Particle robotics based on statistical mechanics of loosely coupled components

Shuguang Li, Richa Batra, David Brown, Hyun-Dong Chang,Nikhil Ranganathan,Chuck Hoberman,Daniela Rus,Hod Lipson

NATURE(2019)

引用 260|浏览111
暂无评分
摘要
Biological organisms achieve robust high-level behaviours by combining and coordinating stochastic low-level components 1 – 3 . By contrast, most current robotic systems comprise either monolithic mechanisms 4 , 5 or modular units with coordinated motions 6 , 7 . Such robots require explicit control of individual components to perform specific functions, and the failure of one component typically renders the entire robot inoperable. Here we demonstrate a robotic system whose overall behaviour can be successfully controlled by exploiting statistical mechanics phenomena. We achieve this by incorporating many loosely coupled ‘particles’, which are incapable of independent locomotion and do not possess individual identity or addressable position. In the proposed system, each particle is permitted to perform only uniform volumetric oscillations that are phase-modulated by a global signal. Despite the stochastic motion of the robot and lack of direct control of its individual components, we demonstrate physical robots composed of up to two dozen particles and simulated robots with up to 100,000 particles capable of robust locomotion, object transport and phototaxis (movement towards a light stimulus). Locomotion is maintained even when 20 per cent of the particles malfunction. These findings indicate that stochastic systems may offer an alternative approach to more complex and exacting robots via large-scale robust amorphous robotic systems that exhibit deterministic behaviour.
更多
查看译文
关键词
Mechanical engineering,Software,Science,Humanities and Social Sciences,multidisciplinary
AI 理解论文
溯源树
样例
生成溯源树,研究论文发展脉络
Chat Paper
正在生成论文摘要