Prediction and filtering of continuous-time stochastic processes require a solver of a continuous-time differential Lyapunov equation (CDLE). Even though this can be recast into an ordinary differential equation (ODE), where standard solvers can be applied, the dominating approach in Kalman filter applications is to discretize the system and then apply the discrete-time difference Lyapunov equation (DDLE). To avoid problems with stability and poor accuracy, oversampling is often used. This contribution analyzes over-sampling strategies, and proposes a low-complexity analytical solution that does not involve oversampling. The results are illustrated on Kalman filtering problems in both linear and nonlinear systems.LINK-SI
This is the preprint version of the article published in Mathematics of Control, Signals and Systems...
In this paper, we propose using an ensemble Kalman filter (EnKF) and particle filters (PFs) to obtai...
The Kalman filter is the general solution to the recursive, minimised mean square estimation problem...
Prediction and filtering of continuous-time stochastic processes require a solver of a continuous-t...
Abstract: Stochastic dynamical systems are fundamental in state estimation, system identifi-cation a...
The problem of system identification for the Kalman filter, relying on the expectation-maximization ...
First-order methods are often analyzed via their continuous-time models, where their worst-case conv...
Abstract. We present here an alternative view of the continuous time filtering problem, namely the p...
In this paper we consider the problem of estimating parameters in ordinary differential equations gi...
Kalman filtering and multiple model adaptive estimation (MMAE) methods have been applied by research...
The problem of constructing a Lyapunov function for continuous-time nonlinear dynamical systems is t...
International audienceWe consider the filtering problem of estimating the state of a continuous-time...
This paper is concerned with the filtering problem in continuous time. Three algorithmic solution ap...
The Kalman filter is a mathematical method, whose purpose is to process noisy measurements in order ...
This paper is concerned with the filtering problem in continuous time. Three algorithmic solution ap...
This is the preprint version of the article published in Mathematics of Control, Signals and Systems...
In this paper, we propose using an ensemble Kalman filter (EnKF) and particle filters (PFs) to obtai...
The Kalman filter is the general solution to the recursive, minimised mean square estimation problem...
Prediction and filtering of continuous-time stochastic processes require a solver of a continuous-t...
Abstract: Stochastic dynamical systems are fundamental in state estimation, system identifi-cation a...
The problem of system identification for the Kalman filter, relying on the expectation-maximization ...
First-order methods are often analyzed via their continuous-time models, where their worst-case conv...
Abstract. We present here an alternative view of the continuous time filtering problem, namely the p...
In this paper we consider the problem of estimating parameters in ordinary differential equations gi...
Kalman filtering and multiple model adaptive estimation (MMAE) methods have been applied by research...
The problem of constructing a Lyapunov function for continuous-time nonlinear dynamical systems is t...
International audienceWe consider the filtering problem of estimating the state of a continuous-time...
This paper is concerned with the filtering problem in continuous time. Three algorithmic solution ap...
The Kalman filter is a mathematical method, whose purpose is to process noisy measurements in order ...
This paper is concerned with the filtering problem in continuous time. Three algorithmic solution ap...
This is the preprint version of the article published in Mathematics of Control, Signals and Systems...
In this paper, we propose using an ensemble Kalman filter (EnKF) and particle filters (PFs) to obtai...
The Kalman filter is the general solution to the recursive, minimised mean square estimation problem...