The Youla-Kucera parametrization is a fundamental result in system theory, very useful when designing model-based controllers. In this paper, this parametrization is employed to solve the controller design from data problem, without requiring a process model. It is shown that employing the proposed controller structure it is possible to achieve more stringent closed-loop performances than previous works in literature, maintaining a criterion to estimate the closed-loop stability. The developed design methodology does not imply a plant identification step and the solution can be obtained by least-squares algorithms in the case of stochastic additive noise. The designed solution is evaluated through Monte Carlo simulations for the regulation ...
Abstract — Data-driven controller tuning for model reference control problem is investigated. A new ...
International audienceThe stability of adaptive disturbance rejection schemes using Youla-Kucera (YK...
International audienceThe growing interest in using dual Youla Kucera plant parametrization for mode...
The Youla-Kucera parametrization is a fundamental result in system theory, very useful when designin...
The Youla–Kucera parametrization is a fundamental result in system theory, very useful when designin...
International audienceAdaptive feedback regulation is concerned with the strong attenuation of unkno...
Abstract — This paper proposes a methodology to adaptively reduce time varying and narrow band harmo...
This paper describes the application of the Youla parameterization of all stabilizing controllers an...
In this paper, a controller tuning methodology for unknown linear systems is proposed. The approach ...
This paper describes the application of the Youla parameterization of all stabilizing controllers an...
Data-driven tuning is an alternative to model-based controller design where controllers are directly...
The Youla-Kucera parameterization is used to find the family of controllers for which a feedback con...
The paper deals with the problem of designing controllers from experimental data. We propose a non-i...
Abstract — Data-driven controller tuning for model reference control problem is investigated. A new ...
International audienceThe stability of adaptive disturbance rejection schemes using Youla-Kucera (YK...
International audienceThe growing interest in using dual Youla Kucera plant parametrization for mode...
The Youla-Kucera parametrization is a fundamental result in system theory, very useful when designin...
The Youla–Kucera parametrization is a fundamental result in system theory, very useful when designin...
International audienceAdaptive feedback regulation is concerned with the strong attenuation of unkno...
Abstract — This paper proposes a methodology to adaptively reduce time varying and narrow band harmo...
This paper describes the application of the Youla parameterization of all stabilizing controllers an...
In this paper, a controller tuning methodology for unknown linear systems is proposed. The approach ...
This paper describes the application of the Youla parameterization of all stabilizing controllers an...
Data-driven tuning is an alternative to model-based controller design where controllers are directly...
The Youla-Kucera parameterization is used to find the family of controllers for which a feedback con...
The paper deals with the problem of designing controllers from experimental data. We propose a non-i...
Abstract — Data-driven controller tuning for model reference control problem is investigated. A new ...
International audienceThe stability of adaptive disturbance rejection schemes using Youla-Kucera (YK...
International audienceThe growing interest in using dual Youla Kucera plant parametrization for mode...