The aim of this paper is to investigate the problem of the joint estimation of both the state and parameters for a class of discrete-time linear systems driven by additive noise, not necessarily Gaussian. A recursive quadratic ¯lter with respect to the observations is here proposed and implemented, by opportunely extending the state space also with the inclusion of the parameters vector. The algorithm is achieved with the systematic use of the Kronecker algebra, which constitutes a powerful tool for polynomial manipulations of vectors and matrices. Numerical simulations are also reported, showing the high performances of the proposed methods with respect to the usually adopted Extended Kalman Filter
We consider a cooperative filtering problem for a group of linear stochastic systems when both absol...
AbstractIn this paper, we examine the problem of robust Kalman filtering for a class of linear uncer...
Abstract-We present several new algorithms, and more generally a new approach, to recursive estimat...
The state estimation for linear discrete-time systems with non-Gaussian state and output noise is a ...
In this paper the state estimation problem for linear discrete-time systems with non-Gaussian state ...
This paper deals with the state estimation problem for a discrete-time nonlinear system driven by ad...
This article addresses the combined estimation issues of parameters and states for multivariable sys...
This paper deals with the problem of system identi¯cation and state estimation for nonlinear uncerta...
Consiglio Nazionale delle Ricerche - Biblioteca Centrale - P.le Aldo Moro, 7 , Rome / CNR - Consigli...
This paper considers the ¯ltering and identi¯cation problems for a class of discrete-time un-certain...
In this paper, the least-squares linear and quadratic filtering pro-blems are studied in discrete-ti...
We present a novel algorithm for concurrent model state and parameter estimation in nonlinear dynami...
Recursive state estimation is considered for discrete time linear systems with mixed process and mea...
In this paper, we examine the problem of robust Kalman filtering for a class of linear uncertain dis...
State estimators are developed for discrete linear systems with scalar additive Laplace process and ...
We consider a cooperative filtering problem for a group of linear stochastic systems when both absol...
AbstractIn this paper, we examine the problem of robust Kalman filtering for a class of linear uncer...
Abstract-We present several new algorithms, and more generally a new approach, to recursive estimat...
The state estimation for linear discrete-time systems with non-Gaussian state and output noise is a ...
In this paper the state estimation problem for linear discrete-time systems with non-Gaussian state ...
This paper deals with the state estimation problem for a discrete-time nonlinear system driven by ad...
This article addresses the combined estimation issues of parameters and states for multivariable sys...
This paper deals with the problem of system identi¯cation and state estimation for nonlinear uncerta...
Consiglio Nazionale delle Ricerche - Biblioteca Centrale - P.le Aldo Moro, 7 , Rome / CNR - Consigli...
This paper considers the ¯ltering and identi¯cation problems for a class of discrete-time un-certain...
In this paper, the least-squares linear and quadratic filtering pro-blems are studied in discrete-ti...
We present a novel algorithm for concurrent model state and parameter estimation in nonlinear dynami...
Recursive state estimation is considered for discrete time linear systems with mixed process and mea...
In this paper, we examine the problem of robust Kalman filtering for a class of linear uncertain dis...
State estimators are developed for discrete linear systems with scalar additive Laplace process and ...
We consider a cooperative filtering problem for a group of linear stochastic systems when both absol...
AbstractIn this paper, we examine the problem of robust Kalman filtering for a class of linear uncer...
Abstract-We present several new algorithms, and more generally a new approach, to recursive estimat...