Abstract: This paper is about the identification of discrete-time Hammerstein systems from output measurements only (blind identification). Assuming that the unobserved input is white Gaussian noise, that the static nonlinearity is invertible, and that the output is observed without errors, a Gaussian maximum likelihood estimator is constructed. Its asymptotic properties are analyzed and the Cramér-Rao lower bound is calculated. In practice, the latter can be computed accurately without using the strong law of large numbers. A two-step procedure is described that allows to find high quality initial estimates to start up the iterative Gauss-Newton based optimization scheme. The paper includes the illustration of the method on a simulation ex...
This paper proposes a new blind approach to identification of Hammerstein-Wiener models, where a lin...
This paper studies the parameter estimation problems of Hammerstein output error autoregressive (OEA...
Abstract. The aim of the given paper is the development of an approach for parametric identifi-catio...
Abstract- This paper handles the identification of discrete-time Wiener systems from output measurem...
Hammerstein systems are the series composition of a static nonlinear function and a linear dynamic s...
The deterministic identification of Hammerstein systems is investigated in this paper. Based on the ...
A novel approach is presented for the analysis and design of identification algorithms for Hammerste...
This paper develops and illustrates a new maximum-likelihood based method for the identification of ...
Hammerstein systems form a class of block-oriented nonlinear models, where a static nonlinearity pre...
This paper develops and illustrates a new maximum-likelihood based method for the identification of ...
This article proposes a new approach to identification of Hammerstein systems, where a non-linearity...
In this technical note we present a procedure for the identification of Hammerstein systems from mea...
© 2016 EUCA. In this paper a new system identification approach for Hammerstein systems is proposed....
International audienceIn this paper, we consider the identification of Hammerstein systems in presen...
A recursive algorithm to recover the nonlinear char-acteristic of the memoryless part of the Hammer-...
This paper proposes a new blind approach to identification of Hammerstein-Wiener models, where a lin...
This paper studies the parameter estimation problems of Hammerstein output error autoregressive (OEA...
Abstract. The aim of the given paper is the development of an approach for parametric identifi-catio...
Abstract- This paper handles the identification of discrete-time Wiener systems from output measurem...
Hammerstein systems are the series composition of a static nonlinear function and a linear dynamic s...
The deterministic identification of Hammerstein systems is investigated in this paper. Based on the ...
A novel approach is presented for the analysis and design of identification algorithms for Hammerste...
This paper develops and illustrates a new maximum-likelihood based method for the identification of ...
Hammerstein systems form a class of block-oriented nonlinear models, where a static nonlinearity pre...
This paper develops and illustrates a new maximum-likelihood based method for the identification of ...
This article proposes a new approach to identification of Hammerstein systems, where a non-linearity...
In this technical note we present a procedure for the identification of Hammerstein systems from mea...
© 2016 EUCA. In this paper a new system identification approach for Hammerstein systems is proposed....
International audienceIn this paper, we consider the identification of Hammerstein systems in presen...
A recursive algorithm to recover the nonlinear char-acteristic of the memoryless part of the Hammer-...
This paper proposes a new blind approach to identification of Hammerstein-Wiener models, where a lin...
This paper studies the parameter estimation problems of Hammerstein output error autoregressive (OEA...
Abstract. The aim of the given paper is the development of an approach for parametric identifi-catio...