Energy-Efficient Motion Planning for Multi-Modal Hybrid Locomotion

Abstract

Hybrid locomotion, which combines multiple modalities of locomotion within a single robot, enables robots to carry out complex tasks in diverse environments. This paper presents a novel method for planning multi-modal locomotion trajectories using approximate dynamic programming. We formulate this problem as a shortest-path search through a state-space graph, where the edge cost is assigned as optimal transport cost along each segment. This cost is approximated from batches of offline trajectory optimizations, which allows the complex effects of vehicle under-actuation and dynamic constraints to be approximately captured in a tractable way. Our method is illustrated on a hybrid double-integrator, an amphibious robot, and a flying-driving drone, showing the practicality of the approach.

Publication
In IEEE/RSJ International Conference on Intelligent Robots and Systems
Xiaobin Xiong 熊晓滨
Xiaobin Xiong 熊晓滨
Assistant Professor

Prof. Xiong is a full-stack roboticist who develop rigorous theories for practical applications.