Frontiers in Physics (Mar 2023)

Implementation of input correlation learning with an optoelectronic dendritic unit

  • Silvia Ortín,
  • Miguel C. Soriano,
  • Christian Tetzlaff,
  • Christian Tetzlaff,
  • Florentin Wörgötter,
  • Ingo Fischer,
  • Claudio R. Mirasso,
  • Apostolos Argyris

DOI
https://doi.org/10.3389/fphy.2023.1112295
Journal volume & issue
Vol. 11

Abstract

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The implementation of machine learning concepts using optoelectronic and photonic components is rapidly advancing. Here, we use the recently introduced notion of optical dendritic structures, which aspires to transfer neurobiological principles to photonics computation. In real neurons, plasticity—the modification of the connectivity between neurons due to their activity—plays a fundamental role in learning. In the current work, we investigate theoretically and experimentally an artificial dendritic structure that implements a modified Hebbian learning model, called input correlation (ICO) learning. The presented optical fiber-based dendritic structure employs the summation of the different optical intensities propagating along the optical dendritic branches and uses Gigahertz-bandwidth modulation via semiconductor optical amplifiers to apply the necessary plasticity rules. In its full deployment, this optoelectronic ICO learning analog can be an efficient hardware platform for ultra-fast control.

Keywords