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Featured researches published by Tsirizo Rabenoro.


international symposium on neural networks | 2014

Anomaly detection based on indicators aggregation

Tsirizo Rabenoro; Jérôme Lacaille; Marie Cottrell; Fabrice Rossi

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.


industrial conference on data mining | 2014

A Methodology for the Diagnostic of Aircraft Engine Based on Indicators Aggregation

Tsirizo Rabenoro; Jérôme Lacaille; Marie Cottrell; Fabrice Rossi

Aircraft engine manufacturers collect large amount of engine related data during flights. These data are used to detect anomalies in the engines in order to help companies optimize their maintenance costs. This article introduces and studies a generic methodology that allows one to build automatic early signs of anomaly detection in a way that is 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. The best indicators are selected via a classical forward scheme, leading to a much reduced number of indicators that are tuned to a data set. We illustrate the interest of the method on simulated data which contain realistic early signs of anomalies.


Archive | 2013

System for monitoring a set of components of a device

Jérôme Lacaille; Tsirizo Rabenoro


the european symposium on artificial neural networks | 2015

Search Strategies for Binary Feature Selection for a Naive Bayes Classifier.

Tsirizo Rabenoro; Jérôme Lacaille; Marie Cottrell; Fabrice Rossi


arXiv: Machine Learning | 2014

Anomaly Detection Based on Aggregation of Indicators

Tsirizo Rabenoro; Jérôme Lacaille; Marie Cottrell; Fabrice Rossi


Archive | 2014

METHOD OF ESTIMATION ON A CURVE OF A RELEVANT POINT FOR THE DETECTION OF AN ANOMALY OF A MOTOR AND DATA PROCESSING SYSTEM FOR THE IMPLEMENTATION THEREOF

Tsirizo Rabenoro; Jérôme Lacaille


AIAA Infotech@Aerospace (I@A) Conference | 2013

Instants Extraction for Aircraft Engines Monitoring

Tsirizo Rabenoro; Jérôme Lacaille


Archive | 2016

Decision aid system and method for the maintenance of a machine with learning of a decision model supervised by expert opinion

Tsirizo Rabenoro; Jérôme Lacaille


Transactions on Machine Learning and Data Mining | 2014

Interpretable Aircraft Engine Diagnostic via Expert Indicator Aggregation

Tsirizo Rabenoro; Jérôme Lacaille; Marie Cottrell; Fabrice Rossi


23rd annual Belgian-Dutch Conference on Machine Learning (Benelearn 2014) | 2014

Anomaly Detection Based on Indicator Aggregation

Tsirizo Rabenoro; Jérôme Lacaille; Marie Cottrell; Fabrice Rossi

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