Contingency Planning

TLDR -- Backup Planning using Sampling-MPC

(Jung et al., 2025) Abstract: For safety, autonomous systems must be able to consider sudden changes and enact contingency plans appropriately. State-of-the-art methods currently find trajectories that balance between nominal and contingency behavior, or plan for a singular contingency plan; however, this does not guarantee that the resulting plan is safe for all time. To address this research gap, this paper presents Contingency-MPPI, a data-driven optimization-based strategy that embeds contingency planning inside a nominal planner. By learning to approximate the optimal contingency-constrained control sequence with adaptive importance sampling, the proposed method’s sampling efficiency is further improved with initializations from a lightweight path planner and trajectory optimizer. Finally, we present simulated and hardware experiments demonstrating our algorithm generating nominal and contingency plans in real time on a mobile robots

Code: https://github.com/neu-autonomy/Contingency-MPPI

References

2025

  1. CMPPI_problem_statement.png
    Contingency Constrained Planning with MPPI within MPPI
    Leonard Jung, Alexander Estornell, and Michael Everett
    In Proceedings of the 7th Annual Learning for Dynamics & Control Conference, 04–06 jun 2025