神经形态工程学
MNIST数据库
突触重量
能源消耗
计算机科学
材料科学
人工神经网络
高效能源利用
可靠性(半导体)
延迟(音频)
电子工程
功率(物理)
人工智能
电气工程
物理
电信
工程类
量子力学
作者
Jian Tang,Congli He,Jianshi Tang,Kun Yue,Qingtian Zhang,Yizhou Liu,Qinqin Wang,Shuopei Wang,Na Li,Cheng Shen,Yanchong Zhao,Jieying Liu,Jiahao Yuan,Wei Zheng,Jiawei Li,Kenji Watanabe,Takashi Taniguchi,Dashan Shang,Shouguo Wang,Wei Yang
标识
DOI:10.1002/adfm.202011083
摘要
Abstract High‐performance artificial synaptic devices are indispensable for developing neuromorphic computing systems with high energy efficiency. However, the reliability and variability issues of existing devices such as nonlinear and asymmetric weight update are the major hurdles in their practical applications for energy‐efficient neuromorphic computing. Here, a two‐terminal floating‐gate memory (2TFGM) based artificial synapse built from all‐2D van der Waals materials is reported. The 2TFGM synaptic device exhibits excellent linear and symmetric weight update characteristics with high reliability and tunability. In particular, the high linearity and symmetric synaptic weight realized by simple programming with identical pulses can eliminate the additional latency and power consumption caused by the peripheral circuit design and achieve an ultralow energy consumption for the synapses in the neural network implementation. A large number of states up to ≈3000, high switching speed of 40 ns and low energy consumption of 18 fJ for a single pulse have been demonstrated experimentally. A high classification accuracy up to 97.7% (close to the software baseline of 98%) has been achieved in the Modified National Institute of Standards and Technology (MNIST) simulations based on the experimental data. These results demonstrate the potential of all‐2D 2TFGM for high‐speed and low‐power neuromorphic computing.
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