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Article Dans Une Revue Lecture Notes in Computational Science and Engineering Année : 2006

Automatic differentiation: a tool for variational data assimilation and adjoint sensitivity analysis for flood modeling

Résumé

Flood modeling involves catchment scale hydrology and river hydraulics. Analysis and reduction of model uncertainties induce sensitivity analysis, reliable initial and boundary conditions, calibration of empirical parameters. A deterministic approach dealing with the aforementioned estimation and sensitivity analysis problems results in the need of computing the derivatives of a function of model output variables with respect to input variables. Modern automatic differentiation (ad) tools such as Tapenade provide an easier and safe way to fulfill this need. Two applications are presented in this paper: variational data assimilation and adjoint sensitivity analysis.
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Dates et versions

inria-00259072 , version 1 (26-02-2008)

Identifiants

  • HAL Id : inria-00259072 , version 1

Citer

William Castaings, Denis Dartus, Marc Honnorat, François-Xavier Le Dimet, Youssef Loukili, et al.. Automatic differentiation: a tool for variational data assimilation and adjoint sensitivity analysis for flood modeling. Lecture Notes in Computational Science and Engineering, 2006, 50, pp.249-262. ⟨inria-00259072⟩
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