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Machine Learning Based EDFA Channel In-band Gain Ripple Modeling

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Abstract

For the first time, a framework is proposed to model EDFA’s channel in-band gain ripple by machine learning. The achieved model accuracy (standard deviation) is 0.022dB/nm for gain tilt and 0.053dB for overall gain.

© 2022 The Author(s)

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