导航辅助无线通信的递归神经网络

Amr S. Hares, Mohamed M. Abdallah, Mohamed A. Abohassan, Doaa A. Altantawy
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引用次数: 0

摘要

近年来,深度学习已经成功地应用于物理层通信中,并显示出与传统系统相比巨大的成功和竞争力。本文基于自编码器的概念,提出了一种基于递归神经网络(RNN)的通信系统。我们开发了一种结构来模拟导频辅助均衡器的工作原理,并将其集成为系统的可学习部分,以支持信道估计和均衡任务。该系统在平坦衰落信道和频率选择性衰落信道下均取得了较好的效果。该模型可以被训练来处理任何预定义数量的特定强度的通道抽头(多路径组件)。该系统还可以推广到处理任意强度的抽头,这在以前基于深度学习的通信系统中是不可行的,因为没有引导飞行员。我们评估了不同字母表和编码大小的系统性能,显示了BLER与EBNO以及学习到的星座。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Recurrent Neural Networks for Pilot-aided Wireless Communications
Recently, deep learning (DL) has been successfully applied in physical-layer communications and shown great success and competitive results to conventional systems. In this paper, we propose a novel recurrent neural network (RNN)-based communication system, based on the autoencoder concept. We develop a structure to mimic the working principle of a pilot-aided equalizer and integrate it as a learnable part of the system to support the task of channel estimation and equalization. The system shows competitive results under flat and frequency selective fading channels. The model can be trained to deal with any predefined number of channel taps (multipath components) of specific strengths. The system can also be generalized to deal with arbitrary strengths of the taps, which was infeasible in previous deep learning-based communication systems due to the absence of a guiding pilot. We assess the system performance for various alphabet and encoding sizes showing the BLER vs EBNO and the learned constellations.
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