基于神经网络的增强型移动宽带预失真器的设计与实现

Chance Tarver, Alexios Balatsoukas-Stimming, Joseph R. Cavallaro
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引用次数: 19

摘要

数字预失真是利用数字信号处理对无线发射机模拟射频前端产生的非线性进行校正的过程。这些非线性导致相邻通道泄漏,降低传输信号的误差矢量幅度,并且经常迫使发射机将其发射功率降低到器件的更线性但更低能效的区域。大多数预失真技术是基于具有间接学习结构的多项式模型的,这种结构已被证明对噪声过于敏感。在这项工作中,我们使用基于神经网络的预失真和一种新的神经网络训练方法,该方法避免了间接学习架构,并且在相邻通道泄漏比和误差矢量幅度方面都有显着改善。此外,我们表明,通过使用基于神经网络的预失真器,与性能相似的内存多项式实现相比,我们能够在FPGA加速器上实现延迟减少42%和吞吐量增加9.6%,每个样本的乘法减少15%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Design and Implementation of a Neural Network Based Predistorter for Enhanced Mobile Broadband
Digital predistortion is the process of using digital signal processing to correct nonlinearities caused by the analog RF front-end of a wireless transmitter. These nonlinearities contribute to adjacent channel leakage, degrade the error vector magnitude of transmitted signals, and often force the transmitter to reduce its transmission power into a more linear but less power-efficient region of the device. Most predistortion techniques are based on polynomial models with an indirect learning architecture which have been shown to be overly sensitive to noise. In this work, we use neural network based predistortion with a novel neural network training method that avoids the indirect learning architecture and that shows significant improvements in both the adjacent channel leakage ratio and error vector magnitude. Moreover, we show that, by using a neural network based predistorter, we are able to achieve a 42% reduction in latency and 9.6% increase in throughput on an FPGA accelerator with 15% fewer multiplications per sample when compared to a similarly performing memory-polynomial implementation.
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