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Threshold-Tunable, Spike-Rate-Dependent Plasticity Originating from Interfacial Proton Gating for Pattern Learning and Memory

Zheng Ren, Li Qiang Zhu, Yan Guo, Ting Yu Long, Fei Yu, Hui Xiao, Hong-Liang Lü

2020ACS Applied Materials & Interfaces70 citationsDOI

Abstract

Recently, neuromorphic devices have been receiving increasing interest in the field of artificial intelligence (AI). Realization of fundamental synaptic plasticities on hard-ware devices would endow new intensions for neuromorphic devices. Spike-rate-dependent plasticity (SRDP) is one of the most important synaptic learning mechanisms in brain cognitive behaviors. It is thus interesting to mimic the SRDP behaviors on solid-state neuromorphic devices. In the present work, nanogranular phosphorus silicate glass (PSG)-based proton conductive electrolyte-gated oxide neuromorphic transistors have been proposed. The oxide neuromorphic transistors have good transistor performances and frequency-dependent synaptic plasticity behavior. Moreover, the neuromorphic transistor exhibits SRDP activities. Interestingly, by introducing priming synaptic stimuli, the modulation of threshold frequency value distinguishing synaptic potentiation from synaptic depression is realized for the first time on an electrolyte-gated neuromorphic transistor. Such a mechanism can be well understood with interfacial proton gating effects of the nanogranular PSG-based electrolyte. Furthermore, the effects of SRDP learning rules on pattern learning and memory behaviors have been conceptually demonstrated. The proposed neuromorphic transistors have potential applications in neuromorphic engineering.

Topics & Concepts

Neuromorphic engineeringGatingMaterials scienceTransistorSynaptic plasticityComputer scienceNeuroscienceArtificial intelligenceVoltageArtificial neural networkElectrical engineeringChemistryPsychologyEngineeringReceptorBiochemistryAdvanced Memory and Neural ComputingNeuroscience and Neural EngineeringCCD and CMOS Imaging Sensors