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A Novel Distance for Clustering to Support Mixed Data Attributes and Promote Data Reliability and Network Lifetime in Large Scale Wireless Sensor Networks

机译:用于聚类以支持混合数据属性的小说距离,并在大规模无线传感器网络中促进数据可靠性和网络寿命

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Clustering based approaches in Wireless Sensor Networks helps in identifying the summarized data by exploiting the feature of data redundancy in sensor networks. Due to the inexpensive hardware used and unattended operation nature, nodes in the sensor networks are often prone to many failures malicious attacks and resource constraints and data collected in sensor networks are found to be unreliable. Moreover, the wide usages of sensor network in diverse application have put a constraint on sensor protocol to handle data of mixed types. To address the issues of energy minimization and data reliability, we propose a distributed agglomerative cluster based anomaly detection algorithm termed DACAD to detect the faulty readings based on kNN approach. Additionally, to support applications with mixed data attributes, we design a heterogeneous distance function, HOEM to handle both continuous and nominal attributes. In this paper we have evaluated the performance of proposed algorithm in terms of false alarm rate, false positive rate and detection rate. Our results demonstrate that the proposed distance achieves a comparable detection rate with low false alarm rate with a significant reduction in computation and communication over head and operates with both continuous and nominal data.
机译:无线传感器网络中基于聚类的方法有助于通过利用传感器网络中的数据冗余特征来识别概述数据。由于使用廉价的硬件和无人值守的操作性质,传感器网络中的节点通常容易出现许多失败的恶意攻击和资源限制以及传感器网络中收集的数据是不可靠的。此外,传感器网络在不同应用中的广泛用途对传感器协议的约束来处理混合类型的数据。为了解决能量最小化和数据可靠性的问题,我们提出了一种基于分布的凝聚簇基于基于的异常检测算法,被称为DACAD以检测基于KNN方法的故障读数。此外,为了支持使用混合数据属性的应用程序,我们设计了一个异构距离功能,彼此处理连续和标称属性。在本文中,我们在误报率,假阳性率和检测率方面评估了所提出的算法的性能。我们的结果表明,所提出的距离实现了具有低误报率的可比检测速率,并且在头部的计算和通信中显着降低,并且与连续和标称数据进行操作。

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