Identifying signal source using channel state information in wireless LANs

Yonghwi Kim, S. An, Jungmin So
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引用次数: 4

Abstract

In this paper, we study the feasibility of identifying signal source in wireless LANs using channel state information obtained from preambles. In current standard, the signal source can be identified by reading the MAC header which requires high SNR and takes more time than receiving the preamble. For each packet, CSI is obtained for each (group of) subcarriers and for each TX-RX path, which makes the information rich in features to be used for machine learning-based classification. Experiments in a typical office environment show that with simple kNN or neural network models, we can classify tens of signal sources with over 90% accuracy. Moreover, confidence levels differ significantly between correct and incorrect samples, which can be exploited to avoid false positives with little sacrifice of correct samples. The CSI-based source identification method can be used to improve spectral efficiency of WLANs, and can be used along with schemes such as BSS coloring included in the IEEE 802.11ax standard for highly efficiency WLANs.
无线局域网中利用信道状态信息识别信号源
本文研究了在无线局域网中利用信道状态信息识别信号源的可行性。在目前的标准中,可以通过读取MAC报头来识别信号源,这需要高信噪比,并且比接收序言需要更多的时间。对于每个数据包,每个(组)子载波和每个TX-RX路径都获得CSI,这使得信息具有丰富的特征,可以用于基于机器学习的分类。在典型的办公环境中进行的实验表明,使用简单的kNN或神经网络模型,我们可以以90%以上的准确率对数十个信号源进行分类。此外,正确样本和错误样本之间的置信水平差异显着,可以利用这一点来避免误报,而几乎不会牺牲正确样本。基于csi的信号源识别方法可以提高无线局域网的频谱效率,并可与IEEE 802.11ax标准中包含的BSS着色等方案一起用于高效无线局域网。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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