基于信道状态信息的OFDM-WiFi信号脉冲噪声源识别

I. Landa, Guillermo Díaz, I. Sobrón, I. Eizmendi, M. Vélez
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引用次数: 1

摘要

本研究在使用OFDM-Wifi信号和机器学习模型检测脉冲噪声源方面做出了贡献。利用脉冲噪声源对WiFi信号的影响来获取有监督机器学习模型的特征。在两个室内位置进行了测量活动,使用Atheros CSI工具获得通道状态信息。通过处理每个子载波的信道状态信息的幅值,实现了脉冲噪声检测的特征提取。这些特征提供了两个监督机器学习模型,一个随机森林算法和一个更高级别的算法,如深度神经网络。结果表明,Wifi-OFDM信号可以用于脉冲噪声源识别。这项工作的主要贡献集中在通过机器学习模型提取合适的特征来识别脉冲噪声源。源识别精度大于0.9,验证了模型的有效性,为今后的研究提供了一个先例。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
WIP: Impulsive Noise Source Recognition with OFDM-WiFi Signals Based on Channel State Information Using Machine Learning
This study presents contributions on the detection of impulsive noise sources using OFDM-Wifi signals and Machine Learning models. The influence of impulsive noise sources on WiFi signals is used to obtain the features for supervised Machine learning models. A measurement campaign has been carried out at two indoor locations, using the Atheros CSI tool to obtain the channel state information. Feature extraction for impulsive noise detection has been performed by processing the amplitude of the channel state information of each subcarrier. These features have fed two supervised Machine Learning models, a Random Forest algorithm, and a higher level algorithm such as a Deep Neural Network. The results obtained indicate that Wifi-OFDM signals can be used for impulsive noise source recognition. The main contributions of this work focus on the extraction of suitable features for the identification of impulsive noise sources through machine learning models. The accuracy greater than 0.9 in source identification validates the proposed model, which serves as a precedent for future studies in this area.
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