Liu Xinyu, Wang Yongjun, Wang Xishuo, Xu Hui, Li Chao, Xin Xiangjun
Opt Express. 2021 Feb 15;29(4):5923-5933. doi: 10.1364/OE.416672.
We propose a bi-directional gated recurrent unit neural network based nonlinear equalizer (bi-GRU NLE) for coherent optical communication systems. The performance of bi-GRU NLE has been experimentally demonstrated in a 120 Gb/s 64-quadrature amplitude modulation (64-QAM) coherent optical communication system with a transmission distance of 375 km. Experimental results show that the proposed bi-GRU NLE can significantly mitigate nonlinear distortions. The Q-factors can exceed the hard-decision forward error correction (HD-FEC) limit of 8.52 dB with the aid of bi-GRU NLE, when the launched optical power is in the range of -3 dBm to 3 dBm. In addition, when the launched optical power is in the range of 0 dBm to 2 dBm, the Q-factor performances of the bi-GRU NLE and bi-directional long short-term memory neural network based nonlinear equalizer (bi-LSTM NLE) are similar, while the number of parameters of bi-GRU NLE is about 20.2% less than that of bi-LSTM NLE, the average training time of bi-GRU NLE is shorter than that of bi-LSTM NLE, the number of multiplications required for the bi-GRU NLE to equalize per symbol is about 24.5% less than that for bi-LSTM NLE.
我们为相干光通信系统提出了一种基于双向门控循环单元神经网络的非线性均衡器(bi-GRU NLE)。已在传输距离为375 km的120 Gb/s 64正交幅度调制(64-QAM)相干光通信系统中通过实验证明了bi-GRU NLE的性能。实验结果表明,所提出的bi-GRU NLE可以显著减轻非线性失真。当发射光功率在-3 dBm至3 dBm范围内时,借助bi-GRU NLE,Q因子可以超过8.52 dB的硬判决前向纠错(HD-FEC)极限。此外,当发射光功率在0 dBm至2 dBm范围内时,bi-GRU NLE和基于双向长短期记忆神经网络的非线性均衡器(bi-LSTM NLE)的Q因子性能相似,而bi-GRU NLE的参数数量比bi-LSTM NLE少约20.2%,bi-GRU NLE的平均训练时间比bi-LSTM NLE短,bi-GRU NLE均衡每个符号所需的乘法次数比bi-LSTM NLE少约24.5%。