In this thesis, the use of low-rank approximations in connection with problems in system identification is explored. Firstly, the motivation of using low-rank approximations in system identification is presented and the framework for low-rank optimization is derived. Secondly, three papers are presented where different problems in system identification are considered within the described low-rank framework. In paper A, a novel method involving the nuclear norm forestimating a Wiener model is introduced. As shown in the paper, this method performs better than existing methods in terms of finding an accurate model. In paper B and C, a group lasso framework is used to perform input selection in the model estimation which also is connected to t...
Nonlinear System identification has a rich history spanning at least 5 decades. A very flexible appr...
In the traditional system identification techniques, a priori model structure is widely assumed to b...
The choice of a parametric model structure in empirical and semi-empirical non-linear modeling is us...
In this thesis, the use of low-rank approximations in connection with problems in system identificat...
Abstract. System identification is a fast growing research area that encompasses a broad range of pr...
Matrix low-rank approximation is intimately related to data modelling; a problem that arises frequen...
Rank deficiency of a data matrix is equivalent to the existence of an exact linear model for the dat...
Errors-in-variables system identification can be posed and solved as a Hankel structured low-rank ap...
Rank deficiency of a data matrix is equivalent to the existence of an exact linear model for the dat...
The identification of non-linear systems using only observed finite datasets has become a mature res...
New system identification methods are developing constantly to come up with solutions that can take ...
The identification of non-linear systems using only observed finite datasets has become a mature res...
The purpose of system identification is to build mathematical models for dynamical systems from expe...
In this book, we study theoretical and practical aspects of computing methods for mathematical model...
This paper discusses estimation of the finite impulse response (FIR) for a linear time-invariant (LT...
Nonlinear System identification has a rich history spanning at least 5 decades. A very flexible appr...
In the traditional system identification techniques, a priori model structure is widely assumed to b...
The choice of a parametric model structure in empirical and semi-empirical non-linear modeling is us...
In this thesis, the use of low-rank approximations in connection with problems in system identificat...
Abstract. System identification is a fast growing research area that encompasses a broad range of pr...
Matrix low-rank approximation is intimately related to data modelling; a problem that arises frequen...
Rank deficiency of a data matrix is equivalent to the existence of an exact linear model for the dat...
Errors-in-variables system identification can be posed and solved as a Hankel structured low-rank ap...
Rank deficiency of a data matrix is equivalent to the existence of an exact linear model for the dat...
The identification of non-linear systems using only observed finite datasets has become a mature res...
New system identification methods are developing constantly to come up with solutions that can take ...
The identification of non-linear systems using only observed finite datasets has become a mature res...
The purpose of system identification is to build mathematical models for dynamical systems from expe...
In this book, we study theoretical and practical aspects of computing methods for mathematical model...
This paper discusses estimation of the finite impulse response (FIR) for a linear time-invariant (LT...
Nonlinear System identification has a rich history spanning at least 5 decades. A very flexible appr...
In the traditional system identification techniques, a priori model structure is widely assumed to b...
The choice of a parametric model structure in empirical and semi-empirical non-linear modeling is us...