A Reassessment of the Pantheon+ and DES 5YR Calibration Uncertainties: Dovekie
B. Popovic, W.D. Kenworthy, M. Ginolin, A. Goobar, P. Shah, B.M. Boyd, A. Do, D. Brout, D. Scolnic, M. Vincenzi, S. Dhawan, D.O. Jones, M. Smith, M. Rigault, B. Racine, E.E. Hayes, R. Chen, P. Wiseman, L. Galbany, M. Grayling, L. LaCroix, C. Barjou-Delayre, D. Kuhn, C. Lemon

TL;DR
This paper presents an open-source cross-calibration method for Type Ia Supernovae observations, improving systematic uncertainties and highlighting the impact of calibration on cosmological parameters.
Contribution
It introduces a new open-source tool for cross-calibrating photometric systems using multiple telescopes and white dwarf data, enhancing calibration accuracy for cosmology.
Findings
Calibration systematic uncertainty reduced to 0.016 for Pantheon+
Calibration changes can amplify distances by up to a factor of 6
Small calibration shifts impact cosmological parameters like Omega_M
Abstract
Type Ia Supernovae (SNe Ia) are crucial tools to measure the accelerating expansion of the universe, comprising thousands of SNe across multiple telescopes. Accurate measurements of cosmological parameters with SNe Ia require a robust understanding and cross-calibration of the telescopes and filters. A previous cross-calibration effort, 'Fragilistic', provided 25 photometric systems, but offered no public code or ability to add new surveys. We provide an open-source cross-calibration solution, available at https://github.com/bap37/Dovekie/ . Using the Pan-STARRs (PS1) and Gaia all-sky telescopes, we characterise the measured filters from 11 photometric systems, including CfA, PS1, Foundation, DES, CSP, SDSS, and SNLS, using published observations of field stars. For the first time, we derive uncertainties on effective filter transmissions and modify filters to match the data. With the…
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