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Secure Data Collection in Spatially Clustered Wireless Sensor Networks

机译:安全数据集合在空间集群的无线传感器网络中

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A wireless sensor network (WSN) can provide a low cost and flexible solution to sensing and monitoring for large distributed applications. To save energy and prolong the network lifetime, the WSN is often partitioned into a set of spatial clusters. Each cluster includes sensor nodes with similar sensing data, and only a few sensor nodes (samplers) report their sensing data to a base node. Then the base node may predict the missed data of non-samplers using the spatial correlation between sensor nodes. The problem is that the WSN is vulnerable to internal security threat such as node compromise. If the samplers are compromised and report incorrect data intentionally, then the WSN should be contaminated rapidly due to the process of data prediction at the base node. In this paper, we propose three algorithms to detect compromised samplers for secure data collection in the WSN. The proposed algorithms leverage the unique property of spatial clustering to alleviate the overhead of compromised node detection. Experiment results indicate that the proposed algorithms can identify compromised samplers with a high accuracy and low energy consumption when as many as 50% sensor nodes are misbehaving.
机译:无线传感器网络(WSN)可以为大型分布式应用的传感和监控提供低成本和灵活的解决方案。为了节省能源并延长网络生命周期,WSN通常被划分为一组空间簇。每个群集包括具有相似感测数据的传感器节点,并且只有几个传感器节点(采样器)向基本节点报告它们的感测数据。然后,基本节点可以使用传感器节点之间的空间相关性来预测非采样器的错过数据。问题是WSN容易受到内部安全威胁,例如节点妥协。如果采样器遭到损害并有意地报告错误数据,则由于基本节点的数据预测的过程,WSN应该被污染。在本文中,我们提出了三种算法来检测受影响的采样器,用于WSN中的安全数据收集。所提出的算法利用空间聚类的唯一属性来缓解受损节点检测的开销。实验结果表明,当多达50 %的传感器节点是行为不端的多达时,所提出的算法可以识别具有高精度和低能量消耗的受损采样器。

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