Implementation of a spike-based perceptron learning rule using TiO2− x memristors
Abstract
Synaptic plasticity plays a crucial role in allowing neural networks to learn and adapt to various input environments. Neuromorphic systems need to implement plastic synapses to obtain basic “cognitive” capabilities such as learning. One promising and scalable approach for implementing neuromorphic synapses is to use nano-scale memristors as synaptic elements. In this paper we propose a hybrid CMOS-memristor system comprising CMOS neurons interconnected through TiO2−x memristors, and spike-based learning circuits that modulate the conductance of the memristive synapse elements according to a spike-based Perceptron plasticity rule. We highlight a number of advantages for using this spike-based plasticity rule as compared to other forms of spike timing dependent plasticity (STDP) rules. We provide experimental proof-of-concept results with two silicon neurons connected through a memristive synapse that show how the CMOS plasticity circuits can induce stable changes in memristor conductances, giving rise to increased synaptic strength after a potentiation episode and to decreased strength after a depression episode. Show more
Permanent link
https://doi.org/10.3929/ethz-b-000112393Publication status
publishedExternal links
Journal / series
Frontiers in NeuroscienceVolume
Pages / Article No.
Publisher
Frontiers MediaSubject
Synaptic plasticity; Silicon neurons; Memristors; Neuromorphic architectures; Learning; PerceptronOrganisational unit
03453 - Douglas, Rodney J.
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ETH Bibliography
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