Login / Signup

On-chip phonon-magnon reservoir for neuromorphic computing.

Dmytro D YaremkevichAlexey V ScherbakovLuke De ClerkSerhii M KukhtarukAchim NadzeykaRichard CampionAndrew W RushforthSergey E Savel'evAlexander G BalanovManfred Bayer
Published in: Nature communications (2023)
Reservoir computing is a concept involving mapping signals onto a high-dimensional phase space of a dynamical system called "reservoir" for subsequent recognition by an artificial neural network. We implement this concept in a nanodevice consisting of a sandwich of a semiconductor phonon waveguide and a patterned ferromagnetic layer. A pulsed write-laser encodes input signals into propagating phonon wavepackets, interacting with ferromagnetic magnons. The second laser reads the output signal reflecting a phase-sensitive mix of phonon and magnon modes, whose content is highly sensitive to the write- and read-laser positions. The reservoir efficiently separates the visual shapes drawn by the write-laser beam on the nanodevice surface in an area with a size comparable to a single pixel of a modern digital camera. Our finding suggests the phonon-magnon interaction as a promising hardware basis for realizing on-chip reservoir computing in future neuromorphic architectures.
Keyphrases
  • high speed
  • neural network
  • water quality
  • room temperature
  • circulating tumor cells
  • machine learning
  • density functional theory
  • liquid chromatography
  • label free
  • electron microscopy