JOURNAL ARTICLE

Learning Control Barrier Functions with High Relative Degree for Safety-Critical Control

Abstract

Control barrier functions have shown great success in addressing control problems with safety guarantees. These methods usually find the next safe control input by solving an online quadratic programming problem. However, model uncertainty is a big challenge in synthesizing controllers. This may lead to the generation of unsafe control actions, resulting in severe consequences. In this paper, we develop a learning framework to deal with system uncertainty. Our method mainly focuses on learning the dynamics of the control barrier function, especially for high relative degree with respect to a system. We show that for each order, the time derivative of the control barrier function can be separated into the time derivative of the nominal control barrier function and a remainder. This implies that we can use a neural network to learn the remainder so that we can approximate the dynamics of the real control barrier function. We show by simulation that our method can generate safe trajectories under parametric uncertainty using a differential drive robot model.

Keywords:
Computer science Remainder Control (management) Function (biology) Parametric statistics Mathematical optimization Control theory (sociology) Optimal control Mathematics Artificial intelligence

Metrics

19
Cited By
5.17
FWCI (Field Weighted Citation Impact)
29
Refs
0.98
Citation Normalized Percentile
Is in top 1%
Is in top 10%

Citation History

Topics

Advanced Control Systems Optimization
Physical Sciences →  Engineering →  Control and Systems Engineering
Reinforcement Learning in Robotics
Physical Sciences →  Computer Science →  Artificial Intelligence
Formal Methods in Verification
Physical Sciences →  Computer Science →  Computational Theory and Mathematics
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