Abstract. System identification is a fast growing research area that encompasses a broad range of problems and solution methods. It is desirable to have a unifying setting and a few common principles that are sufficient to understand the currently existing identification methods. The behavioral approach to system and control, put forward in the mid 80’s, is such a unifying setting. Till recently, however, the behavioral approach lacked supporting numerical solution methods. In the last 10 yeas, the structured low-rank approximation setting was used to fulfill this gap. In this paper, we summarize recent progress on methods for system identification in the behavioral setting and pose some open problems. First, we show that errors-in-variable...
Since the appearance of the first results on subspace system identification in the literature differ...
AbstractBasic algorithmic and numerical issues involved in subspace-based linear multivariable discr...
: We give a general overview of the state-of-the-art in subspace system identification methods. We h...
Errors-in-variables system identification can be posed and solved as a Hankel structured low-rank ap...
In this thesis, the use of low-rank approximations in connection with problems in system identificat...
This paper presents theory andalgorithms for system identification suitable for the framework of beh...
This paper presents theory and algorithms for system identification suitable for the framework of be...
Rank deficiency of a data matrix is equivalent to the existence of an exact linear model for the dat...
Rank deficiency of a data matrix is equivalent to the existence of an exact linear model for the dat...
The identification of dynamic system behavior from experimentally measured or computationally simula...
This paper discusses estimation of the finite impulse response (FIR) for a linear time-invariant (LT...
The main theme of this thesis is black-box mathematical modeling of discrete-time, finite-dimensiona...
Matrix low-rank approximation is intimately related to data modelling; a problem that arises frequen...
The field of control-oriented system identification is mature. Nevertheless, it is still very active...
Gray-box identification is prevalent in modeling physical and networked systems. However, due to the...
Since the appearance of the first results on subspace system identification in the literature differ...
AbstractBasic algorithmic and numerical issues involved in subspace-based linear multivariable discr...
: We give a general overview of the state-of-the-art in subspace system identification methods. We h...
Errors-in-variables system identification can be posed and solved as a Hankel structured low-rank ap...
In this thesis, the use of low-rank approximations in connection with problems in system identificat...
This paper presents theory andalgorithms for system identification suitable for the framework of beh...
This paper presents theory and algorithms for system identification suitable for the framework of be...
Rank deficiency of a data matrix is equivalent to the existence of an exact linear model for the dat...
Rank deficiency of a data matrix is equivalent to the existence of an exact linear model for the dat...
The identification of dynamic system behavior from experimentally measured or computationally simula...
This paper discusses estimation of the finite impulse response (FIR) for a linear time-invariant (LT...
The main theme of this thesis is black-box mathematical modeling of discrete-time, finite-dimensiona...
Matrix low-rank approximation is intimately related to data modelling; a problem that arises frequen...
The field of control-oriented system identification is mature. Nevertheless, it is still very active...
Gray-box identification is prevalent in modeling physical and networked systems. However, due to the...
Since the appearance of the first results on subspace system identification in the literature differ...
AbstractBasic algorithmic and numerical issues involved in subspace-based linear multivariable discr...
: We give a general overview of the state-of-the-art in subspace system identification methods. We h...