MIMO-OFDM系统混合预编码体系的RLS-DPD算法

Tingyu Huang, W. Hong, Tingxiao Cai, Huanhuan Lin
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引用次数: 3

摘要

在5G、6G、毫米波、太赫兹通信等新兴通信系统中,OFDM和MIMO是必不可少的技术。然而,由于大规模放大器阵列的非线性,不同子信道之间的交叉调制会大大降低系统的性能。混合预编码技术具有良好的线性化能力,是解决这一问题的理想方法,而预失真矩阵是影响预编码性能的关键因素。本文采用记忆多项式模型对非线性功率放大器(PA)进行建模,并提出了基于递归最小二乘的数字预失真(RLS-DPD)算法对混合预失真模块进行参数训练。提出的RLS算法在训练阶段通过自适应学习提取数字预失真模块的参数。自适应学习是指利用前一时刻获得的滤波器参数,根据估计误差自动调整当前时刻的参数,使代价函数最小的过程。仿真结果表明,在8dB信噪比下,RLS-DPD算法能使系统误码率降低27.778%,误差矢量幅值(EVM)降低67.961%,并能使非线性OFDM信号在终端正确解调。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
RLS-DPD Algorithm for Hybrid Precoding Architecture in MIMO-OFDM systems
In emerging communication systems, such as 5G 6G, millimeter wave and terahertz communication, OFDM and MIMO are indispensable technologies. However, the cross-modulation among different subchannel would greatly degrade the performance of system due to the non-linearity of the large-scale amplifier array. Hybrid precoding technology is a general candidate for this problem due to its capability for linearization, and the predistortion matrix would be the key factor for its performance. In this paper, a memory polynomial model is adopted for modelling nonlinear power amplifier (PA) and Recursive Least Square based digital predistortion (RLS-DPD) algorithm is proposed for parameter training for hybrid predistortion module. The proposed RLS algorithm extracts the parameters of the digital predistortion module through adaptive learning in the training phase. Adaptive learning refers to the process of using the filter parameters obtained at the previous moment to automatically adjust the parameters at the current moment according to the estimated error, which minimizes the cost function. The simulation results show that the RLS-DPD algorithm can reduce the system bit error rate by 27.778%, error vector magnitude (EVM) by 67.961 % at 8dB SNR, and enable the nonlinear OFDM signal to be demodulated correctly at the terminal.
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