自旋电子学
整改
计算机科学
旋转扭矩传递
人工神经网络
肖特基二极管
材料科学
二极管
电子工程
光电子学
人工智能
电气工程
铁磁性
物理
工程类
磁场
凝聚态物理
磁化
电压
量子力学
作者
Kun Zhang,Xiaotao Jia,Kaihua Cao,Zhengdong Wang,Yue Zhang,Kelian Lin,Lei Chen,Xueqiang Feng,Zhenyi Zheng,Zhizhong Zhang,Youguang Zhang,Weisheng Zhao
出处
期刊:Advanced Science
[Wiley]
日期:2022-02-20
卷期号:9 (13): e2103357-e2103357
被引量:18
标识
DOI:10.1002/advs.202103357
摘要
Abstract Spintronic devices are considered as one of the most promising technologies for non‐volatile memory and computing. However, two crucial drawbacks, that is, lack of intrinsic multi‐level operation and low on/off ratio, greatly hinder their further application for advanced computing concepts, such as deep neural network (DNN) accelerator. In this paper, a spintronic multi‐level memory unit with high on/off ratio is proposed by integrating several series‐connected magnetic tunnel junctions (MTJs) with perpendicular magnetic anisotropy (PMA) and a Schottky diode in parallel. Due to the rectification effect on the PMA MTJ, an on/off ratio over 100, two orders of magnitude higher than intrinsic values, is obtained under proper proportion of alternating current and direct current. Multiple resistance states are stably achieved and can be reconfigured by spin transfer torque effect. A computing‐in‐memory architecture based DNN accelerator for image classification with the experimental parameters of this proposal to evidence its application potential is also evaluated. This work can satisfy the rigorous requirements of DNN for memory unit and promote the development of high‐accuracy and robust artificial intelligence applications.
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