A hybrid one-class approach for detecting anomalies in industrial systems

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http://hdl.handle.net/2183/32333
Except where otherwise noted, this item's license is described as Attribution 4.0 International (CC BY 4.0)
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A hybrid one-class approach for detecting anomalies in industrial systemsAuthor(s)
Date
2022-03-08Citation
Zayas-Gato, F., Jove, E., Casteleiro-Roca, J.-L., Quintián, H., Piñ on-Pazos, A., Simi c, D., & Calvo-Rolle, J. L. (2022). A hybrid one-class approach for detecting anomalies in industrial systems. Expert Systems, 39(9), e12990. https://doi.org/10.1111/exsy.12990
Abstract
[Abstract]: The significant advance of Internet of Things in industrial environments has provided the possibility of monitoring the different variables that come into play in an industrial process. This circumstance allows the supervision of the current state of an industrial plant and the consequent decision making possibilities. Then, the use of anomaly detection techniques are presented as a powerful tool to determine unexpected situations. The present research is based on the implementation of one-class classifiers to detect anomalies in two industrial systems. The proposal is validated using two real datasets registered during different operating points of two industrial plants. To ensure a better performance, a clustering process is developed prior the classifier implementation. Then, local classifiers are trained over each cluster, leading to successful results when they are tested with both real and artificial anomalies. Validation results present in all cases, AUC values above 90%.
Keywords
Anomaly detection
Clustering
Industrial system
One-class
Optimization
Clustering
Industrial system
One-class
Optimization
Description
Financiado para publicación en aberto: Universidade da Coruña/CISUG
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Rights
Attribution 4.0 International (CC BY 4.0)
ISSN
1468-0394