一种基于信任的无线传感器网络数据安全聚合框架

W. Zhang, Sajal K. Das, Yonghe Liu
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引用次数: 141

摘要

在无人值守和敌对环境中,节点妥协会对无线传感器网络造成灾难性的威胁,并给聚合结果带来不确定性。一个被攻破的节点往往倾向于将其秘密完全泄露给对手,这反过来又使纯粹基于密码学的方法变得脆弱。如何保证信息聚合过程不受妥协节点攻击的影响,并量化聚合结果中存在的不确定性已成为一个重要的研究课题。在本文中,我们通过提出基于信任的框架来解决这个问题,该框架植根于可靠的统计和其他一些不同但紧密耦合的技术。利用信息论概念Kullback-Leibler (KL)距离来评估每个传感器节点的可信度(声誉),通过无监督学习算法来识别受损节点。在聚合时,生成一个意见,即一个可信度度量,以表示聚合结果中的不确定性。由于结果正在通过通往水槽的路线传播和组装,这种观点将通过Josang的信念模型进行传播和调节。根据该模型,可以在整个网络中有效地量化数据和聚合结果中的不确定性。仿真结果表明,基于信任的框架提供了一种强大的机制来检测受损节点并对网络中的不确定性进行推理。它还可以清除虚假数据,在存在多个受损节点的情况下实现健壮的聚合
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Trust Based Framework for Secure Data Aggregation in Wireless Sensor Networks
In unattended and hostile environments, node compromise can become a disastrous threat to wireless sensor networks and introduce uncertainty in the aggregation results. A compromised node often tends to completely reveal its secrets to the adversary which in turn renders purely cryptography-based approaches vulnerable. How to secure the information aggregation process against compromised-node attacks and quantify the uncertainty existing in the aggregation results has become an important research issue. In this paper, we address this problem by proposing a trust based framework, which is rooted in sound statistics and some other distinct and yet closely coupled techniques. The trustworthiness (reputation) of each individual sensor node is evaluated by using an information theoretic concept, Kullback-Leibler (KL) distance, to identify the compromised nodes through an unsupervised learning algorithm. Upon aggregating, an opinion, a metric of the degree of belief, is generated to represent the uncertainty in the aggregation result. As the result is being disseminated and assembled through the routes to the sink, this opinion will be propagated and regulated by Josang's belief model. Following this model, the uncertainty within the data and aggregation results can be effectively quantified throughout the network. Simulation results demonstrate that our trust based framework provides a powerful mechanism for detecting compromised nodes and reasoning about the uncertainty in the network. It further can purge false data to accomplish robust aggregation in the presence of multiple compromised nodes
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