In this paper, the problem of synthesizing a distributed controller from data is considered, with the objective to optimize a model-reference control criterion. We establish an explicit ideal distributed controller that solves the model- reference control problem for a structured reference model. On the basis of input-output data collected from the interconnected system, a virtual experiment setup is constructed which leads to a network identification problem. We formulate a prediction-error identification criterion that has the same global optimum as the model-reference criterion, when the controller class contains the ideal distributed controller. The developed distributed controller synthesis method is illustrated on an academic example ...
This paper presents a data-based design of a linear feedback controller which realizes desired close...
A plug-and-play (PnP) algorithm is proposed for varying-topology networks and combined with distribu...
A distributed model predictive control scheme is developed for tracking piecewise constant reference...
In this paper, the problem of synthesizing a distributed controller from data is considered, with th...
In this paper, the problem of synthesizing a distributed controller from data is considered, with th...
This paper considers data-driven distributed controller synthesis for interconnected linear systems ...
The data-driven synthesis of a distributed controller in the presence of noise is considered, via th...
The increase in available data and complexity of dynamical systems has sparked the research on data-...
The present paper deals with data-driven event-triggered control of a class of unknown discrete-time...
Designing controllers directly from data often requires choosing a reference closed-loop model, whos...
In the field of Control and Optimization, there is a growing interest on data-driven learning algori...
This paper deals with Data-Driven (DD) control design in a Model Reference (MR) framework. We presen...
Many recent results on distributed control of multi-agent networks rely on a number of simplifying a...
Systems and control theory deals with analyzing dynamical systems and shaping their behavior by mean...
This paper presents a data-based design of a linear feedback controller which realizes desired close...
A plug-and-play (PnP) algorithm is proposed for varying-topology networks and combined with distribu...
A distributed model predictive control scheme is developed for tracking piecewise constant reference...
In this paper, the problem of synthesizing a distributed controller from data is considered, with th...
In this paper, the problem of synthesizing a distributed controller from data is considered, with th...
This paper considers data-driven distributed controller synthesis for interconnected linear systems ...
The data-driven synthesis of a distributed controller in the presence of noise is considered, via th...
The increase in available data and complexity of dynamical systems has sparked the research on data-...
The present paper deals with data-driven event-triggered control of a class of unknown discrete-time...
Designing controllers directly from data often requires choosing a reference closed-loop model, whos...
In the field of Control and Optimization, there is a growing interest on data-driven learning algori...
This paper deals with Data-Driven (DD) control design in a Model Reference (MR) framework. We presen...
Many recent results on distributed control of multi-agent networks rely on a number of simplifying a...
Systems and control theory deals with analyzing dynamical systems and shaping their behavior by mean...
This paper presents a data-based design of a linear feedback controller which realizes desired close...
A plug-and-play (PnP) algorithm is proposed for varying-topology networks and combined with distribu...
A distributed model predictive control scheme is developed for tracking piecewise constant reference...