Multi–Dimensional Wireless Signal Identification Based on Support Vector Machines

Radio air interface identification provides necessary information for dynamically and efficiently exploiting the wireless radio frequency spectrum. In this study, a general machine learning framework is proposed for Global System for Mobile communications (GSM), Wideband Code Division Multiple Acces...

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Main Authors: Kursat Tekbiyik, Ozkan Akbunar, Ali Riza Ekti, Ali Gorcin, Gunes Karabulut Kurt
Format: Article
Language:English
Published: IEEE 2019-01-01
Series:IEEE Access
Subjects:
FFT
Online Access:https://ieeexplore.ieee.org/document/8844719/
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spelling doaj-986ed1e52b5c43ad81a81d1a7d02e9872021-03-29T23:09:07ZengIEEEIEEE Access2169-35362019-01-01713889013890310.1109/ACCESS.2019.29423688844719Multi&#x2013;Dimensional Wireless Signal Identification Based on Support Vector MachinesKursat Tekbiyik0https://orcid.org/0000-0002-2548-3286Ozkan Akbunar1Ali Riza Ekti2https://orcid.org/0000-0003-0368-0374Ali Gorcin3Gunes Karabulut Kurt4https://orcid.org/0000-0001-7188-2619Informatics and Information Security Research Center (BİLGEM), T&#x00DC;B&#x0130;TAK, Kocaeli, TurkeyInformatics and Information Security Research Center (BİLGEM), T&#x00DC;B&#x0130;TAK, Kocaeli, TurkeyInformatics and Information Security Research Center (BİLGEM), T&#x00DC;B&#x0130;TAK, Kocaeli, TurkeyInformatics and Information Security Research Center (BİLGEM), T&#x00DC;B&#x0130;TAK, Kocaeli, TurkeyDepartment of Electronics and Communications Engineering, &#x0130;stanbul Technical University, &#x0130;stanbul, TurkeyRadio air interface identification provides necessary information for dynamically and efficiently exploiting the wireless radio frequency spectrum. In this study, a general machine learning framework is proposed for Global System for Mobile communications (GSM), Wideband Code Division Multiple Access (WCDMA), and Long Term Evolution (LTE) signal identification by utilizing the outputs of the spectral correlation function (SCF), fast Fourier Transform (FFT), auto-correlation function (ACF), and power spectral density (PSD) as the training inputs for the support vector machines (SVMs). In order to show the robustness and practicality of the proposed method, the performance of the classifier is investigated with respect to different fading channels by using simulation data. Various over-the-air real- world measurements are taken to show that wireless signals can be successfully distinguished from each other without any prior information while accounting for a comprehensive set of parameters such as different kernel types, number of in-phase/quadrature (I/Q) samples, training set size, or signal-to-noise ratio (SNR) values. Furthermore, the performance of the proposed classifier is compared to the existing well-known deep learning (DL) networks. The comparative performance of the proposed method is also quantified by classification confusion matrices and Precision/Recall/F<sub>1</sub>-scores. It is shown that the investigated system can be also utilized for spectrum sensing and its performance is also compared with that of cyclostationary feature detection spectrum sensing.https://ieeexplore.ieee.org/document/8844719/CyclostationarityFFTmachine learningpower spectral densityspectral correlation functionspectrum sensing
collection DOAJ
language English
format Article
sources DOAJ
author Kursat Tekbiyik
Ozkan Akbunar
Ali Riza Ekti
Ali Gorcin
Gunes Karabulut Kurt
spellingShingle Kursat Tekbiyik
Ozkan Akbunar
Ali Riza Ekti
Ali Gorcin
Gunes Karabulut Kurt
Multi&#x2013;Dimensional Wireless Signal Identification Based on Support Vector Machines
IEEE Access
Cyclostationarity
FFT
machine learning
power spectral density
spectral correlation function
spectrum sensing
author_facet Kursat Tekbiyik
Ozkan Akbunar
Ali Riza Ekti
Ali Gorcin
Gunes Karabulut Kurt
author_sort Kursat Tekbiyik
title Multi&#x2013;Dimensional Wireless Signal Identification Based on Support Vector Machines
title_short Multi&#x2013;Dimensional Wireless Signal Identification Based on Support Vector Machines
title_full Multi&#x2013;Dimensional Wireless Signal Identification Based on Support Vector Machines
title_fullStr Multi&#x2013;Dimensional Wireless Signal Identification Based on Support Vector Machines
title_full_unstemmed Multi&#x2013;Dimensional Wireless Signal Identification Based on Support Vector Machines
title_sort multi&#x2013;dimensional wireless signal identification based on support vector machines
publisher IEEE
series IEEE Access
issn 2169-3536
publishDate 2019-01-01
description Radio air interface identification provides necessary information for dynamically and efficiently exploiting the wireless radio frequency spectrum. In this study, a general machine learning framework is proposed for Global System for Mobile communications (GSM), Wideband Code Division Multiple Access (WCDMA), and Long Term Evolution (LTE) signal identification by utilizing the outputs of the spectral correlation function (SCF), fast Fourier Transform (FFT), auto-correlation function (ACF), and power spectral density (PSD) as the training inputs for the support vector machines (SVMs). In order to show the robustness and practicality of the proposed method, the performance of the classifier is investigated with respect to different fading channels by using simulation data. Various over-the-air real- world measurements are taken to show that wireless signals can be successfully distinguished from each other without any prior information while accounting for a comprehensive set of parameters such as different kernel types, number of in-phase/quadrature (I/Q) samples, training set size, or signal-to-noise ratio (SNR) values. Furthermore, the performance of the proposed classifier is compared to the existing well-known deep learning (DL) networks. The comparative performance of the proposed method is also quantified by classification confusion matrices and Precision/Recall/F<sub>1</sub>-scores. It is shown that the investigated system can be also utilized for spectrum sensing and its performance is also compared with that of cyclostationary feature detection spectrum sensing.
topic Cyclostationarity
FFT
machine learning
power spectral density
spectral correlation function
spectrum sensing
url https://ieeexplore.ieee.org/document/8844719/
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AT ozkanakbunar multix2013dimensionalwirelesssignalidentificationbasedonsupportvectormachines
AT alirizaekti multix2013dimensionalwirelesssignalidentificationbasedonsupportvectormachines
AT aligorcin multix2013dimensionalwirelesssignalidentificationbasedonsupportvectormachines
AT guneskarabulutkurt multix2013dimensionalwirelesssignalidentificationbasedonsupportvectormachines
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