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Anomaly Pattern Recognition with Privileged Information for Sensor Fault Detection

机译:具有特权信息的异常模式识别,用于传感器故障检测

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Detection of malfunction sensors is an important problem in the field of Internet of Things. One of the classical approaches to recognize anomalous patterns in sensor data is to use anomaly detection techniques based on One Class Classification like Support Vector Data Description or One Class Support Vector Machine. These techniques allow to build a "geometrical" model of a sensor regular operating state using historical data and detect broken sensors based on a distance to the regular data patterns. Usually important signals/warnings, which can help to identify broken sensors, arrive only after their failures. In this paper, we propose the approach to utilize such data by using the privileged information paradigm: we incorporate signals/warnings, available only when training the anomaly detection model, to refine the location of the boundary, separating the anomalous region. We demonstrate the approach by solving the problem of broken sensor detection in a Road Weather Information System.
机译:故障传感器的检测是物联网领域的重要问题。识别传感器数据中异常模式的经典方法之一是使用基于一类分类(如支持向量数据描述或一类支持向量机)的异常检测技术。这些技术允许使用历史数据建立传感器常规操作状态的“几何”模型,并基于与常规数据模式的距离来检测损坏的传感器。通常,重要的信号/警告(可帮助识别损坏的传感器)仅在其故障后才到达。在本文中,我们提出了一种通过使用特权信息范式来利用此类数据的方法:我们合并了仅在训练异常检测模型时可用的信号/警告,以细化边界的位置,分隔异常区域。我们通过解决道路天气信息系统中传感器损坏的问题来演示该方法。

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