Combining OC-SVMs With LSTM for Detecting Anomalies in Telemetry Data With Irregular Intervals

To ensure the safety and stability of spacecrafts of which thousands of telemetry parameters are monitored, fast and accurate response to anomalies or potential hazards is very important and challenging. This task becomes more difficult when the obtained telemetry data are sampled at irregular inter...

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Main Authors: Junfeng Wu, Li Yao, Bin Liu, Zheyuan Ding, Lei Zhang
Format: Article
Language:English
Published: IEEE 2020-01-01
Series:IEEE Access
Subjects:
Online Access:https://ieeexplore.ieee.org/document/9110828/
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spelling doaj-acd598c5f5e84085b35d26a3a736e1e82021-03-30T02:57:01ZengIEEEIEEE Access2169-35362020-01-01810664810665910.1109/ACCESS.2020.30008599110828Combining OC-SVMs With LSTM for Detecting Anomalies in Telemetry Data With Irregular IntervalsJunfeng Wu0https://orcid.org/0000-0001-5848-2805Li Yao1Bin Liu2Zheyuan Ding3Lei Zhang4Science and Technology on Information System and Engineering Laboratory, National University of Defense Technology, Changsha, ChinaScience and Technology on Information System and Engineering Laboratory, National University of Defense Technology, Changsha, ChinaScience and Technology on Information System and Engineering Laboratory, National University of Defense Technology, Changsha, ChinaScience and Technology on Information System and Engineering Laboratory, National University of Defense Technology, Changsha, ChinaXi’an Satellite Control Center, Xi’an, ChinaTo ensure the safety and stability of spacecrafts of which thousands of telemetry parameters are monitored, fast and accurate response to anomalies or potential hazards is very important and challenging. This task becomes more difficult when the obtained telemetry data are sampled at irregular intervals. Long Short-Term Memory networks (LSTM), as time series prediction models, have been applied to satellite anomaly detection and show a promising prospect. However, the anomaly detection method merely based on LSTM does not show a stable performance: when the prediction performance of LSTM is not satisfying, the performance of subsequent anomaly detection will be affected, and the impact is augmented when the telemetry data are of irregular intervals. In order to solve these problems, time intervals are introduced into the LSTM model directly. Besides that, a novel anomaly detection method, Detecting Anomalies using LSTM and Ensembled One-Class Support Vector Machines (DALEO) is proposed to further improve the performance of anomaly detection. In DALEO, multiple One-Class Support Vector Machines are used to obtain the ensemble outputs of high precision and high recall respectively. These ensemble outputs are integrated into the two stages of the anomaly detection method with LSTM in a novel way. Extensive empirical studies on real-world datasets of satellites and space shuttles demonstrate that DALEO improves the performance of anomaly detection significantly when dealing with telemetry data with irregular intervals.https://ieeexplore.ieee.org/document/9110828/Spacecraftsirregular intervalsone-class support vector machinelong short-term memory networkanomaly detectionintegration
collection DOAJ
language English
format Article
sources DOAJ
author Junfeng Wu
Li Yao
Bin Liu
Zheyuan Ding
Lei Zhang
spellingShingle Junfeng Wu
Li Yao
Bin Liu
Zheyuan Ding
Lei Zhang
Combining OC-SVMs With LSTM for Detecting Anomalies in Telemetry Data With Irregular Intervals
IEEE Access
Spacecrafts
irregular intervals
one-class support vector machine
long short-term memory network
anomaly detection
integration
author_facet Junfeng Wu
Li Yao
Bin Liu
Zheyuan Ding
Lei Zhang
author_sort Junfeng Wu
title Combining OC-SVMs With LSTM for Detecting Anomalies in Telemetry Data With Irregular Intervals
title_short Combining OC-SVMs With LSTM for Detecting Anomalies in Telemetry Data With Irregular Intervals
title_full Combining OC-SVMs With LSTM for Detecting Anomalies in Telemetry Data With Irregular Intervals
title_fullStr Combining OC-SVMs With LSTM for Detecting Anomalies in Telemetry Data With Irregular Intervals
title_full_unstemmed Combining OC-SVMs With LSTM for Detecting Anomalies in Telemetry Data With Irregular Intervals
title_sort combining oc-svms with lstm for detecting anomalies in telemetry data with irregular intervals
publisher IEEE
series IEEE Access
issn 2169-3536
publishDate 2020-01-01
description To ensure the safety and stability of spacecrafts of which thousands of telemetry parameters are monitored, fast and accurate response to anomalies or potential hazards is very important and challenging. This task becomes more difficult when the obtained telemetry data are sampled at irregular intervals. Long Short-Term Memory networks (LSTM), as time series prediction models, have been applied to satellite anomaly detection and show a promising prospect. However, the anomaly detection method merely based on LSTM does not show a stable performance: when the prediction performance of LSTM is not satisfying, the performance of subsequent anomaly detection will be affected, and the impact is augmented when the telemetry data are of irregular intervals. In order to solve these problems, time intervals are introduced into the LSTM model directly. Besides that, a novel anomaly detection method, Detecting Anomalies using LSTM and Ensembled One-Class Support Vector Machines (DALEO) is proposed to further improve the performance of anomaly detection. In DALEO, multiple One-Class Support Vector Machines are used to obtain the ensemble outputs of high precision and high recall respectively. These ensemble outputs are integrated into the two stages of the anomaly detection method with LSTM in a novel way. Extensive empirical studies on real-world datasets of satellites and space shuttles demonstrate that DALEO improves the performance of anomaly detection significantly when dealing with telemetry data with irregular intervals.
topic Spacecrafts
irregular intervals
one-class support vector machine
long short-term memory network
anomaly detection
integration
url https://ieeexplore.ieee.org/document/9110828/
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