Secure communication between UAVs using a method based on smart agents
in unmanned aerial vehicles
- URL: http://arxiv.org/abs/2011.09285v1
- Date: Tue, 3 Nov 2020 10:33:39 GMT
- Title: Secure communication between UAVs using a method based on smart agents
in unmanned aerial vehicles
- Authors: Maryam Faraji-Biregani and Reza Fotohi
- Abstract summary: Unmanned aerial vehicles (UAVs) can be deployed to monitor very large areas without the need for network infrastructure.
Such communication poses security challenges due to its dynamic topology.
The proposed method uses two phases to counter malicious UAV attacks.
- Score: 1.2691047660244335
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Unmanned aerial vehicles (UAVs) can be deployed to monitor very large areas
without the need for network infrastructure. UAVs communicate with each other
during flight and exchange information with each other. However, such
communication poses security challenges due to its dynamic topology. To solve
these challenges, the proposed method uses two phases to counter malicious UAV
attacks. In the first phase, we applied a number of rules and principles to
detect malicious UAVs. In this phase, we try to identify and remove malicious
UAVs according to the behavior of UAVs in the network in order to prevent
sending fake information to the investigating UAVs. In the second phase, a
mobile agent based on a three-step negotiation process is used to eliminate
malicious UAVs. In this way, we use mobile agents to inform our normal neighbor
UAVs so that they do not listen to the data generated by the malicious UAVs.
Therefore, the mobile agent of each UAV uses reliable neighbors through a
three-step negotiation process so that they do not listen to the traffic
generated by the malicious UAVs. The NS-3 simulator was used to demonstrate the
efficiency of the SAUAV method. The proposed method is more efficient than
CST-UAS, CS-AVN, HVCR, and BSUM-based methods in detection rate, false positive
rate, false negative rate, packet delivery rate, and residual energy.
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