S. Duane
spellingShingle L. A. van den Berge
F. M. Selten
W. Wiegerinck
G. S. Duane
A multi-model ensemble method that combines imperfect models through learning
Earth System Dynamics
author_facet L. A. van den Berge
F. M. Selten
W. Wiegerinck
G. S. Duane
author_sort L. A. van den Berge
title A multi-model ensemble method that combines imperfect models through learning
title_short A multi-model ensemble method that combines imperfect models through learning
title_full A multi-model ensemble method that combines imperfect models through learning
title_fullStr A multi-model ensemble method that combines imperfect models through learning
title_full_unstemmed A multi-model ensemble method that combines imperfect models through learning
title_sort multi-model ensemble method that combines imperfect models through learning
publisher Copernicus Publications
series Earth System Dynamics
issn 2190-4979
2190-4987
publishDate 2011-06-01
description In the current multi-model ensemble approach climate model simulations are combined a posteriori. In the method of this study the models in the ensemble exchange information during simulations and learn from historical observations to combine their strengths into a best representation of the observed climate. The method is developed and tested in the context of small chaotic dynamical systems, like the Lorenz 63 system. Imperfect models are created by perturbing the standard parameter values. Three imperfect models are combined into one super-model, through the introduction of connections between the model equations. The connection coefficients are learned from data from the unperturbed model, that is regarded as the truth. <br><br> The main result of this study is that after learning the super-model is a very good approximation to the truth, much better than each imperfect model separately. These illustrative examples suggest that the super-modeling approach is a promising strategy to improve weather and climate simulations.
url http://www.earth-syst-dynam.net/2/161/2011/esd-2-161-2011.pdf
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