This paper presents a robust stability and performance analysis for an uncertainty set delivered by classical prediction error identification. This nonstandard uncertainty set, which is a set of parametrized transfer functions with a parameter vector in an ellipsoid, contains the true system at a certain probability level. Our robust stability result is a necessary and sufficient condition for the stabilization, by a given controller, of all systems in such uncertainty set. The main new technical contribution of this paper is our robust performance result: we show that the worst case performance achieved over all systems in such an uncertainty region is the solution of a convex optimization problem involving linear matrix inequality constra...
The parametric uncertainty may occur in modelling and description of real systems as a consequence o...
In this paper, we consider the identification of linear systems, a priori known to be stable, from i...
In this paper, we consider the identification of linear systems, a priori known to be stable, from i...
This paper presents a robust stability and performance analysis for an uncertainty set delivered by ...
In this paper, we define a measure of robustness for a set of parameterized transfer functions as de...
In the design of a robust control system, one needs a nominal model together with a quantitative bou...
: Given measured data we propose a model consisting of a linear, timeinvariant system affected by no...
Abstract. We consider a rather general class of mathematical programming problems with data uncertai...
In this paper, we consider the identification of linear systems, a priori known to be stable, from ...
In this paper we focus on robust linear optimization problems with uncertainty regions defined by φ-...
In this paper, we consider the identification of linear systems, a priori known to be stable, from i...
In this paper, we consider the identification of linear systems, a priori known to be stable, from i...
We propose a model validation procedure that consists of a prediction error identification experimen...
We propose a model validation procedure that consists of a prediction error identification experimen...
Identification of linear systems, a priori known to be stable, from input output measurements corrup...
The parametric uncertainty may occur in modelling and description of real systems as a consequence o...
In this paper, we consider the identification of linear systems, a priori known to be stable, from i...
In this paper, we consider the identification of linear systems, a priori known to be stable, from i...
This paper presents a robust stability and performance analysis for an uncertainty set delivered by ...
In this paper, we define a measure of robustness for a set of parameterized transfer functions as de...
In the design of a robust control system, one needs a nominal model together with a quantitative bou...
: Given measured data we propose a model consisting of a linear, timeinvariant system affected by no...
Abstract. We consider a rather general class of mathematical programming problems with data uncertai...
In this paper, we consider the identification of linear systems, a priori known to be stable, from ...
In this paper we focus on robust linear optimization problems with uncertainty regions defined by φ-...
In this paper, we consider the identification of linear systems, a priori known to be stable, from i...
In this paper, we consider the identification of linear systems, a priori known to be stable, from i...
We propose a model validation procedure that consists of a prediction error identification experimen...
We propose a model validation procedure that consists of a prediction error identification experimen...
Identification of linear systems, a priori known to be stable, from input output measurements corrup...
The parametric uncertainty may occur in modelling and description of real systems as a consequence o...
In this paper, we consider the identification of linear systems, a priori known to be stable, from i...
In this paper, we consider the identification of linear systems, a priori known to be stable, from i...