Trajectory Optimization Methods for Energy Efficient Gait Transitions on Multi-Modal Robots

Minh Nguyen, Matthew Suntup, Arthur Bouton,Travis Brown,William Reid,Hari Nayar

2024 IEEE Aerospace Conference(2024)

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摘要
For robots that achieve locomotion through the movement of articulation joints, having a set of gaits can allow them to navigate variable terrain. Effectively transitioning between these gaits on multi-modal robots is important for maintaining locomotive constraints and reducing unnecessary movements during gait switches, which decreases energy usage. While previous works have examined transitions between specific gaits on certain robots, this work aims to propose and experimentally examine general frameworks for transitioning between gaits with a nonlinear, local optimized trajectory over the articulation joints. The proposed frameworks are targeted towards compute-constrained platforms that require efficient and online trajectory generation. We compare the maximum joint acceleration, transition time, cost of transport, and heading change between four transition frameworks: an optimized Bezier function, optimized Linear waypoints, an optimized Spline, and resetting to a neutral position before each gait. These transition strategies were then implemented and experimentally evaluated on a four-wheeled multi-modal rover.
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关键词
Trajectory Optimization,Gait Transition,Terrain,General Framework,Transit Time,Transportation Costs,Maximum Acceleration,Trajectory Generation,Transition Strategy,Joint Acceleration,Optimization Problem,Cost Function,Workspace,Motion Capture,Differences In Trajectories,Linear Mode,Joint Position,Joint Space,Gait Parameters,Raspberry Pi,Central Pattern Generator,Bezier Curve,Linear Trajectory,Velocity Constraints,Optimal Transition,Joint Trajectories,Positional Constraints,Transition Trajectories,Wheel Velocity,Transition Duration
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