Effect of weight overlap region on neuromorphic system with memristive synaptic devices

  • Lee, Geun Ho
  • Kim, Tae-Hyeon
  • Song, Min Suk
  • Park, Jinwoo
  • Kim, Sungjoon
  • 외 4명
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초록

Recently, hardware-based neural network using memristive devices, so called neuromorphic system, has been extensively studied. Especially, on-chip (in situ) learning methods where training occurs inside hardware structure itself have been proposed and optimized based on memristor crossbar arrays regarding the linearity of weight-update characteristics. In this study, we analyze the effect of conductance overlap region of memristor on the recognition accuracy for on-chip learning simulation. The effect of conductance overlap region on recognition accuracy for modified national institute of standards and technology (MNIST) dataset is studied with an identical potentiation/depression pulse applied to Pt/Al2O3/TiOx/Ti/Pt stacked memristor. The overlap range can be varied by different pulse amplitude, and the training characteristics of memristive neural network is significantly dependent on the weight-update overlap region.(c) 2022 Published by Elsevier Ltd.

키워드

MemristorNeural networkNeuromorphic systemOn-chip learningWeight overlap regionHIGH-PRECISIONMEMORYRECOGNITIONSYNAPSESDYNAMICSNOISE
제목
Effect of weight overlap region on neuromorphic system with memristive synaptic devices
저자
Lee, Geun HoKim, Tae-HyeonSong, Min SukPark, JinwooKim, SungjoonHong, KyunghoKim, YoonPark, Byung-GookKim, Hyungjin
DOI
10.1016/j.chaos.2022.111999
발행일
2022-04
유형
Article
저널명
Chaos, Solitons and Fractals
157