The methods of parameterizing model errors have a substantial effect on the accuracy of ensemble data assimilation. After a review of the current error-handling methods, a new blending error parameterization method was designed to combine the advantages of multiplicative inflation and additive inflation. Motivated by evolutionary algorithm concepts that have been developed in the control engineering field for years, the authors propose a new data assimilation method coupled with crossover principles of genetic algorithms based on ensemble transform Kalman filters (ETKFs). The numerical experiments were developed based on the classic nonlinear model (i.e., the Lorenz model). Convex crossover, affine crossover, direction-based crossover, and ...
A new data abimilation technique is presented, based on the ensemble Kalman filter (EnKF), and makes...
To implement Bayes’ Theorem for data assimilation, an ensemble Kalman filter (EnKF) uses a set of mo...
In this chapter, the ensemble-based data assimilation methods are introduced, including their develo...
Data Assimilation comprehensively covers data assimilation and inverse methods, including both tradi...
We describe a simple adaptive quality control procedure that limits the impact of individual observa...
Using Lorenz96 model with 40 variables, classical methods of advanced data assimilation are explaine...
International audienceThe problem of variational data assimilation for a nonlinear evolution model i...
In sequential data assimilation problems, the Kalman filter (KF) is optimal for linear Gaussian mode...
a. Ensemble of perturbed assimilations versus deterministic square-root filters The principles of en...
International audienceThe problem of variational data assimilation for a nonlinear evolution model i...
Data assimilation considers the problem of using a variety of data to calibrate model-based estimate...
The problem of variational data assimilation for a nonlinear evolution model is formulated as an opt...
International audienceThe performance of ensemble-based data assimilation techniques that estimateth...
International audienceSpecification and tuning of errors from dynamical models are important issues ...
The problem of variational data assimilation for a nonlinear evolution model is considered to identi...
A new data abimilation technique is presented, based on the ensemble Kalman filter (EnKF), and makes...
To implement Bayes’ Theorem for data assimilation, an ensemble Kalman filter (EnKF) uses a set of mo...
In this chapter, the ensemble-based data assimilation methods are introduced, including their develo...
Data Assimilation comprehensively covers data assimilation and inverse methods, including both tradi...
We describe a simple adaptive quality control procedure that limits the impact of individual observa...
Using Lorenz96 model with 40 variables, classical methods of advanced data assimilation are explaine...
International audienceThe problem of variational data assimilation for a nonlinear evolution model i...
In sequential data assimilation problems, the Kalman filter (KF) is optimal for linear Gaussian mode...
a. Ensemble of perturbed assimilations versus deterministic square-root filters The principles of en...
International audienceThe problem of variational data assimilation for a nonlinear evolution model i...
Data assimilation considers the problem of using a variety of data to calibrate model-based estimate...
The problem of variational data assimilation for a nonlinear evolution model is formulated as an opt...
International audienceThe performance of ensemble-based data assimilation techniques that estimateth...
International audienceSpecification and tuning of errors from dynamical models are important issues ...
The problem of variational data assimilation for a nonlinear evolution model is considered to identi...
A new data abimilation technique is presented, based on the ensemble Kalman filter (EnKF), and makes...
To implement Bayes’ Theorem for data assimilation, an ensemble Kalman filter (EnKF) uses a set of mo...
In this chapter, the ensemble-based data assimilation methods are introduced, including their develo...