Control Barrier Functions for the Full Class of Signal Temporal Logic Tasks using Spatiotemporal Tubes
By: Ratnangshu Das, Subhodeep Choudhury, Pushpak Jagtap
Potential Business Impact:
Helps robots follow complex instructions safely.
This paper introduces a new framework for synthesizing time-varying control barrier functions (TV-CBFs) for general Signal Temporal Logic (STL) specifications using spatiotemporal tubes (STT). We first formulate the STT synthesis as a robust optimization problem (ROP) and solve it through a scenario optimization problem (SOP), providing formal guarantees that the resulting tubes capture the given STL specifications. These STTs are then used to construct TV-CBFs, ensuring that under any control law rendering them invariant, the system satisfies the STL tasks. We demonstrate the framework through case studies on a differential-drive mobile robot and a quadrotor, and provide a comparative analysis showing improved efficiency over existing approaches.
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