Interpretable Aircraft Engine Diagnostic via Expert Indicator Aggregation
March 18, 2015 ยท Declared Dead ยท ๐ Transactions on machine learning and data mining
"No code URL or promise found in abstract"
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Authors
Tsirizo Rabenoro, Jรฉrรดme Lacaille, Marie Cottrell, Fabrice Rossi
arXiv ID
1503.05526
Category
stat.ML: Machine Learning (Stat)
Cross-listed
cs.LG,
math.ST,
stat.AP
Citations
3
Venue
Transactions on machine learning and data mining
Last Checked
4 months ago
Abstract
Detecting early signs of failures (anomalies) in complex systems is one of the main goal of preventive maintenance. It allows in particular to avoid actual failures by (re)scheduling maintenance operations in a way that optimizes maintenance costs. Aircraft engine health monitoring is one representative example of a field in which anomaly detection is crucial. Manufacturers collect large amount of engine related data during flights which are used, among other applications, to detect anomalies. This article introduces and studies a generic methodology that allows one to build automatic early signs of anomaly detection in a way that builds upon human expertise and that remains understandable by human operators who make the final maintenance decision. The main idea of the method is to generate a very large number of binary indicators based on parametric anomaly scores designed by experts, complemented by simple aggregations of those scores. A feature selection method is used to keep only the most discriminant indicators which are used as 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.
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