基于神经网络的宽带无线发射机记忆效应建模

Taijun Liu, Yan Ye, Xingbin Zeng, F. Ghannouchi
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引用次数: 7

摘要

本文采用三层实值延迟神经网络(RVTDNN)来模拟宽带无线发射机的记忆效应。首先使用Matlab程序对RVTDNN进行训练,然后在安捷伦高级设计系统软件中实现。采用不同的训练算法提取神经网络的权重和偏倚,结果表明Levenberg-Marquardt (LM)算法表现出最好的性能。将一个基于查找表的无记忆预失真器级联到RVTDNN模型上,验证了RVTDNN模型模拟发射机记忆效应的能力。验证结果表明,所识别的RVTDNN模型能够准确模拟基于60瓦推挽式GaAs FET功率放大器的宽带无线发射机原型机在双载波3GPP-FDD激励信号下的记忆效应。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Memory Effect Modeling of Wideband Wireless Transmitters Using Neural Networks
In this paper a three-layer real-valued time-delayed neural network (RVTDNN) is employed to simulate the memory effects of a wideband wireless transmitter. The RVTDNN is trained at first using a Matlab program, and then it is implemented in Agilent Advanced Design System software. Different training algorithms have been applied to the neural network to extract its weights and biases, and it is found that the Levenberg-Marquardt (LM) algorithm exhibits the best performance. A look-up-table based memoryless predistorter is cascaded to the RVTDNN model to validate the capability of the RVTDNN model in simulating the memory effects of the transmitter. The validation results demonstrate that the identified RVTDNN model can accurately mimic the memory effects of a wideband wireless transmitter prototype, which is based on a 60-watt push-pull GaAs FET power amplifier, under a two-carrier 3GPP-FDD excitation signal.
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