Probabilistic approach to feedback control enhances multi-legged locomotion on rugged landscapes
Juntao He, Baxi Chong, Jianfeng Lin, Zhaochen Xu, Hosain Bagheri, Esteban Flores, Daniel I. Goldman

TL;DR
This paper introduces a probabilistic control framework for multi-legged robots that uses terrain feedback to adapt body undulation, significantly improving speed and stability on rugged terrains without extensive sensing.
Contribution
It proposes a novel bio-inspired control method leveraging terrain feedback to enhance multi-legged robot locomotion on complex landscapes.
Findings
Up to 50% increase in robot speed on rugged terrain.
40% reduction in speed variance with the new control.
Effective operation on diverse outdoor terrains.
Abstract
Achieving robust legged locomotion on complex terrains poses challenges due to the high uncertainty in robot-environment interactions. Recent advances in bipedal and quadrupedal robots demonstrate good mobility on rugged terrains but rely heavily on sensors for stability due to low static stability from a high center of mass and a narrow base of support. We hypothesize that a multi-legged robotic system can leverage morphological redundancy from additional legs to minimize sensing requirements when traversing challenging terrains. Studies suggest that a multi-legged system with sufficient legs can reliably navigate noisy landscapes without sensing and control, albeit at a low speed of up to 0.1 body lengths per cycle (BLC). However, the control framework to enhance speed on challenging terrains remains underexplored due to the complex environmental interactions, making it difficult to…
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Taxonomy
TopicsEcology and Vegetation Dynamics Studies · Wildlife-Road Interactions and Conservation · Species Distribution and Climate Change
