arXiv Analytics

Sign in

arXiv:1901.07266 [astro-ph.GA]AbstractReferencesReviewsResources

Deep Learning for Galaxy Mergers in the Galaxy Main Sequence

William J. Pearson, Lingyu Wang, James Trayford, Carlo E. Petrillo, Floris F. S. van der Tak

Published 2019-01-22Version 1

Starburst galaxies are often found to be the result of galaxy mergers. As a result, galaxy mergers are often believed to lie above the galaxy main sequence: the tight correlation between stellar mass and star formation rate. Here, we aim to test this claim. Deep learning techniques are applied to images from the Sloan Digital Sky Survey to provide visual-like classifications for over 340 000 objects between redshifts of 0.005 and 0.1. The aim of this classification is to split the galaxy population into merger and non-merger systems and we are currently achieving an accuracy of 91.5%. Stellar masses and star formation rates are also estimated using panchromatic data for the entire galaxy population. With these preliminary data, the mergers are placed onto the full galaxy main sequence, where we find that merging systems lie across the entire star formation rate - stellar mass plane.

Comments: 4 pages, 1 figure. For Proceedings IAU Symposium No. 341
Categories: astro-ph.GA
Related articles: Most relevant | Search more
arXiv:2108.00010 [astro-ph.GA] (Published 2021-07-30)
Radialization of satellite orbits in galaxy mergers
arXiv:1807.00807 [astro-ph.GA] (Published 2018-07-02)
Knowledge transfer of Deep Learning for galaxy morphology from one survey to another
arXiv:2107.05601 [astro-ph.GA] (Published 2021-07-12)
Statistics of galaxy mergers: bridging the gap between theory and observation