Articles | Volume 22, issue 5
https://doi.org/10.5194/npg-22-601-2015
https://doi.org/10.5194/npg-22-601-2015
Research article
 | 
09 Oct 2015
Research article |  | 09 Oct 2015

A framework for variational data assimilation with superparameterization

I. Grooms and Y. Lee

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Cited articles

Abramov, R. V.: Suppression of chaos at slow variables by rapidly mixing fast dynamics through linear energy-preserving coupling, Commun. Math. Sci., 10, 595–624, 2012.
Anderson, J.: An ensemble adjustment Kalman filter for data assimilation, Mon. Weather Rev., 129, 2884–2903, 2001.
Gaspari, G. and Cohn, S.: Construction of correlation functions in two and three dimensions, Q. J. Roy. Meteorol. Soc., 125, 723–757, 1999.
Grabowski, W.: An improved framework for superparameterization, J. Atmos. Sci., 61, 1940–1952, 2004.
Grabowski, W. and Smolarkiewicz, P.: CRCP: a Cloud Resolving Convection Parameterization for modeling the tropical convecting atmosphere, Physica D, 133, 171–178, 1999.
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Short summary
Superparameterization is a multiscale computational method that significantly improves the representation of cloud processes in global atmosphere and climate models. We present a framework for assimilating observational data into superparameterized models to initialize them for forecasts. The framework is demonstrated in the context of a new system of ordinary differential equations that constitutes perhaps the simplest model of superparameterization.