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Anomaly Detection and Approximate Similarity Searches of Transients in Real-time Data Streams.

Authors :
Aleo, P. D.
Engel, A. W.
Narayan, G.
Angus, C. R.
Malanchev, K.
Auchettl, K.
Baldassare, V. F.
Berres, A.
de Boer, T. J. L.
Boyd, B. M.
Chambers, K. C.
Davis, K. W.
Esquivel, N.
Farias, D.
Foley, R. J.
Gagliano, A.
Gall, C.
Gao, H.
Gomez, S.
Grayling, M.
Source :
Astrophysical Journal. 10/20/2024, Vol. 974 Issue 2, p1-49. 49p.
Publication Year :
2024

Abstract

We present Lightcurve Anomaly Identification and Similarity Search (LAISS), an automated pipeline to detect anomalous astrophysical transients in real-time data streams. We deploy our anomaly detection model on the nightly Zwicky Transient Facility (ZTF) Alert Stream via the ANTARES broker, identifying a manageable ∼1–5 candidates per night for expert vetting and coordinating follow-up observations. Our method leverages statistical light-curve and contextual host galaxy features within a random forest classifier, tagging transients of rare classes (spectroscopic anomalies), of uncommon host galaxy environments (contextual anomalies), and of peculiar or interaction-powered phenomena (behavioral anomalies). Moreover, we demonstrate the power of a low-latency (∼ms) approximate similarity search method to find transient analogs with similar light-curve evolution and host galaxy environments. We use analogs for data-driven discovery, characterization, (re)classification, and imputation in retrospective and real-time searches. To date, we have identified ∼50 previously known and previously missed rare transients from real-time and retrospective searches, including but not limited to superluminous supernovae (SLSNe), tidal disruption events, SNe IIn, SNe IIb, SNe I-CSM, SNe Ia-91bg-like, SNe Ib, SNe Ic, SNe Ic-BL, and M31 novae. Lastly, we report the discovery of 325 total transients, all observed between 2018 and 2021 and absent from public catalogs (∼1% of all ZTF Astronomical Transient reports to the Transient Name Server through 2021). These methods enable a systematic approach to finding the "needle in the haystack" in large-volume data streams. Because of its integration with the ANTARES broker, LAISS is built to detect exciting transients in Rubin data. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
0004637X
Volume :
974
Issue :
2
Database :
Academic Search Index
Journal :
Astrophysical Journal
Publication Type :
Academic Journal
Accession number :
180254599
Full Text :
https://doi.org/10.3847/1538-4357/ad6869