Digital Predistortion with Compressed Observations for Cloud-Based Learning

Arne Fischer-Bühner, E. Matús, M. Gomony, L. Anttila, G. Fettweis, M. Valkama
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Abstract

This paper presents a novel system architecture for digital predistortion (DPD) of power amplifiers (PA), where the training of the DPD model is done in a remote compute infrastructure i.e. cloud or a distributed unit (DU). In beyond-5G systems it is no longer feasible to perform computationally intensive tasks such as DPD training locally in the radio unit front-end which has stringent power consumption requirements. Thus, we propose to split the DPD system and perform the compute-intensive DPD training in the DU where more processing resources are available. To enable the distant training, the observed PA output, i.e. the observation signal, must be available, however, sending the data-intensive observation signal to the DU adds additional communication overhead to the system. In this paper, a low-complexity compression method is proposed to reduce the bit-resolution of the observation signal by removing the known linear part in the observation to use fewer bits to represent the remaining information. Our numerical simulations show a reduction of 50 % of bits/samples for the accurate training of the DPD model. The DPD performance was evaluated based on simulation for a strongly driven PA operated at 28 GHz with a 200 MHz wide OFDM signal.
基于云学习的压缩观测数字预失真
本文提出了一种用于功率放大器(PA)数字预失真(DPD)的新型系统架构,其中DPD模型的训练在远程计算基础设施(即云或分布式单元(DU))中完成。在超5g系统中,在具有严格功耗要求的无线电单元前端本地执行DPD训练等计算密集型任务不再可行。因此,我们建议对DPD系统进行拆分,并在具有更多处理资源的DU中执行计算密集型DPD训练。为了实现远程训练,观测到的PA输出即观测信号必须是可用的,然而,将数据密集型观测信号发送给DU会给系统增加额外的通信开销。本文提出了一种低复杂度的压缩方法,通过去除观测信号中已知的线性部分,用更少的比特来表示剩余信息,从而降低观测信号的位分辨率。我们的数值模拟表明,DPD模型的精确训练减少了50%的比特/样本。通过对工作在28 GHz、200 MHz宽OFDM信号下的强驱动PA的仿真,评估了DPD的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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