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Silicon Photonic Hopfield-like Electro-optical Recurrent Network for Time-series Data Processing and Recognition

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Abstract

We propose and experimentally demonstrate a Hopfield-like electro-optical recurrent network based on silicon photonic circuits for processing time-series data to extract feature vectors just by one-time sampling, which can offer robust and simple waveform recognition.

© 2023 The Author(s)

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