Cargando…

Characterization of Information-Transmitting Materials Produced in Ionic Liquid-based Neuromorphic Electrochemical Devices for Physical Reservoir Computing

[Image: see text] Device implementation of reservoir computing, which is expected to enable high-performance data processing in simple neural networks at a low computational cost, is an important technology to accelerate the use of artificial intelligence in the real-world edge computing domain. Her...

Descripción completa

Detalles Bibliográficos
Autores principales: Sato, Dan, Shima, Hisashi, Matsuo, Takuma, Yonezawa, Masaharu, Kinoshita, Kentaro, Kobayashi, Masakazu, Naitoh, Yasuhisa, Akinaga, Hiroyuki, Miyamoto, Shunsuke, Nokami, Toshiki, Itoh, Toshiyuki
Formato: Online Artículo Texto
Lenguaje:English
Publicado: American Chemical Society 2023
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10614198/
https://www.ncbi.nlm.nih.gov/pubmed/37815984
http://dx.doi.org/10.1021/acsami.3c08638
_version_ 1785128977108566016
author Sato, Dan
Shima, Hisashi
Matsuo, Takuma
Yonezawa, Masaharu
Kinoshita, Kentaro
Kobayashi, Masakazu
Naitoh, Yasuhisa
Akinaga, Hiroyuki
Miyamoto, Shunsuke
Nokami, Toshiki
Itoh, Toshiyuki
author_facet Sato, Dan
Shima, Hisashi
Matsuo, Takuma
Yonezawa, Masaharu
Kinoshita, Kentaro
Kobayashi, Masakazu
Naitoh, Yasuhisa
Akinaga, Hiroyuki
Miyamoto, Shunsuke
Nokami, Toshiki
Itoh, Toshiyuki
author_sort Sato, Dan
collection PubMed
description [Image: see text] Device implementation of reservoir computing, which is expected to enable high-performance data processing in simple neural networks at a low computational cost, is an important technology to accelerate the use of artificial intelligence in the real-world edge computing domain. Here, we propose an ionic liquid-based physical reservoir device (IL-PRD), in which copper cations dissolved in an IL induce diverse electrochemical current responses. The origin of the electrochemical current from the IL-PRD was investigated spectroscopically in detail. After operating the device under various operating conditions, X-ray photoelectron spectroscopy of the IL-PRD revealed that electrochemical reactions involving Cu, Cu(2)O, Cu(OH)(2), CuS(x), and H(2)O occur at the Pt electrode/IL interface. These products are considered information transmission materials in IL-PRD similar to neurotransmitters in biological neurons. By introducing the Faradaic current components due to the electrochemical reactions of these materials into the output signal of IL-PRD, we succeeded in improving the time-series data processing performance of the nonlinear autoregressive moving average task. In addition, the information processing efficiency in machine learning to classify electrocardiogram signal waveforms was successfully improved by using the output current from IL-PRD. Optimizing the electrochemical reaction products of IL-PRD is expected to advance data processing technology in society.
format Online
Article
Text
id pubmed-10614198
institution National Center for Biotechnology Information
language English
publishDate 2023
publisher American Chemical Society
record_format MEDLINE/PubMed
spelling pubmed-106141982023-10-31 Characterization of Information-Transmitting Materials Produced in Ionic Liquid-based Neuromorphic Electrochemical Devices for Physical Reservoir Computing Sato, Dan Shima, Hisashi Matsuo, Takuma Yonezawa, Masaharu Kinoshita, Kentaro Kobayashi, Masakazu Naitoh, Yasuhisa Akinaga, Hiroyuki Miyamoto, Shunsuke Nokami, Toshiki Itoh, Toshiyuki ACS Appl Mater Interfaces [Image: see text] Device implementation of reservoir computing, which is expected to enable high-performance data processing in simple neural networks at a low computational cost, is an important technology to accelerate the use of artificial intelligence in the real-world edge computing domain. Here, we propose an ionic liquid-based physical reservoir device (IL-PRD), in which copper cations dissolved in an IL induce diverse electrochemical current responses. The origin of the electrochemical current from the IL-PRD was investigated spectroscopically in detail. After operating the device under various operating conditions, X-ray photoelectron spectroscopy of the IL-PRD revealed that electrochemical reactions involving Cu, Cu(2)O, Cu(OH)(2), CuS(x), and H(2)O occur at the Pt electrode/IL interface. These products are considered information transmission materials in IL-PRD similar to neurotransmitters in biological neurons. By introducing the Faradaic current components due to the electrochemical reactions of these materials into the output signal of IL-PRD, we succeeded in improving the time-series data processing performance of the nonlinear autoregressive moving average task. In addition, the information processing efficiency in machine learning to classify electrocardiogram signal waveforms was successfully improved by using the output current from IL-PRD. Optimizing the electrochemical reaction products of IL-PRD is expected to advance data processing technology in society. American Chemical Society 2023-10-10 /pmc/articles/PMC10614198/ /pubmed/37815984 http://dx.doi.org/10.1021/acsami.3c08638 Text en © 2023 The Authors. Published by American Chemical Society https://creativecommons.org/licenses/by/4.0/Permits the broadest form of re-use including for commercial purposes, provided that author attribution and integrity are maintained (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Sato, Dan
Shima, Hisashi
Matsuo, Takuma
Yonezawa, Masaharu
Kinoshita, Kentaro
Kobayashi, Masakazu
Naitoh, Yasuhisa
Akinaga, Hiroyuki
Miyamoto, Shunsuke
Nokami, Toshiki
Itoh, Toshiyuki
Characterization of Information-Transmitting Materials Produced in Ionic Liquid-based Neuromorphic Electrochemical Devices for Physical Reservoir Computing
title Characterization of Information-Transmitting Materials Produced in Ionic Liquid-based Neuromorphic Electrochemical Devices for Physical Reservoir Computing
title_full Characterization of Information-Transmitting Materials Produced in Ionic Liquid-based Neuromorphic Electrochemical Devices for Physical Reservoir Computing
title_fullStr Characterization of Information-Transmitting Materials Produced in Ionic Liquid-based Neuromorphic Electrochemical Devices for Physical Reservoir Computing
title_full_unstemmed Characterization of Information-Transmitting Materials Produced in Ionic Liquid-based Neuromorphic Electrochemical Devices for Physical Reservoir Computing
title_short Characterization of Information-Transmitting Materials Produced in Ionic Liquid-based Neuromorphic Electrochemical Devices for Physical Reservoir Computing
title_sort characterization of information-transmitting materials produced in ionic liquid-based neuromorphic electrochemical devices for physical reservoir computing
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10614198/
https://www.ncbi.nlm.nih.gov/pubmed/37815984
http://dx.doi.org/10.1021/acsami.3c08638
work_keys_str_mv AT satodan characterizationofinformationtransmittingmaterialsproducedinionicliquidbasedneuromorphicelectrochemicaldevicesforphysicalreservoircomputing
AT shimahisashi characterizationofinformationtransmittingmaterialsproducedinionicliquidbasedneuromorphicelectrochemicaldevicesforphysicalreservoircomputing
AT matsuotakuma characterizationofinformationtransmittingmaterialsproducedinionicliquidbasedneuromorphicelectrochemicaldevicesforphysicalreservoircomputing
AT yonezawamasaharu characterizationofinformationtransmittingmaterialsproducedinionicliquidbasedneuromorphicelectrochemicaldevicesforphysicalreservoircomputing
AT kinoshitakentaro characterizationofinformationtransmittingmaterialsproducedinionicliquidbasedneuromorphicelectrochemicaldevicesforphysicalreservoircomputing
AT kobayashimasakazu characterizationofinformationtransmittingmaterialsproducedinionicliquidbasedneuromorphicelectrochemicaldevicesforphysicalreservoircomputing
AT naitohyasuhisa characterizationofinformationtransmittingmaterialsproducedinionicliquidbasedneuromorphicelectrochemicaldevicesforphysicalreservoircomputing
AT akinagahiroyuki characterizationofinformationtransmittingmaterialsproducedinionicliquidbasedneuromorphicelectrochemicaldevicesforphysicalreservoircomputing
AT miyamotoshunsuke characterizationofinformationtransmittingmaterialsproducedinionicliquidbasedneuromorphicelectrochemicaldevicesforphysicalreservoircomputing
AT nokamitoshiki characterizationofinformationtransmittingmaterialsproducedinionicliquidbasedneuromorphicelectrochemicaldevicesforphysicalreservoircomputing
AT itohtoshiyuki characterizationofinformationtransmittingmaterialsproducedinionicliquidbasedneuromorphicelectrochemicaldevicesforphysicalreservoircomputing