Identifying mergers using non-parametric morphological classification at high redshifts
Abstract
We investigate the time evolution of non-parametric morphological quantities and their relationship to major mergers between in high-resolution cosmological zoom simulations of disk galaxies that implement kinetic wind feedback, -based star formation, and minimal ISM pressurisation. We show that the resulting galaxies broadly match basic observed physical properties of objects. We measure the galaxies' concentrations (), asymmetries (), and () and coefficients, and correlate these with major merger events identified from the mass growth history. We find that high values of asymmetry provide the best indicator for identifying major mergers of mass ratio within our sample, with - merger classification only as effective for face-on systems and much less effective for edge-on or randomly-oriented galaxies. The canonical asymmetry cut of , however, is only able to correctly identify major mergers of the time, while a higher cut of more efficiently picks out mergers at this epoch. We further examine the temporal correlation between morphological statistics and mergers, and show that for randomly-oriented galaxies, half the galaxies with undergo a merger within , whereas - identification only identifies about a third correctly. The fraction improves further using , but about the half the mergers are missed by this stringent cut.
Cite
@article{arxiv.1508.01851,
title = {Identifying mergers using non-parametric morphological classification at high redshifts},
author = {Robert Thompson and Romeel Davé and Shuiyao Huang and Neal Katz},
journal= {arXiv preprint arXiv:1508.01851},
year = {2015}
}
Comments
19 pages, 19 figures, submitted