基于b样条神经网络的数字基带预失真器的反De Boor算法求解

X. Hong, Yu Gong, Sheng Chen
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引用次数: 3

摘要

本文介绍了一种新的基于直接学习的非线性数字基带预失真器设计方法,以及一种基于b样条神经网络的高功率放大器维纳系统建模新方法。这种贡献是双重的。首先,假设HPA的非线性主要依赖于输入信号的幅度,用两个实值b样条神经网络表示复值非线性静态函数,一个用于幅度失真,另一个用于相移。参数估计采用高斯-牛顿算法,其中采用De Boor递推计算b样条曲线和一阶导数。其次,根据基于b样条神经网络的Wiener模型,推导了计算复值非线性静态函数逆的预失真器算法。然后计算振幅和相移失真的逆,并使用识别的相移模型进行补偿。数值算例验证了所提方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
B-spline neural network based digital baseband predistorter solution using the inverse of De Boor algorithm
In this paper a new nonlinear digital baseband predistorter design is introduced based on direct learning, together with a new Wiener system modeling approach for the high power amplifiers (HPA) based on the B-spline neural network. The contribution is twofold. Firstly, by assuming that the nonlinearity in the HPA is mainly dependent on the input signal amplitude the complex valued nonlinear static function is represented by two real valued B-spline neural networks, one for the amplitude distortion and another for the phase shift. The Gauss-Newton algorithm is applied for the parameter estimation, in which the De Boor recursion is employed to calculate both the B-spline curve and the first order derivatives. Secondly, we derive the predistorter algorithm calculating the inverse of the complex valued nonlinear static function according to B-spline neural network based Wiener models. The inverse of the amplitude and phase shift distortion are then computed and compensated using the identified phase shift model. Numerical examples have been employed to demonstrate the efficacy of the proposed approaches.
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