This paper discusses a novel initialization algorithm for the estimation of nonlinear state-space models. Good initial values for the model parameters are obtained by identifying separately the linear dynamics and the nonlinear terms in the model. In particular, the nonlinear dynamic problem is transformed into an approximate static formulation, and simple regression methods are applied to obtain the solution in a fast and efficient way. The proposed method is validated by means of two measurement examples: the Wiener-Hammerstein benchmark problem and the identification of a crystal detector. © 1963-2012 IEEE.status: publishe
This paper is concerned with the parameter estimation of a general class of nonlinear dynamic system...
This paper is concerned with the parameter estimation of a general class of nonlinear dynamic system...
In the system identification community a popular framework for the problem of estimating a parametri...
This paper discusses a novel initialization algorithmfor the estimation of nonlinear state-space mod...
This work focuses on the identification of nonlinear dynamic systems. In particular the problem of o...
In this work a new initialization scheme for nonlinear state-space models is applied to the problem ...
Abstract: This work presents the application of an initialization scheme for nonlinear state-space m...
This work focuses on the identification of nonlinear dynamic systems. In particular the problem of o...
This work presents the application of an initialization scheme for nonlinear state-space models on a...
The identification of black-box nonlinear statespace models requires a flexible representation of th...
The identification of black-box nonlinear statespace models requires a flexible representation of th...
The identification of black-box nonlinear statespace models requires a flexible representation of th...
International audienceA new approach to parameter estimation of dynamical models is proposed. Its ob...
The identification of nonlinear systems by the minimization of a predictionerror criterion suffers f...
The identification of nonlinear systems by the minimization of a predictionerror criterion suffers f...
This paper is concerned with the parameter estimation of a general class of nonlinear dynamic system...
This paper is concerned with the parameter estimation of a general class of nonlinear dynamic system...
In the system identification community a popular framework for the problem of estimating a parametri...
This paper discusses a novel initialization algorithmfor the estimation of nonlinear state-space mod...
This work focuses on the identification of nonlinear dynamic systems. In particular the problem of o...
In this work a new initialization scheme for nonlinear state-space models is applied to the problem ...
Abstract: This work presents the application of an initialization scheme for nonlinear state-space m...
This work focuses on the identification of nonlinear dynamic systems. In particular the problem of o...
This work presents the application of an initialization scheme for nonlinear state-space models on a...
The identification of black-box nonlinear statespace models requires a flexible representation of th...
The identification of black-box nonlinear statespace models requires a flexible representation of th...
The identification of black-box nonlinear statespace models requires a flexible representation of th...
International audienceA new approach to parameter estimation of dynamical models is proposed. Its ob...
The identification of nonlinear systems by the minimization of a predictionerror criterion suffers f...
The identification of nonlinear systems by the minimization of a predictionerror criterion suffers f...
This paper is concerned with the parameter estimation of a general class of nonlinear dynamic system...
This paper is concerned with the parameter estimation of a general class of nonlinear dynamic system...
In the system identification community a popular framework for the problem of estimating a parametri...