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Device‐Algorithm Co‐Optimization for an On‐Chip Trainable Capacitor‐Based Synaptic Device with IGZO TFT and Retention‐Centric Tiki‐Taka Algorithm

Analog in‐memory computing synaptic devices are widely studied for efficient implementation of deep learning. However, synaptic devices based on resistive memory have difficulties implementing on‐chip training due to the lack of means to control the amount of resistance change and large device varia...

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Autores principales: Won, Jongun, Kang, Jaehyeon, Hong, Sangjun, Han, Narae, Kang, Minseung, Park, Yeaji, Roh, Youngchae, Seo, Hyeong Jun, Joe, Changhoon, Cho, Ung, Kang, Minil, Um, Minseong, Lee, Kwang‐Hee, Yang, Jee‐Eun, Jung, Moonil, Lee, Hyung‐Min, Oh, Saeroonter, Kim, Sangwook, Kim, Sangbum
Formato: Online Artículo Texto
Lenguaje:English
Publicado: John Wiley and Sons Inc. 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10582414/
https://www.ncbi.nlm.nih.gov/pubmed/37559176
http://dx.doi.org/10.1002/advs.202303018
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author Won, Jongun
Kang, Jaehyeon
Hong, Sangjun
Han, Narae
Kang, Minseung
Park, Yeaji
Roh, Youngchae
Seo, Hyeong Jun
Joe, Changhoon
Cho, Ung
Kang, Minil
Um, Minseong
Lee, Kwang‐Hee
Yang, Jee‐Eun
Jung, Moonil
Lee, Hyung‐Min
Oh, Saeroonter
Kim, Sangwook
Kim, Sangbum
author_facet Won, Jongun
Kang, Jaehyeon
Hong, Sangjun
Han, Narae
Kang, Minseung
Park, Yeaji
Roh, Youngchae
Seo, Hyeong Jun
Joe, Changhoon
Cho, Ung
Kang, Minil
Um, Minseong
Lee, Kwang‐Hee
Yang, Jee‐Eun
Jung, Moonil
Lee, Hyung‐Min
Oh, Saeroonter
Kim, Sangwook
Kim, Sangbum
author_sort Won, Jongun
collection PubMed
description Analog in‐memory computing synaptic devices are widely studied for efficient implementation of deep learning. However, synaptic devices based on resistive memory have difficulties implementing on‐chip training due to the lack of means to control the amount of resistance change and large device variations. To overcome these shortcomings, silicon complementary metal‐oxide semiconductor (Si‐CMOS) and capacitor‐based charge storage synapses are proposed, but it is difficult to obtain sufficient retention time due to Si‐CMOS leakage currents, resulting in a deterioration of training accuracy. Here, a novel 6T1C synaptic device using only n‐type indium gaIlium zinc oxide thin film transistor (IGZO TFT) with low leakage current and a capacitor is proposed, allowing not only linear and symmetric weight update but also sufficient retention time and parallel on‐chip training operations. In addition, an efficient and realistic training algorithm to compensate for any remaining device non‐idealities such as drifting references and long‐term retention loss is proposed, demonstrating the importance of device‐algorithm co‐optimization.
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spelling pubmed-105824142023-10-19 Device‐Algorithm Co‐Optimization for an On‐Chip Trainable Capacitor‐Based Synaptic Device with IGZO TFT and Retention‐Centric Tiki‐Taka Algorithm Won, Jongun Kang, Jaehyeon Hong, Sangjun Han, Narae Kang, Minseung Park, Yeaji Roh, Youngchae Seo, Hyeong Jun Joe, Changhoon Cho, Ung Kang, Minil Um, Minseong Lee, Kwang‐Hee Yang, Jee‐Eun Jung, Moonil Lee, Hyung‐Min Oh, Saeroonter Kim, Sangwook Kim, Sangbum Adv Sci (Weinh) Research Articles Analog in‐memory computing synaptic devices are widely studied for efficient implementation of deep learning. However, synaptic devices based on resistive memory have difficulties implementing on‐chip training due to the lack of means to control the amount of resistance change and large device variations. To overcome these shortcomings, silicon complementary metal‐oxide semiconductor (Si‐CMOS) and capacitor‐based charge storage synapses are proposed, but it is difficult to obtain sufficient retention time due to Si‐CMOS leakage currents, resulting in a deterioration of training accuracy. Here, a novel 6T1C synaptic device using only n‐type indium gaIlium zinc oxide thin film transistor (IGZO TFT) with low leakage current and a capacitor is proposed, allowing not only linear and symmetric weight update but also sufficient retention time and parallel on‐chip training operations. In addition, an efficient and realistic training algorithm to compensate for any remaining device non‐idealities such as drifting references and long‐term retention loss is proposed, demonstrating the importance of device‐algorithm co‐optimization. John Wiley and Sons Inc. 2023-08-09 /pmc/articles/PMC10582414/ /pubmed/37559176 http://dx.doi.org/10.1002/advs.202303018 Text en © 2023 The Authors. Advanced Science published by Wiley‐VCH GmbH https://creativecommons.org/licenses/by/4.0/This is an open access article under the terms of the http://creativecommons.org/licenses/by/4.0/ (https://creativecommons.org/licenses/by/4.0/) License, which permits use, distribution and reproduction in any medium, provided the original work is properly cited.
spellingShingle Research Articles
Won, Jongun
Kang, Jaehyeon
Hong, Sangjun
Han, Narae
Kang, Minseung
Park, Yeaji
Roh, Youngchae
Seo, Hyeong Jun
Joe, Changhoon
Cho, Ung
Kang, Minil
Um, Minseong
Lee, Kwang‐Hee
Yang, Jee‐Eun
Jung, Moonil
Lee, Hyung‐Min
Oh, Saeroonter
Kim, Sangwook
Kim, Sangbum
Device‐Algorithm Co‐Optimization for an On‐Chip Trainable Capacitor‐Based Synaptic Device with IGZO TFT and Retention‐Centric Tiki‐Taka Algorithm
title Device‐Algorithm Co‐Optimization for an On‐Chip Trainable Capacitor‐Based Synaptic Device with IGZO TFT and Retention‐Centric Tiki‐Taka Algorithm
title_full Device‐Algorithm Co‐Optimization for an On‐Chip Trainable Capacitor‐Based Synaptic Device with IGZO TFT and Retention‐Centric Tiki‐Taka Algorithm
title_fullStr Device‐Algorithm Co‐Optimization for an On‐Chip Trainable Capacitor‐Based Synaptic Device with IGZO TFT and Retention‐Centric Tiki‐Taka Algorithm
title_full_unstemmed Device‐Algorithm Co‐Optimization for an On‐Chip Trainable Capacitor‐Based Synaptic Device with IGZO TFT and Retention‐Centric Tiki‐Taka Algorithm
title_short Device‐Algorithm Co‐Optimization for an On‐Chip Trainable Capacitor‐Based Synaptic Device with IGZO TFT and Retention‐Centric Tiki‐Taka Algorithm
title_sort device‐algorithm co‐optimization for an on‐chip trainable capacitor‐based synaptic device with igzo tft and retention‐centric tiki‐taka algorithm
topic Research Articles
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10582414/
https://www.ncbi.nlm.nih.gov/pubmed/37559176
http://dx.doi.org/10.1002/advs.202303018
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