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Two-Terminal Lithium-Mediated Artificial Synapses with Enhanced Weight Modulation for Feasible Hardware Neural Networks

Cited 13 time in Web of Science Cited 16 time in Scopus
Authors

Baek, Ji Hyun; Kwak, Kyung Ju; Kim, Seung Ju; Kim, Jaehyun; Kim, Jae Young; Im, In Hyuk; Lee, Sunyoung; Kang, Kisuk; Jang, Ho Won

Issue Date
2023-12
Publisher
SHANGHAI JIAO TONG UNIV PRESS
Citation
Nano-micro Letters, Vol.15 No.1, p. 40820
Abstract
Recently, artificial synapses involving an electrochemical reaction of Li-ion have been attributed to have remarkable synaptic properties. Three-terminal synaptic transistors utilizing Li-ion intercalation exhibits reliable synaptic characteristics by exploiting the advantage of non-distributed weight updates owing to stable ion migrations. However, the three-terminal configurations with large and complex structures impede the crossbar array implementation required for hardware neuromorphic systems. Meanwhile, achieving adequate synaptic performances through effective Li-ion intercalation in vertical two-terminal synaptic devices for array integration remains challenging. Here, two-terminal Au/Li xCoO2/Pt artificial synapses are proposed with the potential for practical implementation of hardware neural networks. The Au/Li xCoO2/Pt devices demonstrated extraordinary neuromorphic behaviors based on a progressive dearth of Li in Li xCoO2 films. The intercalation and deintercalation of Li-ion inside the films are precisely controlled over the weight control spike, resulting in improved weight control functionality. Various types of synaptic plasticity were imitated and assessed in terms of key factors such as nonlinearity, symmetricity, and dynamic range. Notably, the Li xCoO2-based neuromorphic system outperformed three-terminal synaptic transistors in simulations of convolutional neural networks and multilayer perceptrons due to the high linearity and low programming error. These impressive performances suggest the vertical two-terminal Au/Li xCoO2/Pt artificial synapses as promising candidates for hardware neural networks[Figure not available: see fulltext.]
ISSN
2311-6706
URI
https://hdl.handle.net/10371/192238
DOI
https://doi.org/10.1007/s40820-023-01035-3
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