Litcius/Paper detail

Identifying Galaxy Mergers in Simulated CEERS NIRCam Images Using Random Forests

Caitlin Rose, Jeyhan S. Kartaltepe, Gregory F. Snyder, Vicente Rodríguez-Gómez, L. Y. Aaron Yung, Pablo Arrabal Haro, Micaela B. Bagley, Antonello Calabrò, Nikko J. Cleri, Michael C. Cooper, Luca Costantin, Darren Croton, Mark Dickinson, Steven L. Finkelstein, Boris Häußler, Benne W. Holwerda, Anton M. Koekemoer, Peter Kurczynski, Ray A. Lucas, Kameswara Bharadwaj Mantha, Casey Papovich, Pablo G. Pérez‐González, Nor Pirzkal, Rachel S. Somerville, Amber N. Straughn, Sandro Tacchella

2023The Astrophysical Journal29 citationsDOIOpen Access PDF

Abstract

Abstract Identifying merging galaxies is an important—but difficult—step in galaxy evolution studies. We present random forest (RF) classifications of galaxy mergers from simulated JWST images based on various standard morphological parameters. We describe (a) constructing the simulated images from IllustrisTNG and the Santa Cruz SAM and modifying them to mimic future CEERS observations and nearly noiseless observations, (b) measuring morphological parameters from these images, and (c) constructing and training the RFs using the merger history information for the simulated galaxies available from IllustrisTNG. The RFs correctly classify ∼60% of non-merging and merging galaxies across 0.5 < z < 4.0. Rest-frame asymmetry parameters appear more important for lower-redshift merger classifications, while rest-frame bulge and clump parameters appear more important for higher-redshift classifications. Adjusting the classification probability threshold does not improve the performance of the forests. Finally, the shape and slope of the resulting merger fraction and merger rate derived from the RF classifications match with theoretical Illustris predictions but are underestimated by a factor of ∼0.5.

Topics & Concepts

PhysicsRedshiftGalaxyAstrophysicsRandom forestFrame (networking)BulgeGalaxy mergerGalaxy formation and evolutionAstronomyArtificial intelligenceComputer scienceTelecommunicationsGalaxies: Formation, Evolution, PhenomenaAdvanced Vision and ImagingAdvanced Image Processing Techniques