VOR Adaptation on a Humanoid iCub Robot Using a Spiking Cerebellar Model
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IEEE
Date
2020-11-01Abstract
We embed a spiking cerebellar model within an
adaptive real-time (RT) control loop that is able to operate a real
robotic body (iCub) when performing different vestibulo-ocular
reflex (VOR) tasks. The spiking neural network computation,
including event- and time-driven neural dynamics, neural activity, and spike-timing dependent plasticity (STDP) mechanisms,
leads to a nondeterministic computation time caused by the neural activity volleys encountered during cerebellar simulation.
This nondeterministic computation time motivates the integration of an RT supervisor module that is able to ensure
a well-orchestrated neural computation time and robot operation.
Actually, our neurorobotic experimental setup (VOR) benefits
from the biological sensory motor delay between the cerebellum and the body to buffer the computational overloads as well
as providing flexibility in adjusting the neural computation time
and RT operation. The RT supervisor module provides for incremental countermeasures that dynamically slow down or speed
up the cerebellar simulation by either halting the simulation or
disabling certain neural computation features (i.e., STDP mechanisms, spike propagation, and neural updates) to cope with the
RT constraints imposed by the real robot operation. This neurorobotic experimental setup is applied to different horizontal and
vertical VOR adaptive tasks that are widely used by the neuroscientific community to address cerebellar functioning. We aim to
elucidate the manner in which the combination of the cerebellar
neural substrate and the distributed plasticity shapes the cerebellar neural activity to mediate motor adaptation. This paper
underlies the need for a two-stage learning process to facilitate
VOR acquisition