基于神经网络的射频功率放大器频率自适应数字预失真

IF 1.4 4区 工程技术 Q4 COMPUTER SCIENCE, HARDWARE & ARCHITECTURE
Funda Daylak, Serdar Ozoguz, Lida Kouhalvandi, Oguz Bayat
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引用次数: 0

摘要

功率放大器(PAs)的线性化是高维射频(RF)设计中的一大挑战,为了解决这一缺点,我们提出了一种结合神经网络(nn)和带通滤波器的自适应策略,用于不同频率的输入信号,从而降低了计算成本。提出的线性化方法是基于利用神经网络对PA和带通滤波器进行建模,以提高频率自适应性,而不需要反馈环路。因此,即使输入信号的频率发生变化,系统仍可能产生线性输出。该模型由子数字预失真(DPD)块组成,每个子DPD块仅在指定的频率范围内生成DPD系数。由于采用了无反馈的子dpd块,减少了模型的计算量,节省了计算时间。为了验证所提出的模型,首先使用神经网络对PA进行表征。然后,通过带通滤波确定输入信号的频率。基于该频率信息,相应的基于nn的子dpd块被激活以线性化PA的非线性行为。对于工作在1.7 GHz ~ 2 GHz的放大器,分别进行了1.7 GHz、1.9 GHz、2.1 GHz、2.4 GHz四个不同的输入信号频率值。实验结果表明,与其他方法相比,该模型具有更好的PA建模和非线性补偿能力。无DPD时,PA的1 db压缩点为6.88 dBm,基于查找表的DPD时为4.49 dBm,基于神经网络的DPD时为7 dBm。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Neural network based frequency adaptive digital predistortion of RF power amplifiers

Linearization of power amplifiers (PAs) is a big challenge in high-dimensional radio frequency (RF) designs, and to tackle this drawback we propose an adaptive strategy with the combination of neural networks (NNs) and band-pass filters for input signals with different frequencies that results in reduced computational costs. The proposed linearization approach is based on utilization of NN for modeling the PA and band-pass filters for contributing to frequency adaptability without feedback loop. Thus, even if the frequency of the input signal changes, the system may still produce linear output. The proposed model consists of sub-digital predistortion (DPD) blocks where each sub-DPD block generates DPD coefficients only for the specified frequency range. Thanks to sub-DPD blocks without feedback, the computational load of the model is reduced and computation time is saved. To validate the proposed model, the PA is first characterized using the neural network. Then, the frequency of the input signal is determined via band-pass filtering. Based on this frequency information, the corresponding NN-based sub-DPD block is activated to linearize the PA’s nonlinear behavior. For the presented PA that is operating from 1.7 GHz to 2 GHz, four different input signal frequencies values as 1.7 GHz, 1.9 GHz, 2.1 GHz, 2.4 GHz respectively are carried out. The achieved results prove that the proposed model provides improved PA modeling and nonlinear compensation compared to the other methods. The 1-dB compression point of the PA is measured as–6.88 dBm without DPD, 4.49 dBm with look-up table-based DPD, and 7 dBm with NN-based DPD.

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来源期刊
Analog Integrated Circuits and Signal Processing
Analog Integrated Circuits and Signal Processing 工程技术-工程:电子与电气
CiteScore
0.30
自引率
7.10%
发文量
141
审稿时长
7.3 months
期刊介绍: Analog Integrated Circuits and Signal Processing is an archival peer reviewed journal dedicated to the design and application of analog, radio frequency (RF), and mixed signal integrated circuits (ICs) as well as signal processing circuits and systems. It features both new research results and tutorial views and reflects the large volume of cutting-edge research activity in the worldwide field today. A partial list of topics includes analog and mixed signal interface circuits and systems; analog and RFIC design; data converters; active-RC, switched-capacitor, and continuous-time integrated filters; mixed analog/digital VLSI systems; wireless radio transceivers; clock and data recovery circuits; and high speed optoelectronic circuits and systems.
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