Real-time anomaly detection in sky quality meter data using probabilistic exponential weighted moving average

Light pollution is a problem that impacts many elements of human life and the environment, including astronomical observations. The authors of this work offer a unique method for detecting anomalies in night sky brightness data recorded using a Sky Quality Meter (SQM). This equipment has been widely...

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Published in:International Journal of Data Science and Analytics
Main Author: Riza L.S.; Putra Z.A.Y.; Zain M.I.; Trihutama F.Z.; Utama J.A.; Samah K.A.F.A.; Herdiwijaya D.; NQZ R.A.; Mumpuni E.S.; Priyatikanto R.
Format: Review
Language:English
Published: Springer Science and Business Media Deutschland GmbH 2024
Online Access:https://www.scopus.com/inward/record.uri?eid=2-s2.0-85190776317&doi=10.1007%2fs41060-024-00535-8&partnerID=40&md5=3d80c31ff848bb7746acfe496b279824
id 2-s2.0-85190776317
spelling 2-s2.0-85190776317
Riza L.S.; Putra Z.A.Y.; Zain M.I.; Trihutama F.Z.; Utama J.A.; Samah K.A.F.A.; Herdiwijaya D.; NQZ R.A.; Mumpuni E.S.; Priyatikanto R.
Real-time anomaly detection in sky quality meter data using probabilistic exponential weighted moving average
2024
International Journal of Data Science and Analytics


10.1007/s41060-024-00535-8
https://www.scopus.com/inward/record.uri?eid=2-s2.0-85190776317&doi=10.1007%2fs41060-024-00535-8&partnerID=40&md5=3d80c31ff848bb7746acfe496b279824
Light pollution is a problem that impacts many elements of human life and the environment, including astronomical observations. The authors of this work offer a unique method for detecting anomalies in night sky brightness data recorded using a Sky Quality Meter (SQM). This equipment has been widely utilized in light pollution research worldwide, yielding massive data. However, there is the possibility of experiencing abnormalities or outliers throughout the data collection process due to natural occurrences or measurement errors. This study uses the probabilistic exponential weighted moving average algorithm to find anomalies in SQM data received from Timau Observatory by simulating the streaming procedure on SQM data using Apache Kafka technology. Finally, this study intends to shed fresh knowledge on night sky brightness and light pollution dynamics. The authors could locate and analyze unusual or suspicious phenomena that had previously gone unreported using the anomaly detection approach. These findings can help us better understand light pollution and its environmental and human life effects. Still, they can also help us establish strategies and policies that will reduce light pollution in the future. Furthermore, this work illustrates the potential of anomaly detection as a powerful tool for data analysis in various domains, encouraging the use of this approach in future research. © The Author(s), under exclusive licence to Springer Nature Switzerland AG 2024.
Springer Science and Business Media Deutschland GmbH
2364415X
English
Review

author Riza L.S.; Putra Z.A.Y.; Zain M.I.; Trihutama F.Z.; Utama J.A.; Samah K.A.F.A.; Herdiwijaya D.; NQZ R.A.; Mumpuni E.S.; Priyatikanto R.
spellingShingle Riza L.S.; Putra Z.A.Y.; Zain M.I.; Trihutama F.Z.; Utama J.A.; Samah K.A.F.A.; Herdiwijaya D.; NQZ R.A.; Mumpuni E.S.; Priyatikanto R.
Real-time anomaly detection in sky quality meter data using probabilistic exponential weighted moving average
author_facet Riza L.S.; Putra Z.A.Y.; Zain M.I.; Trihutama F.Z.; Utama J.A.; Samah K.A.F.A.; Herdiwijaya D.; NQZ R.A.; Mumpuni E.S.; Priyatikanto R.
author_sort Riza L.S.; Putra Z.A.Y.; Zain M.I.; Trihutama F.Z.; Utama J.A.; Samah K.A.F.A.; Herdiwijaya D.; NQZ R.A.; Mumpuni E.S.; Priyatikanto R.
title Real-time anomaly detection in sky quality meter data using probabilistic exponential weighted moving average
title_short Real-time anomaly detection in sky quality meter data using probabilistic exponential weighted moving average
title_full Real-time anomaly detection in sky quality meter data using probabilistic exponential weighted moving average
title_fullStr Real-time anomaly detection in sky quality meter data using probabilistic exponential weighted moving average
title_full_unstemmed Real-time anomaly detection in sky quality meter data using probabilistic exponential weighted moving average
title_sort Real-time anomaly detection in sky quality meter data using probabilistic exponential weighted moving average
publishDate 2024
container_title International Journal of Data Science and Analytics
container_volume
container_issue
doi_str_mv 10.1007/s41060-024-00535-8
url https://www.scopus.com/inward/record.uri?eid=2-s2.0-85190776317&doi=10.1007%2fs41060-024-00535-8&partnerID=40&md5=3d80c31ff848bb7746acfe496b279824
description Light pollution is a problem that impacts many elements of human life and the environment, including astronomical observations. The authors of this work offer a unique method for detecting anomalies in night sky brightness data recorded using a Sky Quality Meter (SQM). This equipment has been widely utilized in light pollution research worldwide, yielding massive data. However, there is the possibility of experiencing abnormalities or outliers throughout the data collection process due to natural occurrences or measurement errors. This study uses the probabilistic exponential weighted moving average algorithm to find anomalies in SQM data received from Timau Observatory by simulating the streaming procedure on SQM data using Apache Kafka technology. Finally, this study intends to shed fresh knowledge on night sky brightness and light pollution dynamics. The authors could locate and analyze unusual or suspicious phenomena that had previously gone unreported using the anomaly detection approach. These findings can help us better understand light pollution and its environmental and human life effects. Still, they can also help us establish strategies and policies that will reduce light pollution in the future. Furthermore, this work illustrates the potential of anomaly detection as a powerful tool for data analysis in various domains, encouraging the use of this approach in future research. © The Author(s), under exclusive licence to Springer Nature Switzerland AG 2024.
publisher Springer Science and Business Media Deutschland GmbH
issn 2364415X
language English
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