Reconfigurable Silicon Photonics Extreme Learning Machine with Random Non-linearities as Neural Processor and Physical Unclonable Function
George Sarantoglou, Georgios Aias Karydis, Adonis Bogris, Charis Mesaritakis

TL;DR
This paper introduces a reconfigurable silicon photonics-based extreme learning machine utilizing random non-linearities for efficient machine learning and secure physical unclonable functions, demonstrating high performance and security.
Contribution
It presents a novel RN-ELM architecture using integrated silicon photonics with random non-linearities, enabling compact design, high accuracy, and secure authentication.
Findings
Achieves state-of-the-art time-series prediction with minimal hardware.
Demonstrates low clone probability (10^-15) for secure authentication.
Uses reconfigurable silicon photonic mesh for flexible non-linearity implementation.
Abstract
An alternative extreme learning machine -ELM- paradigm is presented exploiting random non-linearities -RN, named RN-ELM, instead of a conventional fixed node non-linearity. This method is implemented on a hybrid neural engine, with the physical layer realized by an integrated silicon photonic mesh and the digital layer by a simple regression algorithm. Non-linearities are intrinsically non-power depended and are generated through non-linear frequency to power mapping offered by optical filters. The numerical evaluation is based on an experimentally derived transfer function of an all-pass filter, implemented on a silicon reconfigurable photonic integrated chip -RPIC. RN-ELM is evaluated in a twofold manner; first as a machine learning scheme, where the expressivity offered by multiple, yet random, activation functions lead to a compact and highly simplified design with 5 optical…
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Taxonomy
TopicsPhysical Unclonable Functions (PUFs) and Hardware Security · Neural Networks and Reservoir Computing · Machine Learning and ELM
