JOURNAL ARTICLE

Data Assimilation Using an Ensemble Kalman Filter Technique

P. L. HoutekamerHerschel L. Mitchell

Year: 1998 Journal:   Monthly Weather Review Vol: 126 (3)Pages: 796-811   Publisher: American Meteorological Society

Abstract

The possibility of performing data assimilation using the flow-dependent statistics calculated from an ensemble of short-range forecasts (a technique referred to as ensemble Kalman filtering) is examined in an idealized environment. Using a three-level, quasigeostrophic, T21 model and simulated observations, experiments are performed in a perfect-model context. By using forward interpolation operators from the model state to the observations, the ensemble Kalman filter is able to utilize nonconventional observations. In order to maintain a representative spread between the ensemble members and avoid a problem of inbreeding, a pair of ensemble Kalman filters is configured so that the assimilation of data using one ensemble of short-range forecasts as background fields employs the weights calculated from the other ensemble of short-range forecasts. This configuration is found to work well: the spread between the ensemble members resembles the difference between the ensemble mean and the true state, except in the case of the smallest ensembles. A series of 30-day data assimilation cycles is performed using ensembles of different sizes. The results indicate that (i) as the size of the ensembles increases, correlations are estimated more accurately and the root-mean-square analysis error decreases, as expected, and (ii) ensembles having on the order of 100 members are sufficient to accurately describe local anisotropic, baroclinic correlation structures. Due to the difficulty of accurately estimating the small correlations associated with remote observations, a cutoff radius beyond which observations are not used, is implemented. It is found that (a) for a given ensemble size there is an optimal value of this cutoff radius, and (b) the optimal cutoff radius increases as the ensemble size increases.

Keywords:
Data assimilation Ensemble Kalman filter Kalman filter Ensemble learning Ensemble forecasting Statistical physics Range (aeronautics) Mathematics Statistics Computer science Meteorology Extended Kalman filter Physics Artificial intelligence

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1919
Cited By
7.74
FWCI (Field Weighted Citation Impact)
44
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0.98
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Citation History

Topics

Meteorological Phenomena and Simulations
Physical Sciences →  Earth and Planetary Sciences →  Atmospheric Science
Climate variability and models
Physical Sciences →  Environmental Science →  Global and Planetary Change
Oceanographic and Atmospheric Processes
Physical Sciences →  Earth and Planetary Sciences →  Oceanography

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