Nature Communications (Jun 2023)

All-ferroelectric implementation of reservoir computing

  • Zhiwei Chen,
  • Wenjie Li,
  • Zhen Fan,
  • Shuai Dong,
  • Yihong Chen,
  • Minghui Qin,
  • Min Zeng,
  • Xubing Lu,
  • Guofu Zhou,
  • Xingsen Gao,
  • Jun-Ming Liu

DOI
https://doi.org/10.1038/s41467-023-39371-y
Journal volume & issue
Vol. 14, no. 1
pp. 1 – 12

Abstract

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Abstract Reservoir computing (RC) offers efficient temporal information processing with low training cost. All-ferroelectric implementation of RC is appealing because it can fully exploit the merits of ferroelectric memristors (e.g., good controllability); however, this has been undemonstrated due to the challenge of developing ferroelectric memristors with distinctly different switching characteristics specific to the reservoir and readout network. Here, we experimentally demonstrate an all-ferroelectric RC system whose reservoir and readout network are implemented with volatile and nonvolatile ferroelectric diodes (FDs), respectively. The volatile and nonvolatile FDs are derived from the same Pt/BiFeO3/SrRuO3 structure via the manipulation of an imprint field (E imp). It is shown that the volatile FD with E imp exhibits short-term memory and nonlinearity while the nonvolatile FD with negligible E imp displays long-term potentiation/depression, fulfilling the functional requirements of the reservoir and readout network, respectively. Hence, the all-ferroelectric RC system is competent for handling various temporal tasks. In particular, it achieves an ultralow normalized root mean square error of 0.017 in the Hénon map time-series prediction. Besides, both the volatile and nonvolatile FDs demonstrate long-term stability in ambient air, high endurance, and low power consumption, promising the all-ferroelectric RC system as a reliable and low-power neuromorphic hardware for temporal information processing.