System identification is about constructing and validating modelsfrom measured data. When designing system identificationexperiments in control applications, there are many aspects toconsider. One important aspect is the choice of model structure.Another crucial issue is the design of input signals. Once a modelof the system has been estimated, it is essential to validate theclosed loop performance if the feedback controller is based onthis model. In this thesis we consider the prediction-erroridentification method. We study model structure complexity issues,input design and model validation for control. To describe real-life systems with high accuracy, models of veryhigh complexity are typically needed. However, the variance of themodel es...
International audienceIn data-based control design, system-identification techniques are used to ext...
In the design of a robust control system, one needs a nominal model together with a quantitative bou...
We propose a model validation procedure that consists of a prediction error identification experimen...
System identification is about constructing and validating modelsfrom measured data. When designing ...
There are many aspects to consider when designing system identification experiments in control appli...
Modern robust control synthesis techniques aim at providing robustness with respect to uncertainty i...
International audienceIt is well known that the quality of the parameters identified during an ident...
When system identification methods are used to construct mathematical models of real systems, it is ...
The main part of this thesis focuses on optimal experiment design for system identification within t...
System Identification concerns the problem of building mathematical models of dynamical systems. Thi...
It is well known that the quality of the parameters identified during an identification experiment d...
Parameter identification experiments deliver an identified model together with an ellipsoidal uncert...
In this paper an integrated robust identification and control design procedure is proposed. The plan...
We compare open loop versus closed loop identification when the identified model is used for control...
Abstract — This paper considers a method for optimal input design in system identification for contr...
International audienceIn data-based control design, system-identification techniques are used to ext...
In the design of a robust control system, one needs a nominal model together with a quantitative bou...
We propose a model validation procedure that consists of a prediction error identification experimen...
System identification is about constructing and validating modelsfrom measured data. When designing ...
There are many aspects to consider when designing system identification experiments in control appli...
Modern robust control synthesis techniques aim at providing robustness with respect to uncertainty i...
International audienceIt is well known that the quality of the parameters identified during an ident...
When system identification methods are used to construct mathematical models of real systems, it is ...
The main part of this thesis focuses on optimal experiment design for system identification within t...
System Identification concerns the problem of building mathematical models of dynamical systems. Thi...
It is well known that the quality of the parameters identified during an identification experiment d...
Parameter identification experiments deliver an identified model together with an ellipsoidal uncert...
In this paper an integrated robust identification and control design procedure is proposed. The plan...
We compare open loop versus closed loop identification when the identified model is used for control...
Abstract — This paper considers a method for optimal input design in system identification for contr...
International audienceIn data-based control design, system-identification techniques are used to ext...
In the design of a robust control system, one needs a nominal model together with a quantitative bou...
We propose a model validation procedure that consists of a prediction error identification experimen...