The selection of uncertainty structures is an important aspect in system identification for robust control. The aim of this paper is to investigate the consequences for multivariable systems. Hereto, first a theoretical analysis is performed that establishes the connection between the associated model set and the robust control criterion. Second, an experimental case study for an automotive application confirms these connections. In addition, the experimental results provide new insights in the shape of associated model sets by using a novel validation procedure. Finally, the improved connections are confirmed through a robust controller synthesis. Both the theoretical and experimental results confirm that a recently developed robust-contro...
Feedback control is able to improve the performance of systems in the presence of uncertain dynamica...
Identification for a model for robust control design is more complicated than for the standard linea...
Controller design for continuous and discrete systems whose models are unknown or highly complex are...
The selection of uncertainty structures is an important aspect in system identification for robust c...
Abstract: Various techniques of system identification exist providing for a nominal model and uncert...
The performance of robust controllers hinges on the underlying model set. The aim of the present pap...
Good feedback systems tolerate uncertain parameters. Stability and performance of feedback systems ...
We propose a model validation procedure that consists of a prediction error identification experimen...
Controller design for continuous and discrete multivaruable systems whose models are unknown or high...
We propose a model validation procedure that consists of a prediction error identification experimen...
This book comprises a selection of papers that were first presented at the Robustness in Identificat...
In the design of a robust control system, one needs a nominal model together with a quantitative bou...
Robust control allows for guaranteed performance for a range of candidate models. The aim of this pa...
In this paper an integrated robust identification and control design procedure is proposed. The plan...
The paper proposes a measure of robust performance based on frequency domain experimental data that ...
Feedback control is able to improve the performance of systems in the presence of uncertain dynamica...
Identification for a model for robust control design is more complicated than for the standard linea...
Controller design for continuous and discrete systems whose models are unknown or highly complex are...
The selection of uncertainty structures is an important aspect in system identification for robust c...
Abstract: Various techniques of system identification exist providing for a nominal model and uncert...
The performance of robust controllers hinges on the underlying model set. The aim of the present pap...
Good feedback systems tolerate uncertain parameters. Stability and performance of feedback systems ...
We propose a model validation procedure that consists of a prediction error identification experimen...
Controller design for continuous and discrete multivaruable systems whose models are unknown or high...
We propose a model validation procedure that consists of a prediction error identification experimen...
This book comprises a selection of papers that were first presented at the Robustness in Identificat...
In the design of a robust control system, one needs a nominal model together with a quantitative bou...
Robust control allows for guaranteed performance for a range of candidate models. The aim of this pa...
In this paper an integrated robust identification and control design procedure is proposed. The plan...
The paper proposes a measure of robust performance based on frequency domain experimental data that ...
Feedback control is able to improve the performance of systems in the presence of uncertain dynamica...
Identification for a model for robust control design is more complicated than for the standard linea...
Controller design for continuous and discrete systems whose models are unknown or highly complex are...