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Task-Specific Design Optimization and Fabrication for Inflated-Beam Soft Robots with Growable Discrete Joints

2021-03-08 18:00:27
Ioannis Exarchos, Brian H. Do, Fabio Stroppa, Margaret M. Coad, Allison M. Okamura, C. Karen Liu

Abstract

Soft robot serial chain manipulators with the capability for growth, stiffness control, and discrete joints have the potential to approach the dexterity of traditional robot arms, while improving safety, lowering cost, and providing an increased workspace, with potential application in home environments. This paper presents an approach for design optimization of such robots to reach specified targets while minimizing the number of discrete joints and thus construction and actuation costs. We define a maximum number of allowable joints, as well as hardware constraints imposed by the materials and actuation available for soft growing robots, and we formulate and solve an optimization problem to output a robot design, i.e., the total number of potential joints and their locations along the robot body, which reaches all the desired targets. We then rapidly construct the resulting soft growing robot design using readily available, low-cost materials, and we demonstrate its ability to reach the desired targets. Finally, we use our algorithm to evaluate the ability of this design to reach new targets, and we demonstrate the algorithm's utility as a design tool to explore robot capabilities given various constraints and objectives.

Abstract (translated)

URL

https://arxiv.org/abs/2103.04942

PDF

https://arxiv.org/pdf/2103.04942.pdf


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