SLUGBOT, an Aplysia-inspired Robotic Grasper for Studying Control
Kevin Dai, Ravesh Sukhnandan, Michael Bennington, Karen Whirley, Ryan, Bao, Lu Li, Jeffrey P. Gill, Hillel J. Chiel, and Victoria A. Webster-Wood

TL;DR
SLUGBOT is a bio-inspired soft robotic grasper modeled after Aplysia's feeding system, demonstrating adaptive control and movement patterns similar to living organisms, advancing neuromechanical robotic research.
Contribution
This work introduces a novel Aplysia-inspired soft robotic grasper with adaptive neural control, bridging biological principles and robotic implementation.
Findings
Robot qualitatively mimics Aplysia swallowing behavior
Kinematic profiles match in vivo observations
Demonstrates potential for neuromechanical research
Abstract
Living systems can use a single periphery to perform a variety of tasks and adapt to a dynamic environment. This multifunctionality is achieved through the use of neural circuitry that adaptively controls the reconfigurable musculature. Current robotic systems struggle to flexibly adapt to unstructured environments. Through mimicry of the neuromechanical coupling seen in living organisms, robotic systems could potentially achieve greater autonomy. The tractable neuromechanics of the sea slug feeding apparatus, or buccal mass, make it an ideal candidate for applying neuromechanical principles to the control of a soft robot. In this work, a robotic grasper was designed to mimic specific morphology of the feeding apparatus. These include the use of soft actuators akin to biological muscle, a deformable grasping surface, and a similar…
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Taxonomy
TopicsCephalopods and Marine Biology · Advanced Memory and Neural Computing · Neuroscience and Neural Engineering
