Welcome to the new version of CaltechAUTHORS. Login is currently restricted to library staff. If you notice any issues, please email coda@library.caltech.edu
Published February 2019 | Submitted + Published
Conference Paper Open

End-to-End Safe Reinforcement Learning through Barrier Functions for Safety-Critical Continuous Control Tasks

Abstract

Reinforcement Learning (RL) algorithms have found limited success beyond simulated applications, and one main reason is the absence of safety guarantees during the learning process. Real world systems would realistically fail or break before an optimal controller can be learned. To address this issue, we propose a controller architecture that combines (1) a model-free RL-based controller with (2) model-based controllers utilizing control barrier functions (CBFs) and (3) on-line learning of the unknown system dynamics, in order to ensure safety during learning. Our general framework leverages the success of RL algorithms to learn high-performance controllers, while the CBF-based controllers both guarantee safety and guide the learning process by constraining the set of explorable polices. We utilize Gaussian Processes (GPs) to model the system dynamics and its uncertainties. Our novel controller synthesis algorithm, RL-CBF, guarantees safety with high probability during the learning process, regardless of the RL algorithm used, and demonstrates greater policy exploration efficiency. We test our algorithm on (1) control of an inverted pendulum and (2) autonomous car-following with wireless vehicle-to-vehicle communication, and show that our algorithm attains much greater sample efficiency in learning than other state-of-the-art algorithms and maintains safety during the entire learning process.

Additional Information

© 2019, Association for the Advancement of Artificial Intelligence (www.aaai.org). The authors would like to thank Hoang Le and Yisong Yue for helpful discussions.

Attached Files

Published - AAAI-ChengRichard.1057.pdf

Submitted - 1903.08792.pdf

Files

1903.08792.pdf
Files (2.5 MB)
Name Size Download all
md5:3eeb4f44d16b592d02edc46545597f8d
1.1 MB Preview Download
md5:e1bd5325ed5a1b42ec19d7997a672ee4
1.4 MB Preview Download

Additional details

Created:
August 19, 2023
Modified:
October 20, 2023