P-MaNGA: Emission Lines Properties - Gas Ionisation and Chemical Abundances from Prototype Observations
F. Belfiore, R. Maiolino, K. Bundy, D. Thomas, C. Maraston, D., Wilkinson, S. F. S\'anchez, M. Bershady, G. A. Blanc, M. Bothwell, S. L., Cales, L. Coccato, N. Drory, E. Emsellem, H. Fu, J. Gelfand, D. Law, K., Masters, J. Parejko, C. Tremonti, D. Wake, A. Weijmans, R. Yan

TL;DR
This paper analyzes spatially resolved emission line properties in 14 nearby galaxies using prototype MaNGA data, revealing complex ionization sources, stellar populations, and metallicity variations that inform galaxy evolution understanding.
Contribution
It provides the first detailed spatially resolved emission line analysis from P-MaNGA, highlighting the importance of resolved diagnostics over single-fiber spectra for galaxy characterization.
Findings
Extended star formation in galaxies with central Seyfert/LINER emission.
Detection of extraplanar LINER-like emission linked to diffuse ionised gas.
Correlation between metallicity and star formation rate surface density.
Abstract
MaNGA (Mapping Nearby Galaxies at Apache Point Observatory) is a SDSS-IV survey that will obtain spatially resolved spectroscopy from 3600 \AA\ to 10300 \AA\ for a representative sample of over 10000 nearby galaxies. In this paper we present the analysis of nebular emission line properties in 14 galaxies obtained with P-MaNGA, a prototype of the MaNGA instrument. Using spatially resolved diagnostic diagrams we find extended star formation in galaxies that are centrally dominated by Seyfert/LINER-like emission, which illustrates that galaxy characterisations based on single fibre spectra are necessarily incomplete. We observe extended LINER-like emission (up to ) in three galaxies. We make use of the to argue that the observed emission is consistent with ionisation from hot evolved stars. We derive stellar population indices and demonstrate a clear…
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