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Ultra-fast, programmable, and electronics-free soft robots enabled by snapping metacaps

2022-10-28 09:56:19
Lishuai Jin, Yueying Yang, Bryan O. Torres Maldonado, Sebastian David Lee, Nadia Figueroa, Robert J. Full, Shu Yang

Abstract

Soft robots have a myriad of potentials because of their intrinsically compliant bodies, enabling safe interactions with humans and adaptability to unpredictable environments. However, most of them have limited actuation speeds, require complex control systems, and lack sensing capabilities. To address these challenges, here we geometrically design a class of metacaps whose rich nonlinear mechanical behaviors can be harnessed to create soft robots with unprecedented functionalities. Specifically, we demonstrate a sensor-less metacap gripper that can grasp objects in 3.75 ms upon physical contact and a pneumatically actuated gripper with tunable actuation behaviors that have little dependence on the rate of input. Both grippers can be readily integrated into a robotic platform for practical applications. Furthermore, we demonstrate that the metacap enables propelling of a swimming robot, exhibiting amplified swimming speed as well as untethered, electronics-free swimming with tunable speeds. Our metacaps provide new strategies to design the next-generation soft robots that require high transient output energy and are capable of autonomous and electronics-free maneuvering.

Abstract (translated)

URL

https://arxiv.org/abs/2210.16025

PDF

https://arxiv.org/pdf/2210.16025.pdf


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