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Nonlinearity mitigation with a perturbation based neural network receiver

机译:基于扰动的神经网络接收器的非线性缓解

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We propose a less complex neural network that estimates and equalizes the nonlinear distortion of single frequency dual polarization data transmitted through a single mode optical fiber. We then analyze the influence of the size of the input data symbol window on the neural network design and the enhancement of the quality factor (Q-factor) that can be achieved by integrating the neural network with a perturbative nonlinearity compensation model. We significantly reduce the complexity of the neural network by determining the most significant inputs for the neural network from the self-phase modulation terms (intra-cross phase modulation and intra-four wave mixing) in the model. The weight matrices of the neural network are determined without prior knowledge of the system parameters while the complexity of the network is reduced in two stages through weight trimming technique and principle component analysis (PCA). Applying our procedure to a 3200 km double polarization 16-QAM optical system yields a ≈0.85 dB Q-factor enhancement with a 35% smaller number of inputs compared to previous designs.
机译:我们提出了一种不太复杂的神经网络,其估计并均衡通过单模光纤传输的单频双偏振数据的非线性失真。然后,我们通过将神经网络与扰动非线性补偿模型集成来分析输入数据符号窗口的大小对神经网络设计的影响,以及可以实现的质量因数(Q系数)。我们通过在模型中从自相调制术语(交叉阶段调制和四个波混合)中确定神经网络最重要的输入来显着降低神经网络的复杂性。确定神经网络的权重矩阵在没有先验知识的情况下确定系统参数,而通过重量修整技术和原理分量分析(PCA)在两个阶段减小了网络的复杂性。将我们的程序应用于3200 km双极化16-QAM光学系统,产生了一个≈0.85dB的Q系数增强,与之前的设计相比,输入数量较少35%。

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