Channel Estimation Algorithm for IM/DD-OFDM/OQAM-PON System in Industrial Internet Based on Compressed Sensing

Siyuan Liang, Chunting Wang, Haotong Cao, Jie Feng, Wenle Sun
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Abstract

High-quality and low-latency communication in the three major application scenarios of 5G mobile communication technology is a guide for future technological development. The Industrial Internet needs to deal with the data transmission tasks of large-traffic mobile bandwidth and ultra-low latency. Orthogonal Frequency Division Multiplexing/Offset Quadrature Amplitude Modulation (OFDM/OQAM) passive optical network (PON) systems are affected by inherent imaginary interference (IMI), part of which is generated by the chromatic dispersion (CD) of optical fiber systems. Another part is produced by polarization mode dispersion (PMD). This paper proposes a channel estimation (CE) algorithm based on compressed sensing (CS), where the signal exhibits sparsity through sparse representation, and the signal reconstruction algorithm of compressed sensing adopts the orthogonal matching pursuit algorithm (OMP). The channel transfer function (TF) can effectively reduce the IMI and make the signal accuracy of the receiving end higher. Simulation results show that CS-CE algorithm can improve the system performance, which is better than the traditional LS method. Compared to existing LS methods, the CS algorithm can accomplish a 20% improvement. The algorithm can reduce the bit error rate of the system and improve the reliability of the system.
基于压缩感知的工业互联网IM/DD-OFDM/OQAM-PON系统信道估计算法
5G移动通信技术三大应用场景下的高质量低时延通信是未来技术发展的指南。工业互联网需要处理大流量移动带宽、超低时延的数据传输任务。正交频分复用/偏置正交调幅(OFDM/OQAM)无源光网络(PON)系统受到固有虚干涉(IMI)的影响,其中一部分虚干涉是由光纤系统的色散(CD)产生的。另一部分由偏振模色散(PMD)产生。本文提出了一种基于压缩感知(CS)的信道估计(CE)算法,其中信号通过稀疏表示呈现稀疏性,压缩感知的信号重构算法采用正交匹配追踪算法(OMP)。信道传递函数(TF)可以有效地降低IMI,提高接收端的信号精度。仿真结果表明,CS-CE算法可以提高系统性能,优于传统的LS方法。与现有的LS方法相比,CS算法可以实现20%的改进。该算法可以降低系统的误码率,提高系统的可靠性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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