Tsang, Benny T.-H. and Vartanyan, David and Burrows, Adam (2022) Applications of Machine Learning to Predicting Core-collapse Supernova Explosion Outcomes. The Astrophysical Journal Letters, 937 (1). L15. ISSN 2041-8205
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Abstract
Most existing criteria derived from progenitor properties of core-collapse supernovae are not very accurate in predicting explosion outcomes. We present a novel look at identifying the explosion outcome of core-collapse supernovae using a machine-learning approach. Informed by a sample of 100 2D axisymmetric supernova simulations evolved with Fornax, we train and evaluate a random forest classifier as an explosion predictor. Furthermore, we examine physics-based feature sets including the compactness parameter, the Ertl condition, and a newly developed set that characterizes the silicon/oxygen interface. With over 1500 supernovae progenitors from 9−27 M⊙, we additionally train an autoencoder to extract physics-agnostic features directly from the progenitor density profiles. We find that the density profiles alone contain meaningful information regarding their explodability. Both the silicon/oxygen and autoencoder features predict the explosion outcome with ≈90% accuracy. In anticipation of much larger multidimensional simulation sets, we identify future directions in which machine-learning applications will be useful beyond the explosion outcome prediction.
Item Type: | Article |
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Subjects: | Academic Digital Library > Physics and Astronomy |
Depositing User: | Unnamed user with email info@academicdigitallibrary.org |
Date Deposited: | 26 Apr 2023 05:11 |
Last Modified: | 07 Feb 2024 04:45 |
URI: | http://publications.article4sub.com/id/eprint/1322 |