We propose an approach for the direct design from data of controllers finalized at solving tracking problems for nonlinear systems. This approach, called Direct FeedbacK (DFK) design, overcomes relevant problems typical of the standard design methods, such as modeling errors, non-trivial parameter identification, non-convex optimization, and difficulty in nonlinear control design. Considering a Set Membership (SM) setting, we provide two main contributions. The first one is a theoretical framework for the stability analysis of nonlinear feedback control systems, in which the controller is an approximation identified from data of an ideal inverse model. In this framework, we derive sufficient conditions under which the approximated controlle...
This thesis reports on my research in data-driven control, addressing the problem of data-driven sta...
In this paper, we introduce the Data-Driven Inversion-Based Control (D2-IBC) method for nonlinear co...
In this paper approximate feedback linearization is revisited. It is shown that, under mild assumpti...
An approach for the direct design from data of controllers finalized at solving tracking problems fo...
An approach for the direct design of LPV controllers from data is proposed. This approach, called Di...
A data-driven method to design reference tracking controllers for nonlinear systems is presented. Th...
This paper deals with direct data-driven design of model-reference controllers whose number of param...
This paper presents a novel unified approach of controller design and identification for unknown inp...
In this paper, we introduce and discuss the Data-Driven Inversion-Based Control (D2-IBC) method for ...
In this paper, we propose a non-iterative direct data-driven control approach, such that the control...
In the paper, an approach for the direct design of LPV controllers from data is proposed. The approa...
International audienceA set-membership (SM) approach is proposed to design reliable static stabilizi...
An approach to design a feedback controller for nonlinear systems directly from experimental data i...
In a recent paper we have shown that data collected from linear systems excited by persistently exci...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Electrical Engineering and Comp...
This thesis reports on my research in data-driven control, addressing the problem of data-driven sta...
In this paper, we introduce the Data-Driven Inversion-Based Control (D2-IBC) method for nonlinear co...
In this paper approximate feedback linearization is revisited. It is shown that, under mild assumpti...
An approach for the direct design from data of controllers finalized at solving tracking problems fo...
An approach for the direct design of LPV controllers from data is proposed. This approach, called Di...
A data-driven method to design reference tracking controllers for nonlinear systems is presented. Th...
This paper deals with direct data-driven design of model-reference controllers whose number of param...
This paper presents a novel unified approach of controller design and identification for unknown inp...
In this paper, we introduce and discuss the Data-Driven Inversion-Based Control (D2-IBC) method for ...
In this paper, we propose a non-iterative direct data-driven control approach, such that the control...
In the paper, an approach for the direct design of LPV controllers from data is proposed. The approa...
International audienceA set-membership (SM) approach is proposed to design reliable static stabilizi...
An approach to design a feedback controller for nonlinear systems directly from experimental data i...
In a recent paper we have shown that data collected from linear systems excited by persistently exci...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Electrical Engineering and Comp...
This thesis reports on my research in data-driven control, addressing the problem of data-driven sta...
In this paper, we introduce the Data-Driven Inversion-Based Control (D2-IBC) method for nonlinear co...
In this paper approximate feedback linearization is revisited. It is shown that, under mild assumpti...