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Counterexample-Guided Synthesis of Robust Discrete-Time Control Barrier Functions

Published: June 16, 2025 | arXiv ID: 2506.13011v1

By: Erfan Shakhesi, Alexander Katriniok, W. P. M. H. Heemels

Potential Business Impact:

Makes robots safer by checking all actions.

Business Areas:
Embedded Systems Hardware, Science and Engineering, Software

Learning-based methods have gained popularity for training candidate Control Barrier Functions (CBFs) to satisfy the CBF conditions on a finite set of sampled states. However, since the CBF is unknown a priori, it is unclear which sampled states belong to its zero-superlevel set and must satisfy the CBF conditions, and which ones lie outside it. Existing approaches define a set in which all sampled states are required to satisfy the CBF conditions, thus introducing conservatism. In this paper, we address this issue for robust discrete-time CBFs (R-DTCBFs). Furthermore, we propose a class of R-DTCBFs that can be used in an online optimization problem to synthesize safe controllers for general discrete-time systems with input constraints and bounded disturbances. To train such an R-DTCBF that is valid not only on sampled states but also across the entire region, we employ a verification algorithm iteratively in a counterexample-guided approach. We apply the proposed method to numerical case studies.

Country of Origin
🇳🇱 Netherlands

Page Count
6 pages

Category
Mathematics:
Optimization and Control