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利用非线性干涉模型实现光纤通道的正交对称四维几何整形。

Orthant-symmetric four-dimensional geometric shaping for fiber-optic channels via a nonlinear interference model.

出版信息

Opt Express. 2023 May 8;31(10):16985-17002. doi: 10.1364/OE.487630.

Abstract

Maximizing the data throughput for optical fiber communication via signal shaping has usually been regarded as challenging due to the nonlinear interference and implementation/optimization complexity. To overcome these challenges, in this paper, we propose an efficient four-dimensional (4D) geometric shaping (GS) approach to design 4D 512-ary and 1024-ary modulation formats by maximizing the generalized mutual information (GMI) using a 4D nonlinear interference (NLI) model, which makes these modulation formats more nonlinear-tolerant. In addition, we propose and evaluate a fast and low-complexity orthant-symmetry based modulation optimization algorithm via neural networks, which allows to improve the optimization speed and GMI performance for both linear and nonlinear fiber transmission systems. The optimized modulation formats with spectral efficiencies of 9 and 10 bit/4D-sym demonstrate a GMI improvement of up to 1.35 dB compared with their quadrature amplitude modulation (QAM) counterparts in additive white Gaussian noise (AWGN) channel. Numerical simulations of optical transmission over two types of fibers show that the 4D NLI model-learned modulation formats could extend the transmission reach by up to 34% and 12% with respect to the QAM formats and the AWGN-learned 4D modulation formats, respectively. Results of effective signal-to-noise ratio are also presented, which confirm that the extra gains in optical fiber channel come from the enhanced SNR by reducing the modulation-dependent NLI.

摘要

通过信号整形最大化光纤通信的数据吞吐量通常被认为是具有挑战性的,因为存在非线性干扰和实现/优化复杂性。为了克服这些挑战,在本文中,我们提出了一种有效的四维(4D)几何整形(GS)方法,通过使用 4D 非线性干扰(NLI)模型最大化广义互信息(GMI)来设计 4D 512 进制和 1024 进制调制格式,这使得这些调制格式更能耐受非线性。此外,我们提出并评估了一种基于神经网络的快速低复杂度的八分对称性调制优化算法,该算法可以提高线性和非线性光纤传输系统的优化速度和 GMI 性能。优化后的调制格式具有 9 和 10 位/4D-符号的频谱效率,与加性白高斯噪声(AWGN)信道中的正交幅度调制(QAM)相比,GMI 提高了 1.35 dB。两种光纤的光传输数值模拟表明,4D NLI 模型学习的调制格式相对于 QAM 格式和 AWGN 学习的 4D 调制格式,可分别将传输距离延长 34%和 12%。还给出了有效信噪比的结果,这证实了光纤信道中的额外增益来自通过降低调制相关 NLI 来提高 SNR。

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