Kalman-based state estimators assume a priori knowledge of the covariance matrices of the process and observation noise. However, in most practical situations, noise statistics and initial conditions are often unknown and need to be estimated from measurement data. This paper presents an auto-covariance least-squares-based algorithm for noise and initial state error covariance estimation of large-scale linear time-varying (LTV) and nonlinear systems. Compared to existing auto-covariance least-squares based-algorithms, our method does not involve any approximations for LTV systems, has fewer parameters to determine and is more memory/computationally efficient for large-scale systems. For nonlinear systems, our algorithm uses full information...
The Gohberg-Heinig explicit formula for the inversion of a block-Toeplitz matrix is used to build an...
This thesis is on filtering in state space models. First, we examine approximate Kalman filters for ...
The parameter estimation problem of linear systems from input output measurements, corrupted with no...
In this thesis, we introduce two different methods for determining noise covariance matrices in orde...
In order to estimate states from a noise-driven state space system, the state estimator requires a p...
This paper presents a noise covariance estimation method for dynamical models with rectangular noise...
Kalman filtering for linear systems is known to provide the minimum variance estimation error, under...
This paper extends in two directions the results of prior work on generalized linear covariance anal...
In state reconstruction problems, the statistics of the noise affecting the state equations is often...
International audienceA new method to compute the covariance matrix of the process noise is presente...
The Unscented Kalman filter (UKF) may suffer from performance degradation and even divergence while ...
Estimation of unknown noise covariances in a Kalman filter is a problem of significant practical int...
In Kalman filtering applications, the variance of the estimation error is guaranteed to be minimize...
This paper presents a computationally fast algorithm for estimating, both, the system and observatio...
In identifying parameters of a continuous-time dynamical system, a difficulty arises when the observ...
The Gohberg-Heinig explicit formula for the inversion of a block-Toeplitz matrix is used to build an...
This thesis is on filtering in state space models. First, we examine approximate Kalman filters for ...
The parameter estimation problem of linear systems from input output measurements, corrupted with no...
In this thesis, we introduce two different methods for determining noise covariance matrices in orde...
In order to estimate states from a noise-driven state space system, the state estimator requires a p...
This paper presents a noise covariance estimation method for dynamical models with rectangular noise...
Kalman filtering for linear systems is known to provide the minimum variance estimation error, under...
This paper extends in two directions the results of prior work on generalized linear covariance anal...
In state reconstruction problems, the statistics of the noise affecting the state equations is often...
International audienceA new method to compute the covariance matrix of the process noise is presente...
The Unscented Kalman filter (UKF) may suffer from performance degradation and even divergence while ...
Estimation of unknown noise covariances in a Kalman filter is a problem of significant practical int...
In Kalman filtering applications, the variance of the estimation error is guaranteed to be minimize...
This paper presents a computationally fast algorithm for estimating, both, the system and observatio...
In identifying parameters of a continuous-time dynamical system, a difficulty arises when the observ...
The Gohberg-Heinig explicit formula for the inversion of a block-Toeplitz matrix is used to build an...
This thesis is on filtering in state space models. First, we examine approximate Kalman filters for ...
The parameter estimation problem of linear systems from input output measurements, corrupted with no...