Enhancing weak lensing redshift distribution characterization by optimizing the Dark Energy Survey Self-Organizing Map Photo-z method
A. Campos, B. Yin, S. Dodelson, A. Amon, A. Alarcon, C. S\'anchez, G., M. Bernstein, G. Giannini, J. Myles, S. Samuroff, O. Alves, F., Andrade-Oliveira, K. Bechtol, M. R. Becker, J. Blazek, H. Camacho, A. Carnero, Rosell, M. Carrasco Kind, R. Cawthon, C. Chang, R. Chen, A. Choi

TL;DR
This paper improves photometric redshift estimation for galaxy surveys by optimizing the Self-Organizing Map method, significantly reducing redshift bin overlap, which enhances weak lensing analyses for current and future cosmological surveys.
Contribution
The study introduces tailored SOM algorithms and incorporates additional flux information to enhance redshift distribution characterization in DES Y6 data, outperforming previous methods.
Findings
Reduced redshift bin overlap by up to 66% with combined strategies.
Significant improvements in redshift estimation accuracy.
Method enhancements are applicable to future stage IV surveys.
Abstract
Characterization of the redshift distribution of ensembles of galaxies is pivotal for large scale structure cosmological studies. In this work, we focus on improving the Self-Organizing Map (SOM) methodology for photometric redshift estimation (SOMPZ), specifically in anticipation of the Dark Energy Survey Year 6 (DES Y6) data. This data set, featuring deeper and fainter galaxies than DES Year 3 (DES Y3), demands adapted techniques to ensure accurate recovery of the underlying redshift distribution. We investigate three strategies for enhancing the existing SOM-based approach used in DES Y3: 1) Replacing the Y3 SOM algorithm with one tailored for redshift estimation challenges; 2) Incorporating -band flux information to refine redshift estimates (i.e. using fluxes as opposed to only ); 3) Augmenting redshift data for galaxies where available.…
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Taxonomy
TopicsCCD and CMOS Imaging Sensors · Galaxies: Formation, Evolution, Phenomena · Astronomy and Astrophysical Research
