Combining inflation-free and iterative ensemble Kalman filters for strongly nonlinear systems

The finite-size ensemble Kalman filter (EnKF-N) is an ensemble Kalman filter (EnKF) which, in perfect model condition, does not require inflation because it partially accounts for the ensemble sampling errors. For the Lorenz '63 and '95 toy-models, it was so far shown to perform as well or...

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Main Authors: M. Bocquet, P. Sakov
Format: Article
Language:English
Published: Copernicus Publications 2012-06-01
Series:Nonlinear Processes in Geophysics
Online Access:http://www.nonlin-processes-geophys.net/19/383/2012/npg-19-383-2012.pdf
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spelling doaj-f1604d5d8cb749e29a6726d1038094ad2020-11-24T21:30:30ZengCopernicus PublicationsNonlinear Processes in Geophysics1023-58091607-79462012-06-0119338339910.5194/npg-19-383-2012Combining inflation-free and iterative ensemble Kalman filters for strongly nonlinear systemsM. BocquetP. SakovThe finite-size ensemble Kalman filter (EnKF-N) is an ensemble Kalman filter (EnKF) which, in perfect model condition, does not require inflation because it partially accounts for the ensemble sampling errors. For the Lorenz '63 and '95 toy-models, it was so far shown to perform as well or better than the EnKF with an optimally tuned inflation. The iterative ensemble Kalman filter (IEnKF) is an EnKF which was shown to perform much better than the EnKF in strongly nonlinear conditions, such as with the Lorenz '63 and '95 models, at the cost of iteratively updating the trajectories of the ensemble members. This article aims at further exploring the two filters and at combining both into an EnKF that does not require inflation in perfect model condition, and which is as efficient as the IEnKF in very nonlinear conditions. <br><br> In this study, EnKF-N is first introduced and a new implementation is developed. It decomposes EnKF-N into a cheap two-step algorithm that amounts to computing an optimal inflation factor. This offers a justification of the use of the inflation technique in the traditional EnKF and why it can often be efficient. Secondly, the IEnKF is introduced following a new implementation based on the Levenberg-Marquardt optimisation algorithm. Then, the two approaches are combined to obtain the finite-size iterative ensemble Kalman filter (IEnKF-N). Several numerical experiments are performed on IEnKF-N with the Lorenz '95 model. These experiments demonstrate its numerical efficiency as well as its performance that offer, at least, the best of both filters. We have also selected a demanding case based on the Lorenz '63 model that points to ways to improve the finite-size ensemble Kalman filters. Eventually, IEnKF-N could be seen as the first brick of an efficient ensemble Kalman smoother for strongly nonlinear systems.http://www.nonlin-processes-geophys.net/19/383/2012/npg-19-383-2012.pdf
collection DOAJ
language English
format Article
sources DOAJ
author M. Bocquet
P. Sakov
spellingShingle M. Bocquet
P. Sakov
Combining inflation-free and iterative ensemble Kalman filters for strongly nonlinear systems
Nonlinear Processes in Geophysics
author_facet M. Bocquet
P. Sakov
author_sort M. Bocquet
title Combining inflation-free and iterative ensemble Kalman filters for strongly nonlinear systems
title_short Combining inflation-free and iterative ensemble Kalman filters for strongly nonlinear systems
title_full Combining inflation-free and iterative ensemble Kalman filters for strongly nonlinear systems
title_fullStr Combining inflation-free and iterative ensemble Kalman filters for strongly nonlinear systems
title_full_unstemmed Combining inflation-free and iterative ensemble Kalman filters for strongly nonlinear systems
title_sort combining inflation-free and iterative ensemble kalman filters for strongly nonlinear systems
publisher Copernicus Publications
series Nonlinear Processes in Geophysics
issn 1023-5809
1607-7946
publishDate 2012-06-01
description The finite-size ensemble Kalman filter (EnKF-N) is an ensemble Kalman filter (EnKF) which, in perfect model condition, does not require inflation because it partially accounts for the ensemble sampling errors. For the Lorenz '63 and '95 toy-models, it was so far shown to perform as well or better than the EnKF with an optimally tuned inflation. The iterative ensemble Kalman filter (IEnKF) is an EnKF which was shown to perform much better than the EnKF in strongly nonlinear conditions, such as with the Lorenz '63 and '95 models, at the cost of iteratively updating the trajectories of the ensemble members. This article aims at further exploring the two filters and at combining both into an EnKF that does not require inflation in perfect model condition, and which is as efficient as the IEnKF in very nonlinear conditions. <br><br> In this study, EnKF-N is first introduced and a new implementation is developed. It decomposes EnKF-N into a cheap two-step algorithm that amounts to computing an optimal inflation factor. This offers a justification of the use of the inflation technique in the traditional EnKF and why it can often be efficient. Secondly, the IEnKF is introduced following a new implementation based on the Levenberg-Marquardt optimisation algorithm. Then, the two approaches are combined to obtain the finite-size iterative ensemble Kalman filter (IEnKF-N). Several numerical experiments are performed on IEnKF-N with the Lorenz '95 model. These experiments demonstrate its numerical efficiency as well as its performance that offer, at least, the best of both filters. We have also selected a demanding case based on the Lorenz '63 model that points to ways to improve the finite-size ensemble Kalman filters. Eventually, IEnKF-N could be seen as the first brick of an efficient ensemble Kalman smoother for strongly nonlinear systems.
url http://www.nonlin-processes-geophys.net/19/383/2012/npg-19-383-2012.pdf
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