ZTF SN Ia DR2: An environmental study of Type Ia supernovae using host galaxy image decomposition
R. Senzel, K. Maguire, U. Burgaz, G. Dimitriadis, M. Rigault, A., Goobar, J. Johansson, M. Smith, M. Deckers, L. Galbany, M. Ginolin, L., Harvey, Y.-L. Kim, T. E. Muller-Bravo, P. Nugent, P. Rosnet, J. Sollerman, J., H. Terwel, R. R. Laher, D. Reiley, B. Rusholme

TL;DR
This study analyzes the environments of Type Ia supernovae using detailed host galaxy image decomposition, revealing different correlations between supernova properties and host galaxy features, with implications for understanding their progenitors.
Contribution
It introduces a comprehensive image decomposition method to classify host galaxy morphology and extract intrinsic properties, improving environmental analysis of SNe Ia.
Findings
Strong correlation between SN Ia light-curve stretch and host galaxy color.
Different host environment effects observed for elliptical and disk galaxies.
Potential dust influence on SN Ia color in disk galaxy environments.
Abstract
The second data release of Type Ia supernovae (SNe Ia) observed by the Zwicky Transient Facility has provided a homogeneous sample of 3628 SNe Ia with photometric and spectral information. This unprecedented sample size enables us to better explore our currently tentative understanding of the dependence of host environment on SN Ia properties. In this paper, we make use of two-dimensional image decomposition to model the host galaxies of SNe Ia. We model elliptical galaxies as well as disk/spiral galaxies with or without central bulges and bars. This allows for the categorisation of SN Ia based on their morphological host environment, as well as the extraction of intrinsic galaxy properties corrected for both cosmological and atmospheric effects. We find that although this image decomposition technique leads to a significant bias towards elliptical galaxies in our final sample of…
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