ArXiv TLDR

Decentralized Contingency MPC based on Safe Sets for Nonlinear Multi-agent Collision Avoidance

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2605.10738

Max Studt, Georg Schildbach

math.OCcs.MAcs.ROeess.SY

TLDR

This paper introduces a decentralized contingency MPC for nonlinear multi-agent collision avoidance, ensuring safety and feasibility without inter-agent communication.

Key contributions

  • Develops a decentralized contingency MPC for nonlinear multi-agent systems using only state information.
  • Couples a nominal trajectory with a contingency certificate for feasible backup maneuvers.
  • Introduces a novel geometric and decentralized safe-set update mechanism to maintain feasibility.
  • Guarantees recursive feasibility, collision avoidance, and convergence to a safe equilibrium.

Why it matters

This framework addresses a critical challenge in multi-agent systems by enabling safe, decentralized collision avoidance without communication. It provides strong theoretical guarantees on feasibility and convergence, making it robust for complex, dynamic environments. This is crucial for applications like autonomous vehicles and drone swarms.

Original Abstract

Decentralized collision avoidance remains challenging, particularly when agents do not communicate any information related to planned trajectories. Most existing approaches either rely on conservative coordination mechanisms or provide limited guarantees on recursive feasibility and convergence. This paper develops a decentralized contingency MPC framework for multi-agent systems with nonlinear dynamics that achieves collision-free motion under a state-only information pattern. Each agent follows the same consensual rule set, enabling safe decentralized planning without communication. Each agent solves a local optimization problem that couples a nominal trajectory with a contingency certificate ensuring a feasible backup maneuver under receding-horizon operation. A novel geometric and decentralized safe-set update mechanism prevents feasibility loss between consecutive time steps. The resulting scheme guarantees recursive feasibility, including collision avoidance, and establishes a Lyapunov-type convergence result to an admissible safe equilibrium. Simulation results demonstrate performance in both sparse and dense multi-agent environments, including cluttered bottleneck scenarios and under plug-and-play operation.

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