Often, a dynamical model is nonlinear in the unknown parameters, but it can be transformed into an overparametrized linear regression model, where the components of the overparametrization vector are nonlinear functions of the smaller number of unknown parameters. We present an algorithm that directly identifies the unknown parameters, we characterize the convergence domains under two different sets of assumptions on the excitation of the signals, and we compute the corresponding convergence rates
The use of an over-parametrized state-space model for system identification has some clear advantage...
The industrial demand on good dynamical simulation models is increasing. Since most structures show ...
One of the subjects which has received a great deal of attention is the overparameterization problem...
The problem of nonlinear dynamical systems of Wiener type identification is considered. The linear...
\u3cp\u3eIn this paper we discuss how to identify a mathematical model for a (non)linear dynamic sys...
In the paper the problem of identifying nonlinear dynamic systems, described in nonlinear regression...
International audienceWe propose a solution to the problem of parameter estimation of nonlinearly pa...
In this paper, an identification method is proposed to determine the nonlinear systems parameters. T...
Download Citation Email Print Request Permissions The object of this paper is the identification of...
This paper presents an example of solving the parameter identification problem in the case of a robo...
Abstract: In the note several algorithms for nonlinear system identification are presented. The clas...
This paper introduces a new rationale for learning nonlinear dynamical systems. The method makes use...
A general framework for estimating nonlinear functions and systems is described and analyzed in this...
Nonlinear parametric system identification is the estimation of nonlinear models of dynamical system...
This paper presents a novel nonparametric approach to the identification of nonlinear dynamical syst...
The use of an over-parametrized state-space model for system identification has some clear advantage...
The industrial demand on good dynamical simulation models is increasing. Since most structures show ...
One of the subjects which has received a great deal of attention is the overparameterization problem...
The problem of nonlinear dynamical systems of Wiener type identification is considered. The linear...
\u3cp\u3eIn this paper we discuss how to identify a mathematical model for a (non)linear dynamic sys...
In the paper the problem of identifying nonlinear dynamic systems, described in nonlinear regression...
International audienceWe propose a solution to the problem of parameter estimation of nonlinearly pa...
In this paper, an identification method is proposed to determine the nonlinear systems parameters. T...
Download Citation Email Print Request Permissions The object of this paper is the identification of...
This paper presents an example of solving the parameter identification problem in the case of a robo...
Abstract: In the note several algorithms for nonlinear system identification are presented. The clas...
This paper introduces a new rationale for learning nonlinear dynamical systems. The method makes use...
A general framework for estimating nonlinear functions and systems is described and analyzed in this...
Nonlinear parametric system identification is the estimation of nonlinear models of dynamical system...
This paper presents a novel nonparametric approach to the identification of nonlinear dynamical syst...
The use of an over-parametrized state-space model for system identification has some clear advantage...
The industrial demand on good dynamical simulation models is increasing. Since most structures show ...
One of the subjects which has received a great deal of attention is the overparameterization problem...