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Toward grouped-reservoir computing: organic neuromorphic vertical transistor with distributed reservoir states for efficient recognition and prediction

Author

Listed:
  • Changsong Gao

    (Fuzhou University
    Fujian Science & Technology Innovation Laboratory for Optoelectronic Information of China)

  • Di Liu

    (Fuzhou University
    Fujian Science & Technology Innovation Laboratory for Optoelectronic Information of China)

  • Chenhui Xu

    (Fuzhou University
    Fujian Science & Technology Innovation Laboratory for Optoelectronic Information of China)

  • Weidong Xie

    (Fuzhou University
    Fujian Science & Technology Innovation Laboratory for Optoelectronic Information of China)

  • Xianghong Zhang

    (Fuzhou University
    Fujian Science & Technology Innovation Laboratory for Optoelectronic Information of China)

  • Junhua Bai

    (Joint School of National University of Singapore and Tianjin University, International Campus of Tianjin University, Binhai New City)

  • Zhixian Lin

    (Fuzhou University
    Fuzhou University)

  • Cheng Zhang

    (Fuzhou University)

  • Yuanyuan Hu

    (Hunan University)

  • Tailiang Guo

    (Fuzhou University
    Fujian Science & Technology Innovation Laboratory for Optoelectronic Information of China)

  • Huipeng Chen

    (Fuzhou University
    Fujian Science & Technology Innovation Laboratory for Optoelectronic Information of China)

Abstract

Reservoir computing has attracted considerable attention due to its low training cost. However, existing neuromorphic hardware, focusing mainly on shallow-reservoir computing, faces challenges in providing adequate spatial and temporal scales characteristic for effective computing. Here, we report an ultra-short channel organic neuromorphic vertical transistor with distributed reservoir states. The carrier dynamics used to map signals are enriched by coupled multivariate physics mechanisms, while the vertical architecture employed greatly increases the feedback intensity of the device. Consequently, the device as a reservoir, effectively mapping sequential signals into distributed reservoir state space with 1152 reservoir states, and the range ratio of temporal and spatial characteristics can simultaneously reach 2640 and 650, respectively. The grouped-reservoir computing based on the device can simultaneously adapt to different spatiotemporal task, achieving recognition accuracy over 94% and prediction correlation over 95%. This work proposes a new strategy for developing high-performance reservoir computing networks.

Suggested Citation

  • Changsong Gao & Di Liu & Chenhui Xu & Weidong Xie & Xianghong Zhang & Junhua Bai & Zhixian Lin & Cheng Zhang & Yuanyuan Hu & Tailiang Guo & Huipeng Chen, 2024. "Toward grouped-reservoir computing: organic neuromorphic vertical transistor with distributed reservoir states for efficient recognition and prediction," Nature Communications, Nature, vol. 15(1), pages 1-13, December.
  • Handle: RePEc:nat:natcom:v:15:y:2024:i:1:d:10.1038_s41467-024-44942-8
    DOI: 10.1038/s41467-024-44942-8
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    References listed on IDEAS

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