Modern nonlinear control theory seeks to endow systems with properties of stability and safety, and have been deployed successfully in multiple domains. Despite this success, model uncertainty remains a significant challenge in synthesizing safe controllers, leading to degradation in the properties provided by the controllers. This paper develops a machine learning framework utilizing Control Barrier Functions (CBFs) to reduce model uncertainty as it impact the safe behavior of a system. This approach iteratively collects data and updates a controller, ultimately achieving safe behavior. We validate this method in simulation and experimentally on a Segway platform.
@article{arxiv.1912.10099,
title = {Learning for Safety-Critical Control with Control Barrier Functions},
author = {Andrew Taylor and Andrew Singletary and Yisong Yue and Aaron Ames},
journal= {arXiv preprint arXiv:1912.10099},
year = {2019}
}
Comments
Extended version (12 Pages), Short version submitted to Learning for Dynamics & Control (L4DC) 2020 Conference