Computing Safe Control Inputs using Discrete-Time Matrix Control Barrier Functions via Convex Optimization
By: James Usevitch, Juan Augusto Paredes Salazar, Ankit Goel
Potential Business Impact:
Keeps robots safe by solving math problems faster.
Control barrier functions (CBFs) have seen widespread success in providing forward invariance and safety guarantees for dynamical control systems. A crucial limitation of discrete-time formulations is that CBFs that are nonconcave in their argument require the solution of nonconvex optimization problems to compute safety-preserving control inputs, which inhibits real-time computation of control inputs guaranteeing forward invariance. This paper presents a novel method for computing safety-preserving control inputs for discrete-time systems with nonconvex safety sets, utilizing convex optimization and the recently developed class of matrix control barrier function techniques. The efficacy of our methods is demonstrated through numerical simulations on a bicopter system.
Similar Papers
Compatibility of Multiple Control Barrier Functions for Constrained Nonlinear Systems
Systems and Control
Keeps robots safe with many rules.
Matrix Control Barrier Functions
Systems and Control
Keeps drones safe, even with tricky rules.
Matrix Control Barrier Functions
Systems and Control
Keeps drones safe in tricky situations.