In system identification, one usually cares most about finding a model whose outputs are as close as possible to the true system outputs when the same input is applied to both. However, most system identification algorithms do not minimize this output error. Often they minimize model equation error instead, as in typical least-squares fits using a finite-difference model, and it is seen here that this distinction is significant. Here, we develop a set of system identification algorithms that minimize output error for multi-input/multi-output and multi-input/single-output systems. This is done with sequential quadratic programming iterations on the nonlinear leastsquares problems, with an eigendecomposition to handle indefinite second partia...
Abstract — The main features of the considered identification problem are that there is no a priori ...
In this dissertation, we present research on identifying Wiener systems with known, noninvertible no...
In this paper, two nonlinear optimization methods for the identification of nonlinear systems are co...
In system identification, one usually cares most about finding a model whose outputs are as close as...
Empirical or data-based modeling, generally referred to as system identification, plays an essential...
The extensive use of a least-squares problem formulation in many fields is partly motivated by the e...
The extensive use of a least-squares problem formulation in many fields is partly motivated by the e...
International audienceIn this paper, we propose a method for identifying the linear model of a syste...
In this paper we present a review of some recent results for identification of linear dynamic system...
In this paper we present a review of some recent results for identification of linear dynamic system...
International audienceIn this paper, we propose a method for identifying the linear model of a syste...
In this paper we present a review of some recent results for identification of linear dynamic system...
A general framework for estimating nonlinear functions and systems is described and analyzed in this...
In this paper an optimal deterministic identification problem is solved in which a new measure for t...
In this paper an optimal deterministic identification problem is solved in which a new measure for t...
Abstract — The main features of the considered identification problem are that there is no a priori ...
In this dissertation, we present research on identifying Wiener systems with known, noninvertible no...
In this paper, two nonlinear optimization methods for the identification of nonlinear systems are co...
In system identification, one usually cares most about finding a model whose outputs are as close as...
Empirical or data-based modeling, generally referred to as system identification, plays an essential...
The extensive use of a least-squares problem formulation in many fields is partly motivated by the e...
The extensive use of a least-squares problem formulation in many fields is partly motivated by the e...
International audienceIn this paper, we propose a method for identifying the linear model of a syste...
In this paper we present a review of some recent results for identification of linear dynamic system...
In this paper we present a review of some recent results for identification of linear dynamic system...
International audienceIn this paper, we propose a method for identifying the linear model of a syste...
In this paper we present a review of some recent results for identification of linear dynamic system...
A general framework for estimating nonlinear functions and systems is described and analyzed in this...
In this paper an optimal deterministic identification problem is solved in which a new measure for t...
In this paper an optimal deterministic identification problem is solved in which a new measure for t...
Abstract — The main features of the considered identification problem are that there is no a priori ...
In this dissertation, we present research on identifying Wiener systems with known, noninvertible no...
In this paper, two nonlinear optimization methods for the identification of nonlinear systems are co...