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Noise-Resistant Crowd Equalisation for Optical Communication Systems Based on Machine Learning

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Abstract

We propose a solution to noisy neural networks employed in future optical communication systems. The proposed approach includes breaking down large networks into smaller ones and forming ”crowds” using these elementary networks.

© 2022 The Author(s)

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