Literature DB >> 27903878

A spiking neural model of adaptive arm control.

Travis DeWolf1,2, Terrence C Stewart3,2, Jean-Jacques Slotine4, Chris Eliasmith3,2.   

Abstract

We present a spiking neuron model of the motor cortices and cerebellum of the motor control system. The model consists of anatomically organized spiking neurons encompassing premotor, primary motor, and cerebellar cortices. The model proposes novel neural computations within these areas to control a nonlinear three-link arm model that can adapt to unknown changes in arm dynamics and kinematic structure. We demonstrate the mathematical stability of both forms of adaptation, suggesting that this is a robust approach for common biological problems of changing body size (e.g. during growth), and unexpected dynamic perturbations (e.g. when moving through different media, such as water or mud). To demonstrate the plausibility of the proposed neural mechanisms, we show that the model accounts for data across 19 studies of the motor control system. These data include a mix of behavioural and neural spiking activity, across subjects performing adaptive and static tasks. Given this proposed characterization of the biological processes involved in motor control of the arm, we provide several experimentally testable predictions that distinguish our model from previous work.
© 2016 The Author(s).

Keywords:  cerebellum; computational neuroscience; large-scale spiking neuron models; motor control; motor cortices

Mesh:

Year:  2016        PMID: 27903878      PMCID: PMC5136600          DOI: 10.1098/rspb.2016.2134

Source DB:  PubMed          Journal:  Proc Biol Sci        ISSN: 0962-8452            Impact factor:   5.349


  42 in total

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8.  Internal models in the cerebellum.

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  12 in total

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10.  Perception Understanding Action: Adding Understanding to the Perception Action Cycle With Spiking Segmentation.

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