The weak-constraint inverse for nonlinear dynamical models is discussed and derived in terms of a probabilistic formulation. The well-known result that for Gaussian error statistics the minimum of the weak-constraint inverse is equal to the maximum-likelihood estimate is rederived. Then several methods based on ensemble statistics that can be used to find the smoother (as opposed to the filter) solution are introduced and compared to traditional methods. A strong point of the new methods is that they avoid the integration of adjoint equations, which is a complex task for real oceanographic or atmospheric applications. they also avoid iterative searches in a Hilbert space, and error estimates can be obtained without much additional computati...
The bulk of this paper contains a concise mathematical overview of the subject of data assimilation,...
The bulk of this paper contains a concise mathematical overview of the subject of data assimilation,...
Data assimilation has wide ranging applications, including neuroscience, oceanography and climate sc...
With very few exceptions, data assimilation methods which have been used or proposed for use with oc...
An overview is given of the current status of inverse methods and data assimilation for nonlinear oc...
For the very large nonlinear dynamical systems that arise in a wide range of physical, biological an...
The generalized inverse is constructed for a nonlinear, single-layer quasigeostrophic model, togethe...
Data Assimilation comprehensively covers data assimilation and inverse methods, including both tradi...
A rational approach is used to identify efficient schemes for data assimilation in nonlinear ocean–a...
This review discusses recent advances in geophysical data assimilation beyond Gaussian statistical m...
We introduce a conditional Gaussian framework for data assimilation and prediction of nonlinear turb...
A data-assimilation method is introduced for large-scale applications in the ocean and the atmospher...
A new approach is explored for computing estimates of the error covariance associated with the intri...
The bulk of this paper contains a concise mathematical overview of the subject of data assimilation,...
International audienceThe ultimate purpose of environmental studies is the forecast of its natural e...
The bulk of this paper contains a concise mathematical overview of the subject of data assimilation,...
The bulk of this paper contains a concise mathematical overview of the subject of data assimilation,...
Data assimilation has wide ranging applications, including neuroscience, oceanography and climate sc...
With very few exceptions, data assimilation methods which have been used or proposed for use with oc...
An overview is given of the current status of inverse methods and data assimilation for nonlinear oc...
For the very large nonlinear dynamical systems that arise in a wide range of physical, biological an...
The generalized inverse is constructed for a nonlinear, single-layer quasigeostrophic model, togethe...
Data Assimilation comprehensively covers data assimilation and inverse methods, including both tradi...
A rational approach is used to identify efficient schemes for data assimilation in nonlinear ocean–a...
This review discusses recent advances in geophysical data assimilation beyond Gaussian statistical m...
We introduce a conditional Gaussian framework for data assimilation and prediction of nonlinear turb...
A data-assimilation method is introduced for large-scale applications in the ocean and the atmospher...
A new approach is explored for computing estimates of the error covariance associated with the intri...
The bulk of this paper contains a concise mathematical overview of the subject of data assimilation,...
International audienceThe ultimate purpose of environmental studies is the forecast of its natural e...
The bulk of this paper contains a concise mathematical overview of the subject of data assimilation,...
The bulk of this paper contains a concise mathematical overview of the subject of data assimilation,...
Data assimilation has wide ranging applications, including neuroscience, oceanography and climate sc...