Lv Xiuhua, Bai Chenglin, Qi Qi, Xu Hengying, Luo Xueyuan, Chi Xinyu, Yang Lishan, Xi LiXia
Appl Opt. 2022 Dec 20;61(36):10755-10765. doi: 10.1364/AO.476140.
In multiple-eigenvalue modulated nonlinear frequency division multiplexing (NFDM) systems, the noise degrades the accuracy of the nonlinear Fourier transform (NFT) algorithm, resulting in perturbations in the received eigenvalues and the corresponding discrete spectrum. Moreover, with the increase in the number of eigenvalues and the order of the modulation formats, the impact of noise on the performance of the system is even more. A noise equalization scheme based on complex-valued artificial neural network (c-ANN) for multiple-eigenvalue modulated NFDM systems is proposed. This sceheme inputs the eigenvalues perturbation and the impaired discrete spectrum corresponding to the eigenvalues into the c-ANN in complex form. The scheme constructs a complex-valued logic structure with both amplitude and phase information, overlapping reuse input features and, thereby, effectively reducing the effect of noise on the multiple-eigenvalue NFDM system. The effectiveness of the scheme is verified in long-haul seven-eigenvalue modulated single-polarization NFDM simulation systems with 1 GBaud 16APSK/16QAM/64APSK/64QAM modulation formats, and the results show that the scheme outperforms the NFT receiving without equalization by 1 to 2 orders of magnitude in terms of bit error rate (BER). Among them, the transmission distance of the 64APSK signal after equalization exceeds 800 km while the BER meets 7% forward error correction (FEC) threshold, which is 600 km longer than that of the disequilibrium case, and the spectral efficiency (SE) can reach 1.85 bit/s/Hz. Compared with other schemes, the proposed scheme has better equalization performance under the same complexity, and the complexity can be reduced by half or even under the same performance.
在多特征值调制非线性频分复用(NFDM)系统中,噪声会降低非线性傅里叶变换(NFT)算法的精度,导致接收的特征值和相应的离散频谱出现扰动。此外,随着特征值数量和调制格式阶数的增加,噪声对系统性能的影响更大。提出了一种基于复值人工神经网络(c-ANN)的多特征值调制NFDM系统噪声均衡方案。该方案将特征值扰动和与特征值对应的受损离散频谱以复形式输入到c-ANN中。该方案构建了一个具有幅度和相位信息的复值逻辑结构,重叠复用输入特征,从而有效降低噪声对多特征值NFDM系统的影响。该方案在具有1 GBaud 16APSK/16QAM/64APSK/64QAM调制格式的长距离七特征值调制单偏振NFDM仿真系统中得到验证,结果表明该方案在误码率(BER)方面比无均衡的NFT接收性能高出1至2个数量级。其中,64APSK信号均衡后的传输距离超过800 km,同时BER满足7%的前向纠错(FEC)阈值,比非均衡情况长600 km,频谱效率(SE)可达1.85 bit/s/Hz。与其他方案相比,该方案在相同复杂度下具有更好的均衡性能,并且在相同性能下复杂度可降低一半甚至更多。