Behavioral Repertoires for Soft Tensegrity Robots
- URL: http://arxiv.org/abs/2009.10864v2
- Date: Wed, 25 Nov 2020 18:51:23 GMT
- Title: Behavioral Repertoires for Soft Tensegrity Robots
- Authors: Kyle Doney, Aikaterini Petridou, Jacob Karaul, Ali Khan, Geoffrey Liu
and John Rieffel
- Abstract summary: Mobile soft robots offer compelling applications in fields ranging from urban search and rescue to planetary exploration.
A critical challenge of soft robotic control is that the nonlinear dynamics imposed by soft materials often result in complex behaviors that are counterintuitive and hard to model or predict.
In this work we employ a Quality Diversity Algorithm running model-free on a physical soft tensegrity robot that autonomously generates a behavioral repertoire with no priori knowledge of the robot dynamics, and minimal human intervention.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Mobile soft robots offer compelling applications in fields ranging from urban
search and rescue to planetary exploration. A critical challenge of soft
robotic control is that the nonlinear dynamics imposed by soft materials often
result in complex behaviors that are counterintuitive and hard to model or
predict. As a consequence, most behaviors for mobile soft robots are discovered
through empirical trial and error and hand-tuning. A second challenge is that
soft materials are difficult to simulate with high fidelity -- leading to a
significant reality gap when trying to discover or optimize new behaviors. In
this work we employ a Quality Diversity Algorithm running model-free on a
physical soft tensegrity robot that autonomously generates a behavioral
repertoire with no a priori knowledge of the robot dynamics, and minimal human
intervention. The resulting behavior repertoire displays a diversity of unique
locomotive gaits useful for a variety of tasks. These results help provide a
road map for increasing the behavioral capabilities of mobile soft robots
through real-world automation.
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