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WOx channel engineering of Cu-ion-driven synaptic transistor array for low-power neuromorphic computing SCIE SCOPUS

Title
WOx channel engineering of Cu-ion-driven synaptic transistor array for low-power neuromorphic computing
Authors
Jeon SeonukKang HeebumKWAK, HYUNJEONGNO, KYUNG MISEUNGKUN, KIMKim NayeonKim Hyun WookHong EunryeongKim SeyoungWoo Jiyong
Date Issued
2023-12
Publisher
Nature Publishing Group
Abstract
The multilevel current states of synaptic devices in artificial neural networks enable next-generation computing to perform cognitive functions in an energy-efficient manner. Moreover, considering large-scale synaptic arrays, multiple states programmed in a low-current regime may be required to achieve low energy consumption, as demonstrated by simple numerical calculations. Thus, we propose a three-terminal Cu-ion-actuated CuOx/HfOx/WO3 synaptic transistor array that exhibits analogously modulated channel current states in the range of tens of nanoamperes, enabled by WO3 channel engineering. The introduction of an amorphous stoichiometric WO3 channel formed by reactive sputtering with O gas significantly lowered the channel current but left it almost unchanged with respect to consecutive gate voltage pulses. An additional annealing process at 450 degrees C crystallized the WO3, allowing analog switching in the range of tens of nanoamperes. The incorporation of N gas during annealing induced a highly conductive channel, making the channel current modulation negligible as a function of the gate pulse. Using this optimized gate stack, Poole-Frenkel conduction was identified as a major transport characteristic in a temperature-dependent study. In addition, we found that the channel current modulation is a function of the gate current response, which is related to the degree of progressive movement of the Cu ions. Finally, the synaptic characteristics were updated using fully parallel programming and demonstrated in a 7 x 7 array. Using the CuOx/HfOx/WO3 synaptic transistors as weight elements in multilayer neural networks, we achieved a 90% recognition accuracy on the Fashion-MNIST dataset.
URI
https://oasis.postech.ac.kr/handle/2014.oak/120829
DOI
10.1038/s41598-023-49251-6
ISSN
2045-2322
Article Type
Article
Citation
Scientific Reports, vol. 13, no. 1, 2023-12
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