Physics-informed Machine Learning for Modeling Turbulence in Supernovae

被引:6
|
作者
Karpov, Platon I. [1 ,2 ]
Huang, Chengkun [2 ]
Sitdikov, Iskandar [3 ]
Fryer, Chris L. [2 ]
Woosley, Stan [1 ]
Pilania, Ghanshyam [2 ]
机构
[1] Univ Calif, Dept Astron & Astrophys, Santa Cruz, CA 95064 USA
[2] Alamos Natl Lab, Los Alamos, NM 87545 USA
[3] Provectus IT Inc, Palo Alto, CA 94301 USA
来源
ASTROPHYSICAL JOURNAL | 2022年 / 940卷 / 01期
关键词
SUBGRID-SCALE; COLLAPSE; SIMULATIONS;
D O I
10.3847/1538-4357/ac88cc
中图分类号
P1 [天文学];
学科分类号
0704 ;
摘要
Turbulence plays an important role in astrophysical phenomena, including core-collapse supernovae (CCSNe), but current simulations must rely on subgrid models, since direct numerical simulation is too expensive. Unfortunately, existing subgrid models are not sufficiently accurate. Recently, machine learning (ML) has shown an impressive predictive capability for calculating turbulence closure. We have developed a physics-informed convolutional neural network to preserve the realizability condition of the Reynolds stress that is necessary for accurate turbulent pressure prediction. The applicability of the ML subgrid model is tested here for magnetohydrodynamic turbulence in both the stationary and dynamic regimes. Our future goal is to utilize this ML methodology (available on GitHub) in the CCSN framework to investigate the effects of accurately modeled turbulence on the explosion of these stars.
引用
收藏
页数:13
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