Abstract
To support the development of intelligent optical networks, accurate modeling of the physical layer is crucial. Digital twin (DT) modeling, which relies on continuous learning with real-time data, provides a new paradigm to build a virtual replica of the physical layer with a significant improvement in accuracy and reliability. In addition, DT models will be able to forecast future change by analyzing historical data. In this tutorial, we introduce and discuss three key technologies, including modeling, telemetry, and self-learning, to build a DT for optical networks. The principles and progress of these technologies on major impairments that affect the quality of transmission are presented, and a discussion on the remaining challenges and future research directions is provided.
© 2023 Optica Publishing Group
Full Article | PDF ArticleCorrections
24 July 2023: A correction was made to the title.
More Like This
Elaine Wong, Sourav Mondal, and Lihua Ruan
J. Opt. Commun. Netw. 15(2) A49-A62 (2023)
Yao Zhang, Min Zhang, Yuchen Song, Yan Shi, Chunyu Zhang, Cheng Ju, Bingli Guo, Shanguo Huang, and Danshi Wang
J. Opt. Commun. Netw. 15(12) 985-998 (2023)
Vincent W. S. Chan
J. Opt. Commun. Netw. 16(1) A53-A67 (2024)