论文标题

通过基于CRNN的方法,双POL光纤通信中基于BINN的非线性缓解基于BINN的非线性降低的复杂性降低

Complexity Reduction over Bi-RNN-Based Nonlinearity Mitigation in Dual-Pol Fiber-Optic Communications via a CRNN-Based Approach

论文作者

Shahkarami, Abtin, Yousefi, Mansoor, Jaouen, Yves

论文摘要

双向复发性神经网络(BI-RNN),尤其是双向长期短期记忆(BISTM),双向门控复发单元和卷积BI-LSTM模型最近引起了对光纤通信中非线性缓解的关注。但是,最近采用的基于这些模型的方法会产生高计算复杂性,这可能会阻碍其实时功能。在本文中,通过解决这些方法中的复杂性来源,我们提出了一个更有效的网络结构,其中卷积神经网络编码器和单向单向多一对一的Vanilla RNN同时运作,每种最佳捕获一组通道障碍,同时弥补了其他人的缺点。我们将此模型部署在两个不同的接收器配置中。在一个中,神经网络是在线性均衡链之后放置的,仅负责减轻非线性。在另一种情况下,神经网络是直接放置在色散补偿后的,并负责关节非线性和极化模式分散补偿。对于14x80 km标准单模光纤的16 QAM 64 GBD双极化光传输,我们证明,在两种接收机配置中,提出的混合模型都达到了基于最先进的基于BINN的方法的位基于最先进的BI-RNN方法的位误差概率。

Bidirectional recurrent neural networks (bi-RNNs), in particular, bidirectional long short term memory (bi-LSTM), bidirectional gated recurrent unit, and convolutional bi-LSTM models have recently attracted attention for nonlinearity mitigation in fiber-optic communication. The recently adopted approaches based on these models, however, incur a high computational complexity which may impede their real-time functioning. In this paper, by addressing the sources of complexity in these methods, we propose a more efficient network architecture, where a convolutional neural network encoder and a unidirectional many-to-one vanilla RNN operate in tandem, each best capturing one set of channel impairments while compensating for the shortcomings of the other. We deploy this model in two different receiver configurations. In one, the neural network is placed after a linear equalization chain and is merely responsible for nonlinearity mitigation; in the other, the neural network is directly placed after the chromatic dispersion compensation and is responsible for joint nonlinearity and polarization mode dispersion compensation. For a 16-QAM 64 GBd dual-polarization optical transmission over 14x80 km standard single-mode fiber, we demonstrate that the proposed hybrid model achieves the bit error probability of the state-of-the-art bi-RNN-based methods with greater than 50% lower complexity, in both receiver configurations.

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