We propose a model validation procedure that consists of a prediction error identification experiment with a full order model. It delivers a parametric uncertainty ellipsoid and a corresponding set of parameterized transfer functions, which we call prediction error (PE) uncertainty set. Such uncertainty set differs from the classical uncertainty descriptions used in robust control analysis and design. We develop a robust control analysis theory for such uncertainty sets, which covers two distinct aspects: (1) Controller validation. We present necessary and sufficient conditions for a specific controller to stabilize - or to achieve a given level of performance with - all systems in such PE uncertainty set. (2) Model validation for robust co...
This paper presents a new controller validation method for linear multivariable time-invariant model...
International audienceThis paper presents a new controller validation method for linear multivariabl...
The gap between the models used in control synthesis and those obtained from identification experime...
We propose a model validation procedure that consists of a prediction error identification experimen...
This paper presents a coherent framework for model validation for control and for controller validat...
The results on model validation for control and controller validation in a prediction error identifi...
In this paper, we illustrate our new results on model validation for control and controller validati...
Abstract. Within a stochastic noise framework, the validation of a model yields an ellipsoidal param...
The majority of literature on robust control assumes that a design model is available and that the u...
Identification for robust control must deliver not only a nominal model, but also a reliable estimat...
Modern robust control synthesis techniques aim at providing robustness with respect to uncertainty i...
Deterministic approaches to model validation for robust control are investigated. In common determin...
Abstract The majority of literature on robust control assumes that a design model is available and t...
Identification for robust control must deliver not only a nominal model, but also a reliable estimat...
Identification for robust control must deliver not only a nominal model, but also a reliable estimat...
This paper presents a new controller validation method for linear multivariable time-invariant model...
International audienceThis paper presents a new controller validation method for linear multivariabl...
The gap between the models used in control synthesis and those obtained from identification experime...
We propose a model validation procedure that consists of a prediction error identification experimen...
This paper presents a coherent framework for model validation for control and for controller validat...
The results on model validation for control and controller validation in a prediction error identifi...
In this paper, we illustrate our new results on model validation for control and controller validati...
Abstract. Within a stochastic noise framework, the validation of a model yields an ellipsoidal param...
The majority of literature on robust control assumes that a design model is available and that the u...
Identification for robust control must deliver not only a nominal model, but also a reliable estimat...
Modern robust control synthesis techniques aim at providing robustness with respect to uncertainty i...
Deterministic approaches to model validation for robust control are investigated. In common determin...
Abstract The majority of literature on robust control assumes that a design model is available and t...
Identification for robust control must deliver not only a nominal model, but also a reliable estimat...
Identification for robust control must deliver not only a nominal model, but also a reliable estimat...
This paper presents a new controller validation method for linear multivariable time-invariant model...
International audienceThis paper presents a new controller validation method for linear multivariabl...
The gap between the models used in control synthesis and those obtained from identification experime...