Safe Control Under Input Limits with Neural Control Barrier Functions - Robotics Institute Carnegie Mellon University

Safe Control Under Input Limits with Neural Control Barrier Functions

Conference Paper, Proceedings of (CoRL) Conference on Robot Learning, pp. 1-11, December, 2022

Abstract

We propose new methods to synthesize control barrier function (CBF)-based safe controllers that avoid input saturation, which can cause safety violations. In particular, our method is created for high-dimensional, general nonlinear systems, for which such tools are scarce. We leverage techniques from machine learning, like neural networks and deep learning, to simplify this challenging problem in nonlinear control design. The method consists of a learner-critic architecture, in which the critic gives counterexamples of input saturation and the learner optimizes a neural CBF to eliminate those counterexamples. We provide empirical results on a 10D state, 4D input quadcopter-pendulum system. Our learned CBF avoids input saturation and maintains safety over nearly 100% of trials.

BibTeX

@conference{Liu-2022-139360,
author = {Simin Liu and Changliu Liu and John M. Dolan},
title = {Safe Control Under Input Limits with Neural Control Barrier Functions},
booktitle = {Proceedings of (CoRL) Conference on Robot Learning},
year = {2022},
month = {December},
pages = {1-11},
keywords = {safe control, Control Barrier Functions, input limits},
}