79 research outputs found
Biomechanical and Sensory Feedback Regularize the Behavior of Different Locomotor Central Pattern Generators
This work presents an in-depth numerical investigation into a hypothesized two-layer central pattern generator (CPG) that controls mammalian walking and how different parameter choices might affect the stepping of a simulated neuromechanical model. Particular attention is paid to the functional role of features that have not received a great deal of attention in previous work: the weak cross-excitatory connectivity within the rhythm generator and the synapse strength between the two layers. Sensitivity evaluations of deafferented CPG models and the combined neuromechanical model are performed. Locomotion frequency is increased in two different ways for both models to investigate whether the model’s stability can be predicted by trends in the CPG’s phase response curves (PRCs). Our results show that the weak cross-excitatory connection can make the CPG more sensitive to perturbations and that increasing the synaptic strength between the two layers results in a trade-off between forced phase locking and the amount of phase delay that can exist between the two layers. Additionally, although the models exhibit these differences in behavior when disconnected from the biomechanical model, these differences seem to disappear with the full neuromechanical model and result in similar behavior despite a variety of parameter combinations. This indicates that the neural variables do not have to be fixed precisely for stable walking; the biomechanical entrainment and sensory feedback may cancel out the strengths of excitatory connectivity in the neural circuit and play a critical role in shaping locomotor behavior. Our results support the importance of including biomechanical models in the development of computational neuroscience models that control mammalian locomotion
SLUGBOT, an Aplysia-inspired Robotic Grasper for Studying Control
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
muscular architecture. A previously developed Boolean neural controller was
then adapted for the control of this soft robotic system. The robot was capable
of qualitatively replicating swallowing behavior by cyclically ingesting a
plastic tube. The robot's normalized translational and rotational kinematics of
the odontophore followed profiles observed despite
morphological differences. This brings -inspired control
one step closer to multifunctional neural control schema
and . Future additions may improve
SLUGBOT's viability as a neuromechanical research platform.Comment: Submitted and accepted to Living Machines 2022 conferenc
Principles of Motor Control
Presented on January 23, 2017 at 11:00 a.m. in the Engineered Biosystems Building, room 1005.Hillel Chiel is a professor of biology, neurosciences, and biomedical engineering at Case Western Reserve University in Cleveland, Ohio.Runtime: 56:46 minutesHow does the nervous system control behavior? To answer this question requires an understanding of neural circuitry, biomechanics, and behavior. To address this question, we have studied an experimentally tractable experimental system, feeding behavior in the marine mollusk Aplysia californica. The results of our studies have provided insights into mutlifunctionality at the levels of both neurons and muscles, the importance of neuromodulation for the control of behavior, the neural dynamics that allow both noise and sensory feedback to enhance motor control, and how sensory feedback can shape motor variability to enhance behavior. We have also begun exploring novel technology to make it possible to monitor and manipulate the nervous system as a way of improving our understanding of neural dynamics
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