Presentation
17 March 2023 Deep physical neural networks based on ultrafast nonlinear optics
Tatsuhiro Onodera, Logan G. Wright, Martin M. Stein, Tianyu Wang, Darren T. Schachter, Zoey Hu, Peter L. McMahon
Author Affiliations +
Proceedings Volume PC12438, AI and Optical Data Sciences IV; PC124380H (2023) https://doi.org/10.1117/12.2648103
Event: SPIE OPTO, 2023, San Francisco, California, United States
Abstract
Utilizing the input-output transformation of ultrafast nonlinear pulse propagation in quadratic media, we experimentally construct a multilayer physical neural network to perform both audio and handwritten image classification. We introduce a hybrid in-situ in-silico backpropagation algorithm, physics-aware training, that is resilient to the simulation-reality gap, to train physical neural networks. The methodology for constructing and training physical neural networks applies to generic complex physical systems. To demonstrate its generality, we also built and trained physical neural networks out of analog electronic circuits and multimode mechanical oscillators to perform image classification.
Conference Presentation
© (2023) COPYRIGHT Society of Photo-Optical Instrumentation Engineers (SPIE). Downloading of the abstract is permitted for personal use only.
Tatsuhiro Onodera, Logan G. Wright, Martin M. Stein, Tianyu Wang, Darren T. Schachter, Zoey Hu, and Peter L. McMahon "Deep physical neural networks based on ultrafast nonlinear optics", Proc. SPIE PC12438, AI and Optical Data Sciences IV, PC124380H (17 March 2023); https://doi.org/10.1117/12.2648103
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KEYWORDS
Neural networks

Nonlinear optics

Ultrafast phenomena

Analog electronics

Image classification

Control systems

Electronic circuits

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