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MUTON: Detecting Malicious Nodes in Disruption-Tolerant Networks

MUTON: Detecting Malicious Nodes in Disruption-Tolerant Networks,10.1109/WCNC.2010.5506574,Yanzhi Ren,Mooi Choo Chuah,Jie Yang,Yingying Chen

MUTON: Detecting Malicious Nodes in Disruption-Tolerant Networks   (Citations: 3)
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The Disruption Tolerant Networks (DTNs) are vulnerable to insider attacks, in which the legitimate nodes are compromised and the adversary modifies the delivery metrics of the node to launch harmful attacks in the networks. The traditional detection approaches of secure routing protocols can not address such kind of insider attacks in DTNs. In this paper, we propose a mutual correlation detection scheme (MUTON) for addressing these insider attacks. MUTON takes into consideration of the transitive property when calculating the packet delivery probability of each node and correlates the information collected from other nodes. We evaluated our approach through extensive simulations using both Random Way Point and Zebranet mobility models. Our results show that MUTON can detect insider attacks efficiently with high detection rate and low false positive rate.
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