AMiBA: Cluster Sunyaev-Zel'dovich Effect Observations with the Expanded 13-Element Array
Kai-Yang Lin, Hiroaki Nishioka, Fu-Cheng Wang, Chih-Wei Locutus Huang,, Yu-Wei Liao, Jiun-Huei Proty Wu, Patrick M. Koch, Keiichi Umetsu, Ming-Tang, Chen, Shun-Hsiang Chan, Shu-Hao Chang, Wen-Hsuan Lucky Chang, Tai-An Cheng,, Hoang Ngoc Duy, Szu-Yuan Fu, Chih-Chiang Han

TL;DR
AMiBA's expanded 13-element array enhances observations of galaxy cluster Sunyaev-Zel'dovich effects, providing detailed maps and mass estimates that align with other measurement methods, advancing microwave background research.
Contribution
This paper introduces the upgraded 13-element AMiBA array, detailing its design, commissioning, and successful SZE observations of galaxy clusters, including the first detection towards an optically selected cluster.
Findings
Maps of 12 galaxy clusters showing SZE signals.
Consistent cluster mass estimates with lensing measurements.
First targeted SZE detection of RCS J1447+0828.
Abstract
The Yuan-Tseh Lee Array for Microwave Background Anisotropy (AMiBA) is a co-planar interferometer array operating at a wavelength of 3mm to measure the Sunyaev-Zeldovich effect (SZE) of galaxy clusters. In the first phase of operation -- with a compact 7-element array with 0.6m antennas (AMiBA-7) -- we observed six clusters at angular scales from 5\arcmin to 23\arcmin. Here, we describe the expansion of AMiBA to a 13-element array with 1.2m antennas (AMiBA-13), its subsequent commissioning, and our cluster SZE observing program. The most important changes compared to AMiBA-7 are (1) array re-configuration with baselines ranging from 1.4m to 4.8m covering angular scales from 2\arcmin to 11.5\arcmin, (2) thirteen new lightweight carbon-fiber-reinforced plastic (CFRP) 1.2m reflectors, and (3) additional correlators and six new receivers. From the AMiBA-13 SZE observing program, we present…
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