Variational data assimilation for discrete Burgers equation

We present an optimal control formulation of the data assimilation problem for the Burgers' equation, with the initial condition as the control. First the convergence of the implicit Lax-Friedrichs numerical discretization scheme is presented. Then we study the dependence of the convergence...

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Main Authors: Amit Apte, Didier Auroux, Mythily Ramaswamy
Format: Article
Language:English
Published: Texas State University 2010-09-01
Series:Electronic Journal of Differential Equations
Subjects:
Online Access:http://ejde.math.txstate.edu/conf-proc/19/a2/abstr.html
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spelling doaj-9bce764a17b94d1ca3ad76d5cf0ba08c2020-11-25T01:02:35ZengTexas State UniversityElectronic Journal of Differential Equations1072-66912010-09-012010191530Variational data assimilation for discrete Burgers equationAmit ApteDidier AurouxMythily RamaswamyWe present an optimal control formulation of the data assimilation problem for the Burgers' equation, with the initial condition as the control. First the convergence of the implicit Lax-Friedrichs numerical discretization scheme is presented. Then we study the dependence of the convergence of the associated minimization problem on different terms in the cost function, specifically, the weight for the regularization and the number of observations, as well as the a priori approximation of the initial condition. We present numerical evidence for multiple minima of the cost function without regularization, while only a single minimum is seen for the regularized problem. http://ejde.math.txstate.edu/conf-proc/19/a2/abstr.htmlVariational data assimilationBurgers equationLax-Friedrichs scheme
collection DOAJ
language English
format Article
sources DOAJ
author Amit Apte
Didier Auroux
Mythily Ramaswamy
spellingShingle Amit Apte
Didier Auroux
Mythily Ramaswamy
Variational data assimilation for discrete Burgers equation
Electronic Journal of Differential Equations
Variational data assimilation
Burgers equation
Lax-Friedrichs scheme
author_facet Amit Apte
Didier Auroux
Mythily Ramaswamy
author_sort Amit Apte
title Variational data assimilation for discrete Burgers equation
title_short Variational data assimilation for discrete Burgers equation
title_full Variational data assimilation for discrete Burgers equation
title_fullStr Variational data assimilation for discrete Burgers equation
title_full_unstemmed Variational data assimilation for discrete Burgers equation
title_sort variational data assimilation for discrete burgers equation
publisher Texas State University
series Electronic Journal of Differential Equations
issn 1072-6691
publishDate 2010-09-01
description We present an optimal control formulation of the data assimilation problem for the Burgers' equation, with the initial condition as the control. First the convergence of the implicit Lax-Friedrichs numerical discretization scheme is presented. Then we study the dependence of the convergence of the associated minimization problem on different terms in the cost function, specifically, the weight for the regularization and the number of observations, as well as the a priori approximation of the initial condition. We present numerical evidence for multiple minima of the cost function without regularization, while only a single minimum is seen for the regularized problem.
topic Variational data assimilation
Burgers equation
Lax-Friedrichs scheme
url http://ejde.math.txstate.edu/conf-proc/19/a2/abstr.html
work_keys_str_mv AT amitapte variationaldataassimilationfordiscreteburgersequation
AT didierauroux variationaldataassimilationfordiscreteburgersequation
AT mythilyramaswamy variationaldataassimilationfordiscreteburgersequation
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