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Methods for applying the Neural Engineering Framework to neuromorphic hardware

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 نشر من قبل Aaron Voelker
 تاريخ النشر 2017
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We review our current software tools and theoretical methods for applying the Neural Engineering Framework to state-of-the-art neuromorphic hardware. These methods can be used to implement linear and nonlinear dynamical systems that exploit axonal transmission time-delays, and to fully account for nonideal mixed-analog-digital synapses that exhibit higher-order dynamics with heterogeneous time-constants. This summarizes earli

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