基于滤波器的神经形态光子库计算在224Gbps子载波调制IM-DD短距离光纤通信系统中的信号均衡研究

Penghao Luo, An Yan, Aolong Sun, Guoqiang Li, Sizhe Xing, Jianyang Shi, Ziwei Li, Chao Shen, Junwen Zhang, Nan Chi
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引用次数: 0

摘要

随着边缘带宽需求的不断增长,对短距离调强直接检测(IM/DD)光纤通信系统的传输容量和数据速率提出了更高的要求。先进的数字信号处理(DSP),如神经网络(NN),已被证明是提高系统性能的好方法,但复杂的DSP处理往往意味着高功耗和慢处理速度。水库计算(RC)是一种适用于基于时间序列问题的机器学习算法,具有比递归神经网络(RNN)更快的计算速度。RC固有的随机性使我们发现了它在全光领域的信号均衡潜力。本文对IM/DD系统中低硬件复杂度的神经形态光子RC信号处理方案进行了数值研究,并通过两组光滤波节点实现了全光RC。采用子载波调制(SCM)信号对基于滤波器的神经形态光子RC方案进行了研究,并与传统均衡方法进行了比较。仿真结果表明,采用光子RC均衡技术可以使误码率比传统方案提高几个数量级,并对不同正交调幅(QAM)格式的性能进行了研究。最后,对c波段80km标准单模光纤(SSMF)传输224Gbps单片机信号的photonics RC架构实现进行了数值演示。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Study of Filter-based Neuromorphic Photonic Reservoir Computing for Signal Equalization in 224Gbps Sub-carrier Modulation IM-DD Short Reach Optical Fiber Communication System
The ever-increasing requirements for bandwidth in edge places higher demands on the transmission capacity and data rate of short-reach intensity-modulation and direct-detection (IM/DD) optical fiber communication systems. Advanced digital signal processing (DSP), such as neural network (NN), is verified to be a good way to improve system performance, but the complicated DSP process always means high power consumption and slow processing speed. Reservoir Computing (RC) is a machine learning algorithm suitable for time-series-based problem, which has a faster computing speed than recurrent NN (RNN). The inherent randomness of RC makes us find its potential of signal equalization in all-optical domain. In this paper, we numerically studied a neuromorphic photonic RC signal processing scheme in IM/DD system with low hardware complexity, and realize the all-optical RC through two sets of optical filter nodes. Subcarrier modulation (SCM) signal is applied to study the filter-based neuromorphic photonic RC scheme, in comparison to traditional equalization methods. Simulation results show that the photonic RC equalization can bring orders of magnitude improvement in BER over traditional schemes, and the performances of different Quadrature Amplitude Modulation (QAM) formats are also studied. Finally, the architecture implementation of photonics RC for 224Gbps SCM signal over 80km standard single-mode fiber (SSMF) transmission in C-band is numerically demonstrated.
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