AzTEC half square degree survey of the SHADES fields - II. Identifications, redshifts, and evidence for large-scale structure
M. J. Micha{\l}owski (1), J. S. Dunlop (1), R. J. Ivison (2,1) Michele, Cirasuolo (1), K. I. Caputi (3,1), I. Aretxaga (4), V. Arumugam (1), J. E., Austermann (5), E. L. Chapin (6,7), S. C. Chapman (8), K. E. K. Coppin (9),, E. Egami (10), D. H. Hughes (4), E. Ibar (2)

TL;DR
This large millimetre survey of the SHADES fields identified a significant fraction of sources and derived their redshift distribution, providing evidence for large-scale structure and confirming the importance of wide-area surveys.
Contribution
The paper presents the largest 1.1 mm survey of the SHADES fields with high identification and redshift completeness, linking mm sources to large-scale structures and comparing observations with semi-analytic models.
Findings
Median redshift of sources is ~2.2.
Redshift distribution consistent with previous SCUBA surveys.
Evidence for large-scale structure traced by mm sources.
Abstract
The AzTEC 1.1 mm survey of the SCUBA HAlf Degree Extragalactic Survey (SHADES) fields is the largest (0.7 deg2) blank-field millimetre-wavelength survey undertaken to date at a resolution of ~18" and a depth of ~1 mJy. We have used the deep optical-to-radio multi-wavelength data in the SHADES Lockman Hole East and SXDF/UDS fields to obtain galaxy identifications for ~64% (~80% with tentative identifications) of the 148 AzTEC-SHADES 1.1 mm sources, exploiting deep radio and 24 um data complemented by methods based on 8 um flux-density and red optical-infrared (i-K) colour. This unusually high identification rate can be attributed to the relatively bright millimetre-wavelength flux-density threshold, combined with the relatively deep supporting multi-frequency data. We have further exploited the optical-mid-infrared-radio data to derive a ~60% (~75% with tentative identifications)…
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