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Identifying Optimal Photonic Crystal Sensor Designs with Machine Learning

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Abstract

We train a neural network to predict the optical properties (center wavelength λ0, linewidth, sensitivity S) of photonic crystal slab structures. We are able to faithfully model the results to within 1% for λ0 and S.

© 2020 The Author(s)

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