In this paper, we propose a machine learning (ML) based physical layer receiver solution for demodulating OFDM signals that are subject to a high level of nonlinear distortion. Specifically, a novel deep learning based convolutional neural network receiver is devised, containing layers in both time- and frequency domains, allowing to demodulate and decode the transmitted bits reliably despite the high error vector magnitude (EVM) in the transmit signal. Extensive set of numerical results is provided, in the context of 5G NR uplink incorporating also measured terminal power amplifier characteristics. The obtained results show that the proposed receiver system is able to clearly outperform classical linear receivers as well as existing ML receiver approaches, especially when the EVM is high in comparison with modulation order. The proposed ML receiver can thus facilitate pushing the terminal power amplifier (PA) systems deeper into saturation, and thereon improve the terminal power-efficiency, radiated power and network coverage.
翻译:在本文中,我们提出了一个基于机器学习(ML)的物理层接收器解决方案,用于对DMD信号进行降压,这种信号将受到非线性扭曲的高度影响。具体地说,我们设计了一个基于深深层次学习的神经网络接收器,包含时间和频率领域的层,允许对传输的位子进行降压和解码,尽管传输信号中存在高误差矢量(EVM),但能够可靠地进行降压和解码。在5G NR上行链中提供一系列广泛的数字结果,其中包括了测量的终端功率放大器特性。获得的结果显示,拟议的接收器系统能够明显地超越传统的线性接收器以及现有的 ML 接收器方法,特别是当 EVM 与调制令相比高时。因此,拟议的 ML 接收器可以推动终端功率放大器系统更深地进入饱和度,从而提高终端功率、辐射力和网络覆盖度。