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Machine Learning-Driven Low-Complexity Optical Power Optimization for Point-to-Point Links

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Abstract

We propose a strategy to dynamically adjust transmitted power solely based on the analysis of performance fluctuations due to polarization-dependent loss. We show that our method converges faster to optimum compared to a standard approach.

© 2024 The Author(s)

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