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Mixed‐Dimensional Formamidinium Bismuth Iodides Featuring In‐Situ Formed Type‐I Band Structure for Convolution Neural Networks

For valence change memory (VCM)‐type synapses, a large number of vacancies help to achieve very linearly changed dynamic range, and also, the low activation energy of vacancies enables low‐voltage operation. However, a large number of vacancies increases the current of artificial synapses by acting...

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Autores principales: Yang, June‐Mo, Lee, Ju‐Hee, Jung, Young‐Kwang, Kim, So‐Yeon, Kim, Jeong‐Hoon, Kim, Seul‐Gi, Kim, Jeong‐Hyeon, Seo, Seunghwan, Park, Dong‐Am, Lee, Jin‐Wook, Walsh, Aron, Park, Jin‐Hong, Park, Nam‐Gyu
Formato: Online Artículo Texto
Lenguaje:English
Publicado: John Wiley and Sons Inc. 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9108665/
https://www.ncbi.nlm.nih.gov/pubmed/35307991
http://dx.doi.org/10.1002/advs.202200168
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author Yang, June‐Mo
Lee, Ju‐Hee
Jung, Young‐Kwang
Kim, So‐Yeon
Kim, Jeong‐Hoon
Kim, Seul‐Gi
Kim, Jeong‐Hyeon
Seo, Seunghwan
Park, Dong‐Am
Lee, Jin‐Wook
Walsh, Aron
Park, Jin‐Hong
Park, Nam‐Gyu
author_facet Yang, June‐Mo
Lee, Ju‐Hee
Jung, Young‐Kwang
Kim, So‐Yeon
Kim, Jeong‐Hoon
Kim, Seul‐Gi
Kim, Jeong‐Hyeon
Seo, Seunghwan
Park, Dong‐Am
Lee, Jin‐Wook
Walsh, Aron
Park, Jin‐Hong
Park, Nam‐Gyu
author_sort Yang, June‐Mo
collection PubMed
description For valence change memory (VCM)‐type synapses, a large number of vacancies help to achieve very linearly changed dynamic range, and also, the low activation energy of vacancies enables low‐voltage operation. However, a large number of vacancies increases the current of artificial synapses by acting like dopants, which aggravates low‐energy operation and device scalability. Here, mixed‐dimensional formamidinium bismuth iodides featuring in‐situ formed type‐I band structure are reported for the VCM‐type synapse. As compared to the pure 2D and 0D phases, the mixed phase increases defect density, which induces a better dynamic range and higher linearity. In addition, the mixed phase decreases conductivity for non‐paths despite a large number of defects providing lots of conducting paths. Thus, the mixed phase‐based memristor devices exhibit excellent potentiation/depression characteristics with asymmetricity of 3.15, 500 conductance states, a dynamic range of 15, pico ampere‐scale current level, and energy consumption per spike of 61.08 aJ. A convolutional neural network (CNN) simulation with the Canadian Institute for Advanced Research‐10 (CIFAR‐10) dataset is also performed, confirming a maximum recognition rate of approximately 87%. This study is expected to lay the groundwork for future research on organic bismuth halide‐based memristor synapses usable for a neuromorphic computing system.
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spelling pubmed-91086652022-05-20 Mixed‐Dimensional Formamidinium Bismuth Iodides Featuring In‐Situ Formed Type‐I Band Structure for Convolution Neural Networks Yang, June‐Mo Lee, Ju‐Hee Jung, Young‐Kwang Kim, So‐Yeon Kim, Jeong‐Hoon Kim, Seul‐Gi Kim, Jeong‐Hyeon Seo, Seunghwan Park, Dong‐Am Lee, Jin‐Wook Walsh, Aron Park, Jin‐Hong Park, Nam‐Gyu Adv Sci (Weinh) Research Articles For valence change memory (VCM)‐type synapses, a large number of vacancies help to achieve very linearly changed dynamic range, and also, the low activation energy of vacancies enables low‐voltage operation. However, a large number of vacancies increases the current of artificial synapses by acting like dopants, which aggravates low‐energy operation and device scalability. Here, mixed‐dimensional formamidinium bismuth iodides featuring in‐situ formed type‐I band structure are reported for the VCM‐type synapse. As compared to the pure 2D and 0D phases, the mixed phase increases defect density, which induces a better dynamic range and higher linearity. In addition, the mixed phase decreases conductivity for non‐paths despite a large number of defects providing lots of conducting paths. Thus, the mixed phase‐based memristor devices exhibit excellent potentiation/depression characteristics with asymmetricity of 3.15, 500 conductance states, a dynamic range of 15, pico ampere‐scale current level, and energy consumption per spike of 61.08 aJ. A convolutional neural network (CNN) simulation with the Canadian Institute for Advanced Research‐10 (CIFAR‐10) dataset is also performed, confirming a maximum recognition rate of approximately 87%. This study is expected to lay the groundwork for future research on organic bismuth halide‐based memristor synapses usable for a neuromorphic computing system. John Wiley and Sons Inc. 2022-03-20 /pmc/articles/PMC9108665/ /pubmed/35307991 http://dx.doi.org/10.1002/advs.202200168 Text en © 2022 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
Yang, June‐Mo
Lee, Ju‐Hee
Jung, Young‐Kwang
Kim, So‐Yeon
Kim, Jeong‐Hoon
Kim, Seul‐Gi
Kim, Jeong‐Hyeon
Seo, Seunghwan
Park, Dong‐Am
Lee, Jin‐Wook
Walsh, Aron
Park, Jin‐Hong
Park, Nam‐Gyu
Mixed‐Dimensional Formamidinium Bismuth Iodides Featuring In‐Situ Formed Type‐I Band Structure for Convolution Neural Networks
title Mixed‐Dimensional Formamidinium Bismuth Iodides Featuring In‐Situ Formed Type‐I Band Structure for Convolution Neural Networks
title_full Mixed‐Dimensional Formamidinium Bismuth Iodides Featuring In‐Situ Formed Type‐I Band Structure for Convolution Neural Networks
title_fullStr Mixed‐Dimensional Formamidinium Bismuth Iodides Featuring In‐Situ Formed Type‐I Band Structure for Convolution Neural Networks
title_full_unstemmed Mixed‐Dimensional Formamidinium Bismuth Iodides Featuring In‐Situ Formed Type‐I Band Structure for Convolution Neural Networks
title_short Mixed‐Dimensional Formamidinium Bismuth Iodides Featuring In‐Situ Formed Type‐I Band Structure for Convolution Neural Networks
title_sort mixed‐dimensional formamidinium bismuth iodides featuring in‐situ formed type‐i band structure for convolution neural networks
topic Research Articles
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9108665/
https://www.ncbi.nlm.nih.gov/pubmed/35307991
http://dx.doi.org/10.1002/advs.202200168
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