Quasinormal modes in modified gravity using physics-informed neural networks

被引:0
|
作者
Luna, Raimon [1 ]
Doneva, Daniela D. [2 ]
Font, Jose A. [1 ,3 ]
Lien, Jr-Hua [2 ]
Yazadjiev, Stoytcho S. [4 ,5 ]
机构
[1] Univ Valencia, Dept Astron & Astrofis, Dr Moliner 50, Valencia 46100, Spain
[2] Eberhard Karls Univ Tubingen, Theoret Astrophys, D-72076 Tubingen, Germany
[3] Univ Valencia, Observ Astron, C Catedratico Jose Beltran 2, Valencia 46980, Spain
[4] Sofia Univ, Fac Phys, Dept Theoret Phys, Sofia 1164, Bulgaria
[5] Bulgarian Acad Sci, Inst Math & Informat, Acad G Bonchev St 8, Sofia 1113, Bulgaria
关键词
ORDINARY DIFFERENTIAL-EQUATIONS; BOUNDARY-VALUE-PROBLEMS; HOLE NORMAL-MODES; GENERAL-RELATIVITY; WKB APPROACH; BLACK-HOLES;
D O I
10.1103/PhysRevD.109.124064
中图分类号
P1 [天文学];
学科分类号
0704 ;
摘要
In this paper, we apply a novel approach based on physics-informed neural networks to the computation of quasinormal modes of black hole solutions in modified gravity. In particular, we focus on the case of Einstein-scalar-Gauss-Bonnet theory, with several choices of the coupling function between the scalar field and the Gauss-Bonnet invariant. This type of calculation introduces a number of challenges with respect to the case of general relativity, mainly due to the extra complexity of the perturbation equations and to the fact that the background solution is known only numerically. The solution of these perturbation equations typically requires sophisticated numerical techniques that are not easy to develop in computational codes. We show that physics-informed neural networks have an accuracy which is comparable to traditional numerical methods in the case of numerical backgrounds, while being very simple to implement. Additionally, the use of GPU parallelization is straightforward thanks to the use of standard machine learning environments.
引用
收藏
页数:13
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