Archive | 2021

Comparing Adversary Defense Mechanisms in Cognitive Radio Networks

 
 
 

Abstract


\n\nIn a cognitive radio network, the cognitive transmitter senses the medium to detect spectrum\nopportunities and transmits its own data if the channel is sensed to be idle. A jammer can also sense the medium and identify the slots\nof successful transmission. The jammer’s main objective is to reduce the throughput of the cognitive transmitter.\n\n\n\nTowards this objective, the jammer builds a deep learning classifier in which the most recent sensing results of\nacknowledgments (ACKs) sent by the receiver are used to predict the slots of successful transmissions of the cognitive transmitter.\nThis allows the attacker to reliably predict the successful transmissions and can effectively jam these transmissions. The deep learning\nclassification soft decision probabilities are used by the jammer for power control subject to a certain power budget. A receiver-based\ndefense mechanism is developed against the jamming attacks. The receiver purposely takes some wrong actions, i.e., sends ACK\nwhen transmission is not successful and vice versa, to poison the training process of the attacker.\n\n\n\nWe show that our receiver’s defense mechanism effectively enhances the throughput of the cognitive transmitter when\ncompared to the transmitter’s defense mechanism, where the transmitter takes some wrong decisions when it accesses the\nmedium.\n\n\n\nA novel defense mechanism against jamming attacks in cognitive radio networks is introduced.\n

Volume 11
Pages None
DOI 10.2174/2210327911666210201104628
Language English
Journal None

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