The estimation of the Feasible Parameter Set (FPS) for Hammerstein models in a worst-case setting is considered. A bounding procedure is determined both for polytopic and ellipsoidic uncertainties. It consists in the projection of the FPS of the extended parameter vector onto suitable subspaces and in the solution of convex optimization problems which provide Uncertainties Intervals of the model parameters. The bounds obtained are tighter than in the previous approache
We propose a method for nonparametric identification of Hammerstein models with Gaussian-process mod...
This paper is motivated by a dimension problem associated with the existing subspace identification ...
International audienceThis paper is motivated by a dimension problem associated with the existing su...
The estimation of the Feasible Parameter Set (FPS) for Hammerstein models in a worst-case setting is...
Nonconvex feasible parameter sets are encountered in set membership identification whenever the regr...
The identification of Hammerstein models for nonlinear systems in considered in a worst-case setting...
In this paper we present a procedure for the evaluation of bounds on the parameters of Hammerstein s...
We formulate and solve a new parameter estimation problem in the presence of bounded model uncertain...
In this technical note we present a procedure for the identification of Hammerstein systems from mea...
This note considers some problems arising in parameter estimation theory with unknown but bounded me...
We propose a method for nonparametric identification of Hammerstein models with Gaussian-process mod...
This paper is motivated by a dimension problem associated with the existing subspace identification ...
International audienceThis paper is motivated by a dimension problem associated with the existing su...
The estimation of the Feasible Parameter Set (FPS) for Hammerstein models in a worst-case setting is...
Nonconvex feasible parameter sets are encountered in set membership identification whenever the regr...
The identification of Hammerstein models for nonlinear systems in considered in a worst-case setting...
In this paper we present a procedure for the evaluation of bounds on the parameters of Hammerstein s...
We formulate and solve a new parameter estimation problem in the presence of bounded model uncertain...
In this technical note we present a procedure for the identification of Hammerstein systems from mea...
This note considers some problems arising in parameter estimation theory with unknown but bounded me...
We propose a method for nonparametric identification of Hammerstein models with Gaussian-process mod...
This paper is motivated by a dimension problem associated with the existing subspace identification ...
International audienceThis paper is motivated by a dimension problem associated with the existing su...