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ReTrust: Attack-Resistant and Lightweight Trust Management for Medical Sensor Networks

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5 Author(s)
Daojing He ; Zhejiang Provincial Key Lab. of Service Robot, Zhejiang Univ., Hangzhou, China ; Chun Chen ; Chan, S. ; Jiajun Bu
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Wireless medical sensor networks (MSNs) enable ubiquitous health monitoring of users during their everyday lives, at health sites, without restricting their freedom. Establishing trust among distributed network entities has been recognized as a powerful tool to improve the security and performance of distributed networks such as mobile ad hoc networks and sensor networks. However, most existing trust systems are not well suited for MSNs due to the unique operational and security requirements of MSNs. Moreover, similar to most security schemes, trust management methods themselves can be vulnerable to attacks. Unfortunately, this issue is often ignored in existing trust systems. In this paper, we identify the security and performance challenges facing a sensor network for wireless medical monitoring and suggest it should follow a two-tier architecture. Based on such an architecture, we develop an attack-resistant and lightweight trust management scheme named ReTrust. This paper also reports the experimental results of the Collection Tree Protocol using our proposed system in a network of TelosB motes, which show that ReTrust not only can efficiently detect malicious/faulty behaviors, but can also significantly improve the network performance in practice.

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Information Technology in Biomedicine, IEEE Transactions on  (Volume:16 ,  Issue: 4 )