FORMULA: FORmation MPC with neUral barrier Learning for safety Assurance
arXiv cs.RO / 4/7/2026
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Key Points
- The paper tackles the challenge of scalable, safety-aware formation control for multi-robot systems operating in cluttered and dynamic environments where conventional MPC struggles with scalability and formal guarantees.
- It introduces FORMULA, a distributed MPC-based framework that combines stability via Control Lyapunov Functions (CLFs) with safety enforcement using neural network-based control barrier functions (CBFs).
- By using neural CBFs, the approach aims to remove the need to manually handcraft safety constraints for large-scale nonlinear systems, improving usability and scalability.
- The reported results claim FORMULA preserves formation integrity while performing obstacle avoidance, can resolve deadlocks in dense robot configurations, and reduces online computation compared with prior methods.
- The authors validate the method through simulations showing scalable, safety-aware, formation-preserving navigation for multi-robot teams in complex settings.
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