DocumentCode
1798220
Title
Anomaly detection based on indicators aggregation
Author
Rabenoro, Tsirizo ; Lacaille, Jerome ; Cottrell, Marie ; Rossi, Francesco
Author_Institution
Health Monitoring Dept., Snecma, Moissy-Cramayel, France
fYear
2014
fDate
6-11 July 2014
Firstpage
2548
Lastpage
2555
Abstract
Automatic anomaly detection is a major issue in various areas. Beyond mere detection, the identification of the source of the problem that produced the anomaly is also essential. This is particularly the case in aircraft engine health monitoring where detecting early signs of failure (anomalies) and helping the engine owner to implement efficiently the adapted maintenance operations (fixing the source of the anomaly) are of crucial importance to reduce the costs attached to unscheduled maintenance. This paper introduces a general methodology that aims at classifying monitoring signals into normal ones and several classes of abnormal ones. The main idea is to leverage expert knowledge by generating a very large number of binary indicators. Each indicator corresponds to a fully parametrized anomaly detector built from parametric anomaly scores designed by experts. A feature selection method is used to keep only the most discriminant indicators which are used at inputs of a Naive Bayes classifier. This give an interpretable classifier based on interpretable anomaly detectors whose parameters have been optimized indirectly by the selection process. The proposed methodology is evaluated on simulated data designed to reproduce some of the anomaly types observed in real world engines.
Keywords
Bayes methods; pattern classification; Naive Bayes classifier; aircraft engine health monitoring; anomaly detector; automatic anomaly detection; binary indicators; discriminant indicators; feature selection method; indicators aggregation; maintenance operations; monitoring signals; parametric anomaly scores; unscheduled maintenance; Accuracy; Aircraft propulsion; Context; Engines; Maintenance engineering; Monitoring; Temperature measurement;
fLanguage
English
Publisher
ieee
Conference_Titel
Neural Networks (IJCNN), 2014 International Joint Conference on
Conference_Location
Beijing
Print_ISBN
978-1-4799-6627-1
Type
conf
DOI
10.1109/IJCNN.2014.6889841
Filename
6889841
Link To Document