Cluster-type analogue memristor by engineering redox dynamics for high-performance neuromorphic computing

Nat Commun. 2022 Jul 12;13(1):4040. doi: 10.1038/s41467-022-31804-4.

Abstract

Memristors, or memristive devices, have attracted tremendous interest in neuromorphic hardware implementation. However, the high electric-field dependence in conventional filamentary memristors results in either digital-like conductance updates or gradual switching only in a limited dynamic range. Here, we address the switching parameter, the reduction probability of Ag cations in the switching medium, and ultimately demonstrate a cluster-type analogue memristor. Ti nanoclusters are embedded into densified amorphous Si for the following reasons: low standard reduction potential, thermodynamic miscibility with Si, and alloy formation with Ag. These Ti clusters effectively induce the electrochemical reduction activity of Ag cations and allow linear potentiation/depression in tandem with a large conductance range (~244) and long data retention (~99% at 1 hour). Moreover, according to the reduction potentials of incorporated metals (Pt, Ta, W, and Ti), the extent of linearity improvement is selectively tuneable. Image processing simulation proves that the Ti4.8%:a-Si device can fully function with high accuracy as an ideal synaptic model.

Publication types

  • Research Support, Non-U.S. Gov't

MeSH terms

  • Alloys
  • Computer Simulation
  • Engineering*
  • Metals*
  • Oxidation-Reduction

Substances

  • Alloys
  • Metals