We study the problem of learning decentralized linear quadratic regulator when the system model is unknown a priori. We propose an online learning algorithm that adaptively designs a control policy as new data samples from a single system trajectory become available. Our algorithm design uses a disturbance-feedback representation of state-feedback controllers coupled with online convex optimization with memory and delayed feedback. We show that our controller enjoys an expected regret that scales as $\sqrt{T}$ with the time horizon $T$ for the case of partially nested information pattern. For more general information patterns, the optimal controller is unknown even if the system model is known. In this case, the regret of our controller is ...
We study the impact of predictions in online Linear Quadratic Regulator control with both stochastic...
Optimal controllers are usually designed to minimize cost under the assumption that the disturbance ...
The study of online control of unknown time varying dynamical systems is a relatively under-explored...
We study the problem of control policy design for decentralized state-feedback linear quadratic cont...
We consider the problem of online adaptive control of the linear quadratic regulator, where the true...
The field of linear control has seen broad application in fields as diverse as robotics, aviation,...
We study the problem of adaptive control in partially observable linear dynamical systems. We propos...
We study the problem of adaptive control in partially observable linear quadratic Gaussian control s...
In the last century, the problem of controlling a dynamical system has been a core component in nume...
The Linear Quadratic Regulator (LQR) framework considers the problem of regulating a linear dynamica...
This paper addresses the optimal control problem known as the linear quadratic regulator in the case...
We study the problem of regret minimization in partially observable linear quadratic control systems...
Learning algorithms play an ever increasing role in modern engineering solutions. However, despite m...
Stabilizing the unknown dynamics of a control system and minimizing regret in control of an unknown ...
We study the average cost Linear Quadratic (LQ) control problem with unknown model parameters, also ...
We study the impact of predictions in online Linear Quadratic Regulator control with both stochastic...
Optimal controllers are usually designed to minimize cost under the assumption that the disturbance ...
The study of online control of unknown time varying dynamical systems is a relatively under-explored...
We study the problem of control policy design for decentralized state-feedback linear quadratic cont...
We consider the problem of online adaptive control of the linear quadratic regulator, where the true...
The field of linear control has seen broad application in fields as diverse as robotics, aviation,...
We study the problem of adaptive control in partially observable linear dynamical systems. We propos...
We study the problem of adaptive control in partially observable linear quadratic Gaussian control s...
In the last century, the problem of controlling a dynamical system has been a core component in nume...
The Linear Quadratic Regulator (LQR) framework considers the problem of regulating a linear dynamica...
This paper addresses the optimal control problem known as the linear quadratic regulator in the case...
We study the problem of regret minimization in partially observable linear quadratic control systems...
Learning algorithms play an ever increasing role in modern engineering solutions. However, despite m...
Stabilizing the unknown dynamics of a control system and minimizing regret in control of an unknown ...
We study the average cost Linear Quadratic (LQ) control problem with unknown model parameters, also ...
We study the impact of predictions in online Linear Quadratic Regulator control with both stochastic...
Optimal controllers are usually designed to minimize cost under the assumption that the disturbance ...
The study of online control of unknown time varying dynamical systems is a relatively under-explored...