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An Efficient Algorithm for Anomaly Detection in Wireless Sensor Networks

机译:无线传感器网络中异常检测的高效算法

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Wireless sensor networks have attained remarkable attention for the past few years. They may be dropped in the real world in order to make the local measurements with the environmental condition like temperature or pressure. WSNs are exposed to faults and awful attacks due to its high density. Likewise, the sensor reading that drastically deviates from normal behavior are inaccurate and unreliable. Those abnormal data are considered as outlier, which is vulnerable to WSN and affects the data accuracy. Improper identification of outlier leads data inaccuracy and high energy consumption due to unwanted data transmission in the network. To detect outlier and improve accuracy, an algorithm with two phases is proposed. First, clustering technique describes the grouping of sensor data in training phase (Micro clustering, merging). Second, a robust density based outlier detection technique detects outlier with high accuracy. The experimental result shows that the proposed technique is having 99.56 % accuracy with low false alarm rate.
机译:在过去的几年中,无线传感器网络获得了极大的关注。为了在环境条件(例如温度或压力)下进行本地测量,可​​能会将它们丢弃在现实世界中。 WSN的密度高,容易遭受错误和可怕的攻击。同样,与正常行为大不相同的传感器读数也不准确且不可靠。这些异常数据被认为是异常数据,容易受到WSN的影响并影响数据准确性。异常值的识别不正确会导致数据不准确,并且由于网络中不需要的数据传输而导致能耗高。为了检测异常值并提高精度,提出了一种具有两个阶段的算法。首先,聚类技术描述了训练阶段(微型聚类,合并)中传感器数据的分组。其次,基于鲁棒性密度的离群值检测技术可以高精度检测离群值。实验结果表明,该技术具有99.56%的准确率,误报率低。

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