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A self-rectifying TaOy/nanoporous TaOx memristor synaptic array for learning and energy-efficient neuromorphic systems

Authors
Choi, SanghyeonJang, SeonghoonMoon, Jung-HwanKim, Jong ChanJeong, Hu YoungJang, PeonghwaLee, Kyung-JinWang, Gunuk
Issue Date
13-12월-2018
Publisher
NATURE PUBLISHING GROUP
Citation
NPG ASIA MATERIALS, v.10, pp.1097 - 1106
Indexed
SCIE
SCOPUS
Journal Title
NPG ASIA MATERIALS
Volume
10
Start Page
1097
End Page
1106
URI
https://scholar.korea.ac.kr/handle/2021.sw.korea/71211
DOI
10.1038/s41427-018-0101-y
ISSN
1884-4049
Abstract
The human brain intrinsically operates with a large number of synapses, more than 10(15). Therefore, one of the most critical requirements for constructing artificial neural networks (ANNs) is to achieve extremely dense synaptic array devices, for which the crossbar architecture containing an artificial synaptic node at each cross is indispensable. However, crossbar arrays suffer from the undesired leakage of signals through neighboring cells, which is a major challenge for implementing ANNs. In this work, we show that this challenge can be overcome by using Pt/TaOy/nanoporous (NP) TaOx/Ta memristor synapses because of their self-rectifying behavior, which is capable of suppressing unwanted leakage pathways. Moreover, our synaptic device exhibits high non-linearity (up to 10(4)), low synapse coupling (S.C, up to 4.00 x 10(-5)), acceptable endurance (5000 cycles at 85 degrees C), sweeping (1000 sweeps), retention stability and acceptable cell uniformity. We also demonstrated essential synaptic functions, such as long-term potentiation (LTP), long-term depression (LTD), and spiking-timing-dependent plasticity (STDP), and simulated the recognition accuracy depending on the S.C for MNIST handwritten digit images. Based on the average S.C (1.60 x 10(-4)) in the fabricated crossbar array, we confirmed that our memristive synapse was able to achieve an 89.08% recognition accuracy after only 15 training epochs.
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College of Engineering > Department of Materials Science and Engineering > 1. Journal Articles
Graduate School > KU-KIST Graduate School of Converging Science and Technology > 1. Journal Articles

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