Abstract

Conventional electronics based neural networks have recently made rapid advancements, but remains limited by large energy consumption. To address these issues, neuromorphic photonics rises as a new research fields that promises high computational density at lower energy consumption. In this paper we propose to execute the synaptic operation in photonic computing exploiting the photorefractive effect in GaAs Photonic Crystal (PhC) nanobeams, where for the first time the photorefractive effect in a GaAs PhC is simulated. The combination of photorefractive GaAs with 1D PhC nanobeams is utilized to detune the resonant wavelength by changing the refractive index via the self-interference pattern of the optical mode, and the redistribution of electrons and ionized donors in the GaAs PhC nanobeams, resulting in a built-in space charge field. The detuning of the resonant wavelengths would represent the synaptic weights in a neural network. We demonstrate the simulation via a FEM simulation using COMSOL, with a simplified photorefractive model where acceptors are removed and implemented. The polarizations of the optical mode suggest that a <111> orientation must be used instead of <001>, because the photorefractive space charge field and polarizations are parallel. Additionally, the drift and diffusion processes are shown to separate electrons and ionized donors.
Original languageEnglish
Publication statusPublished - 4 Nov 2024
EventIEEE Photonics Benelux Chapter Annual Symposium 2024 - University of Twente, Enschede, Netherlands
Duration: 4 Nov 20245 Nov 2024
Conference number: 19
https://photonics-benelux.org/symposium-proceedings/

Conference

ConferenceIEEE Photonics Benelux Chapter Annual Symposium 2024
Country/TerritoryNetherlands
CityEnschede
Period4/11/245/11/24
Internet address

Keywords

  • Photonic Neural Network
  • Photonic Crystal Nanobeams
  • GaAs

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