Spectral modeling of type II supernovae II. A machine learning approach to quantitative spectroscopic analysis
C. Vogl, W. E. Kerzendorf, S. A. Sim, U. M. Noebauer, S. Lietzau, and, W. Hillebrandt

TL;DR
This paper introduces a machine learning emulator for synthetic supernova spectra, enabling rapid and accurate spectral analysis that facilitates large-scale, automated studies of supernovae and their physical properties.
Contribution
The study develops and demonstrates a machine learning emulator for TARDIS supernova spectra, significantly reducing computation time for spectral modeling and analysis.
Findings
Emulator achieves less than 1% interpolation uncertainty with 780 training spectra.
Successfully applied to fit observed supernova spectra and estimate distances.
Enables automatic, detailed analysis of large supernova datasets.
Abstract
There are now hundreds of publicly available supernova spectral time series. Radiative transfer modeling of this data gives insights into the physical properties of these explosions such as the composition, the density structure, or the intrinsic luminosity---this is invaluable for understanding the supernova progenitors, the explosion mechanism, or for constraining the supernova distance. However, a detailed parameter study of the available data has been out of reach due to the high dimensionality of the problem coupled with the still significant computational expense. We tackle this issue through the use of machine-learning emulators, which are algorithms for high-dimensional interpolation. These use a pre-calculated training dataset to mimic the output of a complex code but with run times orders of magnitude shorter. We present the application of such an emulator to synthetic type II…
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Taxonomy
TopicsGamma-ray bursts and supernovae · Stellar, planetary, and galactic studies · Astrophysics and Cosmic Phenomena
