Probabilistic Shaping for Nonlinearity Tolerance
Mohammad Taha Askari, Lutz Lampe

TL;DR
This paper discusses probabilistic shaping for optical fiber communication, focusing on optimizing input distributions to improve nonlinearity tolerance and analyzing the effects of shaping on nonlinear interference noise.
Contribution
It provides a tutorial-style analysis of probabilistic shaping for nonlinearity tolerance, emphasizing sequence selection and multivariate distribution optimization.
Findings
Probabilistic shaping can enhance nonlinearity tolerance in fiber channels.
Sequence selection optimizes multivariate distributions for shaped constellations.
Shaping strategies must consider nonlinear interference effects.
Abstract
Optimizing the input probability distribution of a discrete-time channel is a standard step in the information-theoretic analysis of digital communication systems. Nevertheless, many practical communication systems transmit uniformly and independently distributed symbols drawn from regular constellation sets. The introduction of the probabilistic amplitude shaping architecture has renewed interest in using optimized probability distributions, i.e., probabilistic shaping. Traditionally, probabilistic shaping has been employed to reduce the transmit power required for a given information rate over additive noise channels. While this translates into substantive performance gains for optical fiber communication systems, the interaction of shaping and fiber nonlinearity has posed intriguing questions. At first glance, probabilistic shaping seems to exacerbate nonlinear interference noise…
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Taxonomy
TopicsFault Detection and Control Systems
MethodsFocus
