The Digital Twin Framework for the Physical Wideband and Long‐Haul Optical Fiber Communication Systems

Author:

Yang Hang1ORCID,Niu Zekun1,Fan Qirui2,Li Lyu1,Shi Minghui1,Zeng Chuyan1,Xiao Shilin1,Hu Weisheng1,Yi Lilin1ORCID

Affiliation:

1. State Key Lab of Advanced Optical Communication Systems and Networks School of Electronic Information and Electrical Engineering Shanghai Jiao Tong University Shanghai 200240 China

2. Huawei Hong Kong Research Center Hong Kong SAR 999077 China

Abstract

AbstractDigital twin (DT) modeling is essential to optical fiber communication systems, particularly for enhancing system performance, controlling the system in real time, and understanding signal nonlinearity. Conventional split‐step Fourier method ‐based simulations, however, struggle with wide‐band transmissions, plagued by increasing complexity and inherent biases due to inconsistent link parameter availability. Addressing these challenges, a hybrid data‐driven and model‐driven DT approach for the wide‐band and long‐haul physical systems with various system effects is developed. The approach utilizes a neural network (NN) to capture fiber nonlinear features as well as biased perturbations as “lumped” stochastic noises while offloading the linear effects to modules described by physical models of link elements. The model, tested in a 30.5‐Tbps 1200 km fiber transmission link with 40 channels, achieves a mean Q factor error of less than 0.1 dB and a maximum runtime of 1.3 s for NN processing under various launch powers, transmission lengths, and optical signal‐to‐noise ratios. Furthermore, the study has implemented a nonlinear compensation algorithm on the DT model, yielding a consistent enhancement in experimental data. The accuracy and adaptability of the DT model underline its suitability for planning, design, and optimization within the physical optical fiber communication systems.

Funder

National Key Research and Development Program of China

National Natural Science Foundation of China

Publisher

Wiley

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