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首页> 外文期刊>Parallel and Distributed Systems, IEEE Transactions on >Grouping-Enhanced Resilient Probabilistic En-Route Filtering of Injected False Data in WSNs
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Grouping-Enhanced Resilient Probabilistic En-Route Filtering of Injected False Data in WSNs

机译:WSN中注入的错误数据的分组增强的弹性概率途中过滤

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摘要

In wireless sensor networks, the adversary may inject false reports to exhaust network energy or trigger false alarms with compromised sensor nodes. In response to the problems of existing schemes on the security resiliency, applicability and filtering effectiveness, this paper proposes a scheme, referred to as Grouping-enhanced Resilient Probabilistic En-route Filtering (GRPEF). In GRPEF, an efficient distributed algorithm is proposed to group nodes without incurring extra groups, and a multiaxis division based approach for deriving location-aware keys is used to overcome the threshold problem and remove the dependence on the sink immobility and routing protocols. Compared to the existing schemes, GRPEF significantly improves the effectiveness of the en-route filtering and can be applied to the sensor networks with mobile sinks while reserving the resiliency.
机译:在无线传感器网络中,攻击者可能会注入虚假报告以耗尽网络能量或使用受损的传感器节点触发虚假警报。针对现有方案在安全性,适用性和过滤有效性方面的问题,提出了一种称为分组增强弹性概率路由过滤(GRPEF)的方案。在GRPEF中,提出了一种高效的分布式算法来对节点进行分组而不产生额外的组,并且使用基于多轴除法的派生位置感知密钥的方法来克服阈值问题并消除对宿固定性和路由协议的依赖。与现有方案相比,GRPEF显着提高了途中过滤的效率,可以在保留弹性的同时应用于带有移动接收器的传感器网络。

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