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A low-power vertical dual-gate neurotransistor with short-term memory for high energy-efficient neuromorphic computing

Author

Listed:
  • Han Xu

    (Chinese Academy of Sciences
    Chinese Academy of Sciences
    University of Chinese Academy of Sciences
    Beijing National Research Center for Information Science and Technology (BNRist), Tsinghua University)

  • Dashan Shang

    (Chinese Academy of Sciences
    Chinese Academy of Sciences
    University of Chinese Academy of Sciences)

  • Qing Luo

    (Chinese Academy of Sciences
    Chinese Academy of Sciences
    University of Chinese Academy of Sciences)

  • Junjie An

    (Chinese Academy of Sciences
    Chinese Academy of Sciences)

  • Yue Li

    (Chinese Academy of Sciences
    Chinese Academy of Sciences
    University of Chinese Academy of Sciences)

  • Shuyu Wu

    (Chinese Academy of Sciences
    Chinese Academy of Sciences
    University of Chinese Academy of Sciences)

  • Zhihong Yao

    (Chinese Academy of Sciences
    Chinese Academy of Sciences)

  • Woyu Zhang

    (Chinese Academy of Sciences
    Chinese Academy of Sciences
    University of Chinese Academy of Sciences)

  • Xiaoxin Xu

    (Chinese Academy of Sciences
    Chinese Academy of Sciences
    University of Chinese Academy of Sciences)

  • Chunmeng Dou

    (Chinese Academy of Sciences
    Chinese Academy of Sciences
    University of Chinese Academy of Sciences)

  • Hao Jiang

    (Fudan University)

  • Liyang Pan

    (Beijing National Research Center for Information Science and Technology (BNRist), Tsinghua University)

  • Xumeng Zhang

    (Fudan University)

  • Ming Wang

    (Fudan University)

  • Zhongrui Wang

    (The University of Hong Kong)

  • Jianshi Tang

    (Beijing National Research Center for Information Science and Technology (BNRist), Tsinghua University)

  • Qi Liu

    (Chinese Academy of Sciences
    Chinese Academy of Sciences
    Fudan University)

  • Ming Liu

    (Chinese Academy of Sciences
    Chinese Academy of Sciences
    Fudan University)

Abstract

Neuromorphic computing aims to emulate the computing processes of the brain by replicating the functions of biological neural networks using electronic counterparts. One promising approach is dendritic computing, which takes inspiration from the multi-dendritic branch structure of neurons to enhance the processing capability of artificial neural networks. While there has been a recent surge of interest in implementing dendritic computing using emerging devices, achieving artificial dendrites with throughputs and energy efficiency comparable to those of the human brain has proven challenging. In this study, we report on the development of a compact and low-power neurotransistor based on a vertical dual-gate electrolyte-gated transistor (EGT) with short-term memory characteristics, a 30 nm channel length, a record-low read power of ~3.16 fW and a biology-comparable read energy of ~30 fJ. Leveraging this neurotransistor, we demonstrate dendrite integration as well as digital and analog dendritic computing for coincidence detection. We also showcase the potential of neurotransistors in realizing advanced brain-like functions by developing a hardware neural network and demonstrating bio-inspired sound localization. Our results suggest that the neurotransistor-based approach may pave the way for next-generation neuromorphic computing with energy efficiency on par with those of the brain.

Suggested Citation

  • Han Xu & Dashan Shang & Qing Luo & Junjie An & Yue Li & Shuyu Wu & Zhihong Yao & Woyu Zhang & Xiaoxin Xu & Chunmeng Dou & Hao Jiang & Liyang Pan & Xumeng Zhang & Ming Wang & Zhongrui Wang & Jianshi Ta, 2023. "A low-power vertical dual-gate neurotransistor with short-term memory for high energy-efficient neuromorphic computing," Nature Communications, Nature, vol. 14(1), pages 1-11, December.
  • Handle: RePEc:nat:natcom:v:14:y:2023:i:1:d:10.1038_s41467-023-42172-y
    DOI: 10.1038/s41467-023-42172-y
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