AND Flash Array Based on Charge Trap Flash for Implementation of Convolutional Neural Networks

  • Choi, Hyun-Seok
  • Kim, Hyungjin
  • Lee, Jong-Ho
  • Park, Byung-Gook
  • Kim, Yoon
Citations

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41
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43

초록

Various memory devices have been proposed for implementing synapse devices in neuromorphic systems. In this letter, an AND flash array based on charge trap flash (CTF) memory was proposed. CTF-based synapse devices are particularly suitable for off-chip learning applications because they have excellent reliability and stable multi-level operation characteristics. In addition, we proposed a method to implement convolutional neural networks in the proposed array, and performed system-level simulation using the characteristics of the fabricated device. Finally, we investigated the accuracy degradation of the neuromorphic system related to data retention and proposed a multiple cell mapping scheme to address this degradation issue.

키워드

SynapsesNeuromorphicsArraysConvolutional neural networksDegradationReliabilitySynapse devicesynapse arrayneuromorphic systemconvolutional neural networkcharge trap flashSYNAPTIC DEVICESMEMORY3-D
제목
AND Flash Array Based on Charge Trap Flash for Implementation of Convolutional Neural Networks
저자
Choi, Hyun-SeokKim, HyungjinLee, Jong-HoPark, Byung-GookKim, Yoon
DOI
10.1109/LED.2020.3025587
발행일
2020-11
유형
Article
저널명
IEEE Electron Device Letters
41
11
페이지
1653 ~ 1656