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Anomaly Detection for IoT Time-Series Data: A Survey

Andrew Cook, Göksel Mısırlı, Zhong Fan

2020IEEE Internet of Things Journal742 citationsDOIOpen Access PDF

Abstract

Anomaly detection is a problem with applications for a wide variety of domains; it involves the identification of novel or unexpected observations or sequences within the data being captured. The majority of current anomaly detection methods are highly specific to the individual use case, requiring expert knowledge of the method as well as the situation to which it is being applied. The Internet of Things (IoT) as a rapidly expanding field offers many opportunities for this type of data analysis to be implemented, however, due to the nature of the IoT, this may be difficult. This review provides a background on the challenges which may be encountered when applying anomaly detection techniques to IoT data, with examples of applications for the IoT anomaly detection taken from the literature. We discuss a range of approaches that have been developed across a variety of domains, not limited to IoT due to the relative novelty of this application. Finally, we summarize the current challenges being faced in the anomaly detection domain with a view to identifying potential research opportunities for the future.

Topics & Concepts

Anomaly detectionComputer scienceVariety (cybernetics)Internet of ThingsIdentification (biology)Data scienceNovelty detectionField (mathematics)Data miningAnomaly (physics)NoveltyData typeArtificial intelligenceComputer securityBiologyPure mathematicsBotanyPhysicsTheologyCondensed matter physicsProgramming languageMathematicsPhilosophyAnomaly Detection Techniques and ApplicationsTime Series Analysis and ForecastingData Stream Mining Techniques
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