非线性功率放大器行为建模中一种降低复杂度的非均匀广义记忆多项式模型

Anqiao Hu, Declan Byrne, R. Farrell, J. Dooley
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引用次数: 1

摘要

功率放大器是广泛应用于移动网络和射频收发器等各个领域的电子器件。为了实现高效的操作,功率放大器经常会遇到非线性问题。这个问题可以通过使用线性化技术来缓解,例如数字预失真,被认为是最有希望的解决功率放大器线性化的方法。行为建模是数字预失真的重要组成部分,负责获取线性化功率放大器所需的系数。为了达到与记忆多项式模型相当的精度性能,提出了一种简化的非均匀广义记忆多项式模型。在不同的非线性、记忆效应和衰减以及PA工作功率条件下,在Doherty PA的输入和输出处测量5MHz LTE信号,对所提出的模型进行了测试。可以观察到,当PA具有较高的非线性和记忆深度,同时仍保持较低的复杂性时,所提出的模型在低复杂度下显示出较好的精度。与MP模型相比,在相同的精度水平下,可以达到60%以上的系数降低。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Complexity Reduced Non-Uniform Generalized Memory Polynomial Model for Nonlinear Power Amplifier Behavioural Modeling
Power amplifiers are widely employed electronic devices in various fields such as mobile networks and radio frequency (RF) transceivers. To achieve efficient operations, power amplifiers can often suffer from nonlinearity problems. This problem can be mitigated through the use of linearization techniques, such as digital predistortion, regarded as the most promising solution to power amplifier linearization. Behavioural modeling is a substantial part of the digital predistortion, responsible for acquiring the coefficients that are necessary to linearize the power amplifier. A Complex Reduced Non-Uniform Generalized Memory Polynomial model was proposed to reach comparable performance of accuracy as Memory Polynomial Model with reduced complexities. The proposed model was tested with a 5MHz LTE signal measured at the input and output of a Doherty PA under different conditions of nonlinearities, memory effects and attenuations as well as PA working powers. It can be observed that the proposed model shows superior accuracy at low complexities, when the PA has higher levels of nonlinearity and memory depth while still maintaining low complexities. Over 60% of coefficients reduction could be reached at the same level of accuracy compared to the MP model.
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