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Machine Learning Aided Prediction of Fabrication Uncertainties in Integrated Multi-Ring Filters

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Abstract

We propose a machine learning-based framework to predict the fabrication uncertainty and evaluate the effective-index shift in multi-ring integrated filtering elements. Excellent results are achieved in predicting each ring’s effective-index shift.

© 2023 The Author(s)

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