Abstract

Resistive switching (RS) devices have attracted increasing attention for artificial synapse applications in neural networks because of their nonvolatile and analogue resistance changes. Among the neural networks, a spiking neural network (SNN) based on spike-timing-dependent plasticity (STDP) is highly energy efficient. To implement STDP in resistive switching devices, several types of voltage spikes have been proposed to date, but there have been few reports on the relationship between the STDP characteristics and spike types. Here, we report the STDP characteristics implemented in ferroelectric tunnel junctions (FTJs) by several types of spikes. Based on simulated time evolutions of superimposed spikes and taking the nonlinear current-voltage (I-V) characteristics of FTJs into account, we propose equations for simulating the STDP curve parameters of a magnitude of the conductance change (ΔGmax) and a time window (τC) from the spike parameters of a peak amplitude (Vpeak) and time durations (tp and td) for three spike types: triangle-triangle, rectangular-triangle, and rectangular-rectangular. The power consumption experiments of the STDP revealed that the power consumption under the inactive-synapse condition (spike timing |Δt| > τC) was as large as 50–82% of that under the active-synapse condition (|Δt| < τC). This finding indicates that the power consumption under the inactive-synapse condition should be reduced to minimize the total power consumption of an SNN implemented by using FTJs as synapses.

Highlights

  • Resistive switching (RS) devices have attracted increasing attention for artificial synapse applications in neural networks because of their nonvolatile and analogue resistance changes

  • We investigated the spike-type dependence of spike-timing-dependent plasticity (STDP) characteristics for BaTiO3-based ferroelectric tunnel junctions (FTJs)

  • To analyse the STDP curves characterized by an amplitude of the conductivity modulation (ΔGmax) and a time window, we proposed empirical equations for three different spike types by taking into account the time evolution of the peak amplitude (Vs) of superimposed voltage spikes, the relationship between Vs and the threshold voltage (Vth) for resistive switching, and the nonlinearity of the I-V curve of the FTJs

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Summary

Introduction

Resistive switching (RS) devices have attracted increasing attention for artificial synapse applications in neural networks because of their nonvolatile and analogue resistance changes. These two values depend on the resistive switching characteristics of the RS memories and on the shape of the spikes. These parameters influence the computation performance of the SNNs. The spike-shape and timing dependence of STDP curves has been studied in RS memories[11,12]. STDP functionality has been demonstrated in FTJs18–20

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