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Cited 9 time in webofscience Cited 13 time in scopus
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All-Solid-State Synaptic Transistors with Lithium-Ion-Based Electrolytes for Linear Weight Mapping and Update in Neuromorphic Computing Systems

Authors
Park, Ji-MinHwang, HwihoSong, Min SukJang, Seong CheolKim, Jung HyunKim, HyungjinKim, Hyun-Suk
Issue Date
Oct-2023
Publisher
American Chemical Society
Keywords
solid-state electrolyte; Li1-x Al x Ti2-x (PO4)(3); high ionic conductivity; synaptic device; neuromorphic computing
Citation
ACS Applied Materials & Interfaces, v.15, no.40, pp 47229 - 47237
Pages
9
Indexed
SCIE
SCOPUS
Journal Title
ACS Applied Materials & Interfaces
Volume
15
Number
40
Start Page
47229
End Page
47237
URI
https://scholarworks.dongguk.edu/handle/sw.dongguk/25953
DOI
10.1021/acsami.3c09162
ISSN
1944-8244
1944-8252
Abstract
Neuromorphic computing, an innovative technology inspired by the human brain, has attracted increasing attention as a promising technology for the development of artificial intelligence systems. This study proposes synaptic transistors with a Li1-xAlxTi2-x(PO4)(3) (LATP) layer to analyze the conductance modulation linearity, which is essential for weight mapping and updating during on-chip learning processes. The high ionic conductivity of the LATP electrolyte provides a large hysteresis window and enables linear weight update in synaptic devices. The results demonstrate that optimizing the LATP layer thickness improves the conductance modulation and linearity of synaptic transistors during potentiation and degradation. A 20 nm-thick LATP layer results in the most nonlinear depression (alpha(d) = -6.59), whereas a 100 nm-thick LATP layer results in the smallest nonlinearity (alpha(d) = -2.22). Additionally, a device with the optimal 100 nm-thick LATP layer exhibits the highest average recognition accuracy of 94.8% and the smallest fluctuation, indicating that the linearity characteristics of a device play a crucial role in weight update during learning and can significantly affect the recognition accuracy.
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