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首页> 外文期刊>Network and Service Management, IEEE Transactions on >Detecting Malicious Data Injections in Event Detection Wireless Sensor Networks
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Detecting Malicious Data Injections in Event Detection Wireless Sensor Networks

机译:在事件检测无线传感器网络中检测恶意数据注入

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摘要

Wireless sensor networks (WSNs) are vulnerable and can be maliciously compromised, either physically or remotely, with potentially devastating effects. When sensor networks are used to detect the occurrence of events such as fires, intruders, or heart attacks, malicious data can be injected to create fake events, and thus trigger an undesired response, or to mask the occurrence of actual events. We propose a novel algorithm to identify malicious data injections and build measurement estimates that are resistant to several compromised sensors even when they collude in the attack. We also propose a methodology to apply this algorithm in different application contexts and evaluate its results on three different datasets drawn from distinct WSN deployments. This leads us to identify different tradeoffs in the design of such algorithms and how they are influenced by the application context.
机译:无线传感器网络(WSN)容易受到攻击,并且可能在物理上或远程上受到恶意破坏,并可能造成破坏性影响。当使用传感器网络检测火灾,入侵者或心脏病发作等事件的发生时,可以注入恶意数据来创建假事件,从而触发不良响应,或掩盖实际事件的发生。我们提出了一种新颖的算法来识别恶意数据注入并建立测量估计,即使它们在攻击中相互勾结,也可以抵御多个受损传感器。我们还提出了一种在不同的应用程序上下文中应用该算法并在从不同的WSN部署中提取的三个不同的数据集上评估其结果的方法。这使我们在设计此类算法时确定了不同的权衡,以及它们如何受到应用程序上下文的影响。

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