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.

Abstract

Multi-robot systems (MRS) are essential for large-scale applications such as disaster response, material transport, and warehouse logistics, yet ensuring robust, safety-aware formation control in cluttered and dynamic environments remains a major challenge. Existing model predictive control (MPC) approaches suffer from limitations in scalability and provable safety, while control barrier functions (CBFs), though principled for safety enforcement, are difficult to handcraft for large-scale nonlinear systems. This paper presents FORMULA, a safe distributed, learning-enhanced predictive control framework that integrates MPC with Control Lyapunov Functions (CLFs) for stability and neural network-based CBFs for decentralized safety, eliminating manual safety constraint design. This scheme maintains formation integrity during obstacle avoidance, resolves deadlocks in dense configurations, and reduces online computational load. Simulation results demonstrate that FORMULA enables scalable, safety-aware, formation-preserving navigation for multi-robot teams in complex environments.