Unsupervised Anomaly Detection for Space Gardening

The EDEN Roadmap at DLR aims at building a Bio-regenerative Life Support System (BLSS) for future space missions within the current decade. To ensure the safe and stable operation of the BLSS, the need for automated system monitoring in general and, in particular, robust anomaly detection is apparen...

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Bibliographic Details
Main Authors: Rewicki, Ferdinand, Denzler, Joachim, Niebling, Julia
Format: Conference Object
Language:unknown
Published: 2023
Subjects:
Online Access:https://elib.dlr.de/201401/
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spelling ftdlr:oai:elib.dlr.de:201401 2024-05-19T07:32:21+00:00 Unsupervised Anomaly Detection for Space Gardening Rewicki, Ferdinand Denzler, Joachim Niebling, Julia 2023-05-30 https://elib.dlr.de/201401/ unknown Rewicki, Ferdinand und Denzler, Joachim und Niebling, Julia (2023) Unsupervised Anomaly Detection for Space Gardening. Advances in Artificial Intelligence for Aerospace Engineering, 2023-05-30, Paris. (nicht veröffentlicht) Datenanalyse und -intelligenz Konferenzbeitrag NonPeerReviewed 2023 ftdlr 2024-04-25T01:11:02Z The EDEN Roadmap at DLR aims at building a Bio-regenerative Life Support System (BLSS) for future space missions within the current decade. To ensure the safe and stable operation of the BLSS, the need for automated system monitoring in general and, in particular, robust anomaly detection is apparent. While the abundance of available methods makes it difficult to choose the most appropriate method for a specific application, each method has its strengths in detecting anomalies of different types. The decision becomes even more difficult if annotated data is not available that could be used for model selection. To address this challenge, we compared six unsupervised anomaly detection methods of varying complexity on the UCR anomaly archive benchmark. The goal was to determine whether more complex methods perform better and if certain methods are better suited to specific anomaly types. To validate our findings in the BLSS domain, we applied the best-performing methods to telemetry data collected from the EDEN ISS research greenhouse, which operated from 2018 - 2021 in Antarctica. Conference Object Antarc* Antarctica German Aerospace Center: elib - DLR electronic library
institution Open Polar
collection German Aerospace Center: elib - DLR electronic library
op_collection_id ftdlr
language unknown
topic Datenanalyse und -intelligenz
spellingShingle Datenanalyse und -intelligenz
Rewicki, Ferdinand
Denzler, Joachim
Niebling, Julia
Unsupervised Anomaly Detection for Space Gardening
topic_facet Datenanalyse und -intelligenz
description The EDEN Roadmap at DLR aims at building a Bio-regenerative Life Support System (BLSS) for future space missions within the current decade. To ensure the safe and stable operation of the BLSS, the need for automated system monitoring in general and, in particular, robust anomaly detection is apparent. While the abundance of available methods makes it difficult to choose the most appropriate method for a specific application, each method has its strengths in detecting anomalies of different types. The decision becomes even more difficult if annotated data is not available that could be used for model selection. To address this challenge, we compared six unsupervised anomaly detection methods of varying complexity on the UCR anomaly archive benchmark. The goal was to determine whether more complex methods perform better and if certain methods are better suited to specific anomaly types. To validate our findings in the BLSS domain, we applied the best-performing methods to telemetry data collected from the EDEN ISS research greenhouse, which operated from 2018 - 2021 in Antarctica.
format Conference Object
author Rewicki, Ferdinand
Denzler, Joachim
Niebling, Julia
author_facet Rewicki, Ferdinand
Denzler, Joachim
Niebling, Julia
author_sort Rewicki, Ferdinand
title Unsupervised Anomaly Detection for Space Gardening
title_short Unsupervised Anomaly Detection for Space Gardening
title_full Unsupervised Anomaly Detection for Space Gardening
title_fullStr Unsupervised Anomaly Detection for Space Gardening
title_full_unstemmed Unsupervised Anomaly Detection for Space Gardening
title_sort unsupervised anomaly detection for space gardening
publishDate 2023
url https://elib.dlr.de/201401/
genre Antarc*
Antarctica
genre_facet Antarc*
Antarctica
op_relation Rewicki, Ferdinand und Denzler, Joachim und Niebling, Julia (2023) Unsupervised Anomaly Detection for Space Gardening. Advances in Artificial Intelligence for Aerospace Engineering, 2023-05-30, Paris. (nicht veröffentlicht)
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