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Double Cluster Heads Model for Secure and Accurate Data Fusion in Wireless Sensor Networks

机译:在无线传感器网络中实现安全,准确的数据融合的双簇头模型

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Secure and accurate data fusion is an important issue in wireless sensor networks (WSNs) and has been extensively researched in the literature. In this paper, by combining clustering techniques, reputation and trust systems, and data fusion algorithms, we propose a novel cluster-based data fusion model called Double Cluster Heads Model (DCHM) for secure and accurate data fusion in WSNs. Different from traditional clustering models in WSNs, two cluster heads are selected after clustering for each cluster based on the reputation and trust system and they perform data fusion independently of each other. Then, the results are sent to the base station where the dissimilarity coefficient is computed. If the dissimilarity coefficient of the two data fusion results exceeds the threshold preset by the users, the cluster heads will be added to blacklist, and the cluster heads must be reelected by the sensor nodes in a cluster. Meanwhile, feedback is sent from the base station to the reputation and trust system, which can help us to identify and delete the compromised sensor nodes in time. Through a series of extensive simulations, we found that the DCHM performed very well in data fusion security and accuracy.
机译:安全和准确的数据融合是无线传感器网络(WSN)中的重要问题,并且已在文献中进行了广泛研究。在本文中,通过结合集群技术,信誉和信任系统以及数据融合算法,我们提出了一种新颖的基于集群的数据融合模型,称为双集群头模型(DCHM),用于在WSN中进行安全,准确的数据融合。与WSN中的传统群集模型不同,在群集之后,基于信誉和信任系统为每个群集选择两个群集头,它们彼此独立地执行数据融合。然后,将结果发送到基站,在基站中计算相异系数。如果两个数据融合结果的相异系数超过用户设置的阈值,则将簇头添加到黑名单中,并且簇头中的传感器节点必须重新选择簇头。同时,反馈从基站发送到信誉和信任系统,这可以帮助我们及时识别和删除受损的传感器节点。通过一系列广泛的模拟,我们发现DCHM在数据融合安全性和准确性方面表现出色。

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