SFI++. II. A new I-BAND tully-fisher catalog, derivation of peculiar velocities, and data set properties

Christopher M. Springob, Karen L. Masters, Martha P. Haynes, Riccardo Giovanelli, Christian Marinoni

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Abstract

We present the SFI++ data set, a homogeneously derived catalog of photometric and rotational properties and the Tully-Fisher distances and peculiar velocities derived from them.We make use of digital optical images, optical longslit spectra, and global H i line profiles to extract parameters of relevance to disk scaling relations, incorporating several previously published data sets as well as a new photometric sample of some 2000 objects. According to the completeness of available redshift samples over the sky area, we exploit both a modified percolation algorithm and the Voronoi-Delaunay method to assign individual galaxies to groups as well as clusters, thereby reducing scatter introduced by local orbital motions. We also provide corrections to the peculiar velocities for both homogeneous and inhomogeneous Malmquist bias, making use of the 2MASS Redshift Survey density field to approximate large-scale structure.We summarize the sample selection criteria, corrections made to raw observational parameters, the grouping techniques, and our procedure for deriving peculiar velocities. The final SFI++ peculiar velocity catalog of 4861 field and cluster galaxies is large enough to permit the study not just of the global statistics of large-scale flows but also of the details of the local velocity field.
Original languageEnglish
Pages (from-to)599-614
JournalThe Astrophysical Journal Supplement Series
Volume172
Issue number2
DOIs
Publication statusPublished - Oct 2007

Keywords

  • astronomical data bases : miscellaneous
  • galaxies : distances and redshifts
  • galaxies : fundamental parameters large scale structure of universe

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