计算机科学
算法
计算
光学
均衡(音频)
非线性系统
数据中心
信号处理
波分复用
光学计算
电子工程
电信
计算机硬件
数字信号处理
物理
计算机网络
频道(广播)
波长
工程类
量子力学
作者
Govind Sharan Yadav,Chun-Yen Chuang,Kai-Ming Feng,Jyehong Chen,Young-Kai Chen
出处
期刊:Optics Letters
[Optica Publishing Group]
日期:2021-03-17
卷期号:46 (9): 1999-1999
被引量:22
摘要
In this Letter, we propose and experimentally demonstrate a novel, to the best of our knowledge, sparse deep neural network-based nonlinear equalizer (SDNN-NLE). By identifying only the significant weight coefficients, our approach remarkably reduces the computational complexity, while still upholding the desired transmission accuracy. The insignificant weights are pruned in two phases: identifying the significance of each weight by pre-training the fully connected DNN-NLE with an adaptive L2-regularization and then pruning those insignificant ones away with a pre-defined sparsity. An experimental demonstration is conducted on a 112 Gbps PAM4 link over 40 km standard single-mode fiber with a 25 GHz externally modulated laser in O-band. Our experimental results illustrate that, for the 112 Gbps PAM4 signal at a received optical power of − 5 d B m over 40 km, the proposed SDNN-NLE exhibits promising solutions to effectively mitigate nonlinear distortions and outperforms a conventional fully connected Volterra equalizer (VE), conventional fully connected DNN-NLE, and sparse VE by providing 71%, 63%, and 41% complexity reduction, respectively, without degrading the system performance.
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