Overview of the SDSS-IV MaNGA Survey: Mapping Nearby Galaxies at Apache Point Observatory
Kevin Bundy, Matthew A. Bershady, David R. Law, Renbin Yan, Niv Drory,, Nicholas MacDonald, David A. Wake, Brian Cherinka, Jos\'e R., S\'anchez-Gallego, Anne-Marie Weijmans, Daniel Thomas, Christy Tremonti,, Karen Masters, Lodovico Coccato, Aleksandar M. Diamond-Stanic, Alfonso

TL;DR
MaNGA is a comprehensive integral field spectroscopic survey of 10,000 nearby galaxies, designed to study their internal kinematics, composition, and star formation processes with high spatial resolution and spectral coverage.
Contribution
This paper introduces the MaNGA survey's design, instrumentation, and initial observations, highlighting its capability to map galaxy properties in unprecedented detail.
Findings
Prototype observations demonstrate MaNGA's ability to analyze gas ionization and star formation.
MaNGA achieves high signal-to-noise ratios for galaxy outskirts within 3-hour integrations.
The survey provides spatially resolved spectra for a diverse galaxy sample.
Abstract
We present an overview of a new integral field spectroscopic survey called MaNGA (Mapping Nearby Galaxies at Apache Point Observatory), one of three core programs in the fourth-generation Sloan Digital Sky Survey (SDSS-IV) that began on 2014 July 1. MaNGA will investigate the internal kinematic structure and composition of gas and stars in an unprecedented sample of 10,000 nearby galaxies. We summarize essential characteristics of the instrument and survey design in the context of MaNGA's key science goals and present prototype observations to demonstrate MaNGA's scientific potential. MaNGA employs dithered observations with 17 fiber-bundle integral field units that vary in diameter from 12" (19 fibers) to 32" (127 fibers). Two dual-channel spectrographs provide simultaneous wavelength coverage over 3600-10300 A at R~2000. With a typical integration time of 3 hr, MaNGA reaches a target…
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