| Literature DB >> 30608706 |
Byung Chul Jang1, Sungkyu Kim2, Sang Yoon Yang1, Jihun Park1, Jun-Hwe Cha1, Jungyeop Oh1, Junhwan Choi3, Sung Gap Im3, Vinayak P Dravid2, Sung-Yool Choi1.
Abstract
With the advent of artificial intelligence (AI), memristors have received significant interest as a synaptic building block for neuromorphic systems, where each synaptic memristor should operate in an analog fashion, exhibiting multilevel accessible conductance states. Here, we demonstrate that the transition of the operation mode in poly(1,3,5-trivinyl-1,3,5-trimethyl cyclotrisiloxane) (pV3D3)-based flexible memristor from conventional binary to synaptic analog switching can be achieved simply by reducing the size of the formed filament. With the quantized conductance states observed in the flexible pV3D3 memristor, analog potentiation and depression characteristics of the memristive synapse are obtained through the growth of atomically thin Cu filament and lateral dissolution of the filament via dominant electric field effect, respectively. The face classification capability of our memristor is evaluated via simulation using an artificial neural network consisting of pV3D3 memristor synapses. These results will encourage the development of soft neuromorphic intelligent systems.Entities:
Keywords: Flexible memristor; artificial neural network (ANN); electrochemical metallization (ECM); neuromorphic system; quantized conductance
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Year: 2019 PMID: 30608706 DOI: 10.1021/acs.nanolett.8b04023
Source DB: PubMed Journal: Nano Lett ISSN: 1530-6984 Impact factor: 11.189