This paper defines a class of system information—affine information—that includes both the dynamic residuals and some types of auxiliary information that can be used in system parameter estimation as special cases. The types of information that can be cast under the affine information format give rise to quadratic functions that measure the extent to which a model fits such information, and that can be aggregated in a single weighted quadratic cost functional. This allows the definition of a multiobjective methodology for parameter estimation in non-linear system identification, which allows taking into account any type of affine information. The results are presented in terms of a set of efficient solutions of the multiobjective estimation...
In system identification, one usually cares most about finding a model whose outputs are as close as...
This paper addresses the identification of non-linear dynamic systems. A wide class of these systems...
The paper presents a methodology for optimal input design for the estimation of parameters in nonlin...
Empirical or data-based modeling, generally referred to as system identification, plays an essential...
The first part of this paper gives a general approach to the least squares estimation of the weighti...
A general framework for estimating nonlinear functions and systems is described and analyzed in this...
Given a set of input-output measurements, the paper proposes a method for approximation of a nonline...
This paper studies least-squares parameter estimation algorithms for input nonlinear systems, includ...
Least squares parameter estimation algorithms for nonlinear systems are investigated based on a nonl...
The derivations of orthogonal least squares algorithms based on the principle of Hsia's method and g...
The choice of a parametric model structure in empirical and semi-empirical non-linear modeling is us...
The paper presents a methodology for optimal input design (OID) for minimum-variance estimation of p...
This thesis presents a class of methods for solving nonlinear least squares problems. A comprehensiv...
This paper describes a new method for affine parameter estimation between image sequences. Usually, ...
This paper describes a parameter estimation algorithm applicable for the model structures in the for...
In system identification, one usually cares most about finding a model whose outputs are as close as...
This paper addresses the identification of non-linear dynamic systems. A wide class of these systems...
The paper presents a methodology for optimal input design for the estimation of parameters in nonlin...
Empirical or data-based modeling, generally referred to as system identification, plays an essential...
The first part of this paper gives a general approach to the least squares estimation of the weighti...
A general framework for estimating nonlinear functions and systems is described and analyzed in this...
Given a set of input-output measurements, the paper proposes a method for approximation of a nonline...
This paper studies least-squares parameter estimation algorithms for input nonlinear systems, includ...
Least squares parameter estimation algorithms for nonlinear systems are investigated based on a nonl...
The derivations of orthogonal least squares algorithms based on the principle of Hsia's method and g...
The choice of a parametric model structure in empirical and semi-empirical non-linear modeling is us...
The paper presents a methodology for optimal input design (OID) for minimum-variance estimation of p...
This thesis presents a class of methods for solving nonlinear least squares problems. A comprehensiv...
This paper describes a new method for affine parameter estimation between image sequences. Usually, ...
This paper describes a parameter estimation algorithm applicable for the model structures in the for...
In system identification, one usually cares most about finding a model whose outputs are as close as...
This paper addresses the identification of non-linear dynamic systems. A wide class of these systems...
The paper presents a methodology for optimal input design for the estimation of parameters in nonlin...