Automated Real-Time Anomaly Detection Of Temperature Sensors Through Machine-Learning

INTERNATIONAL JOURNAL OF SENSOR NETWORKS(2020)

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摘要
Fast identification of faulty sensors is necessary for guaranteeing their robust functions in diverse applications ranging from extreme weather prediction to energy saving to healthcare. We present an automated machine-learning based framework that can detect anomalies of temperature sensor data in real-time. We adopted a purely temporal approach that utilises a univariate time-series (UTS) generated by a single sensor. The framework divides the UTS into subsequences, models each subsequence stochastically as an autoregressive function, and finally mines the function parameters with a one-class support vector machines (OC-SVM) that classifies any outlier as an anomaly. Extensive experimentation showed that the framework identifies both normal and anomalous data correctly with high degrees of accuracy.
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关键词
UTS, univariate time-series, anomaly detection, temperature sensors, OC-SVMs, one-class support vector machines, autoregression
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