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Adaptive Digital Predistortion of Wireless Power Amplifiers/Transmitters Using Dynamic Real-Valued Focused Time-Delay Line Neural Networks

机译:使用动态实值聚焦时延线神经网络的无线功率放大器/发射机自适应数字预失真

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摘要

Neural networks (NNs) are becoming an increasingly attractive solution for power amplifier (PA) behavioral modeling, due to their excellent approximation capability. Recently, different topologies have been proposed for linearizing PAs using neural based digital predistortion, but most of the previously reported results have been simulation based and addressed the issue of linearizing static or mildly nonlinear PA models. For the first time, a realistic and experimentally validated approach towards adaptive predistortion technique, which takes advantage of the superior dynamic modeling capability of a real-valued focused time-delay neural network (RVFTDNN) for the linearization of third-generation PAs, is proposed in this paper. A comparative study of RVFTDNN and a real-valued recurrent NN has been carried out to establish RVFTDNN as an effective, robust, and easy-to-implement baseband model, which is suitable for inverse modeling of RF PAs and wireless transmitters, to be used as an effective digital predistorter. Efforts have also been made on the selection of the most efficient training algorithm during the reverse modeling of PA, based on the selected NN. The proposed model has been validated for linearizing a mildly nonlinear class AB amplifier and a strongly nonlinear Doherty PA with wideband code-division multiple access (WCDMA) signals for single- and multiple-carrier applications. The effects of memory consideration on linearization are clearly shown in the measurement results. An adjacent channel leakage ratio correction of up to 20 dB is reported due to linearization where approximately 5-dB correction is observed due to memory effect nullification for wideband multicarrier WCDMA signals.
机译:神经网络(NN)由于其出色的逼近能力,正成为功率放大器(PA)行为建模的一种越来越有吸引力的解决方案。最近,已经提出了使用基于神经的数字预失真来线性化PA的不同拓扑,但是先前报告的大多数结果都是基于仿真的,并且解决了线性化静态或轻度非线性PA模型的问题。首次提出了一种实用且经过实验验证的自适应预失真技术方法,该方法利用了实值聚焦时延神经网络(RVFTDNN)的出色动态建模能力来实现第三代PA的线性化在本文中。已对RVFTDNN和实值循环神经网络进行了比较研究,以将RVFTDNN建立为有效,鲁棒且易于实现的基带模型,该模型适用于RF PA和无线发射器的逆向建模。作为有效的数字预失真器。还基于所选的NN,在PA的反向建模过程中,选择了最有效的训练算法。所提出的模型已经过验证,可以将轻度非线性AB类放大器和强烈非线性Doherty PA与宽带码分多址(WCDMA)信号线性化,以用于单载波和多载波应用。测量结果清楚地表明了内存考虑因素对线性化的影响。由于线性化,报告了高达20 dB的相邻信道泄漏比校正,其中由于宽带多载波WCDMA信号的存储效应无效,观察到了大约5 dB的校正。

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