Sackesyn Stijn, Ma Chonghuai, Dambre Joni, Bienstman Peter
Opt Express. 2021 Sep 27;29(20):30991-30997. doi: 10.1364/OE.435013.
Nonlinearity mitigation in optical fiber networks is typically handled by electronic Digital Signal Processing (DSP) chips. Such DSP chips are costly, power-hungry and can introduce high latencies. Therefore, optical techniques are investigated which are more efficient in both power consumption and processing cost. One such a machine learning technique is optical reservoir computing, in which a photonic chip can be trained on certain tasks, with the potential advantages of higher speed, reduced power consumption and lower latency compared to its electronic counterparts. In this paper, experimental results are presented where nonlinear distortions in a 32 GBPS OOK signal are mitigated to below the 0.2 × 10 FEC limit using a photonic reservoir. Furthermore, the results of the reservoir chip are compared to a tapped delay line filter to clearly show that the system performs nonlinear equalisation.
光纤网络中的非线性缓解通常由电子数字信号处理(DSP)芯片来处理。此类DSP芯片成本高昂、功耗大且会引入高延迟。因此,人们正在研究在功耗和处理成本方面更高效的光学技术。一种这样的机器学习技术是光学储层计算,其中光子芯片可以针对某些任务进行训练,与电子芯片相比,具有速度更快、功耗更低和延迟更低的潜在优势。本文展示了实验结果,其中使用光子储层将32 GBPS开关键控(OOK)信号中的非线性失真缓解到低于0.2×10前向纠错(FEC)极限。此外,将储层芯片的结果与抽头延迟线滤波器进行比较,以清楚地表明该系统执行非线性均衡。