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基于多核光纤中多个斯托克斯截面平面图像的迁移学习辅助卷积神经网络的调制格式识别

Modulation format recognition with transfer learning assisted convolutional neural network using multiple Stokes sectional plane image in multi-core fibers.

作者信息

Guo Zhiruo, Liu Bo, Ren Jianxin, Wu Xiangyu, Li Ying, Mao Yaya, Chen Shuaidong, Zhong Qing, Zhu Xu, Wu Yongfeng, Chen Yunyun

出版信息

Opt Express. 2022 Jun 6;30(12):21990-22005. doi: 10.1364/OE.450791.

Abstract

A modulation format recognition (MFR) scheme based on multi-core fiber (MCF) is proposed for the next generation of elastic optical networks (EONs). In this scheme, multiple Stokes sectional planes images are used as signal features which are typed into a transfer learning (TL) assisted convolutional neural network (CNN) to realize MFR. Compared with the traditional Jones matrix, the Stokes space mapping method is insensitive to polarization mixing, carrier frequency skew and phase offset, therefore, it has better feature representation ability. TL is introduced to transfer the model used in standard single-mode fiber (SSMF) to MCF transmission, reducing the required training data and complexity. In addition, multiple Stokes sectional planes images are input simultaneously, which improves the accuracy of the neural network. Experimental verifications were performed for a polarization division multiplexing (PDM)-EONs system at a symbol rate of 12.5GBaud by 5 km MCF. Nine modulation formats, including three standard modulation formats (BPSK, QPSK, 8PSK), three uniformly shaped (US) modulation formats (US-8QAM, US-16QAM, US-32QAM) and three probabilistically shaped (PS) modulation formats (PS-8QAM, PS-16QAM, PS-32QAM), were recognized by our scheme. The experimental results show that the scheme achieves high recognition accuracy even at low optical signal-to-noise ratio (OSNR). Moreover, the required number of training samples is less 40% compared to the traditional CNN. The proposed scheme has a high tolerance to the crosstalk damage of MCF itself and can realize the short training time of large-capacity space division multiplexing (SDM)-EONs. Our findings have the potential to be used in the next generation of a SDM fiber transmission system.

摘要

针对下一代弹性光网络(EON),提出了一种基于多芯光纤(MCF)的调制格式识别(MFR)方案。在该方案中,多个斯托克斯截面图像被用作信号特征,输入到一个迁移学习(TL)辅助的卷积神经网络(CNN)中以实现MFR。与传统的琼斯矩阵相比,斯托克斯空间映射方法对偏振混合、载波频率偏移和相位偏移不敏感,因此具有更好的特征表示能力。引入TL将标准单模光纤(SSMF)中使用的模型迁移到MCF传输中,减少了所需的训练数据和复杂度。此外,同时输入多个斯托克斯截面图像,提高了神经网络的准确性。通过5 km的MCF对符号率为12.5GBaud的偏振分复用(PDM)-EONs系统进行了实验验证。我们的方案识别了九种调制格式,包括三种标准调制格式(BPSK、QPSK、8PSK)、三种均匀成形(US)调制格式(US-8QAM、US-16QAM、US-32QAM)和三种概率成形(PS)调制格式(PS-8QAM、PS-16QAM、PS-32QAM)。实验结果表明,该方案即使在低光信噪比(OSNR)下也能实现高识别准确率。此外,与传统CNN相比,所需的训练样本数量减少了40%。所提出的方案对MCF本身的串扰损伤具有较高的容忍度,并且可以实现大容量空分复用(SDM)-EONs的短训练时间。我们的研究结果有可能应用于下一代SDM光纤传输系统。

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