论文标题

通过端到端学习的光纤通道的几何星座塑形

Geometric Constellation Shaping for Fiber-Optic Channels via End-to-End Learning

论文作者

Jovanovic, Ognjen, Da Ros, Francesco, Zibar, Darko, Yankov, Metodi P.

论文摘要

端到端的学习已成为优化通信系统星座形状的流行方法。当通道模型可区分时,可以使用常规的反向传播算法应用端到端学习以优化形状。还已经开发了多种优化算法,用于通过非差异通道模型进行端到端的学习。在本文中,我们比较了基于Cubature Kalman滤波器的无梯度优化方法,无模型的优化和反向传播,用于端到端学习,以通过拆分步骤傅立叶方法建模的光纤通道。结果表明,无梯度优化算法在性能方面为反向传播提供了体面的替代,以牺牲计算复杂性为代价。此外,还解决了数字到分析和模数转换器的有限位分辨率的量化问题,并分析了其对几何形状星座的影响。在这里,结果表明,在相互信息优化星座时,需要最少数量的量化水平才能实现塑造增益。对于广义的互信息,在所有考虑的量化水平中都保持增益。同样,结果暗示自动编码器可以使星座大小适应给定的通道条件。

End-to-end learning has become a popular method to optimize a constellation shape of a communication system. When the channel model is differentiable, end-to-end learning can be applied with conventional backpropagation algorithm for optimization of the shape. A variety of optimization algorithms have also been developed for end-to-end learning over a non-differentiable channel model. In this paper, we compare gradient-free optimization method based on the cubature Kalman filter, model-free optimization and backpropagation for end-to-end learning on a fiber-optic channel modeled by the split-step Fourier method. The results indicate that the gradient-free optimization algorithms provide a decent replacement to backpropagation in terms of performance at the expense of computational complexity. Furthermore, the quantization problem of finite bit resolution of the digital-to-analog and analog-to-digital converters is addressed and its impact on geometrically shaped constellations is analysed. Here, the results show that when optimizing a constellation with respect to mutual information, a minimum number of quantization levels is required to achieve shaping gain. For generalized mutual information, the gain is maintained throughout all of the considered quantization levels. Also, the results implied that the autoencoder can adapt the constellation size to the given channel conditions.

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