Masaad Sarah, Gooskens Emmanuel, Sackesyn Stijn, Dambre Joni, Bienstman Peter
Photo-nics Research Group, INTEC Department, Ghent University - imec, Ghent 9052, Belgium.
IDLab, INTEC Department, Ghent University - imec, Ghent 9052, Belgium.
Nanophotonics. 2022 Oct 19;12(5):925-935. doi: 10.1515/nanoph-2022-0426. eCollection 2023 Mar.
Photonic reservoirs are machine learning based systems that boast energy efficiency and speediness. Thus they can be deployed as optical processors in fiber communication systems to aid or replace digital signal equalization. In this paper, we simulate the use of a passive photonic reservoir to target nonlinearity-induced errors originating from self-phase modulation in the fiber and from the nonlinear response of the modulator. A 64-level quadrature-amplitude modulated signal is directly detected using the recently proposed Kramers-Kronig (KK) receiver. We train the readout weights by backpropagating through the receiver pipeline, thereby providing extra nonlinearity. Statistically computed bit error rates for fiber lengths of up to 100 km fall below 1 × 10 bit error rate, outperforming an optical feed-forward equalizer as a linear benchmark. This can find applications in inter-datacenter communications that benefit from the hardware simplicity of a KK receiver and the low power and low latency processing of a photonic reservoir.
光子储能器是基于机器学习的系统,具有能源效率高和速度快的特点。因此,它们可以作为光处理器部署在光纤通信系统中,以辅助或取代数字信号均衡。在本文中,我们模拟了使用无源光子储能器来解决由光纤中的自相位调制和调制器的非线性响应引起的非线性诱导误差。使用最近提出的克拉默斯-克勒尼希(KK)接收器直接检测64级正交幅度调制信号。我们通过接收器管道反向传播来训练读出权重,从而提供额外的非线性。对于长达100公里的光纤长度,统计计算出的误码率低于1×10误码率,优于作为线性基准的光前馈均衡器。这可应用于数据中心间通信,受益于KK接收器的硬件简单性以及光子储能器的低功耗和低延迟处理。