Revisiting Multi-Step Nonlinearity Compensation with Machine Learning
classification
📡 eess.SP
cs.AIcs.ITmath.ITstat.ML
keywords
bettercompensationefficientmulti-stepnonlinearityappearsapproachesassumption
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For the efficient compensation of fiber nonlinearity, one of the guiding principles appears to be: fewer steps are better and more efficient. We challenge this assumption and show that carefully designed multi-step approaches can lead to better performance-complexity trade-offs than their few-step counterparts.
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