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Emergent Self-Adaption in an Integrated Photonic Neural Network For Backpropagation-Free Learning

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posted on 2025-08-02, 12:58 authored by A Lugan, F Brückerhoff-Plückelmann, WHP Pernice, S Aggarwal, H Bhaskaran, CD Wright, P Bienstman
Plastic self-adaptation, nonlinear recurrent dynamics and multi-scale memory are desired features in hardware implementations of neural networks, because they enable them to learn, adapt, and process information similarly to the way biological brains do. In this work, these properties occurring in arrays of photonic neurons are experimentally demonstrated. Importantly, this is realized autonomously in an emergent fashion, without the need for an external controller setting weights and without explicit feedback of a global reward signal. Using a hierarchy of such arrays coupled to a backpropagation-free training algorithm based on simple logistic regression, a performance of 98.2% is achieved on the MNIST task, a popular benchmark task looking at classification of written digits. The plastic nodes consist of silicon photonics microring resonators covered by a patch of phase-change material that implements nonvolatile memory. The system is compact, robust, and straightforward to scale up through the use of multiple wavelengths. Moreover, it constitutes a unique platform to test and efficiently implement biologically plausible learning schemes at a high processing speed.

Funding

101017237

101070238

780848

European Union Horizon 2020

Fonds voor Wetenschappelijk Onderzoek (FWO)

Fund for Scientific Research (FNRS)

G006020N

G0H1422N

Horizon Europe

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Rights

© 2024 The Author(s). Advanced Science published by Wiley-VCH GmbH. This is an open access article under the terms of the Creative Commons Attribution License, which permits use, distribution and reproduction in any medium, provided the original work is properly cited.

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  • No

Submission date

2024-04-03

Notes

This is the final version. Available on open access from Wiley via the DOI in this record

Journal

Advanced Science

Publisher

Wiley

Contributors

Wright, C

Version

  • Version of Record

Language

en

FCD date

2024-11-04T20:50:10Z

FOA date

2024-12-10T16:15:56Z

Citation

Article 2404920

Department

  • Engineering

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