LiNbO dynamic memristors for reservoir computing.

Yuanxi Zhao, Wenrui Duan, Chen Wang, Shanpeng Xiao, Yuan Li, Yizheng Li, Junwei An, Huanglong Li
Author Information
  1. Yuanxi Zhao: School of Instrument Science and Opto Electronics Engineering, Beijing Information Science and Technology University, Beijing, China.
  2. Wenrui Duan: School of Instrument Science and Opto Electronics Engineering, Beijing Information Science and Technology University, Beijing, China.
  3. Chen Wang: Department of Precision Instrument, Center for Brain Inspired Computing Research, Tsinghua University, Beijing, China.
  4. Shanpeng Xiao: China Mobile Research Institute, Beijing, China.
  5. Yuan Li: China Mobile Research Institute, Beijing, China.
  6. Yizheng Li: China Mobile Research Institute, Beijing, China.
  7. Junwei An: School of Chemistry and Chemical Engineering, Jining Normal University, Ulanqab, China.
  8. Huanglong Li: Department of Precision Instrument, Center for Brain Inspired Computing Research, Tsinghua University, Beijing, China.

Abstract

Information in conventional digital computing platforms is encoded in the steady states of transistors and processed in a quasi-static way. Memristors are a class of emerging devices that naturally embody dynamics through their internal electrophyiscal processes, enabling nonconventional computing paradigms with enhanced capability and energy efficiency, such as reservoir computing. Here, we report on a dynamic memristor based on LiNbO. The device has nonlinear I-V characteristics and exhibits short-term memory, suitable for application in reservoir computing. By time multiplexing, a single device can serve as a reservoir with rich dynamics which used to require a large number of interconnected nodes. The collective states of five memristors after the application of trains of pulses to the respective memristors are unique for each combination of pulse patterns, which is suitable for sequence data classification, as demonstrated in a 5 × 4 digit image recognition task. This work broadens the spectrum of memristive materials for neuromorphic computing.

Keywords

References

  1. Nat Commun. 2017 Dec 19;8(1):2204 [PMID: 29259188]
  2. Nat Commun. 2011 Sep 13;2:468 [PMID: 21915110]
  3. Nanotechnology. 2021 Jan 8;32(2):025706 [PMID: 33055384]
  4. Sci Rep. 2019 Dec 13;9(1):19134 [PMID: 31836794]
  5. Adv Mater. 2019 Jan;31(3):e1805769 [PMID: 30461090]
  6. Neural Comput. 2002 Nov;14(11):2531-60 [PMID: 12433288]
  7. Science. 2021 Sep 17;373(6561):1353-1358 [PMID: 34413170]
  8. Nat Commun. 2021 Jan 18;12(1):408 [PMID: 33462233]
  9. Nature. 2008 May 1;453(7191):80-3 [PMID: 18451858]
  10. Adv Mater. 2022 Dec;34(48):e2108826 [PMID: 35064981]