The dependence of oxygen and nitrogen abundances on stellar mass from the CALIFA survey
E. P\'erez-Montero, R. Garc\'ia-Benito, J.M. V\'ilchez, S.F., S\'anchez, C. Kehrig, B. Husemann, S. Duarte Puertas, J. Iglesias-P\'armao,, L. Galbany, M. Moll\'a, C.J. Walcher, Y. Ascas\'ibar, R.M. Gonz\'alez, Delgado, R.A. Marino, J. Masegosa, E. P\'erez, F.F. Rosales-Ortega

TL;DR
This study analyzes how oxygen and nitrogen abundances vary with stellar mass in galaxies, revealing trends in radial distributions and tight correlations at the effective radius using CALIFA survey data.
Contribution
It introduces the first use of the HII-CHI-mistry routine for N/O ratios and provides detailed analysis of abundance gradients and their dependence on galaxy properties.
Findings
Both O/H and N/O gradients are generally negative but can be flat or positive.
O/H and N/O at the effective radius are strongly correlated with galaxy mass and luminosity.
No clear link between abundance gradients and galaxy bars or morphology.
Abstract
We analysed the optical spectra of HII regions extracted from a sample of 350 galaxies of the CALIFA survey. We calculated total O/H abundances and, for the first time, N/O ratios using the semi-empirical routine HII-CHI-mistry, which, according to P\'erez-Montero (2014), is consistent with the direct method and reduces the uncertainty in the O/H derivation using [NII] lines owing to the dispersion in the O/H-N/O relation. Then we performed linear fittings to the abundances as a function of the de-projected galactocentric distances. The analysis of the radial distribution both for O/H and N/O in the non-interacting galaxies reveals that both average slopes are negative, but a non-negligible fraction of objects have a flat or even a positive gradient (at least 10\% for O/H and 4\% for N/O). The slopes normalised to the effective radius appear to have a slight dependence on the total…
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