Detection of Spoofing Attack using Machine Learning based on Multi-Layer Neural Network in Single-Frequency GPS Receivers
The importance of the Global Positioning System (GPS) and related electronic systems continues to increase in a range of environmental, engineering and navigation applications. However, civilian GPS signals are vulnerable to Radio Frequency (RF) interference. Spoofing is an intentional intervention...
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Veröffentlicht in: | Journal of navigation 2018-01, Vol.71 (1), p.169-188 |
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description | The importance of the Global Positioning System (GPS) and related electronic systems continues to increase in a range of environmental, engineering and navigation applications. However, civilian GPS signals are vulnerable to Radio Frequency (RF) interference. Spoofing is an intentional intervention that aims to force a GPS receiver to acquire and track invalid navigation data. Analysis of spoofing and authentic signal patterns represents the differences as phase, energy and imaginary components of the signal. In this paper, early-late phase, delta, and signal level as the three main features are extracted from the correlation output of the tracking loop. Using these features, spoofing detection can be performed by exploiting conventional machine learning algorithms such as K-Nearest Neighbourhood (KNN) and naive Bayesian classifier. A Neural Network (NN) as a learning machine is a modern computational method for collecting the required knowledge and predicting the output values in complicated systems. This paper presents a new approach for GPS spoofing detection based on multi-layer NN whose inputs are indices of features. Simulation results on a software GPS receiver showed adequate detection accuracy was obtained from NN with a short detection time. |
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R. ; Moazedi, M.</creator><creatorcontrib>Shafiee, E. ; Mosavi, M. R. ; Moazedi, M.</creatorcontrib><description>The importance of the Global Positioning System (GPS) and related electronic systems continues to increase in a range of environmental, engineering and navigation applications. However, civilian GPS signals are vulnerable to Radio Frequency (RF) interference. Spoofing is an intentional intervention that aims to force a GPS receiver to acquire and track invalid navigation data. Analysis of spoofing and authentic signal patterns represents the differences as phase, energy and imaginary components of the signal. In this paper, early-late phase, delta, and signal level as the three main features are extracted from the correlation output of the tracking loop. Using these features, spoofing detection can be performed by exploiting conventional machine learning algorithms such as K-Nearest Neighbourhood (KNN) and naive Bayesian classifier. A Neural Network (NN) as a learning machine is a modern computational method for collecting the required knowledge and predicting the output values in complicated systems. This paper presents a new approach for GPS spoofing detection based on multi-layer NN whose inputs are indices of features. 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R.</creatorcontrib><creatorcontrib>Moazedi, M.</creatorcontrib><title>Detection of Spoofing Attack using Machine Learning based on Multi-Layer Neural Network in Single-Frequency GPS Receivers</title><title>Journal of navigation</title><addtitle>J. Navigation</addtitle><description>The importance of the Global Positioning System (GPS) and related electronic systems continues to increase in a range of environmental, engineering and navigation applications. However, civilian GPS signals are vulnerable to Radio Frequency (RF) interference. Spoofing is an intentional intervention that aims to force a GPS receiver to acquire and track invalid navigation data. Analysis of spoofing and authentic signal patterns represents the differences as phase, energy and imaginary components of the signal. In this paper, early-late phase, delta, and signal level as the three main features are extracted from the correlation output of the tracking loop. Using these features, spoofing detection can be performed by exploiting conventional machine learning algorithms such as K-Nearest Neighbourhood (KNN) and naive Bayesian classifier. A Neural Network (NN) as a learning machine is a modern computational method for collecting the required knowledge and predicting the output values in complicated systems. This paper presents a new approach for GPS spoofing detection based on multi-layer NN whose inputs are indices of features. Simulation results on a software GPS receiver showed adequate detection accuracy was obtained from NN with a short detection time.</description><subject>Accuracy</subject><subject>Antennas</subject><subject>Bayesian analysis</subject><subject>Computer simulation</subject><subject>Counterfeiting</subject><subject>Cybersecurity</subject><subject>Detection</subject><subject>Electrical engineering</subject><subject>Electronic systems</subject><subject>Environmental engineering</subject><subject>Feature extraction</subject><subject>Global positioning systems</subject><subject>GPS</subject><subject>Hypotheses</subject><subject>Machine learning</subject><subject>Methods</subject><subject>Navigation</subject><subject>Neural networks</subject><subject>Positioning systems</subject><subject>Probability theory</subject><subject>Radio frequency</subject><subject>Receivers & amplifiers</subject><subject>Satellite navigation systems</subject><subject>Spoofing</subject><subject>Tracking</subject><subject>Wireless networks</subject><issn>0373-4633</issn><issn>1469-7785</issn><fulltext>true</fulltext><rsrctype>article</rsrctype><creationdate>2018</creationdate><recordtype>article</recordtype><sourceid>ABUWG</sourceid><sourceid>AFKRA</sourceid><sourceid>AZQEC</sourceid><sourceid>BENPR</sourceid><sourceid>CCPQU</sourceid><sourceid>DWQXO</sourceid><sourceid>GNUQQ</sourceid><recordid>eNp1UEtPwzAMjhBIjMEP4BaJcyFpmiY7ToMNpA4QhXOVpu7IHu1IUlD_PanYAQlx8Sf7e9gyQpeUXFNCxU1OmGBJyhgVhBDO5REa0SSdREJIfoxGAx0N_Ck6c24dNDKRfIT6W_CgvWkb3NY437dtbZoVnnqv9AZ3bmiWSr-bBnAGyjbDoFQOKhwsy27rTZSpHix-hM6qbQD_1doNNg3Og3YL0dzCRweN7vHiOccvoMF8gnXn6KRWWwcXBxyjt_nd6-w-yp4WD7NpFmmWch9BXGtV8qTSJOaJAJGqmLMqVKErVnKayqrUVEJaElnViqlSThiVmgkac-BsjK5-cve2DXc4X6zbzjZhZUEnQhIhJY-Div6otG2ds1AXe2t2yvYFJcXw4eLPh4OHHTxqV1pTreBX9L-ubwdvfeg</recordid><startdate>201801</startdate><enddate>201801</enddate><creator>Shafiee, E.</creator><creator>Mosavi, M. 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R. ; Moazedi, M.</author></sort><facets><frbrtype>5</frbrtype><frbrgroupid>cdi_FETCH-LOGICAL-c365t-e2fcab54dc02547e76a253d6a27cd3b5168dbc18e6b08dfa3ab89318c37125e53</frbrgroupid><rsrctype>articles</rsrctype><prefilter>articles</prefilter><language>eng</language><creationdate>2018</creationdate><topic>Accuracy</topic><topic>Antennas</topic><topic>Bayesian analysis</topic><topic>Computer simulation</topic><topic>Counterfeiting</topic><topic>Cybersecurity</topic><topic>Detection</topic><topic>Electrical engineering</topic><topic>Electronic systems</topic><topic>Environmental engineering</topic><topic>Feature extraction</topic><topic>Global positioning systems</topic><topic>GPS</topic><topic>Hypotheses</topic><topic>Machine learning</topic><topic>Methods</topic><topic>Navigation</topic><topic>Neural networks</topic><topic>Positioning systems</topic><topic>Probability theory</topic><topic>Radio frequency</topic><topic>Receivers & amplifiers</topic><topic>Satellite navigation systems</topic><topic>Spoofing</topic><topic>Tracking</topic><topic>Wireless networks</topic><toplevel>peer_reviewed</toplevel><toplevel>online_resources</toplevel><creatorcontrib>Shafiee, E.</creatorcontrib><creatorcontrib>Mosavi, M. 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Analysis of spoofing and authentic signal patterns represents the differences as phase, energy and imaginary components of the signal. In this paper, early-late phase, delta, and signal level as the three main features are extracted from the correlation output of the tracking loop. Using these features, spoofing detection can be performed by exploiting conventional machine learning algorithms such as K-Nearest Neighbourhood (KNN) and naive Bayesian classifier. A Neural Network (NN) as a learning machine is a modern computational method for collecting the required knowledge and predicting the output values in complicated systems. This paper presents a new approach for GPS spoofing detection based on multi-layer NN whose inputs are indices of features. 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subjects | Accuracy Antennas Bayesian analysis Computer simulation Counterfeiting Cybersecurity Detection Electrical engineering Electronic systems Environmental engineering Feature extraction Global positioning systems GPS Hypotheses Machine learning Methods Navigation Neural networks Positioning systems Probability theory Radio frequency Receivers & amplifiers Satellite navigation systems Spoofing Tracking Wireless networks |
title | Detection of Spoofing Attack using Machine Learning based on Multi-Layer Neural Network in Single-Frequency GPS Receivers |
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