神经形态工程学
铁电性
材料科学
压电响应力显微镜
电压
人工神经网络
突触重量
计算机科学
光电子学
纳米技术
电气工程
人工智能
工程类
电介质
作者
Jie Luo,Guo Tian,Dingguo Zhang,Xingchen Zhang,Zhenni Lu,Zhong‐Da Zhang,Jia-Wei Cai,Ya‐Nan Zhong,Jianlong Xu,Xu Gao,Sui‐Dong Wang
标识
DOI:10.1021/acsami.3c09506
摘要
Ferroelectric materials with a modulable polarization extent hold promise for exploring voltage-driven neuromorphic hardware, in which direct current flow can be minimized. Utilizing a single active layer of an insulating ferroelectric polymer, we developed a voltage-mode ferroelectric synapse that can continuously and reversibly update its states. The device states are straightforwardly manifested in the form of variable output voltage, enabling large-scale direct cascading of multiple ferroelectric synapses to build a deep physical neural network. Such a neural network based on potential superposition rather than current flow is analogous to the biological counterpart driven by action potentials in the brain. A high accuracy of over 97% for the simulation of handwritten digit recognition is achieved using the voltage-mode neural network. The controlled ferroelectric polarization, revealed by piezoresponse force microscopy, turns out to be responsible for the synaptic weight updates in the ferroelectric synapses. The present work demonstrates an alternative strategy for the design and construction of emerging artificial neural networks.
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