In this paper we present several algorithms related to the global total least squares (GTLS) modelling of multivariable time series observed over a finite time interval. A GTLS model is a linear, time-invariant finite-dimensional system with a behaviour that has minimal Frobenius distance to a given observation. The first algorithm determines this distance. We also give a recursive version of this, which is comparable to Kalman filtering. Necessary conditions for optimality are described in terms of state space representations. Further we present a Gauss-Newton algorithm for the construction of GTLS models. An example illustrates the results
This paper examines the problem of estimating linear time-invariant state-space system models. In pa...
Abstract:- This paper deals with the task of obtaining approximated models of discrete-time systems ...
textabstractIn this paper we investigate the identification of systems from time series observed ove...
In this paper we present several algorithms related to the global total least squares (GTLS) modelli...
Presents a novel approach for the modeling of multivariable time series. The model class consists of...
Presents a novel approach for the modeling of multivariable time series. The model class consists of...
Global total least squares (GTLS) is a method for the identification of linear systems where no dist...
This book presents a comprehensive study of multivariate time series with linear state space structu...
textabstractGlobal total least squares (GTLS) is a method for the identification of linear systems w...
We show that the generalized total least squares (GTLS) problem with a singular noise covariance mat...
Abstract—We show that the generalized total least squares (GTLS) problem with a singular noise covar...
The following identification problem is considered: minimize the l2 norm of the difference between ...
textabstractGlobal total least squares has been introduced as a method for the identification of det...
In this paper a new method for discrete time series state space modeling is proposed. The method is ...
This work presents a novel least squares matrix algorithm (LSM) for the analysis of rapidly changing...
This paper examines the problem of estimating linear time-invariant state-space system models. In pa...
Abstract:- This paper deals with the task of obtaining approximated models of discrete-time systems ...
textabstractIn this paper we investigate the identification of systems from time series observed ove...
In this paper we present several algorithms related to the global total least squares (GTLS) modelli...
Presents a novel approach for the modeling of multivariable time series. The model class consists of...
Presents a novel approach for the modeling of multivariable time series. The model class consists of...
Global total least squares (GTLS) is a method for the identification of linear systems where no dist...
This book presents a comprehensive study of multivariate time series with linear state space structu...
textabstractGlobal total least squares (GTLS) is a method for the identification of linear systems w...
We show that the generalized total least squares (GTLS) problem with a singular noise covariance mat...
Abstract—We show that the generalized total least squares (GTLS) problem with a singular noise covar...
The following identification problem is considered: minimize the l2 norm of the difference between ...
textabstractGlobal total least squares has been introduced as a method for the identification of det...
In this paper a new method for discrete time series state space modeling is proposed. The method is ...
This work presents a novel least squares matrix algorithm (LSM) for the analysis of rapidly changing...
This paper examines the problem of estimating linear time-invariant state-space system models. In pa...
Abstract:- This paper deals with the task of obtaining approximated models of discrete-time systems ...
textabstractIn this paper we investigate the identification of systems from time series observed ove...