Published November 2019 | Version Submitted
Book Section - Chapter Open

Episodic Learning with Control Lyapunov Functions for Uncertain Robotic Systems

Abstract

Many modern nonlinear control methods aim to endow systems with guaranteed properties, such as stability or safety, and have been successfully applied to the domain of robotics. However, model uncertainty remains a persistent challenge, weakening theoretical guarantees and causing implementation failures on physical systems. This paper develops a machine learning framework centered around Control Lyapunov Functions (CLFs) to adapt to parametric uncertainty and unmodeled dynamics in general robotic systems. Our proposed method proceeds by iteratively updating estimates of Lyapunov function derivatives and improving controllers, ultimately yielding a stabilizing quadratic program model-based controller. We validate our approach on a planar Segway simulation, demonstrating substantial performance improvements by iteratively refining on a base model-free controller.

Additional Information

© 2019 IEEE. This work was supported in part by funding and gifts from DARPA, Intel, PIMCO, and Google.

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Additional details

Identifiers

Eprint ID
94189
Resolver ID
CaltechAUTHORS:20190327-085838590

Related works

Funding

Defense Advanced Research Projects Agency (DARPA)
HR00111890035
Intel
PIMCO
Google

Dates

Created
2019-03-27
Created from EPrint's datestamp field
Updated
2021-11-16
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