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基于亚奈奎斯特采样率下RSSI分布的受限设备无线技术识别

Wireless Technology Recognition Based on RSSI Distribution at Sub-Nyquist Sampling Rate for Constrained Devices.

作者信息

Liu Wei, Kulin Merima, Kazaz Tarik, Shahid Adnan, Moerman Ingrid, De Poorter Eli

机构信息

Ghent University-imec, IDLab, Department of Information Technology, B-9052 Gent, Belgium.

出版信息

Sensors (Basel). 2017 Sep 12;17(9):2081. doi: 10.3390/s17092081.

DOI:10.3390/s17092081
PMID:28895879
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC5621126/
Abstract

Driven by the fast growth of wireless communication, the trend of sharing spectrum among heterogeneous technologies becomes increasingly dominant. Identifying concurrent technologies is an important step towards efficient spectrum sharing. However, due to the complexity of recognition algorithms and the strict condition of sampling speed, communication systems capable of recognizing signals other than their own type are extremely rare. This work proves that multi-model distribution of the received signal strength indicator (RSSI) is related to the signals' modulation schemes and medium access mechanisms, and RSSI from different technologies may exhibit highly distinctive features. A distinction is made between technologies with a streaming or a non-streaming property, and appropriate feature spaces can be established either by deriving parameters such as packet duration from RSSI or directly using RSSI's probability distribution. An experimental study shows that even RSSI acquired at a sub-Nyquist sampling rate is able to provide sufficient features to differentiate technologies such as Wi-Fi, Long Term Evolution (LTE), Digital Video Broadcasting-Terrestrial (DVB-T) and Bluetooth. The usage of the RSSI distribution-based feature space is illustrated via a sample algorithm. Experimental evaluation indicates that more than 92% accuracy is achieved with the appropriate configuration. As the analysis of RSSI distribution is straightforward and less demanding in terms of system requirements, we believe it is highly valuable for recognition of wideband technologies on constrained devices in the context of dynamic spectrum access.

摘要

在无线通信快速发展的推动下,异构技术间频谱共享的趋势日益显著。识别并发技术是实现高效频谱共享的重要一步。然而,由于识别算法的复杂性以及采样速度的严格要求,能够识别自身类型以外信号的通信系统极为罕见。这项工作证明,接收信号强度指示符(RSSI)的多模型分布与信号的调制方案和介质访问机制相关,并且来自不同技术的RSSI可能呈现出高度独特的特征。区分具有流特性或非流特性的技术,可以通过从RSSI中推导诸如数据包持续时间等参数或直接使用RSSI的概率分布来建立合适的特征空间。一项实验研究表明,即使以亚奈奎斯特采样率获取的RSSI也能够提供足够的特征来区分诸如Wi-Fi、长期演进(LTE)、地面数字视频广播(DVB-T)和蓝牙等技术。通过一个示例算法说明了基于RSSI分布的特征空间的使用。实验评估表明,在适当配置下准确率超过92%。由于对RSSI分布的分析简单直接且对系统要求较低,我们认为它对于在动态频谱接入环境下受限设备上的宽带技术识别具有很高的价值。

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本文引用的文献

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Smartphone-Based Indoor Localization with Bluetooth Low Energy Beacons.基于智能手机的低功耗蓝牙信标室内定位
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