Cluster Lensing And Supernova survey with Hubble (CLASH): An Overview
Marc Postman, Dan Coe, Narciso Benitez, Larry Bradley, Tom Broadhurst,, Megan Donahue, Holland Ford, Or Graur, Genevieve Graves, Stephanie Jouvel,, Anton Koekemoer, Doron Lemze, Elinor Medezinski, Alberto Molino, Leonidas, Moustakas, Sara Ogaz, Adam Riess, Steve Rodney

TL;DR
The CLASH survey uses gravitational lensing of galaxy clusters observed by Hubble to map dark matter, study cluster properties, and discover high-redshift supernovae, advancing understanding of dark matter concentration and dark energy.
Contribution
This paper provides a comprehensive overview of the CLASH program, detailing its methodology, cluster selection, and scientific goals, including dark matter mapping and high-redshift supernova detection.
Findings
Lensed images enable precise photometric redshifts (sigma_phz < 0.02(1+z)).
High magnification allows detection of z > 7 galaxies.
Cluster sample is large, less biased, and includes X-ray selected relaxed clusters.
Abstract
The Cluster Lensing And Supernova survey with Hubble (CLASH) is a 524-orbit multi-cycle treasury program to use the gravitational lensing properties of 25 galaxy clusters to accurately constrain their mass distributions. The survey, described in detail in this paper, will definitively establish the degree of concentration of dark matter in the cluster cores, a key prediction of CDM. The CLASH cluster sample is larger and less biased than current samples of space-based imaging studies of clusters to similar depth, as we have minimized lensing-based selection that favors systems with overly dense cores. Specifically, twenty CLASH clusters are solely X-ray selected. The X-ray selected clusters are massive (kT > 5 keV; 5 - 30 x 10^14 M_solar) and, in most cases, dynamically relaxed. Five additional clusters are included for their lensing strength (Einstein radii > 35 arcsec at z_source = 2)…
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