Model-Free Safety-Critical Control for Robotic Systems
Molnar, Tamas G., Cosner, Ryan K., Singletary, Andrew W., Ubellacker, Wyatt, Ames, Aaron D.
–arXiv.org Artificial Intelligence
This paper presents a framework for the safety-critical control of robotic systems, when safety is defined on safe regions in the configuration space. To maintain safety, we synthesize a safe velocity based on control barrier function theory without relying on a -- potentially complicated -- high-fidelity dynamical model of the robot. Then, we track the safe velocity with a tracking controller. This culminates in model-free safety critical control. We prove theoretical safety guarantees for the proposed method. Finally, we demonstrate that this approach is application-agnostic. We execute an obstacle avoidance task with a Segway in high-fidelity simulation, as well as with a Drone and a Quadruped in hardware experiments.
arXiv.org Artificial Intelligence
Dec-9-2021
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