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Metaplastic and energy-efficient biocompatible graphene artificial synaptic transistors for enhanced accuracy neuromorphic computing

Author

Listed:
  • Dmitry Kireev

    (The University of Texas at Austin
    The University of Texas at Austin)

  • Samuel Liu

    (The University of Texas at Austin)

  • Harrison Jin

    (The University of Texas at Austin)

  • T. Patrick Xiao

    (Sandia National Laboratories)

  • Christopher H. Bennett

    (Sandia National Laboratories)

  • Deji Akinwande

    (The University of Texas at Austin
    The University of Texas at Austin)

  • Jean Anne C. Incorvia

    (The University of Texas at Austin
    The University of Texas at Austin)

Abstract

CMOS-based computing systems that employ the von Neumann architecture are relatively limited when it comes to parallel data storage and processing. In contrast, the human brain is a living computational signal processing unit that operates with extreme parallelism and energy efficiency. Although numerous neuromorphic electronic devices have emerged in the last decade, most of them are rigid or contain materials that are toxic to biological systems. In this work, we report on biocompatible bilayer graphene-based artificial synaptic transistors (BLAST) capable of mimicking synaptic behavior. The BLAST devices leverage a dry ion-selective membrane, enabling long-term potentiation, with ~50 aJ/µm2 switching energy efficiency, at least an order of magnitude lower than previous reports on two-dimensional material-based artificial synapses. The devices show unique metaplasticity, a useful feature for generalizable deep neural networks, and we demonstrate that metaplastic BLASTs outperform ideal linear synapses in classic image classification tasks. With switching energy well below the 1 fJ energy estimated per biological synapse, the proposed devices are powerful candidates for bio-interfaced online learning, bridging the gap between artificial and biological neural networks.

Suggested Citation

  • Dmitry Kireev & Samuel Liu & Harrison Jin & T. Patrick Xiao & Christopher H. Bennett & Deji Akinwande & Jean Anne C. Incorvia, 2022. "Metaplastic and energy-efficient biocompatible graphene artificial synaptic transistors for enhanced accuracy neuromorphic computing," Nature Communications, Nature, vol. 13(1), pages 1-11, December.
  • Handle: RePEc:nat:natcom:v:13:y:2022:i:1:d:10.1038_s41467-022-32078-6
    DOI: 10.1038/s41467-022-32078-6
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    References listed on IDEAS

    as
    1. Thomas F. Schranghamer & Aaryan Oberoi & Saptarshi Das, 2020. "Graphene memristive synapses for high precision neuromorphic computing," Nature Communications, Nature, vol. 11(1), pages 1-11, December.
    2. Axel Laborieux & Maxence Ernoult & Tifenn Hirtzlin & Damien Querlioz, 2021. "Synaptic metaplasticity in binarized neural networks," Nature Communications, Nature, vol. 12(1), pages 1-12, December.
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