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Inferring the astrophysical population of gravitational wave sources in the presence of noise transients

Inferring the astrophysical population of gravitational wave sources in the presence of noise transients
Inferring the astrophysical population of gravitational wave sources in the presence of noise transients
The global network of interferometric gravitational wave (GW) observatories (LIGO, Virgo, KAGRA) has detected and characterized nearly 100 mergers of binary compact objects. However, many more real GWs are lurking sub-Threshold, which need to be sifted from terrestrial-origin noise triggers (known as glitches). Because glitches are not due to astrophysical phenomena, inference on the glitch under the assumption it has an astrophysical source (e.g. binary black hole coalescence) results in source parameters that are inconsistent with what is known about the astrophysical population. In this work, we show how one can extract unbiased population constraints from a catalogue of both real GW events and glitch contaminants by performing Bayesian inference on their source populations simultaneously. In this paper, we assume glitches come from a specific class with a well-characterized effective population (blip glitches). We also calculate posteriors on the probability of each event in the catalogue belonging to the astrophysical or glitch class, and obtain posteriors on the number of astrophysical events in the catalogue, finding it to be consistent with the actual number of events included.
black hole mergers, gravitational waves, methods: data analysis, methods: statistical
0035-8711
5972-5984
Heinzel, Jack
ddea985f-aaa4-47d5-828a-a224b3df646c
Talbot, Colm
cc506291-608c-4a95-8e84-78a67954d79c
Ashton, Gregory
a8cec4b1-3c98-4b28-af2a-1e37cb3b9f2a
Vitale, Salvatore
ab6ef497-c1fd-4482-8d2f-824e4adbdd0a
Heinzel, Jack
ddea985f-aaa4-47d5-828a-a224b3df646c
Talbot, Colm
cc506291-608c-4a95-8e84-78a67954d79c
Ashton, Gregory
a8cec4b1-3c98-4b28-af2a-1e37cb3b9f2a
Vitale, Salvatore
ab6ef497-c1fd-4482-8d2f-824e4adbdd0a

Heinzel, Jack, Talbot, Colm, Ashton, Gregory and Vitale, Salvatore (2023) Inferring the astrophysical population of gravitational wave sources in the presence of noise transients. Monthly Notices of the Royal Astronomical Society, 523 (4), 5972-5984. (doi:10.48550/arXiv.2304.02665).

Record type: Article

Abstract

The global network of interferometric gravitational wave (GW) observatories (LIGO, Virgo, KAGRA) has detected and characterized nearly 100 mergers of binary compact objects. However, many more real GWs are lurking sub-Threshold, which need to be sifted from terrestrial-origin noise triggers (known as glitches). Because glitches are not due to astrophysical phenomena, inference on the glitch under the assumption it has an astrophysical source (e.g. binary black hole coalescence) results in source parameters that are inconsistent with what is known about the astrophysical population. In this work, we show how one can extract unbiased population constraints from a catalogue of both real GW events and glitch contaminants by performing Bayesian inference on their source populations simultaneously. In this paper, we assume glitches come from a specific class with a well-characterized effective population (blip glitches). We also calculate posteriors on the probability of each event in the catalogue belonging to the astrophysical or glitch class, and obtain posteriors on the number of astrophysical events in the catalogue, finding it to be consistent with the actual number of events included.

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More information

Accepted/In Press date: 14 June 2023
e-pub ahead of print date: 22 June 2023
Published date: 30 June 2023
Keywords: black hole mergers, gravitational waves, methods: data analysis, methods: statistical

Identifiers

Local EPrints ID: 508296
URI: http://eprints.soton.ac.uk/id/eprint/508296
ISSN: 0035-8711
PURE UUID: e7e25e7a-89ca-45ea-abcb-b3085dec2c95
ORCID for Gregory Ashton: ORCID iD orcid.org/0000-0001-7288-2231

Catalogue record

Date deposited: 16 Jan 2026 17:36
Last modified: 20 Jan 2026 03:14

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Contributors

Author: Jack Heinzel
Author: Colm Talbot
Author: Gregory Ashton ORCID iD
Author: Salvatore Vitale

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