We present an innovative approach for solving time dependent Four Dimensional Variational Data Assimilation (4D VAR DA) problems. The proposed approach performs a decomposition of the whole physical domain, i.e. both along spatial and temporal directions; a reduction in space and time of both the Partial Differential Equations-based model and the Data Assimilation functional; finally it uses a modified regularization functional describing restricted 4D VAR DA problems on the domain decomposition. Innovation mainly lies in the introduction ab initio, i.e. on the numerical model – of a domain decomposition approach in space and time joining the idea of Schwarz's method and Parallel in Time (PinT)–based approaches. We provide the numerical framework of this method including convergence analysis and error propagation. A validation analysis is performed discussing computational results on a case study relying on Shallow Water Equations. © 2020 IMACS

Model Reduction in space and time for ab initio decomposition of 4D Variational Data Assimilation problems / D'Amore, L.; Cacciapuoti, R.. - In: APPLIED NUMERICAL MATHEMATICS. - ISSN 0168-9274. - 160:(2021), pp. 242-264. [10.1016/j.apnum.2020.10.003]

Model Reduction in space and time for ab initio decomposition of 4D Variational Data Assimilation problems

D'Amore L.
Primo
Writing – Review & Editing
;
Cacciapuoti R.
Secondo
2021

Abstract

We present an innovative approach for solving time dependent Four Dimensional Variational Data Assimilation (4D VAR DA) problems. The proposed approach performs a decomposition of the whole physical domain, i.e. both along spatial and temporal directions; a reduction in space and time of both the Partial Differential Equations-based model and the Data Assimilation functional; finally it uses a modified regularization functional describing restricted 4D VAR DA problems on the domain decomposition. Innovation mainly lies in the introduction ab initio, i.e. on the numerical model – of a domain decomposition approach in space and time joining the idea of Schwarz's method and Parallel in Time (PinT)–based approaches. We provide the numerical framework of this method including convergence analysis and error propagation. A validation analysis is performed discussing computational results on a case study relying on Shallow Water Equations. © 2020 IMACS
2021
Model Reduction in space and time for ab initio decomposition of 4D Variational Data Assimilation problems / D'Amore, L.; Cacciapuoti, R.. - In: APPLIED NUMERICAL MATHEMATICS. - ISSN 0168-9274. - 160:(2021), pp. 242-264. [10.1016/j.apnum.2020.10.003]
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11588/820183
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