4.5 Article

On the Sample Complexity of the Linear Quadratic Regulator

期刊

FOUNDATIONS OF COMPUTATIONAL MATHEMATICS
卷 20, 期 4, 页码 633-679

出版社

SPRINGER
DOI: 10.1007/s10208-019-09426-y

关键词

Optimal control; Robust control; System identification; Statistical learning theory; Reinforcement learning; System level synthesis

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This paper addresses the optimal control problem known as the linear quadratic regulator in the case when the dynamics are unknown. We propose a multistage procedure, calledCoarse-ID control, that estimates a model from a few experimental trials, estimates the error in that model with respect to the truth, and then designs a controller using both the model and uncertainty estimate. Our technique uses contemporary tools from random matrix theory to bound the error in the estimation procedure. We also employ a recently developed approach to control synthesis calledSystem Level Synthesisthat enables robust control design by solving a quasi-convex optimization problem. We provide end-to-end bounds on the relative error in control cost that are optimal in the number of parameters and that highlight salient properties of the system to be controlled such as closed-loop sensitivity and optimal control magnitude. We show experimentally that the Coarse-ID approach enables efficient computation of a stabilizing controller in regimes where simple control schemes that do not take the model uncertainty into account fail to stabilize the true system.

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