Reinforcement Learning for Wheeled Mobility on Vertically Challenging Terrain
Off-road navigation on vertically challenging terrain, involving steep slopes and rugged boulders, presents significant challenges for wheeled robots both at the planning level to achieve smooth collision-free trajectories and at the control level to avoid rolling over or getting stuck. Considering...
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Zusammenfassung: | Off-road navigation on vertically challenging terrain, involving steep slopes
and rugged boulders, presents significant challenges for wheeled robots both at
the planning level to achieve smooth collision-free trajectories and at the
control level to avoid rolling over or getting stuck. Considering the complex
model of wheel-terrain interactions, we develop an end-to-end Reinforcement
Learning (RL) system for an autonomous vehicle to learn wheeled mobility
through simulated trial-and-error experiences. Using a custom-designed
simulator built on the Chrono multi-physics engine, our approach leverages
Proximal Policy Optimization (PPO) and a terrain difficulty curriculum to
refine a policy based on a reward function to encourage progress towards the
goal and penalize excessive roll and pitch angles, which circumvents the need
of complex and expensive kinodynamic modeling, planning, and control.
Additionally, we present experimental results in the simulator and deploy our
approach on a physical Verti-4-Wheeler (V4W) platform, demonstrating that RL
can equip conventional wheeled robots with previously unrealized potential of
navigating vertically challenging terrain. |
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DOI: | 10.48550/arxiv.2409.02383 |