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Anomalous occupancy sensor behavior detection in connected indoor lighting systems

机译:连接的室内照明系统中的异常占用传感器行为检测

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We consider the problem of classifying anomalous occupancy sensor behavior in connected indoor lighting systems. Anomalous occupancy sensor behavior may occur in the form of either a high number of false alarms (type-1 anomalies) or missed detection (type-2 anomalies). We consider a supervised machine learning approach to determine whether the detection signal of an occupancy sensor is normal, or exhibits type-1 or type-2 anomalies. We devise occupancy signal features in the time and frequency domains and employ a random forest classifier to perform 3-class classification. The proposed method is evaluated using motion sensor data from an office building, and is shown to have higher true positive rate and a lower false positive rate in comparison to an unsupervised k-means method and a random forest classifier with a single signal energy feature.
机译:我们考虑对连接的室内照明系统中的异常占用传感器行为进行分类的问题。占用传感器异常行为可能以大量错误警报(类型1异常)或漏检(类型2异常)的形式发生。我们考虑一种有监督的机器学习方法来确定占用传感器的检测信号是否正常,或显示出1型或2型异常。我们在时域和频域中设计占用信号特征,并采用随机森林分类器执行3类分类。使用来自办公楼的运动传感器数据对提出的方法进行了评估,与无监督k均值方法和具有单信号能量特征的随机森林分类器相比,该方法具有更高的真实率和较低的误报率。

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