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Unsupervised Anomaly Detection in High-Dimensional Flight Data Using Convolutional Variational Auto-EncoderThe modern National Airspace System (NAS) is an extremely safe system and the aviation industry has experienced a steady decrease in fatalities over the years. This can be attributed to both improved flight critical systems with redundant hardware and software protections, as well as an increased focus on active monitoring and response to real time and historically identified vulnerabilities by implementing more resilient procedures and protocols. The main approach for identifying vulnerabilities in operations leverages domain expertise using knowledge about how the system should behave within the expected tolerances to known safety margins. This approach works well when the system has a well-defined operating condition. However, the operations in the NAS can be highly complex with various nuances that render it difficult to clearly pre-define all known safety vulnerabilities. With the advancement of data science and machine learning techniques, the potential to automatically identify emerging vulnerabilities in the observed operations has become more practical in recent years. The state-of-the-art anomaly detection approaches in aerospace data usually rely on supervised or semi-supervised learning. However, in many real-world problems such as flight safety, creating labels for the data requires huge amount of effort and is largely impractical. To address this challenge, we developed a Convolutional Variational Auto-Encoder (CVAE), which is an unsupervised learning approach for anomaly detection in high-dimensional heterogeneous time-series data. We validate performance of CVAE compared to the state-of-the-art supervised learning approach as well as unsupervised clustering-based approach using KMeans++ and kernel-based approach using One-Class Support Vector Machine (OC-SVM) on Yahoo!'s benchmark time series anomaly detection data. Finally, we showcase performance of CVAE on a case study of identifying anomalies in the first 60 seconds of commercial flights' take-offs using Flight Operational Quality Assurance (FOQA) data.






Document ID
20200001987
Acquisition Source
Ames Research Center
Document Type
Presentation
Authors
Memarzadeh, Milad
(Universities Space Research Association (USRA) Moffett Field, CA, United States)
Matthews, Bryan
(Stinger Ghaffarian Technologies Inc. (SGT Inc.) Moffett Field, CA, United States)
Avrekh, Ilya
(Stinger Ghaffarian Technologies Inc. (SGT Inc.) Moffett Field, CA, United States)
Weckler, Daniel
(Stinger Ghaffarian Technologies Inc. (SGT Inc.) Moffett Field, CA, United States)
Date Acquired
March 27, 2020
Publication Date
March 24, 2020
Subject Category
Aeronautics (General)
Report/Patent Number
ARC-E-DAA-TN78601
Meeting Information
Meeting: Second AI and Data Science Workshop for Earth and Space Sciences
Location: Pasadena, CA
Country: United States
Start Date: March 24, 2020
End Date: March 26, 2020
Sponsors: Jet Propulsion Laboratory (JPL), California Institute of Technology (CalTech)
Funding Number(s)
CONTRACT_GRANT: NNA16BD14C
CONTRACT_GRANT: NNA14AA60C
Distribution Limits
Public
Copyright
Public Use Permitted.
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