基于Walsh-Hadamard变换和卷积神经网络的衰落信道分类

G. Baldini, Fausto Bonavitacola, J. Chareau
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引用次数: 0

摘要

衰落信道分类在无线通信设计中是一项有用的功能,因为信道状态信息的了解可以帮助无线通信处理的后续步骤,包括从接收信号中提取信息符号。本文提出将Walsh-Hadamard变换(WHT)与卷积神经网络(CNN)相结合,用于衰落信道分类问题。WHT属于傅里叶变换的广义类,它是一种将信号分解成一组Walsh函数的非正弦正交变换技术。WHT在图像处理领域的应用较多,但在无线通信领域的应用较少。CNN最近被用于许多无线通信问题,包括衰落信道分类,在这些问题上,它的表现优于“浅”机器学习算法。针对信道分类问题,提出了WHT与CNN相结合的新方法。在射频实验室用FPGA实现的信道仿真器中,将该方法应用于雷达高度计技术规范中的一组啁啾信号数据集,并将其提交到不同的衰落条件下。结果表明,该方法能够显著优于CNN对原始信号的基于时间的表示或基于使用傅里叶变换和小波变换的谱域表示(特别是在存在噪声的情况下)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fading Channel Classification with Walsh-Hadamard Transform and Convolutional Neural Network
Fading channel classification is a useful function in the design of wireless communications because the knowledge of the channel state information can help the subsequent steps in the wireless communication processing including the information symbols extraction from the received signal. This paper proposes the application of the Walsh-Hadamard Transform (WHT) in combination with Convolutional Neural Network (CNN) for the problem of fading channel classification. WHT belongs to the generalized class of Fourier transforms and it is a non-sinusoidal, orthogonal transformation technique that decomposes a signal into a set of Walsh functions. WHT has been used in image processing but less in the wireless communication domain. CNN has been recently used in many wireless communications problems including fading channel classification, where it has shown to outperform ’shallow’ machine learning algorithms. This paper presents the novel combination of WHT with CNN for the problem of channel classification. The approach is applied to a data set of chirp signals derived from the technical specification of the radar altimeter, which is submitted to different fading conditions in a channel emulator implemented with FPGA in a radio frequency laboratory. The results show that the proposed approach is able to significantly outperform (especially in presence of noise) the application of CNN on the original time-based representation of the signal or the spectral domain representation based on the use of the Fourier transform and Wavelet transform.
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