Grunnleggende konsepter
This research investigates the effectiveness of machine learning and analytical models in predicting the final state of fast flavor instabilities (FFIs) in dense astrophysical environments like neutron star mergers, aiming to develop efficient subgrid models for large-scale simulations.
Richers, S., Froustey, J., Ghosh, S., Foucart, F., & Gomez, J. (2024). Asymptotic-state prediction for fast flavor transformation in neutron star mergers. arXiv preprint arXiv:2409.04405v2.
This study aims to evaluate the accuracy of various analytical mixing schemes and a novel machine learning (ML) model in predicting the asymptotic state of fast flavor instabilities (FFIs) in neutron star mergers (NSMs).