Convolutional Neural Network-Aided DP-64 QAM Coherent Optical Communication Systems

Chao Li, Yongjun Wang*, Jingjing Wang, Haipeng Yao, Xinyu Liu, Ran Gao, Leijing Yang, Hui Xu, Qi Zhang, Pengjie Ma, Xiangjun Xin

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摘要

Optical nonlinearity impairments have been a major obstacle for high-speed, long-haul and large-capacity optical transmission. In this paper, we propose a novel convolutional neural network (CNN)-based perturbative nonlinearity compensation approach in which we reconstruct a feature map with two channels that rely on first-order perturbation theory and build a classifier and a regressor as a nonlinear equalizer. We experimentally demonstrate the CNN equalizer in 375 km 120-Gbit/s dual-polarization 64-quadrature-amplitude modulation (64-QAM) coherent optical communication systems. We studied the influence of the dropout value and nonlinear activation function on the convergence of the CNN equalizer. We measured the bit-error-ratio (BER) performance with different launched optical powers. When the channel size is 11, the optimum BER for the CNN classifier is 0.0012 with 1 dBm, and for the CNN regressor, it is 0.0020 with 0 dBm; the BER can be lower than the 7$\%$ hard decision-forward threshold of 0.0038 from -3 dBm to 3 dBm. When the channel size is 15, the BERs at -4 dBm, 4 dBm and 5 dBm can be lower than 0.0020. The network complexity is also analyzed in this paper. Compared with perturbative nonlinearity compensation using a fully connected neural network (2392-64-64), we can verify that the time complexity is reduced by about 25$\%$, while the space complexity is reduced by about 50$\%$.

源语言英语
页(从-至)2880-2889
页数10
期刊Journal of Lightwave Technology
40
9
DOI
出版状态已出版 - 1 5月 2022

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Li, C., Wang, Y., Wang, J., Yao, H., Liu, X., Gao, R., Yang, L., Xu, H., Zhang, Q., Ma, P., & Xin, X. (2022). Convolutional Neural Network-Aided DP-64 QAM Coherent Optical Communication Systems. Journal of Lightwave Technology, 40(9), 2880-2889. https://doi.org/10.1109/JLT.2022.3146839