The gap between the models used in control synthesis and those obtained from identification experiments is considered by investigating the connection between uncertain models and data. The model validation problem addressed is: given experimental data and a model with both additive noise and norm-bounded perturbations, is it possible that the model could produce the observed input-output data? This problem is studied for the standard H∞/μ framework models. A necessary condition for such a model to describe an experimental datum is obtained. For a large class of models in the robust control framework, this condition is computable as the solution of a quadratic optimization problem
Abstract. Within a stochastic noise framework, the validation of a model yields an ellipsoidal param...
We propose a model validation procedure that consists of a prediction error identification experimen...
In the design of a robust control system, one needs a nominal model together with a quantitative bou...
Modern robust control synthesis techniques aim at providing robustness with respect to uncertainty i...
This paper begins to address the gap between the models used in robust control theory and those obta...
This thesis addresses model validation, important in robust control system modeling, for the identif...
Given measured data generated by a discrete-time linear system we propose a model consisting of a li...
The application of robust control theory requires representative models containing unknown bounded p...
Model validation is the exercise of assessing whether a model of some underlying system is good enou...
The paper considers the problem of estimating, from experimental data, real parameters for a model w...
Deterministic approaches to model validation for robust control are investigated. In common determin...
Model validation is a means of assessing model quality with respect to experimental data. In a robus...
We give a short overview on methods of Model (In-)Validation, that fit to the robust control framewo...
Abstract: A precursor to any advanced control solution is the step of obtaining an accurate model of...
We propose a model validation procedure that consists of a prediction error identification experimen...
Abstract. Within a stochastic noise framework, the validation of a model yields an ellipsoidal param...
We propose a model validation procedure that consists of a prediction error identification experimen...
In the design of a robust control system, one needs a nominal model together with a quantitative bou...
Modern robust control synthesis techniques aim at providing robustness with respect to uncertainty i...
This paper begins to address the gap between the models used in robust control theory and those obta...
This thesis addresses model validation, important in robust control system modeling, for the identif...
Given measured data generated by a discrete-time linear system we propose a model consisting of a li...
The application of robust control theory requires representative models containing unknown bounded p...
Model validation is the exercise of assessing whether a model of some underlying system is good enou...
The paper considers the problem of estimating, from experimental data, real parameters for a model w...
Deterministic approaches to model validation for robust control are investigated. In common determin...
Model validation is a means of assessing model quality with respect to experimental data. In a robus...
We give a short overview on methods of Model (In-)Validation, that fit to the robust control framewo...
Abstract: A precursor to any advanced control solution is the step of obtaining an accurate model of...
We propose a model validation procedure that consists of a prediction error identification experimen...
Abstract. Within a stochastic noise framework, the validation of a model yields an ellipsoidal param...
We propose a model validation procedure that consists of a prediction error identification experimen...
In the design of a robust control system, one needs a nominal model together with a quantitative bou...