Low-dimensional representation of error covariance
Open Access
- 1 October 2000
- journal article
- research article
- Published by Stockholm University Press in Tellus A: Dynamic Meteorology and Oceanography
- Vol. 52 (5) , 533-553
- https://doi.org/10.1034/j.1600-0870.2000.00849.x
Abstract
Ensemble and reduced-rank approaches to prediction and assimilation rely on low-dimensionalapproximations of the estimation error covariances. Here stability properties of the forecast/analysis cycle for linear, time-independent systems are used to identify factors that cause thesteady-state analysis error covariance to admit a low-dimensional representation. A usefulmeasure of forecast/analysis cycle stability is the bound matrix, a function of the dynamics,observation operator and assimilation method. Upper and lower estimates for the steady-stateanalysis error covariance matrix eigenvalues are derived from the bound matrix. The estimatesgeneralize to time-dependent systems. If much of the steady-state analysis error variance is dueto a few dominant modes, the leading eigenvectors of the bound matrix approximate those ofthe steady-state analysis error covariance matrix. The analytical results are illustrated in twonumerical examples where the Kalman filter is carried to steady state. The first example usesthe dynamics of a generalized advection equation exhibiting non-modal transient growth.Failure to observe growing modes leads to increased steady-state analysis error variances.Leading eigenvectors of the steady-state analysis error covariance matrix are well approximatedby leading eigenvectors of the bound matrix. The second example uses the dynamics of adamped baroclinic wave model. The leading eigenvectors of a lowest-order approximation ofthe bound matrix are shown to approximate well the leading eigenvectors of the steady-stateanalysis error covariance matrix. DOI: 10.1034/j.1600-0870.2000.00849.xKeywords
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