Online unsupervised Hebbian learning in deep photonic neuromorphic networks
- URL: http://arxiv.org/abs/2601.22300v1
- Date: Thu, 29 Jan 2026 20:26:36 GMT
- Title: Online unsupervised Hebbian learning in deep photonic neuromorphic networks
- Authors: Xi Li, Disha Biswas, Peng Zhou, Wesley H. Brigner, Anna Capuano, Joseph S. Friedman, Qing Gu,
- Abstract summary: Photonic neuromorphic networks (PNNs) leverage the inherent advantages of light, namely high parallelism, low latency, and exceptional energy efficiency.<n>Here, we introduce a purely photonic deep PNN architecture that enables online, unsupervised learning.<n>We experimentally demonstrate this approach on a non-trivial letter recognition task using a commercially available fiber-optic platform and achieve a 100 percent recognition rate.
- Score: 10.099714133516608
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: While software implementations of neural networks have driven significant advances in computation, the von Neumann architecture imposes fundamental limitations on speed and energy efficiency. Neuromorphic networks, with structures inspired by the brain's architecture, offer a compelling solution with the potential to approach the extreme energy efficiency of neurobiological systems. Photonic neuromorphic networks (PNNs) are particularly attractive because they leverage the inherent advantages of light, namely high parallelism, low latency, and exceptional energy efficiency. Previous PNN demonstrations have largely focused on device-level functionalities or system-level implementations reliant on supervised learning and inefficient optical-electrical-optical (OEO) conversions. Here, we introduce a purely photonic deep PNN architecture that enables online, unsupervised learning. We propose a local feedback mechanism operating entirely in the optical domain that implements a Hebbian learning rule using non-volatile phase-change material synapses. We experimentally demonstrate this approach on a non-trivial letter recognition task using a commercially available fiber-optic platform and achieve a 100 percent recognition rate, showcasing an all-optical solution for efficient, real-time information processing. This work unlocks the potential of photonic computing for complex artificial intelligence applications by enabling direct, high-throughput processing of optical information without intermediate OEO signal conversions.
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