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Multiclass Flight Anomaly Detection Using Sensor Fusion Based on Dempster-Shafer TheoryAs aviation systems in commercial operations continue to grow in complexity, the anomalies exhibited by these systems become more elaborate and difficult to detect. To address the challenge of detecting these complex anomalies, deep learning models have been used extensively in aviation anomaly detection studies, at the expense of end-user interpretability. Aiming to
maintain the same level of interpretability as traditional threshold-exceedance methods, we continue our development of prediction models using ordinal patterns and their distributions throughout the flight. Specifically, this study extends our work into multiclass anomaly detection using sensor fusion based on Dempster-Shafer theory (DST), a second-order probability theory
used to combine information from different sources of evidence. Our approach uses DST to reduce the uncertainty in the class predictions of an ensemble of classifiers. These classifiers rely on the similarity between flight data and class templates to make a prediction of the state of the aircraft. Our approach aims to take advantage of simple models trained on interpretable
features (ordinal patterns) to correctly predict an anomaly and identify the flight dynamics linked to the anomaly. Our results show an improvement when using DST-based sensor fusion over simple majority voting. Additionally, our results provide insight into aircraft states linked to rare high-risk anomalies.
Document ID
20230015786
Acquisition Source
Langley Research Center
Document Type
Conference Paper
Authors
Ezequiel Juarez Garcia
(University of Florida Gainesville, United States)
Szilard L. Beres
(University of Florida Gainesville, Florida, United States)
Markus L. Mulvihill
(University of Florida Gainesville, Florida, United States)
Chad L. Stephens
(Langley Research Center Hampton, Virginia, United States)
Nicholas J. Napoli
(University of Florida Gainesville, United States)
Date Acquired
November 1, 2023
Subject Category
Aeronautics (General)
Meeting Information
Meeting: AIAA SciTech Forum
Location: Orlando, FL
Country: US
Start Date: January 8, 2024
End Date: January 12, 2024
Sponsors: American Institute of Aeronautics and Astronautics
Funding Number(s)
CONTRACT_GRANT: 80LARC22R0003
CONTRACT_GRANT: NNL09AA00A
Distribution Limits
Public
Copyright
Portions of document may include copyright protected material.
Keywords
Risk detection
Anomaly detection
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