Characterization and Correlation of Robotic Snake Scale Friction and Locomotion Speed
Umit Sen, Andri Mahegan, Gina Olson

TL;DR
This study investigates how the frictional properties of snake robot scales influence locomotion speed across various surfaces, introducing a modular scale design and measuring frictional anisotropy at different angles.
Contribution
The paper presents a novel modular pseudo-skin design for snake robots and provides experimental data on scale frictional anisotropy at multiple angles and surfaces.
Findings
Frictional coefficients vary with scale angle and surface.
No consistent correlation found between frictional ratios and locomotion speed.
Frictional ratios alone may not predict snake robot speed.
Abstract
Snake robots are inspired by the ability of biological snakes to move over rock, grass, leaves, soil, up trees, along pavement and more. Their ability to move in multiple distinct environments is due to their legless locomotion strategy, which combines distinct gaits with a skin that exhibits frictional anisotropy. Designing soft robotic snakes with similar capabilities requires an understanding of how this underlying frictional anisotropy should be created in engineered systems, and how variances in the frictional anisotropy ratio affect locomotion speed and direction on different surfaces. While forward and backward frictional ratios have been characterized for previous scale designs, lateral friction and the associated ratios are often overlooked. In this paper, our contributions include: (i) the development of a novel articulated pseudo-skin design that is modular, easy to construct…
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Taxonomy
TopicsSoft Robotics and Applications · Adhesion, Friction, and Surface Interactions · Robot Manipulation and Learning
