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A Statistical Trust for Detecting Malicious Nodes in IoT Sensor Networks

机译:检测IOT传感器网络中恶意节点的统计信任

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The unattended malicious nodes pose great security threats to the integrity of the IoT sensor networks. However, preventions such as cryptography and authentication are difficult to be deployed in resource constrained IoT sensor nodes with low processing capabilities and short power supply. To tackle these malicious sensor nodes, in this study, the trust computing method is applied into the IoT sensor networks as a light weight security mechanism, and based on the theory of Chebyshev Polynomials for the approximation of time series, the trust data sequence generated by each sensor node is linearized and treated as a time series for malicious node detection. The proposed method is evaluated against existing schemes using several simulations and the results demonstrate that our method can better deal with malicious nodes resulting in higher correct packet delivery rate.
机译:无人看管的恶意节点对IOT传感器网络的完整性构成了极大的安全威胁。 然而,在具有低处理能力和短电源的资源受限的物联网传感器节点中难以部署诸如密码学和认证的预防。 为了解决这些恶意传感器节点,在本研究中,将信任计算方法应用于IOT传感器网络作为轻量级安全机制,并基于Chebyshev多项式的理论,用于时间序列的近似,由此产生的信任数据序列 每个传感器节点都是线性化并作为恶意节点检测的时间序列被视为时间序列。 使用若干模拟对所提出的方法进行评估,并且结果表明我们的方法可以更好地处理恶意节点,从而产生更高的数据包传送速率。

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