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One-Shot 3D-Printed Multimaterial Soft Robotic Jamming Grippers

Authors :
James Brett
Jordan Letchford
Gary W. Delaney
Gerard David Howard
Jack O'Connor
Source :
Soft Robotics. 9:497-508
Publication Year :
2022
Publisher :
Mary Ann Liebert Inc, 2022.

Abstract

Soft gripping provides the potential for high performance in challenging tasks through morphological computing; however, design explorations are limited by a combination of a difficulty in generating useful models and use of laborious fabrication techniques. We focus on a class of grippers based on granular jamming that are particularly difficult to model and introduce a "one shot" technique that exploits multimaterial three-dimensional (3D) printing to create entire grippers, including membrane and grains, in a single print run. This technique fully supports the de facto physical generate-and-test methodology used for this class of grippers, as entire design iterations can be fitted onto a single print bed and fabricated from Computer-Aided Design (CAD) files in a matter of hours. Initial results demonstrate the approach by rapidly prototyping in materio solutions for two challenging problems in unconventional design spaces; a twisting gripper that uses programmed deformations to reliably pick a coin, and a multifunctional legged robot paw that offers the ability for compliant locomotion over rough terrains, as well as being able to pick objects in cluttered natural environments. The technique also allows us to easily characterize the design space of multimaterial printed jamming grippers and provide some useful design rules. The simplicity of our technique encourages and facilitates creativity and innovation. As such, we see our approach as an enabling tool to make informed principled forays into unconventional design spaces and support the creation of a new breed of novel soft actuators.

Details

ISSN :
21695180 and 21695172
Volume :
9
Database :
OpenAIRE
Journal :
Soft Robotics
Accession number :
edsair.doi.dedup.....bfe5ebe69f35830eb3f338f6fd33a0a3