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Detection of data anomalies at the edge of pervasive IoT systems

机译:检测普及IOT系统边缘的数据异常

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Validation of input data is essential in any computer system, but perhaps particularly important in pervasive IoT systems such as smart homes, smart cars, wearable health monitors, etc. In such systems, actions taken based on invalid inputs could have severe consequences. In this paper, we present statistical techniques for identifying data anomalies at the gateway that connects an edge network to its associated cloud services. We address two kinds of anomalies in environmental sensor data: data bias anomalies and sensor cut-off anomalies. In simulation experiments, we evaluate the effectiveness of applying control charts, a statistical process monitoring technique, to both kinds of anomalies. Our results show that using control charts as statistical methods for anomaly detection in IoT systems not only provides high performance in terms of accuracy and power (probability of detecting the anomaly), but also offers a graphical tool to monitor the IoT sensor data.
机译:输入数据的验证在任何计算机系统中都是必不可少的,但在诸如智能家庭,智能汽车,可穿戴健康监视器等中的普遍的物联网系统中可能特别重要,基于无效输入采取的操作可能具有严重的后果。 在本文中,我们提出了统计技术,用于在网关中识别数据异常,该网关将边缘网络连接到其相关云服务。 我们在环境传感器数据中解决了两种异常:数据偏置异常和传感器切断异常。 在仿真实验中,我们评估控制图表,统计过程监测技术对两种异常的有效性。 我们的研究结果表明,使用控制图表作为异常系统中异常检测的统计方法不仅在精度和功率方面提供了高性能(检测异常的概率),还提供了监控物联网传感器数据的图形工具。

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