arXiv Analytics

Sign in

arXiv:2303.09403 [math.OC]AbstractReferencesReviewsResources

Learning Feasibility Constraints for Control Barrier Functions

Wei Xiao, Christos G. Cassandras, Calin A. Belta

Published 2023-03-10Version 1

It has been shown that optimizing quadratic costs while stabilizing affine control systems to desired (sets of) states subject to state and control constraints can be reduced to a sequence of Quadratic Programs (QPs) by using Control Barrier Functions (CBFs) and Control Lyapunov Functions (CLFs). In this paper, we employ machine learning techniques to ensure the feasibility of these QPs, which is a challenging problem, especially for high relative degree constraints where High Order CBFs (HOCBFs) are required. To this end, we propose a sampling-based learning approach to learn a new feasibility constraint for CBFs; this constraint is then enforced by another HOCBF added to the QPs. The accuracy of the learned feasibility constraint is recursively improved by a recurrent training algorithm. We demonstrate the advantages of the proposed learning approach to constrained optimal control problems with specific focus on a robot control problem and on autonomous driving in an unknown environment.

Related articles: Most relevant | Search more
arXiv:2001.08088 [math.OC] (Published 2020-01-18)
Training Neural Network Controllers Using Control Barrier Functions in the Presence of Disturbances
arXiv:2103.03677 [math.OC] (Published 2021-03-05)
Control Barrier Functions in Sampled-Data Systems
arXiv:2403.00447 [math.OC] (Published 2024-03-01)
Continuous Approximations of Projected Dynamical Systems via Control Barrier Functions