Expanding the search for galaxies at z ~7-10 with new NICMOS Parallel Fields
Alaina Henry, Brian Siana, Matthew Malkan, Matthew Ashby, Carrie, Bridge, Ranga-Ram Chary, James Colbert, Mauro Giavalisco, Harry Teplitz,, Patrick McCarthy

TL;DR
This study expands the search for high-redshift galaxies (z ~7-10) using new NICMOS data, finds no candidates, and discusses implications for galaxy luminosity evolution and contamination issues.
Contribution
It provides new deep near-infrared imaging data covering 14.4 sq. arcmin, sets constraints on galaxy luminosity functions at z~7-10, and evaluates the contamination and completeness of such surveys.
Findings
No z>7 candidates found in the survey area.
Luminosity evolution of LBGs continues to z~7.
Detected a z~9 candidate likely an interloper at z~2.7.
Abstract
We have carried out a search for galaxies at z ~ 7-10 in ~14.4 sq. arcmin of new NICMOS parallel imaging taken in the Great Observatories Origins Deep Survey (GOODS, 5.9 sq. arcmin), the Cosmic Origins Survey (COSMOS, 7.2 sq. arcmin), and SSA22 (1.3 sq. arcmin). These images reach 5 sigma sensitivities of J110 = 26.0-27.5 (AB), and combined they increase the amount of deep near-infrared data by more than 60% in fields where the investment in deep optical data has already been made. We find no z>7 candidates in our survey area, consistent with the Bouwens et al. (2008) measurements at z~7 and 9 (over 23 sq. arcmin), which predict 0.7 galaxies at z~7 and <0.03 galaxies at z~9. We estimate that 10-20% of z>7 galaxies are missed by this survey, due to incompleteness from foreground contamination by faint sources. For the case of luminosity evolution, assuming a Schecter parameterization…
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Taxonomy
TopicsAstronomy and Astrophysical Research · Adaptive optics and wavefront sensing · Experimental Learning in Engineering
