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Anomaly IoT Node Detection Based on Local Outlier Factor and Time Series

机译:基于本地异常因素系列和时间序列的异常IOT节点检测

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摘要

The heterogeneous nodes in the Internet of Things (IoT) are relatively weak in the computing power and storage capacity. Therefore, traditional algorithms of network security are not suitable for the IoT. Once these nodes alternate between normal behavior and anomaly behavior, it is difficult to identify and isolate them by the network system in a short time, thus the data transmission accuracy and the integrity of the network function will be affected negatively. Based on the characteristics of IoT, a lightweight local outlier factor detection method is used for node detection. In order to further determine whether the nodes are an anomaly or not, the varying behavior of those nodes in terms of time is considered in this research, and a time series method is used to make the system respond to the randomness and selectiveness of anomaly behavior nodes effectively in a short period of time. Simulation results show that the proposed method can improve the accuracy of the data transmitted by the network and achieve better performance.
机译:物联网(IOT)中的异构节点在计算电力和存储容量中相对较弱。因此,网络安全的传统算法不适合IOT。一旦这些节点在正常行为和异常行为之间交替,难以在短时间内通过网络系统识别和隔离它们,因此数据传输精度和网络功能的完整性将受到负面影响。基于IOT的特点,轻量级的本地异常因素因子检测方法用于节点检测。为了进一步确定节点是否是异常的,在本研究中考虑了这些节点的不同行为,并且使用时间序列方法来使系统响应异常行为的随机性和选择性节点在短时间内有效。仿真结果表明,该方法可以提高网络传输的数据的准确性并实现更好的性能。

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