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Optimising complexity and learning for photonic reservoir computing with gain-controlled multimode fibres

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posted on 2025-09-16, 09:20 authored by Giulia Marcucci, Luana OlivieriLuana Olivieri, Juan Totero GongoraJuan Totero Gongora
Nonlinear photonics is a promising platform for neuromorphic hardware, offering high-speed processing, broad bandwidth, and scalable integration. Within this framework, Reservoir Computing (RC) and Extreme Learning Machines (ELM) are powerful approaches that leverage the dynamics of a complex nonlinear system to process information. In photonics, a key open challenge is controlling the nonlinear response required by photonic RC systems to tailor the photonic substrate (i.e., the physical implementation of the reservoir) to the specific task requirements. In this theoretical work, we propose a nonlinear photonic reservoir based on Erbium-Doped Multi-Mode Fibres (ED-MMF). In our approach, RC is implemented by structuring the pump and probe beams using phase-only spatial light modulators. Thanks to the nonlinear interactions between signal and pump modes within the gain medium, we show how the ED-MMF implements a tunable nonlinear transformation of the input field, where the degree of nonlinear coupling between different fibre modes can be controlled through easily accessible global parameters, such as pump and signal power. The ability to dynamically tune the degree of nonlinearity in our system enables us to identify the best operating conditions for our reservoir system across regression, classification, and time-series prediction tasks. We discuss the physical origin of the optimal regions by analysing the information theory and linear algebra properties of the readout matrix, unveiling a deep connection between the computational performance of the system and the Kolmogorov algorithmic complexity of the nonlinear features generated by the reservoir. Our results pave the way to developing optimised nonlinear photonic reservoirs leveraging structured complexity and controllable nonlinearity as fundamental design principles.<p></p>

Funding

AI-powered micro-comb lasers: a new approach to transfer portable atomic clock accuracy in integrated photonics : EP/W028344/1

Quantum reservoir computing for efficient signal processing

UK Research and Innovation

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History

School

  • Science

Department

  • Physics

Published in

Frontiers in Nanotechnology

Volume

7

Article number

1631564

Publisher

Frontiers

Version

  • VoR (Version of Record)

Rights holder

© Marcucci, Olivieri and Totero Gongora

Publisher statement

This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.

Acceptance date

2025-07-08

Publication date

2025-08-15

Copyright date

2025

eISSN

2673-3013

Language

  • en

Depositor

Dr Juan Totero Gongora. Deposit date: 15 September 2025

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