神经形态工程学
石墨烯
材料科学
非易失性存储器
MNIST数据库
光电子学
逻辑门
纳米技术
计算机科学
人工神经网络
人工智能
算法
作者
Wei Li,Jiaying Li,Tianhui Mu,Jiayao Li,Pengcheng Sun,Mingjian Dai,Yuhua Chen,Ruijing Yang,Chen Zhao,Yucheng Wang,Yupan Wu,Shaoxi Wang
出处
期刊:Small
[Wiley]
日期:2024-03-12
卷期号:20 (30)
标识
DOI:10.1002/smll.202311630
摘要
Abstract The floating gate devices, as a kind of nonvolatile memory, obtain great application potential in logic‐in‐memory chips. The 2D materials have been greatly studied due to atomically flat surfaces, higher carrier mobility, and excellent photoelectrical response. The 2D ReS 2 flake is an excellent candidate for channel materials due to thickness‐independent direct bandgap and outstanding optoelectronic response. In this paper, the floating gate devices are prepared with the ReS 2 /h‐BN/Gr heterojunction. It obtains superior nonvolatile electrical memory characteristics, including a higher memory window ratio (81.82%), tiny writing/erasing voltage (±8 V/2 ms), long retention (>1000 s), and stable endurance (>1000 times) as well as multiple memory states. Meanwhile, electrical writing and optical erasing are achieved by applying electrical and optical pulses, and multilevel storage can easily be achieved by regulating light pulse parameters. Finally, due to the ideal long‐time potentiation/depression synaptic weights regulated by light pulses and electrical pulses, the convolutional neural network (CNN) constructed by ReS 2 /h‐BN/Gr floating gate devices can achieve image recognition with an accuracy of up to 98.15% for MNIST dataset and 91.24% for Fashion‐MNIST dataset. The research work adds a powerful option for 2D materials floating gate devices to apply to logic‐in‐memory chips and neuromorphic computing.
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