Fast and accurate waveform modeling of long-haul multi-channel optical fiber transmission using a hybrid model-data driven scheme
Hang Yang, Zekun Niu, Haochen Zhao, Shilin Xiao, Weisheng Hu, Lilin, Yi

TL;DR
This paper introduces a hybrid model-data driven waveform modeling scheme for long-haul multi-channel optical fiber transmission, achieving high accuracy and speed with significant computational efficiency improvements over traditional methods.
Contribution
It proposes a novel linear-nonlinear decoupling scheme combining model-driven and data-driven approaches for efficient long-haul optical fiber waveform modeling.
Findings
Achieves 98% reduction in computation time compared to SSFM.
Demonstrates high accuracy and robustness across various system parameters.
Enables fast waveform calculation for 41-channel 1040-km fiber transmission.
Abstract
The modeling of optical wave propagation in optical fiber is a task of fast and accurate solving the nonlinear Schr\"odinger equation (NLSE), and can enable the optical system design, digital signal processing verification and fast waveform calculation. Traditional waveform modeling of full-time and full-frequency information is the split-step Fourier method (SSFM), which has long been regarded as challenging in long-haul wavelength division multiplexing (WDM) optical fiber communication systems because it is extremely time-consuming. Here we propose a linear-nonlinear feature decoupling distributed (FDD) waveform modeling scheme to model long-haul WDM fiber channel, where the channel linear effects are modelled by the NLSE-derived model-driven methods and the nonlinear effects are modelled by the data-driven deep learning methods. Meanwhile, the proposed scheme only focuses on one-span…
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