We study modeling and identification of stationary processes with a spectral density matrix of low rank. Equivalently, we consider processes having an innovation of reduced dimension for which Prediction Error Methods (PEM) algorithms are not directly applicable. We show that these processes admit a special feedback structure with a deterministic feedback channel which can be used to split the identification in two steps, one of which can be based on standard algorithms while the other is based on a deterministic least squares fit. Identifiability of the feedback system is analyzed and a unique identifiable structure is characterized. Simulations show that the proposed procedure works well in some simple examples.Comment: arXiv admin note: ...
Identification methods for dynamic networks typically require prior knowledge of the network and dis...
In dynamic network identification usually the assumption is made that there is a full rank process n...
In this paper we propose a model reduction framework for obtaining low order linear and non-linear m...
Rank-deficient stationary stochastic vector processes are present in many problems in network theory...
Considers stationary stochastic discrete-time vector processes made up of two component processes y ...
64 pages, 12 figuresThis article is an extended version of previous work of the authors [40, 41] on ...
In this thesis, the use of low-rank approximations in connection with problems in system identificat...
Fitting data by a bounded complexity linear model is equivalent to low-rank approximation of a matri...
Behaviours provide an elegant, parameter free characterization of deterministic systems. We discuss ...
We generalize well‐known results on structural identifiability of vector autoregressive (VAR) models...
The article presents a method for the identification of Linear Parameter-Varying (LPV) models in a L...
This paper analyses identification for multivariate unobserved components models in which the innov...
Identification of systems operating in closed loop has long been of prime interest in industrial app...
Identification of systems operating in closed loop has long been of prime interest in industrial app...
AbstractIdentification of multiple input output discrete time linear dynamic systems operating in op...
Identification methods for dynamic networks typically require prior knowledge of the network and dis...
In dynamic network identification usually the assumption is made that there is a full rank process n...
In this paper we propose a model reduction framework for obtaining low order linear and non-linear m...
Rank-deficient stationary stochastic vector processes are present in many problems in network theory...
Considers stationary stochastic discrete-time vector processes made up of two component processes y ...
64 pages, 12 figuresThis article is an extended version of previous work of the authors [40, 41] on ...
In this thesis, the use of low-rank approximations in connection with problems in system identificat...
Fitting data by a bounded complexity linear model is equivalent to low-rank approximation of a matri...
Behaviours provide an elegant, parameter free characterization of deterministic systems. We discuss ...
We generalize well‐known results on structural identifiability of vector autoregressive (VAR) models...
The article presents a method for the identification of Linear Parameter-Varying (LPV) models in a L...
This paper analyses identification for multivariate unobserved components models in which the innov...
Identification of systems operating in closed loop has long been of prime interest in industrial app...
Identification of systems operating in closed loop has long been of prime interest in industrial app...
AbstractIdentification of multiple input output discrete time linear dynamic systems operating in op...
Identification methods for dynamic networks typically require prior knowledge of the network and dis...
In dynamic network identification usually the assumption is made that there is a full rank process n...
In this paper we propose a model reduction framework for obtaining low order linear and non-linear m...