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Breaking the Fabrication Determined Resolution Limit of Photonic Crystal Wavemeter by Machine Learning

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Abstract

By utilizing random localization patterns as training data for machine learning, we achieved a 0.2-nm wavelength resolution with a fabricated photonic crystal wavemeter, which greatly exceeds the limit imposed by the fabrication.

© 2020 The Author(s)

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