利用优化K均值聚类技术缓解基于RPL的物联网环境中的天坑攻击

Martin Victor K, Immanuel Johnraja Jebadurai, Getzi Jeba Leelipushpam Paulraj, Jebaveerasingh Jebadurai
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引用次数: 2

摘要

物联网为各种应用无缝连接对象,如智能医疗、工业、农业等。在物联网环境中,各种标准和协议被用于连接应用程序。低功耗损耗网络路由协议就是其中一种用于连接设备进行数据传输的协议。由于使用了这些协议,因此必须保护用户的安全和隐私。本文利用优化的k均值聚类技术,提出了一种适用于低功耗有损网络的安全路由协议。最初,每个节点为自己计算序列号方差、路由存在率和传输的路由消息。然后利用优化的k均值聚类技术将节点聚类为正常节点和恶意节点。异常节点被排除在网络之外。对所提出的技术进行了仿真,并对性能指标进行了性能分析,即数据包传送率、误报率和误报率。
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Mitigating Sinkhole attack in RPL based Internet of Things Environment using Optimized K means Clustering technique
Internet of Things connects objects seamlessly for various applications viz., smart healthcare, industries, farming and many more. In an Internet of Things environment, various standards and protocols have been used to connect applications. Routing protocol for low power and lossy network is one such protocol used to connect devices for data transmission. As these protocols have been used, it is essential to preserve the security and privacy of the users. This paper proposes a secure routing protocol for low power and lossy network using an optimized k means clustering technique. Initially, every node calculates the sequence number variance, route presence ratio and transited routing messages for itself. Then optimized k means clustering technique has been used to cluster the nodes into normal and malicious. The nodes designated as abnormal are eliminated from the network. The proposed technique is simulated and performance analysis is carried out on performance metrics viz., packet delivery ratio, false positive rate and falsenegative rate.
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