论文标题

在非线性傅立叶变换理论的指导下,对分裂傅立叶方法的相干光学通信的端到端优化

End-to-end optimization of coherent optical communications over the split-step Fourier method guided by the nonlinear Fourier transform theory

论文作者

Gaiarin, Simone, Da Ros, Francesco, Jones, Rasmus T., Zibar, Darko

论文摘要

优化给定通道的调制和检测策略对于最大化通信系统的吞吐量至关重要。对于接纳封闭形式的分析模型的通道,可以轻松地通过分析进行这种优化。但是,对于非线性分散渠道(例如光纤),此任务变得极具挑战性。通过自动编码器(AES)端到端优化可以应用于定义符号到波形(调制)和波形到符号(检测)映射,但到目前为止,它主要用于依靠近似通道模型的系统显示。在这里,我们第一次提出了一种AE方案,该方案适用于非线性Schr \ {“ O} dinger方程(NLSE)。发射机和接收器通过分式傅立叶傅立叶方法(SSFM)共同优化,该方法准确地模拟了neural newural newural newural newural newural。为了简化和指导调制方案的优化,非线性傅立叶变换(NFT)理论得到了帮助。

Optimizing modulation and detection strategies for a given channel is critical to maximize the throughput of a communication system. Such an optimization can be easily carried out analytically for channels that admit closed-form analytical models. However, this task becomes extremely challenging for nonlinear dispersive channels such as the optical fiber. End-to-end optimization through autoencoders (AEs) can be applied to define symbol-to-waveform (modulation) and waveform-to-symbol (detection) mappings, but so far it has been mainly shown for systems relying on approximate channel models. Here, for the first time, we propose an AE scheme applied to the full optical channel described by the nonlinear Schr\{"o}dinger equation (NLSE). Transmitter and receiver are jointly optimized through the split-step Fourier method (SSFM) which accurately models an optical fiber. In this first numerical analysis, the detection is performed by a neural network (NN), whereas the symbol-to-waveform mapping is aided by the nonlinear Fourier transform (NFT) theory in order to simplify and guide the optimization on the modulation side. This proof-of-concept AE scheme is thus benchmarked against a standard NFT-based system and a threefold increase in achievable distance (from 2000 to 6640 km) is demonstrated.

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