Expand this Topic clickable element to expand a topic
Skip to content
Optica Publishing Group
  • Conference on Lasers and Electro-Optics/Europe (CLEO/Europe 2023) and European Quantum Electronics Conference (EQEC 2023)
  • Technical Digest Series (Optica Publishing Group, 2023),
  • paper jsiii_2_2

Speeding up a time-delay photonic reservoir

Not Accessible

Your library or personal account may give you access

Abstract

Photonic reservoir computing facilitates high-speed analog information processing, promising significant speed-ups of computationally expensive machine learning tasks. In this work, we use a semiconductor laser with delayed feedback as a time-delay photonic reservoir and train only a linear output layer to solve time series prediction tasks. The reservoir laser is optically driven by an injection laser that encodes the input data using time-multiplexing. Therefore, a randomly drawn step function called mask modulates the input data establishing a neural network of so-called virtual nodes encoded in time [1,2]. The mask is periodic to the input time T and has a step duration of θ, referred to as node separation. These two timescales and the reservoir delay time τ are crucial for the virtual network’s computational capabilities [3] and its data rate given by 1/T. Instead of choosing the input time close to the delay time, in this work, we demonstrate in two benchmark tasks that the input time can be set much smaller than the delay time while improving the performance. Additionally, this yields a significant speed-up of the reservoir’s data rate even when the delay, e.g., realized by optical fibers, can not be easily reduced.

© 2023 IEEE

PDF Article
More Like This
Phase vs. Intensity Encoding in an Experimental Time Delay Reservoir Computing Scheme

Irene Estébanez, Lucas Talandier, Ingo Fischer, and Apostolos Argyris
jsiii_1_4 European Quantum Electronics Conference (EQEC) 2023

Photonic delay-based reservoir computers as deep neural network preprocessors

Ian Bauwens, Guy Van der Sande, Peter Bienstman, and Guy Verschaffelt
jsiii_p_8 European Quantum Electronics Conference (EQEC) 2023

High-resolution consistency analysis for performance evaluation of photonic time-delay reservoir computers

Lucas Oliverio, Damien Rontani, and Marc Sciamanna
jsiii_p_10 European Quantum Electronics Conference (EQEC) 2023

Select as filters


Select Topics Cancel
© Copyright 2024 | Optica Publishing Group. All rights reserved, including rights for text and data mining and training of artificial technologies or similar technologies.