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Distance-Dependent Filtering of Background Error Covariance Estimates in an Ensemble Kalman Filter

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32

References

2001

Year

Abstract

The usefulness of a distance-dependent reduction of background error covariance estimates in an ensemble Kalman filter is demonstrated. Covariances are reduced by performing an elementwise multiplication of the background error covariance matrix with a correlation function with local support. This reduces noisiness and results in an improved background error covariance estimate, which generates a reduced-error ensemble of model initial conditions.

References

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