Abstract
The demand for automated and effective monitoring techniques has soared with the increased digitization of industrial monitoring systems. State-of-the-art machine learning methods are effectively detecting abrupt changes in system states. However, these methods lack comparable maturity in detecting subtle changes that may be signs of incipient faults. This manuscript argues that the current anomaly detection methods can be enhanced by exploring weak patterns to enable subtle variation detection. Specifically, the concept of semi-supervised learning is employed, with labels representing knowledge about some anomalous conditions of a system. The basic idea is to extract a candidate set of weak patterns discarded by state-of-the-art baselining algorithms. With few labeled anomalous data, the algorithm selects the weak patterns and allows for their possible fusion using the highest sensitivity to the labeled anomalies. The method's applicability is demonstrated using a representative pressurized water reactor (PWR) model simulated by Dymola.
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CITATION STYLE
Li, Y., Abdel-Khalik, H. S., Al Rashdan, A., & Farber, J. (2023). Feature extraction for subtle anomaly detection using semi-supervised learning. Annals of Nuclear Energy, 181. https://doi.org/10.1016/j.anucene.2022.109503
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