Learning from Temporal Aviation Data to Detect Anomaly Events

Junyu Gao, Hongchao Lu, Xuelong Li

Research output: Chapter in Book/Report/Conference proceedingConference contributionpeer-review

3 Scopus citations

Abstract

Recently, data analysis of aviation sensors is a hot topic because it is important to aviation safety. Many researchers propose temporal models (RNN, LSTM, etc.) to predict the accuracy performance degradation of sensors, due to the mechanical property, and filter out anomaly data of sensors. However, aerial sensor data is usually long-term data because of intensive sample rates and long runs. The traditional models usually lose the gradients during the training phase for long-sequence data. To reduce this problem, in this paper, Residual-Cascaded LSTM (RC-LSTM) is proposed. It can effectively extract the rich features from large inputs to model large-range independence. Besides, it is found that the volume of anomaly data is much less than that of normal samples. Thus, a distribution-aware shuffling scheme is designed to assist models to learn more reasonable representations for input data. A large number of experiments are performed on the simulated flight sensor dataset and two public datasets (earthquake, Lightning2). The proposed RC-LSTM is better than the most advanced method (RNN, LSTM, etc.), and its accuracy is 80%.

Original languageEnglish
Title of host publicationProceedings of the 6th China Aeronautical Science and Technology Conference - Volume II
PublisherSpringer Science and Business Media Deutschland GmbH
Pages295-304
Number of pages10
ISBN (Print)9789819988631
DOIs
StatePublished - 2024
Event6th China Aeronautical Science and Technology Conference, CASTC 2023 - Wuzhen, China
Duration: 26 Sep 202327 Sep 2023

Publication series

NameLecture Notes in Mechanical Engineering
ISSN (Print)2195-4356
ISSN (Electronic)2195-4364

Conference

Conference6th China Aeronautical Science and Technology Conference, CASTC 2023
Country/TerritoryChina
CityWuzhen
Period26/09/2327/09/23

Keywords

  • Anomaly Detection
  • Aviation Sensor
  • Temporal Data

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