Inspecting Distortion in the Power Amplifiers with the aid of Neural Networks

Sercan Aygün, Lida Kouhalvandi, E. O. Gunes, S. Ozoguz
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引用次数: 3

Abstract

This paper aims to classify the distortion behavior of a power amplifier (PA) with the aid of a neural network. Power amplifiers have quite extensive usage in communication systems especially with the current developments on 5G and more. However, distortion in the power amplifiers needs attention to be pre-distorted with the help of a feedback mechanism using direct or indirect methods in the digital domain. In the literature, there are several efforts to understand and reduce distortion in amplifier devices. Therefore, in this paper, the distortion behavior in the power amplifier is inspected using the neural networks. In this work, we have obtained a software-defined network using the strength of the neural network to inspect the distorted and non-distorted data as a binary classification on the actual design of the power amplifier in [1]. For this purpose, a neural network system is trained. In the tests, more than 96% accuracy can easily be obtained in an early epoch with the cleverly chosen learning rate (ŋ) which is optimally outperforming thereabouts after ŋ=0.05 till 0.1. Thus, the linearity and non-linearity response of the PA is considered with the help of the trained network.
基于神经网络的功率放大器畸变检测
本文旨在利用神经网络对功率放大器的失真行为进行分类。功率放大器在通信系统中有着相当广泛的应用,特别是随着5G等技术的发展。然而,需要注意的是,在数字领域,利用直接或间接的方法,利用反馈机制对功率放大器中的失真进行预失真。在文献中,有一些努力来理解和减少放大器器件中的失真。因此,本文采用神经网络对功率放大器的畸变行为进行了检测。在这项工作中,我们利用神经网络的强度获得了一个软件定义的网络,对[1]中功率放大器的实际设计进行畸变和非畸变数据的检测作为二值分类。为此,我们训练一个神经网络系统。在测试中,通过巧妙地选择学习率(k),可以很容易地在早期获得96%以上的准确率,并且在k =0.05到0.1之间表现最佳。因此,在训练网络的帮助下,可以考虑PA的线性和非线性响应。
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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