Detailed Information on Publication Record
2016
Anomaly detection for aircraft engine fault prediction
RUDOLECKÝ, TomášBasic information
Original name
Anomaly detection for aircraft engine fault prediction
Name (in English)
Anomaly detection for aircraft engine fault prediction
Authors
RUDOLECKÝ, Tomáš (203 Czech Republic, guarantor, belonging to the institution)
Edition
Bratislava, Proceedings in Informatics and Information Technologies. Bratislava: WIKT & DaZ, p. 85-88, 4 pp. 2016
Publisher
Nakladatel’stvo STU
Other information
Language
Czech
Type of outcome
Stať ve sborníku
Field of Study
10201 Computer sciences, information science, bioinformatics
Country of publisher
Slovakia
Confidentiality degree
není předmětem státního či obchodního tajemství
Publication form
printed version "print"
RIV identification code
RIV/00216224:14330/16:00114970
Organization unit
Faculty of Informatics
ISBN
978-80-227-4619-9
Keywords (in Czech)
predikce poruch; letadlový motor; algoritmy podpůrných vektorů; detekce anomálií v rozložení dat
Keywords in English
fault prediction; aircraft engine; support vector machine; group anomaly detection
Změněno: 31/3/2021 13:13, RNDr. Pavel Šmerk, Ph.D.
V originále
Aircraft engine failures can be expensive and an obvious security threat. When we are able to predict a potential failure of an engine in advance, then we can send the aircraft for maintenance. Sensor data is collected during engine starts, takeoffs, cruise or special events. Aim of this research is to create a model of standard behavior of so called healthy engines and based on that, detect serious change which can predicts a failure. Furthermore, we want to distinguish among particular failure types. The model don’t have just to be able to successfully pass data tests but also should have some physical explanation. Sometimes the resultant model shows big dependences on attributes which should be at most auxiliary, or it shows physically improbable relations among attributes. We present the first results obtained with One-class Support Vector Machine, which show significant increase of the anomaly factor of two out of four faulted engines when they were approaching the failure. We also made experiments with group anomaly detection.
In English
Aircraft engine failures can be expensive and an obvious security threat. When we are able to predict a potential failure of an engine in advance, then we can send the aircraft for maintenance. Sensor data is collected during engine starts, takeoffs, cruise or special events. Aim of this research is to create a model of standard behavior of so called healthy engines and based on that, detect serious change which can predicts a failure. Furthermore, we want to distinguish among particular failure types. The model don’t have just to be able to successfully pass data tests but also should have some physical explanation. Sometimes the resultant model shows big dependences on attributes which should be at most auxiliary, or it shows physically improbable relations among attributes. We present the first results obtained with One-class Support Vector Machine, which show significant increase of the anomaly factor of two out of four faulted engines when they were approaching the failure. We also made experiments with group anomaly detection.
Links
MUNI/A/0945/2015, interní kód MU |
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