No rungs attached: A distance-ladder free determination of the Hubble constant through type II supernova spectral modelling
Christian Vogl, Stefan Taubenberger, G\'eza Cs\"ornyei, Bruno Leibundgut, Wolfgang E. Kerzendorf, Stuart A. Sim, St\'ephane Blondin, Andreas Fl\"ors, Alexander Holas, Joshua V. Shields, Jason Spyromilio, Sherry H. Suyu, Wolfgang Hillebrandt

TL;DR
This paper introduces a novel, distance-ladder free method using spectral modelling of Type II supernovae to measure the Hubble constant with high precision, providing an independent approach to address the Hubble tension.
Contribution
The study presents the first H0 estimate using a tailored expanding photosphere method with spectral emulator interpolation, achieving competitive precision without relying on the traditional distance ladder.
Findings
H0 estimated at 74.9±1.9 km/s/Mpc, consistent with local measurements.
Spectral modelling enhances the precision and efficiency of the EPM technique.
Systematic uncertainties are comparable to current statistical uncertainties.
Abstract
The ongoing discrepancy in the Hubble constant () estimates obtained through local distance ladder methods and early universe observations poses a significant challenge to the CDM model, suggesting potential new physics. Type II supernovae (SNe II) offer a promising technique for determining in the local universe independently of the traditional distance ladder approach, opening up a complimentary path for testing this discrepancy. We aim to provide the first estimate using the tailored expanding photosphere method (EPM) applied to SNe II, made possible by recent advancements in spectral modelling that enhance its precision and efficiency. Our tailored EPM measurement utilizes a spectral emulator to interpolate between radiative transfer models calculated with TARDIS, allowing us to fit supernova spectra efficiently and derive self-consistent values for…
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