Title of article :
Spectrum Sensing Data Falsification Attack in Cognitive Radio Networks: An Analytical Model for Evaluation and Mitigation of Performance Degradation
Author/Authors :
Sharifi ، A.A - University of Bonab , Mofarreh-Bonab ، M. - University of Bonab
Pages :
7
From page :
43
To page :
49
Abstract :
Cognitive Radio (CR) networks enable dynamic spectrum access and can significantly improve spectral efficiency. Cooperative Spectrum Sensing (CSS) exploits the spatial diversity between CR users to increase sensing accuracy. However, in a realistic scenario, the trustworthy of CSS is vulnerable to Spectrum Sensing Data Falsification (SSDF) attack. In an SSDF attack, some malicious CR users deliberately report falsified local sensing results to a data collector or Fusion Center (FC) and, then, affect the global sensing decision. In the present study, we investigate an analytical model for a hard SSDF attack and propose a robust defense strategy against such an attack. We show that FC can apply learning and estimation methods to obtain the attack parameters and use a better defense strategy. We further assume a log-normal shadow fading wireless environment and discuss the attack parameters that can affect the strength of SSDF attack. Simulation results illustrate the effectiveness of the proposed defense method against SSDF attacks, especially when the malicious users are in the majority
Keywords :
Cognitive Radio , Cooperative Spectrum Sensing , Spectrum Sensing Data Falsification Attack , Malicious User
Journal title :
Amirkabir International Journal of Electrical Electronics Engineering
Serial Year :
2018
Journal title :
Amirkabir International Journal of Electrical Electronics Engineering
Record number :
2454305
Link To Document :
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