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Hybrid Sampling/Optimization-based Planning for Agile Jumping Robots on Challenging Terrains

Yanran Ding, Mengchao Zhang, Chuanzheng Li, Hae-Won Park, Kris Hauser

发表年份
2021
引用次数
8

摘要

This paper proposes a hybrid planning framework that generates complex dynamic motion plans for jumping legged robots to traverse challenging terrains. By employing a motion primitive, the original problem is decoupled as path planning followed by a trajectory optimization (TO) module that handles dynamics. A variant of a kinodynamic Rapidly-exploring Random Trees (RRT) planner finds a path as a parabola sequence between stance phases. To make this fast, a reachability informed control sampling scheme leverages a precomputed velocity reachability map. The path is post-processed to eliminate redundant jumps and passed to the TO module to find a dynamically feasible trajectory. Simulation results are presented where the proposed hybrid planner solves challenging terrains by executing multiple consecutive jumps, producing novel strategies to leap over large gaps by leveraging dynamics. In a physical experiment, the hybrid planner is tested on a real robot successfully traversing a challenging terrain.

关键词

TraverseMotion planningTerrainReachabilityComputer scienceTrajectoryRobotPath (computing)PlannerArtificial intelligence

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