We consider the problem of discrete time filtering (intermittent data assimilation) for differential equation models and discuss methods for its numerical approximation. The focus is on methods based on ensemble/particle techniques and on the ensemble Kalman filter technique in particular. We summarize as well as extend recent work on continuous ensemble Kalman filter formulations, which provide a concise dynamical systems formulation of the combined dynamics-assimilation problem. Possible extensions to fully nonlinear ensemble/particle based filters are also outlined using the framework of optimal transportation theory
This text provides an overview of problems in the field of data assimilation. We explore the possibi...
International audienceData assimilation combines control theory and scientific computing to propose ...
The task of providing an optimal analysis of the state of the atmosphere requires the development of...
Data Assimilation comprehensively covers data assimilation and inverse methods, including both tradi...
In this paper, we consider the data assimilation problem for perfect differential equation models wi...
ABSTRACT. Combined state and parameter estimation of dynamical systems plays a cru-cial role in extr...
Data assimilation is the task of combining evolution models and observational data in order to produ...
Data assimilation is an iterative approach to the problem of estimating the state of a dynamical sys...
Ensemble Kalman filtering was developed as a way to assimilate observed data to track the current st...
This thesis is concerned with the data assimilation methods which combine the dynamical model with t...
Enabled by the increased availability of data, the data assimilation technique, which incorporates m...
Data assimilation is the task to combine evolution models and observational data in order to produce...
The problem of parameter fitting for nonlinear oscillator models to noisy time series is addressed u...
International audienceIn this paper, two data assimilation methods based on sequential Monte Carlo s...
Ensemble based methods are now widely used in applications such as weather prediction, but there are...
This text provides an overview of problems in the field of data assimilation. We explore the possibi...
International audienceData assimilation combines control theory and scientific computing to propose ...
The task of providing an optimal analysis of the state of the atmosphere requires the development of...
Data Assimilation comprehensively covers data assimilation and inverse methods, including both tradi...
In this paper, we consider the data assimilation problem for perfect differential equation models wi...
ABSTRACT. Combined state and parameter estimation of dynamical systems plays a cru-cial role in extr...
Data assimilation is the task of combining evolution models and observational data in order to produ...
Data assimilation is an iterative approach to the problem of estimating the state of a dynamical sys...
Ensemble Kalman filtering was developed as a way to assimilate observed data to track the current st...
This thesis is concerned with the data assimilation methods which combine the dynamical model with t...
Enabled by the increased availability of data, the data assimilation technique, which incorporates m...
Data assimilation is the task to combine evolution models and observational data in order to produce...
The problem of parameter fitting for nonlinear oscillator models to noisy time series is addressed u...
International audienceIn this paper, two data assimilation methods based on sequential Monte Carlo s...
Ensemble based methods are now widely used in applications such as weather prediction, but there are...
This text provides an overview of problems in the field of data assimilation. We explore the possibi...
International audienceData assimilation combines control theory and scientific computing to propose ...
The task of providing an optimal analysis of the state of the atmosphere requires the development of...