This chapter describes a novel approach for the treatment of model error in geophysical data assimilation. In this method, model error is treated as a deterministic process correlated in time. This allows for the derivation of the evolution equations for the relevant moments of the model error statistics required in data assimilation procedures, along with an approximation suitable for application to large numerical models typical of environmental science. In this contribution we first derive the equations for the model error dynamics in the general case, and then for the particular situation of parametric error. We show how this deterministic description of the model error can be incorporated in sequential and variational data assimilation...
We commonly refer to state estimation theory in geosciences as data assimilation (DA). This term enc...
We commonly refer to state estimation theory in geosciences as data assimilation (DA). This term enc...
Data assimilation is a procedure that combines observations with models to improve de-scriptions of ...
This chapter describes a novel approach for the treatment of model error in geophysical data assimil...
none2siThis chapter describes a novel approach for the treatment of model error in geophysical data ...
This chapter describes a novel approach for the treatment of model error in geophysical data assimil...
Data assimilation schemes are confronted with the presence of model errors arising from the imperfec...
Data assimilation schemes are confronted with the presence of model errors arising from the imperfec...
Data assimilation schemes are confronted with the presence of model errors arising from the imperfec...
Abstract. A new methodology is proposed to estimate and account for systematic model error in linear...
In data assimilation, observations are combined with the dynamics to get an estimate of the actual s...
In data assimilation, observations are combined with the dynamics to get an estimate of the actual s...
International audienceThe problem of variational data assimilation for a nonlinear evolution model i...
A rational approach is used to identify efficient schemes for data assimilation in nonlinear ocean–a...
We commonly refer to state estimation theory in geosciences as data assimilation (DA). This term enc...
We commonly refer to state estimation theory in geosciences as data assimilation (DA). This term enc...
We commonly refer to state estimation theory in geosciences as data assimilation (DA). This term enc...
Data assimilation is a procedure that combines observations with models to improve de-scriptions of ...
This chapter describes a novel approach for the treatment of model error in geophysical data assimil...
none2siThis chapter describes a novel approach for the treatment of model error in geophysical data ...
This chapter describes a novel approach for the treatment of model error in geophysical data assimil...
Data assimilation schemes are confronted with the presence of model errors arising from the imperfec...
Data assimilation schemes are confronted with the presence of model errors arising from the imperfec...
Data assimilation schemes are confronted with the presence of model errors arising from the imperfec...
Abstract. A new methodology is proposed to estimate and account for systematic model error in linear...
In data assimilation, observations are combined with the dynamics to get an estimate of the actual s...
In data assimilation, observations are combined with the dynamics to get an estimate of the actual s...
International audienceThe problem of variational data assimilation for a nonlinear evolution model i...
A rational approach is used to identify efficient schemes for data assimilation in nonlinear ocean–a...
We commonly refer to state estimation theory in geosciences as data assimilation (DA). This term enc...
We commonly refer to state estimation theory in geosciences as data assimilation (DA). This term enc...
We commonly refer to state estimation theory in geosciences as data assimilation (DA). This term enc...
Data assimilation is a procedure that combines observations with models to improve de-scriptions of ...