Lin Bangjiang, Yang Hui, Wang Rui, Ghassemlooy Zabih, Tang Xuan
Opt Express. 2020 May 11;28(10):14357-14365. doi: 10.1364/OE.392535.
Non-orthogonal multiple access (NOMA) is a promising scheme for flexible passive optical networks (PONs), which provides high throughput and overall improved system performance. NOMA with the successive interference cancellation (SIC)-based receiver, which is used to detect the multiplexed signal in a sequential fashion, requires perfect channel state information and suffers from the error propagation problem. In this paper, we propose a convolutional neural network (CNN) based signal demodulation method for NOMA-PON, which performs channel estimation and signal detection in a joint manner. The CNN is first trained offline using the captured data for a given received optical power and then used to recover the data stream directly in the online mode. We show by experimental demonstration that, the proposed CNN-based receiver (Rx) outperforms the conventional SIC-based Rx and is more robust to the nonlinear distortion. We show that for the CNN-based system with 20 km optical fiber, the required received optical power levels at a bit error rate (BER) of 1×10 are lower by 4, 3 and 2.5 dB for power allocation ratios of 0.16, 0.25, 0.36, respectively compared with SIC-based system. In addition, the BER performance of CNN deteriorates considerably less with non-linear distortion compared with SIC.
非正交多址接入(NOMA)是一种用于灵活无源光网络(PON)的很有前景的方案,它能提供高吞吐量并全面提升系统性能。基于连续干扰消除(SIC)接收机的NOMA用于按顺序检测复用信号,需要完美的信道状态信息,并且存在误差传播问题。在本文中,我们提出了一种用于NOMA-PON的基于卷积神经网络(CNN)的信号解调方法,该方法以联合方式执行信道估计和信号检测。首先使用针对给定接收光功率捕获的数据对CNN进行离线训练,然后在在线模式下直接用于恢复数据流。我们通过实验证明,所提出的基于CNN的接收机(Rx)优于传统的基于SIC的Rx,并且对非线性失真更具鲁棒性。我们表明,对于具有20公里光纤的基于CNN的系统,在误码率(BER)为1×10时,与基于SIC的系统相比,功率分配比分别为0.16、0.25、0.36时所需的接收光功率电平分别低4、3和2.5 dB。此外,与SIC相比,CNN的BER性能在非线性失真情况下的恶化程度要小得多。