Liu Mengqiu, Yang Xining, Gao Jian, Cao Sen, Liao Guisheng, Hou Gaopan, Gao Dawei
Hangzhou Institute of Technology, Xidian University, Hangzhou 311200, China.
29th Research Institute of China Electronics Technology Group Corporation, Chengdu 610036, China.
Sensors (Basel). 2025 Feb 12;25(4):1106. doi: 10.3390/s25041106.
The design of conventional digital predistortion (DPD) requires an analogue-to-digital converter (ADC) with a sampling frequency that is multiple times the signal bandwidth, which is extremely challenging for sub-Nyquist sampling systems with undersampled signals. To address this, this paper proposes a neural network (NN)-assisted wideband power amplifier (PA) DPD method for sub-Nyquist sampling systems, wherein a dual-stage architecture is designed to handle the ambiguity caused by subsampled communications signals. In the first stage, the time-delayed polynomial reconstruction method is employed to estimate the wideband DPD nonlinearity coarsely with the undersampled signals with limited pilots. In the second stage, an NN-based DPD method is proposed for the virtual training of the DPD, which learns the up-sampled DPD behavior by taking advantage of the pre-estimated DPD model and the input data signals, which reduces the length of the training sequence significantly and refines the DPD behavior efficiently. Simulation results demonstrate the efficacy of the proposed method in tackling the wideband PA nonlinearity and its ability to outperform the conventional method in terms of power spectrum, error vector magnitude, and bit error rate.
传统数字预失真(DPD)的设计需要一个采样频率为信号带宽数倍的模数转换器(ADC),这对于处理欠采样信号的亚奈奎斯特采样系统极具挑战性。为解决这一问题,本文提出了一种用于亚奈奎斯特采样系统的神经网络(NN)辅助宽带功率放大器(PA)DPD方法,其中设计了一种两级架构来处理欠采样通信信号引起的模糊性。在第一阶段,采用时延多项式重构方法,利用含有限导频的欠采样信号粗略估计宽带DPD非线性。在第二阶段,提出了一种基于NN的DPD方法用于DPD的虚拟训练,该方法通过利用预先估计的DPD模型和输入数据信号来学习上采样的DPD行为,这显著减少了训练序列的长度并有效地优化了DPD行为。仿真结果证明了所提方法在解决宽带PA非线性方面的有效性,以及在功率谱、误差矢量幅度和误码率方面优于传统方法的能力。