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Spatio-Temporal Correlation based Anomaly Detection and Identification Method for IoT Sensors

机译:基于时空相关的物联网传感器异常检测与识别方法

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Status monitor and anomaly detection of sensor nodes is critical for reliability of internet of things (IoT) system. Due to the complex causes of sensor anomalies, traditional methods that estimate only sensor state or environment state when detect anomalies cannot satisfy practical requirements. And existing methods often neglect spatial and temporal dependencies among IoT sensor observations. This paper defines faulty nodes and event nodes and proposes a novel anomaly detection and identification method implemented in two stages: 1) Anomaly detection stage by a customized composite distance metric and sensor clustering. 2) Anomaly source identification stage by fuzzy logic system based on spatio-temporal correlation. Experiments demonstrated that the proposed method can effectively detect anomaly sensors and capture spatio-temporal correlation to identify the anomaly source.
机译:传感器节点的状态监控和异常检测对于物联网(IoT)系统的可靠性至关重要。由于传感器异常的复杂原因,当检测到异常时仅估计传感器状态或环境状态的传统方法无法满足实际要求。现有的方法通常会忽略物联网传感器观测之间的时空依赖性。本文定义了故障节点和事件节点,并提出了一种新的异常检测和识别方法,分两个阶段实施:1)通过定制的复合距离度量和传感器聚类的异常检测阶段。 2)基于时空相关的模糊逻辑系统异常源识别阶段。实验表明,该方法可以有效地检测出异常传感器,并捕获时空相关性以识别异常源。

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