神经形态工程学
材料科学
铁电性
突触
冯·诺依曼建筑
突触重量
记忆电阻器
Spike(软件开发)
无监督学习
光电子学
神经科学
电子工程
人工神经网络
计算机科学
人工智能
心理学
电介质
工程类
软件工程
操作系统
作者
Shuting Yang,Xing‐Yu Li,Tongliang Yu,Jie Wang,Hongyuan Fang,Fang Nie,Bin He,Le Zhao,Weiming Lü,Shishen Yan,Alain Nogaret,Gang Liu,Limei Zheng
标识
DOI:10.1002/adfm.202202366
摘要
Abstract Artificial synapses can boost neuromorphic computing to overcome the inherent limitations of von Neumann architecture. As a promising memristor candidate, ferroelectric tunnel junctions (FTJ) enable the authors to successfully emulate spike‐timing‐dependent synapses. However, the nonlinear and asymmetric synaptic weight update under repeated presynaptic stimulation hampers neuromorphic computing by favoring the runaway of synaptic weights during learning. Here, the authors demonstrate an FTJ whose conductivity varies linearly and symmetrically by judiciously combining ferroelectric domain switching and oxygen vacancy migration. The artificial neural network based on this FTJ‐synapse achieves classification accuracy of 96.7% during supervised learning, which is the closest to the maximum theoretical value of 98% achieved to date. This artificial synapse also demonstrates stable unsupervised learning in a noisy environment for its well‐balanced spike‐timing‐dependent plasticity response. The novel concept of controlling ionic migration in ferroelectric materials paves the way toward highly reliable and reproducible supervised and unsupervised learning strategies.
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