Expand this Topic clickable element to expand a topic
Skip to content
Optica Publishing Group
  • Journal of Lightwave Technology
  • Vol. 37,
  • Issue 6,
  • pp. 1590-1607
  • (2019)

Probabilistic Constellation Shaping for Optical Fiber Communications

Open Access Open Access

Abstract

We review probabilistic constellation shaping (PCS), which has been a key enabler for several recent record-setting optical fiber communications experiments. PCS provides both fine-grained rate adaptability and energy efficiency (sensitivity) gains. We discuss the reasons for the fundamentally better performance of PCS over other constellation shaping techniques that also achieve rate adaptability, such as time-division hybrid modulation, and examine in detail the impact of sub-optimum shaping and forward error correction (FEC) on PCS systems. As performance metrics for systems with PCS, we compare information-theoretic measures such as mutual information (MI), generalized MI (GMI), and normalized GMI, which enable optimization and quantification of the information rate (IR) that can be achieved by PCS and FEC. We derive the optimal parameters of PCS and FEC that maximize the IR for both ideal and non-ideal PCS and FEC. To avoid plausible pitfalls in practice, we carefully revisit key assumptions that are typically made for ideal PCS and FEC systems.

© 2019 OAPA

PDF Article
More Like This
Demonstration of flexible access in a rate-adaptive visible light communication system with constellation probabilistic shaping

Sizhe Xing, Fangchen Hu, Guoqiang Li, Junwen Zhang, Nan Chi, Zhixue He, and Shaohua Yu
Opt. Express 29(21) 34441-34451 (2021)

Secure turbulence-resistant coherent free-space optical communications via chaotic region-optimized probabilistic constellation shaping

Tingwei Wu, Wei Zeng, Yejun Liu, Song Song, Lun Zhao, Chen Chen, Chongfu Zhang, and Lei Guo
Opt. Lett. 48(3) 684-687 (2023)

Cited By

Optica participates in Crossref's Cited-By Linking service. Citing articles from Optica Publishing Group journals and other participating publishers are listed here.


Select as filters


Select Topics Cancel
© Copyright 2024 | Optica Publishing Group. All rights reserved, including rights for text and data mining and training of artificial technologies or similar technologies.