We study the problem of online learning in predictive control of an unknown linear dynamical system with time varying cost functions which are unknown apriori. Specifically, we study the online learning problem where the control algorithm does not know the true system model and has only access to a fixed-length (that does not grow with the control horizon) preview of the future cost functions. The goal of the online algorithm is to minimize the dynamic regret, defined as the difference between the cumulative cost incurred by the algorithm and that of the best sequence of actions in hindsight. We propose two different online Model Predictive Control (MPC) algorithms to address this problem, namely Certainty Equivalence MPC (CE-MPC) algorithm...
The field of linear control has seen broad application in fields as diverse as robotics, aviation,...
We study predictive control in a setting where the dynamics are time-varying and linear, and the cos...
We present methods for online linear optimization that take advantage of benign (as opposed to worst...
We address the problem of simultaneously learning and control in an online receding horizon control ...
The study of online control of unknown time varying dynamical systems is a relatively under-explored...
In this paper we provide provable regret guarantees for an online meta-learning receding horizon con...
We study the impact of predictions in online Linear Quadratic Regulator control with both stochastic...
Recently a line of work has shown the applicability of tools from online optimization for control, l...
In the last century, the problem of controlling a dynamical system has been a core component in nume...
We study the online robust control problem for linear dynamical systems with disturbances and uncert...
Optimal controllers are usually designed to minimize cost under the assumption that the disturbance ...
We consider the control of linear time-varying dynamical systems from the perspective of regret mini...
We study the problem of adaptive control in partially observable linear dynamical systems. We propos...
In this work we address the problem of the online robust control of nonlinear dynamical systems pert...
We consider the fundamental problem of online control of a linear dynamical system from two differen...
The field of linear control has seen broad application in fields as diverse as robotics, aviation,...
We study predictive control in a setting where the dynamics are time-varying and linear, and the cos...
We present methods for online linear optimization that take advantage of benign (as opposed to worst...
We address the problem of simultaneously learning and control in an online receding horizon control ...
The study of online control of unknown time varying dynamical systems is a relatively under-explored...
In this paper we provide provable regret guarantees for an online meta-learning receding horizon con...
We study the impact of predictions in online Linear Quadratic Regulator control with both stochastic...
Recently a line of work has shown the applicability of tools from online optimization for control, l...
In the last century, the problem of controlling a dynamical system has been a core component in nume...
We study the online robust control problem for linear dynamical systems with disturbances and uncert...
Optimal controllers are usually designed to minimize cost under the assumption that the disturbance ...
We consider the control of linear time-varying dynamical systems from the perspective of regret mini...
We study the problem of adaptive control in partially observable linear dynamical systems. We propos...
In this work we address the problem of the online robust control of nonlinear dynamical systems pert...
We consider the fundamental problem of online control of a linear dynamical system from two differen...
The field of linear control has seen broad application in fields as diverse as robotics, aviation,...
We study predictive control in a setting where the dynamics are time-varying and linear, and the cos...
We present methods for online linear optimization that take advantage of benign (as opposed to worst...