Please use this identifier to cite or link to this item: https://doi.org/10.1109/ICDE55515.2023.00143
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dc.titleA Stitch in Time Saves Nine: Enabling Early Anomaly Detection with Correlation Analysis
dc.contributor.authorAng Yihao
dc.contributor.authorQiang Huang
dc.contributor.authorKum Hoe, Anthony Tung
dc.contributor.authorZhiyong Huang
dc.date.accessioned2023-10-24T08:57:36Z
dc.date.available2023-10-24T08:57:36Z
dc.date.issued2023-07-26
dc.identifier.citationAng Yihao, Qiang Huang, Kum Hoe, Anthony Tung, Zhiyong Huang (2023-07-26). A Stitch in Time Saves Nine: Enabling Early Anomaly Detection with Correlation Analysis. IEEE ICDE 2023 : 1832-1845. ScholarBank@NUS Repository. https://doi.org/10.1109/ICDE55515.2023.00143
dc.identifier.isbn979-8-3503-2227-9
dc.identifier.urihttps://scholarbank.nus.edu.sg/handle/10635/245477
dc.description.abstractEarly detection of anomalies from sensor-based Multivariate Time Series (MTS) is vital for timely response to the signs of operation failures and errors. While many interesting works have been done toward solving this problem, existing methods typically detect such anomalies as outliers by making certain assumptions that allow efficient and easily understandable solutions to be used but might not be applicable to time series. Meanwhile, unsupervised deep learning-based methods might be highly accurate but often lead to challenges for real-time industrial scenarios, e.g., requiring a large amount of training data and producing unstable output. In this paper, we propose a new approach, CAD, to detect anomalies from sensor-based MTS. We aim to leverage the latent correlations between sensors by first converting the MTS into a sequence of Time-Series Graphs (TSGs) that connect sensors to their highly correlated neighbors within a certain time period. Then, we track the unusual correlation variations between sensors on the sequence of TSGs. By analyzing the correlation variations with a theoretical guarantee, CAD can detect the time of occurrence for the anomalies simultaneously with the sensors that are affected as early as possible. Extensive experiments over eight real-world datasets show that CAD is effective, scalable, yet stable compared to nine state-of-the-art methods while keeping comparable efficiency. Moreover, it maintains above 85% accuracy on large-scale datasets with over 1,000 sensors. Notably, CAD can determine relevant sensors in a very early stage of the anomaly so that timely predictive maintenance can be done. The code is available at https://github.com/YihaoAng/CAD.
dc.language.isoen
dc.publisherIEEE
dc.subjectAnomaly detection
dc.subjectMultivariate time series
dc.subjectOutlier detection
dc.subjectPredictive maintenance
dc.subjectCorrelation analysis
dc.typeConference Paper
dc.contributor.departmentDEPARTMENT OF COMPUTER SCIENCE
dc.description.doi10.1109/ICDE55515.2023.00143
dc.description.sourcetitleIEEE ICDE 2023
dc.description.page1832-1845
dc.published.statePublished
dc.grant.fundingagencyNational Research Foundation, Singapore
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