The accuracy of numerical models that describe complex physical or chemical processes depends on the choice of model parameters. Estimating an optimal set of parameters by optimization algorithms requires knowledge of the sensitivity of the process of interest to model parameters. Typically the sensitivity computation involves differentiation of the model, which can be performed by applying algorithmic differentiation (AD) tools to the underlying numerical code. However, existing AD tools differ substantially in design, legibility and computational efficiency. In this study we show that, for geophysical data assimilation problems of varying complexity, the performance of adjoint codes generated by the existing AD tools (i) Open_AD, (ii) Tap...
This chapter describes a novel approach for the treatment of model error in geophysical data assimil...
Automatic differentiation (AD) is applied to a two-dimensional Eulerian hydrodynamics computer code ...
Algorithmic differentiation (AD) based on operator overloading is often the only feasible approach f...
The accuracy of numerical models that describe complex physical or chemical processes depends on the...
Automatic differentiation (AD) is the technique whereby output variables of a computer code evaluati...
International audienceThe computation of gradients via the reverse mode of algorithmic differentiati...
Many problems in physics and modern computing are inverse problems -- problems where the desired out...
Use of a hydrodynamics code for experimental data fitting purposes (an optimization problem) require...
AbstractAdjoint sensitivity computation of parameter estimation problems is a widely used technique ...
Adjoint models are increasingly being developed for use in meteorology and oceanography. Typical app...
Variational data assimilation estimates key control parameters of a numerical model to minimize the ...
Algorithmic Differentiation (AD) has become a powerful tool to improve our understanding of the Eart...
Automatic dierentiation (AD) is a technique for generating ecient and reliable deriva-tive codes fro...
International audienceIn this paper, we present an overview of various data assimilation methods, in...
Abstract. In this paper, we present an overview of various data assimilation meth-ods, in order to i...
This chapter describes a novel approach for the treatment of model error in geophysical data assimil...
Automatic differentiation (AD) is applied to a two-dimensional Eulerian hydrodynamics computer code ...
Algorithmic differentiation (AD) based on operator overloading is often the only feasible approach f...
The accuracy of numerical models that describe complex physical or chemical processes depends on the...
Automatic differentiation (AD) is the technique whereby output variables of a computer code evaluati...
International audienceThe computation of gradients via the reverse mode of algorithmic differentiati...
Many problems in physics and modern computing are inverse problems -- problems where the desired out...
Use of a hydrodynamics code for experimental data fitting purposes (an optimization problem) require...
AbstractAdjoint sensitivity computation of parameter estimation problems is a widely used technique ...
Adjoint models are increasingly being developed for use in meteorology and oceanography. Typical app...
Variational data assimilation estimates key control parameters of a numerical model to minimize the ...
Algorithmic Differentiation (AD) has become a powerful tool to improve our understanding of the Eart...
Automatic dierentiation (AD) is a technique for generating ecient and reliable deriva-tive codes fro...
International audienceIn this paper, we present an overview of various data assimilation methods, in...
Abstract. In this paper, we present an overview of various data assimilation meth-ods, in order to i...
This chapter describes a novel approach for the treatment of model error in geophysical data assimil...
Automatic differentiation (AD) is applied to a two-dimensional Eulerian hydrodynamics computer code ...
Algorithmic differentiation (AD) based on operator overloading is often the only feasible approach f...