ONEPLAST Project Concept

The ONEPLAST project revolves around the development of a neuromorphic photonic hardware that leverages nonlinear optical plasticity to store and recognize information, overcoming the limitations of conventional Von Neumann-based computational architectures.

Core Idea of the ONEPLAST Project

The project emerges from the necessity to transcend Moore’s Law limitations, which have led to performance saturation in traditional chips due to miniaturization and increasing power consumption.

The fundamental inspiration is drawn from the human brain, which unifies memory and computation through neuroplasticity.

ONEPLAST translates this paradigm into the optical domain, exploiting nonlinear refractive index plasticity to develop optical neural networks capable of simultaneously storing and processing information.

Primary Objective

To develop nonlinear optical neural networks capable of:

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Storing information

through transient interconnection patterns.

Storing information

A. Bile, H. Tari, E. Fazio, Episodic Memory and Information Recognition Using Solitonic Neural Networks Based on Photorefractive Plasticity. Appl. Sci. 2022, 12, 5585, https://doi.org/10.3390/app12115585.

Storing information

A. Bile, H. Tari, E. Fazio, Episodic Memory and Information Recognition Using Solitonic Neural Networks Based on Photorefractive Plasticity. Appl. Sci. 2022, 12, 5585, https://doi.org/10.3390/app12115585.

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Overcoming the limitations of conventional architectures

by reducing the separation between memory and processing units.

Overcoming the limitations of conventional architectures

A. Bile, H. Tari, E. Fazio, Episodic Memory and Information Recognition Using Solitonic Neural Networks Based on Photorefractive Plasticity. Appl. Sci. 2022, 12, 5585, https://doi.org/10.3390/app12115585.

Overcoming the limitations of conventional architectures

A. Bile, H. Tari, E. Fazio, Episodic Memory and Information Recognition Using Solitonic Neural Networks Based on Photorefractive Plasticity. Appl. Sci. 2022, 12, 5585, https://doi.org/10.3390/app12115585.

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Integrating plasmonic and solitonic solutions

to achieve dense and scalable optical neural networks.

Innovative Elements

Unification of Memory and Computation

n traditional systems, the separation between CPU and RAM introduces latencies and high energy consumption.

o In ONEPLAST, memory is an integral part of the computational process, akin to biological brains.

A. Bile, F. Moratti, H. Tari, E. Fazio, Supervised and unsupervised learning using a fully-plastic all-optical unit of artificial intelligence based on solitonic waveguides, Neural Comput. & Applic. (2021).
https://doi.org/10.1007/s00521-021-06299-7.

 

Optical Neural Networks Based on Solitons

Spatial solitons in photorefractive materials are employed to create dynamic waveguides, which form and dissipate based on the network’s requirements.

These networks learn and adapt, mimicking biological synaptic behavior.

Hybrid Plasmonic-Solitonic Architecture

Surface plasmon polaritons (SPPs) propagate optical signals through nanoscale metallic circuits.

Their integration with photonic solitons enables the development of compact and energy-efficient neuromorphic circuits.

H. Tari, A. Bile, A. Nabizade, M. Iodice and E. Fazio, Ultra-broadband interconnection
between two SPP nanostrips by a photorefractive soliton waveguide, Opt. Express 31,
26092-26103 (2023).

Multi-Level Optical Memory

The project explores three levels of memory, inspired by cognitive psychology

    • Episodic memory: Stores information exactly as received.
    • Procedural memory: Extracts patterns and structures from raw data.
    • Semantic memory: Associates concepts with recognized data.

Bile, H. Tari, R. Pepino, A. Nabizada, E. Fazio, Photorefraction Simulates Well the Plasticity of Neural Synaptic Connections. Biomimetics 2024, 9, 231.
https://doi.org/10.3390/ biomimetics9040231

 

 A. Bile, Solitonic Neural Networks: An Innovative Photonic Neural Network Based on
Solitonic Interconnections. In (Ed.), AI in Materials – Springer (2023). ISBN-10: 3031486544. ISBN-13: 978-3031486548.
https://doi.org/10.1007/978-3-031-48655-5

Advanced Technological Implementations

Use of ultrathin lithium niobate on insulator (LNOI) substrates to generate solitons at ultra-low optical power.

Investigation of solitonic X-junctions to develop elementary computational and memory units.

H. Tari, A. Bile, A. Nabizade, M. Iodice and E. Fazio, Ultra-broadband interconnection between two SPP nanostrips by a photorefractive soliton waveguide, Opt. Express 31, 26092-26103 (2023).

Impact and Applications

Revolutionizing AI Hardware

Transitioning from software-based artificial neural networks to neuromorphic optical circuits that perform computations directly in hardware.

Drastically reducing power consumption

leveraging the low-energy requirements of photorefractive solitons.

Applications in neuromorphic computing

for big data processing, image recognition, and high-performance computing.

Potential integration with CMOS electronics

facilitating compatibility with existing semiconductor technologies.

Project Structure

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WP1  

Development of dense optical neural networks based on solitons to realize
advanced memory and computational systems.

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WP2  

Plasmonic-solitonic integration, aimed at creating nanometric plastic connections
for ultra-compact optical circuits.