Logarithmic Regret Bound in Partially Observable Linear Dynamical Systems

03/25/2020
by   Sahin Lale, et al.
4

We study the problem of adaptive control in partially observable linear dynamical systems. We propose a novel algorithm, adaptive control online learning algorithm (AdaptOn), which efficiently explores the environment, estimates the system dynamics episodically and exploits these estimates to design effective controllers to minimize the cumulative costs. Through interaction with the environment, AdaptOn deploys online convex optimization to optimize the controller while simultaneously learning the system dynamics to improve the accuracy of controller updates. We show that when the cost functions are strongly convex, after T times step of agent-environment interaction, AdaptOn achieves regret upper bound of polylog(T). To the best of our knowledge, AdaptOn is the first algorithm which achieves polylog(T) regret in adaptive control of unknown partially observable linear dynamical systems which includes linear quadratic Gaussian (LQG) control.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
08/26/2021

Finite-time System Identification and Adaptive Control in Autoregressive Exogenous Systems

Autoregressive exogenous (ARX) systems are the general class of input-ou...
research
07/23/2020

Explore More and Improve Regret in Linear Quadratic Regulators

Stabilizing the unknown dynamics of a control system and minimizing regr...
research
09/11/2019

Logarithmic Regret for Online Control

We study optimal regret bounds for control in linear dynamical systems u...
research
10/17/2022

Regret Bounds for Learning Decentralized Linear Quadratic Regulator with Partially Nested Information Structure

We study the problem of learning decentralized linear quadratic regulato...
research
04/13/2022

Online greedy identification of linear dynamical systems

This work addresses the problem of exploration in an unknown environment...
research
12/12/2020

Generating Adversarial Disturbances for Controller Verification

We consider the problem of generating maximally adversarial disturbances...
research
06/30/2021

Koopman Spectrum Nonlinear Regulator and Provably Efficient Online Learning

Most modern reinforcement learning algorithms optimize a cumulative sing...

Please sign up or login with your details

Forgot password? Click here to reset