APL Materials (Jul 2024)

Effect of neural firing pattern on NbOx/Al2O3 memristor-based reservoir computing system

  • Dongyeol Ju,
  • Hyeonseung Ji,
  • Jungwoo Lee,
  • Sungjun Kim

DOI
https://doi.org/10.1063/5.0211178
Journal volume & issue
Vol. 12, no. 7
pp. 071121 – 071121-13

Abstract

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The implementation of reservoir computing using resistive random-access memory as a physical reservoir has attracted attention due to its low training cost and high energy efficiency during parallel data processing. In this work, a NbOx/Al2O3-based memristor device was fabricated through a sputter and atomic layer deposition process to realize reservoir computing. The proposed device exhibits favorable resistive switching properties (>103 cycle endurance) and demonstrates short-term memory characteristics with current decay. Utilizing the controllability of the resistance state and its variability during cycle repetition, electrical pulses are applied to investigate the synapse-emulating properties of the device. The results showcase the functions of potentiation and depression, the coexistence of short-term and long-term plasticity, excitatory post-synaptic current, and spike-rate dependent plasticity. Building upon the functionalities of an artificial synapse, pulse spikes are categorized into three distinct neural firing patterns (normal, adapt, and boost) to implement 4-bit reservoir computing, enabling a significant distinction between “0” and “1.”