Abstract

An asynchronous discrete‐state spiking neurons is a wired system of shift registers that can mimic nonlinear dynamics of an ODE‐based neuron model. The control parameter of the neuron is the wiring pattern among the registers and thus they are suitable for on‐chip learning. In this paper an asynchronous discrete‐state spiking neuron is introduced and its typical nonlinear phenomena are demonstrated. Also, a learning algorithm for a set of neurons is presented and it is demonstrated that the algorithm enables the set of neurons to reconstruct nonlinear dynamics of another set of neurons with unknown parameter values. The learning function is validated by FPGA experiments.

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