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Multilevel resistive switching and synaptic plasticity of nanoparticulated cobaltite oxide memristive device

Authors
Dongale, T.D.Khot, A.C.Takaloo, A.V.Son, K.R.Kim, T.G.
Issue Date
10-7월-2021
Publisher
Chinese Society of Metals
Keywords
Cobaltite oxide; Memristive device; Multilevel resistive switching; STDP; Synaptic plasticity
Citation
Journal of Materials Science and Technology, v.78, pp.81 - 91
Indexed
SCIE
SCOPUS
Journal Title
Journal of Materials Science and Technology
Volume
78
Start Page
81
End Page
91
URI
https://scholar.korea.ac.kr/handle/2021.sw.korea/128720
DOI
10.1016/j.jmst.2020.10.046
ISSN
1005-0302
Abstract
Multilevel resistive switching (RS) is a key property to embrace the full potential of memristive devices for non-volatile memory and neuromorphic computing applications. In this study, we employed nanoparticulated cobaltite oxide (Co3O4) as a model material to demonstrate the multilevel RS and synaptic learning capabilities because of its multiple and stable redox state properties. The Pt/Co3O4/Pt memristive device exhibited tunable RS properties with respect to different voltages and compliance currents (CC) without the electroforming process. That is, the device showed voltage-dependent RS at a higher CC whereas CC-dependent RS was observed at lower CC. The device showed four different resistance states during endurance and retention measurements and non-volatile memory results indicated that the CC-based measurement had less variation. Besides, we investigated the basic and complex synaptic plasticity properties using the analog current-voltage characteristics of the Pt/Co3O4/Pt device. In particular, we mimicked the potentiation–depression and four-spike time-dependent plasticity (STDP) rules such as asymmetric Hebbian, asymmetric anti-Hebbian, symmetric Hebbian, and symmetric anti-Hebbian learning rules. The results of the present work indicate that the cobaltite oxide is an excellent nanomaterial for both multilevel RS and neuromorphic computing applications. © 2020
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공과대학 (전기전자공학부)
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