AbstractKalman filtering has become a powerful framework for solving data assimilation problems. Of interest here are the low-rank filters which are computationally efficient for solving large-scale data assimilation problems. Together with theoretical aspects on the basis of which some common low-rank filters are designed, the paper also presents numerically comparative results of data assimilation using an air pollution model. The performance of such filters, as depending on the distance between the measurement locations and emission points, is investigated
In this chapter, the ensemble-based data assimilation methods are introduced, including their develo...
The first part of this two-part article describes the formulation of a Kalman filter system for assi...
Using Lorenz96 model with 40 variables, classical methods of advanced data assimilation are explaine...
AbstractKalman filtering has become a powerful framework for solving data assimilation problems. Of ...
Kalman filtering represents a powerful framework for solving data assimilation problems. Of interest...
Data assimilation is a process where an improved prediction is obtained from a weighted combination ...
Kalman filtering represents a powerful framework for solving data assimilation problems. Of interest...
The problem of air pollution around urbanized area across Europe is strongly related to ozone. Ozone...
The Kalman filter (KF) dates back to 1960, when R. E. Kalman [4] provided a recursive algorithm to c...
The task of providing an optimal analysis of the state of the atmosphere requires the development of...
In this contribution, the problem of data assimilation as state estimation for dynamical systems und...
A study of Kalman filtering in atmospheric data assimilation is presented. Our research aims at an u...
Data assimilation is the use of measurement data to improve estimates of the state of dynamical syst...
Use of data assimilation techniques such as optimal interpolation or the Kalman filter in global che...
Several variations of the Kalman filter algorithm, such as the extended Kalman filter (EKF) and the ...
In this chapter, the ensemble-based data assimilation methods are introduced, including their develo...
The first part of this two-part article describes the formulation of a Kalman filter system for assi...
Using Lorenz96 model with 40 variables, classical methods of advanced data assimilation are explaine...
AbstractKalman filtering has become a powerful framework for solving data assimilation problems. Of ...
Kalman filtering represents a powerful framework for solving data assimilation problems. Of interest...
Data assimilation is a process where an improved prediction is obtained from a weighted combination ...
Kalman filtering represents a powerful framework for solving data assimilation problems. Of interest...
The problem of air pollution around urbanized area across Europe is strongly related to ozone. Ozone...
The Kalman filter (KF) dates back to 1960, when R. E. Kalman [4] provided a recursive algorithm to c...
The task of providing an optimal analysis of the state of the atmosphere requires the development of...
In this contribution, the problem of data assimilation as state estimation for dynamical systems und...
A study of Kalman filtering in atmospheric data assimilation is presented. Our research aims at an u...
Data assimilation is the use of measurement data to improve estimates of the state of dynamical syst...
Use of data assimilation techniques such as optimal interpolation or the Kalman filter in global che...
Several variations of the Kalman filter algorithm, such as the extended Kalman filter (EKF) and the ...
In this chapter, the ensemble-based data assimilation methods are introduced, including their develo...
The first part of this two-part article describes the formulation of a Kalman filter system for assi...
Using Lorenz96 model with 40 variables, classical methods of advanced data assimilation are explaine...