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Optimal Motion Planning for Multi-Modal Hybrid Locomotion

H. J. Terry Suh, Xiaobin Xiong, Andrew Singletary, Aaron D. Ames, Joel W. Burdick

Year
2019
Citations
2

Abstract

Hybrid locomotion, which combines multiple modalities of locomotion within a single robot, can enable robots to carry out complex tasks in diverse environments. This paper presents a novel method of combining graph search and trajectory optimization for planning multi-modal locomotion trajectories. We also introduce methods that allow the method to work tractably in higher dimensional state spaces. Through the examples of a hybrid double-integrator, amphibious robot, and the flying-driving drone, we show that our planner tractably gives full-state trajectories that are probabilistically optimal and dynamically feasible.

Keywords

ModalRobotComputer scienceMotion planningRobot locomotionPlannerTrajectoryGraphArtificial intelligenceMobile robot

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