A lightweight Sybil attack detection framework for Wireless Sensor Networks

P. Raghuvamsi, K. Kant
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引用次数: 21

Abstract

In the field of Wireless Sensor Networks (WSNs), the problem of Sybil attacks has been widely considered by researchers. However, among the existing solutions, lightweight models are very limited. To accomplish this, the authors suggest a lightweight Sybil attack detection framework (LSDF) in this paper. This framework has two components: first, evidence collection; second, evidence validation. Every node in the network collects the evidences by observing the activities of neighboring nodes. These evidences are validated by running sequential hypothesis test to decide whether neighboring node is a benign node or Sybil node. With extensive simulations, it was revealed that the LSDF can detect Sybil activity accurately with few evidences.
用于无线传感器网络的轻量级Sybil攻击检测框架
在无线传感器网络(WSNs)领域,Sybil攻击问题一直受到研究人员的广泛关注。然而,在现有的解决方案中,轻量级模型非常有限。为此,作者在本文中提出了一个轻量级的Sybil攻击检测框架(LSDF)。该框架有两个组成部分:第一,证据收集;第二,证据验证。网络中的每个节点通过观察相邻节点的活动来收集证据。通过序贯假设检验来判断邻近淋巴结是良性还是恶性。通过大量的模拟,揭示了LSDF可以在很少的证据下准确地检测到Sybil的活动。
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