材料科学
神经形态工程学
钙钛矿(结构)
铁电性
薄脆饼
氧化物
硅
纳米技术
氧化硅
光电子学
卷积神经网络
计算机科学
人工神经网络
人工智能
化学工程
电介质
冶金
氮化硅
工程类
作者
Ningchong Zheng,Yipeng Zang,Jiayi Li,Cong Shen,Peijie Jiao,Lunqiang Zhang,He Wang,Lu Han,Yuwei Liu,Wen-Juan Ding,Xinrui Yang,Leyan Nian,Jianan Ma,Xingyu Jiang,Yuewei Yin,Yidong Xia,Yu Deng,Di Wu,Xiaoguang Li,Xiaoqing Pan,Yuefeng Nie
标识
DOI:10.1002/adfm.202316473
摘要
Abstract Perovskite‐oxide‐based ferroelectric tunnel junctions (FTJs) hold great potential for applications in non‐volatile memory and neuromorphic computing due to their unique properties. However, the challenges in synthesizing high crystalline quality perovskite oxides directly on silicon wafer limit the applications of these FTJs in conventional Si‐based integrated circuits, let alone the neural networks. Herein, perovskite oxide FTJs with an ON/OFF ratio up to 1.2×10 6 , writing/erasing speed down to 1 nanosecond, and cycling endurance (>10 6 ) are achieved by integrating ultrathin freestanding ferroelectric perovskite oxide membranes directly on silicon wafers using a wet‐transfer method. Moreover, synapses based on these FTJs exhibit long‐term plasticity. For handwritten digits recognition task, the convolutional neural network (CNN) simulation is implemented achieving a recognition accuracy up to 98.9% based on the experimental performance, close to the result of 99.2% by software‐floating‐point‐based CNN. This work sheds light on the integration of ferroelectric perovskite oxides directly on silicon for high‐performance FTJ‐based non‐volatile memory and synaptic devices.
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