Parallel Filter Algorithms for Data Assimilation in Oceanography

A consistent systematic comparison of filter algorithms based on the Kalman filter and intended for data assimilation with large-scale nonlinear models is presented. Considered are the EnsembleKalman Filter (EnKF), the Singular Evolutive Extended Kalman (SEEK) filter, and the Singular Evolutive Inte...

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Main Author: Nerger, Lars
Format: Thesis
Language:unknown
Published: 2004
Subjects:
Online Access:https://epic.awi.de/id/eprint/10313/
https://epic.awi.de/id/eprint/10313/1/Ner2004a.pdf
https://hdl.handle.net/10013/epic.20800
https://hdl.handle.net/10013/epic.20800.d001
id ftawi:oai:epic.awi.de:10313
record_format openpolar
spelling ftawi:oai:epic.awi.de:10313 2023-09-05T13:22:48+02:00 Parallel Filter Algorithms for Data Assimilation in Oceanography Nerger, Lars 2004 application/pdf https://epic.awi.de/id/eprint/10313/ https://epic.awi.de/id/eprint/10313/1/Ner2004a.pdf https://hdl.handle.net/10013/epic.20800 https://hdl.handle.net/10013/epic.20800.d001 unknown https://epic.awi.de/id/eprint/10313/1/Ner2004a.pdf https://hdl.handle.net/10013/epic.20800.d001 Nerger, L. orcid:0000-0002-1908-1010 (2004) Parallel Filter Algorithms for Data Assimilation in Oceanography , PhD thesis, Universität Bremen. hdl:10013/epic.20800 EPIC3PhD Thesis, University of Bremen(Reports on Polar and Marine Research, 487, 174 pp.), 2003 Thesis notRev 2004 ftawi 2023-08-22T19:48:34Z A consistent systematic comparison of filter algorithms based on the Kalman filter and intended for data assimilation with large-scale nonlinear models is presented. Considered are the EnsembleKalman Filter (EnKF), the Singular Evolutive Extended Kalman (SEEK) filter, and the Singular Evolutive Interpolated Kalman (SEIK) filter. Within the two parts of this thesis, the filter algorithms are compared with a focus on their mathematical properties as Error Subspace KalmanFilters (ESKF). Further, the filters are studied as parallel algorithms. This study includes the development of an efficient framework for parallel filtering. In the first part, the filters are motivated in the context of statistical estimation. The unified interpretation as ESKF algorithms provides the basis for the consistent comparison of the filters. Numerical data assimilation experiments with a model based on the shallow water equations show how choices of the filter schemeand particular state ensembles for the filter initialization lead to variations of the data assimilation performance.The application of the three filter algorithms on parallel computers is studied in the second part. The parallelization possibilities of the different phases of the algorithms are examined. Further, a framework for parallel filtering is developed which allows to combine filter algorithms with existing numerical models requiring only minimal changes to the source code of the model.The framework is used to combine the parallel filters with the 3D finite element ocean model FEOM. Numerical data assimilation experiments are utilized to assess the parallel efficiency of the filtering framework and the parallel filters. The experiments yield an excellent parallel efficiency for the filtering framework. Further, the framework and the filter algorithms are well suited for application to realistic large-scale data assimilation problems. Thesis Reports on Polar and Marine Research Alfred Wegener Institute for Polar- and Marine Research (AWI): ePIC (electronic Publication Information Center)
institution Open Polar
collection Alfred Wegener Institute for Polar- and Marine Research (AWI): ePIC (electronic Publication Information Center)
op_collection_id ftawi
language unknown
description A consistent systematic comparison of filter algorithms based on the Kalman filter and intended for data assimilation with large-scale nonlinear models is presented. Considered are the EnsembleKalman Filter (EnKF), the Singular Evolutive Extended Kalman (SEEK) filter, and the Singular Evolutive Interpolated Kalman (SEIK) filter. Within the two parts of this thesis, the filter algorithms are compared with a focus on their mathematical properties as Error Subspace KalmanFilters (ESKF). Further, the filters are studied as parallel algorithms. This study includes the development of an efficient framework for parallel filtering. In the first part, the filters are motivated in the context of statistical estimation. The unified interpretation as ESKF algorithms provides the basis for the consistent comparison of the filters. Numerical data assimilation experiments with a model based on the shallow water equations show how choices of the filter schemeand particular state ensembles for the filter initialization lead to variations of the data assimilation performance.The application of the three filter algorithms on parallel computers is studied in the second part. The parallelization possibilities of the different phases of the algorithms are examined. Further, a framework for parallel filtering is developed which allows to combine filter algorithms with existing numerical models requiring only minimal changes to the source code of the model.The framework is used to combine the parallel filters with the 3D finite element ocean model FEOM. Numerical data assimilation experiments are utilized to assess the parallel efficiency of the filtering framework and the parallel filters. The experiments yield an excellent parallel efficiency for the filtering framework. Further, the framework and the filter algorithms are well suited for application to realistic large-scale data assimilation problems.
format Thesis
author Nerger, Lars
spellingShingle Nerger, Lars
Parallel Filter Algorithms for Data Assimilation in Oceanography
author_facet Nerger, Lars
author_sort Nerger, Lars
title Parallel Filter Algorithms for Data Assimilation in Oceanography
title_short Parallel Filter Algorithms for Data Assimilation in Oceanography
title_full Parallel Filter Algorithms for Data Assimilation in Oceanography
title_fullStr Parallel Filter Algorithms for Data Assimilation in Oceanography
title_full_unstemmed Parallel Filter Algorithms for Data Assimilation in Oceanography
title_sort parallel filter algorithms for data assimilation in oceanography
publishDate 2004
url https://epic.awi.de/id/eprint/10313/
https://epic.awi.de/id/eprint/10313/1/Ner2004a.pdf
https://hdl.handle.net/10013/epic.20800
https://hdl.handle.net/10013/epic.20800.d001
genre Reports on Polar and Marine Research
genre_facet Reports on Polar and Marine Research
op_source EPIC3PhD Thesis, University of Bremen(Reports on Polar and Marine Research, 487, 174 pp.), 2003
op_relation https://epic.awi.de/id/eprint/10313/1/Ner2004a.pdf
https://hdl.handle.net/10013/epic.20800.d001
Nerger, L. orcid:0000-0002-1908-1010 (2004) Parallel Filter Algorithms for Data Assimilation in Oceanography , PhD thesis, Universität Bremen. hdl:10013/epic.20800
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