Chinese Optics, Volume. 18, Issue 1, 114(2025)

Nonlinear equalizer based on neural network in high-speed optical fiber communication systems

Han-qi ZHAO1, Na LI2, Bin WU1, Gui-long WU1, Yi-tong CHEN1, Xiao-fang FENG1, Pei-li HE2, and Wei LI2、*
Author Affiliations
  • 1CSG Power Dispatching and Control Center, China Southern Power Grid Company, Ltd., Guangzhou 510663, China
  • 2Wuhan National Laboratory for Optoelectronics, Huazhong University of Science and Technology, Wuhan 430074, China
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    In order to achieve low complexity balancing of nonlinear damage at the receiver of short-range fiber optic data communication systems, we propose an equalization structure named Decision Feedback Neural Network which introduce the Decision Feedback Structure into the Fully Connected Neural Network. The nonlinear distortion is introduced by using a photodetector with a linear working area that does not match the experimental system. The experimental system is built based on a 56 Gbit/s PAM4 with a C-band direct-modulated laser, and we compare the equalization performance of decision feedback neural network with other equalization schemes. Experimental results show that compared with the fully connected neural network, the improved scheme achieves a sensitivity improvement of 2 dB at 20 km transmission, and the equalization performance is close to the convolutional neural network with lower complexity. This paper has great significance for the rate and capacity upgrade of short-distance optical fiber communication system, and can be used as a reference for further scientific research and industrial application.

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    Han-qi ZHAO, Na LI, Bin WU, Gui-long WU, Yi-tong CHEN, Xiao-fang FENG, Pei-li HE, Wei LI. Nonlinear equalizer based on neural network in high-speed optical fiber communication systems[J]. Chinese Optics, 2025, 18(1): 114

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    Paper Information

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    Received: Jun. 21, 2024

    Accepted: Aug. 30, 2024

    Published Online: Mar. 14, 2025

    The Author Email:

    DOI:10.37188/CO.2024-0114

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