The limitations (and potential) of non-parametric morphology statistics for post-merger identification

Author:

Wilkinson Scott1ORCID,Ellison Sara L1ORCID,Bottrell Connor234ORCID,Bickley Robert W1ORCID,Byrne-Mamahit Shoshannah1ORCID,Ferreira Leonardo1,Patton David R5ORCID

Affiliation:

1. Department of Physics and Astronomy, University of Victoria , Victoria, British Columbia V8P 1A1 , Canada

2. Kavli Institute for the Physics and Mathematics of the Universe (WPI), UTIAS, University of Tokyo , Kashiwa, Chiba 277-8583 , Japan

3. International Centre for Radio Astronomy Research, University of Western Australia , 35 Stirling Hwy, Crawley, WA 6009 , Australia

4. Center for Data-Driven Discovery, Kavli IPMU (WPI), UTIAS, The University of Tokyo , Kashiwa, Chiba 277-8583 , Japan

5. Department of Physics and Astronomy, Trent University , 1600 West Bank Drive, Peterborough, ON K9L 0G2 , Canada

Abstract

ABSTRACT Non-parametric morphology statistics have been used for decades to classify galaxies into morphological types and identify mergers in an automated way. In this work, we assess how reliably we can identify galaxy post-mergers with non-parametric morphology statistics. Low-redshift (z ≲ 0.2), recent (tpost-merger ≲ 200 Myr), and isolated (r > 100 kpc) post-merger galaxies are drawn from the IllustrisTNG100-1 cosmological simulation. Synthetic r-band images of the mergers are generated with SKIRT9 and degraded to various image qualities, adding observational effects such as sky noise and atmospheric blurring. We find that even in perfect quality imaging, the individual non-parametric morphology statistics fail to recover more than 55 per cent of the post-mergers, and that this number decreases precipitously with worsening image qualities. The realistic distributions of galaxy properties in IllustrisTNG allow us to show that merger samples assembled using individual morphology statistics are biased towards low-mass, high gas fraction, and high mass ratio. However, combining all of the morphology statistics together using either a linear discriminant analysis or random forest algorithm increases the completeness and purity of the identified merger samples and mitigates bias with various galaxy properties. For example, we show that in imaging similar to that of the 10-yr depth of the Legacy Survey of Space and Time, a random forest can identify 89 per cent of mergers with a false positive rate of 17 per cent. Finally, we conduct a detailed study of the effect of viewing angle on merger observability and find that there may be an upper limit to merger recovery due to the orientation of merger features with respect to the observer.

Funder

University of Victoria

Publisher

Oxford University Press (OUP)

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