4.7 Article

Photonic neural field on a silicon chip: large-scale, high-speed neuro-inspired computing and sensing

Journal

OPTICA
Volume 8, Issue 11, Pages 1388-1396

Publisher

Optica Publishing Group
DOI: 10.1364/OPTICA.434918

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Funding

  1. Precursory Research for Embryonic Science and Technology [JPMJPR19M4]
  2. Japan Society for the Promotion of Science [19H00868, 20H04255]
  3. Okawa Foundation for Information and Telecommunications [19-02]
  4. Grants-in-Aid for Scientific Research [19H00868, 20H04255] Funding Source: KAKEN

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The concept of a photonic neural field is proposed and experimentally implemented on a silicon chip for highly scalable neuro-inspired computing. It offers large-scale and high-density neural processing on a millimeter-scale chip, with energy-efficient operation due to passive scattering process.
Photonic neural networks have significant potential for high-speed neural processing with low latency and ultralow energy consumption. However, the on-chip implementation of a large-scale neural network is still challenging owing to its low scalability. Herein, we propose the concept of a photonic neural field and implement it experimentally on a silicon chip to realize highly scalable neuro-inspired computing. In contrast to existing photonic neural networks, the photonic neural field is a spatially continuous field that nonlinearly responds to optical inputs, and its high spatial degrees of freedom allow for large-scale and high-density neural processing on a millimeter-scale chip. In this study, we use the on-chip photonic neural field as a reservoir of information and demonstrate a high-speed chaotic time-series prediction with low errors using a training approach similar to reservoir computing. We show that the photonic neural field is potentially capable of executing more than one peta multiply-accumulate operations per second for a single input wavelength on a footprint as small as a few square millimeters. The operation of the neural field is energy efficient due to a passive scattering process, for which the required power comes only from the optical input. We also show that in addition to processing, the photonic neural field can be used for rapidly sensing the temporal variation of an optical phase, facilitated by its high sensitivity to optical inputs. The merging of optical processing with optical sensing paves the way for an end-to-end data-driven optical sensing scheme. (C) 2021 Optical Society of America under the terms of the OSA Open Access Publishing Agreement

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