Solving Hamiltonian Constraint Equation with Physics-Informed Neural Networks
摘要
Numerical relativity (NR), solving Einstein equation numerically, plays an important role in source modelling for gravitational wave astronomy. Traditional methods for NR including finite difference method, spectral method and finite element method have been well developed. But newly developed neural network methods for partial differential equations (PDE) have not been well studied yet for NR. We present a Physics-Informed Neural Network (PINN) method to solve the Hamiltonian constraint equation for binary black hole (BBH) initial data in NR. This equation is a highly non-linear elliptic PDE, posing significant challenges for conventional PINN approaches. To overcome these difficulties, we introduce a set of new techniques. We show that our PINN together with these techniques can successfully solve the Hamiltonian constraint equation for generic BBH systems. Validation against the traditional results demonstrates the high accuracy and robustness of our method, revealing the immense potential of constructing a PINN-based initial data solution to all BBH systems for NR.
引用
@article{arxiv.2607.06002,
title = {Solving Hamiltonian Constraint Equation with Physics-Informed Neural Networks},
author = {Yu-Chen Zhou and Hao Ma and Zhoujian Cao and Tailin Wu and Hong-Bo Jin and Xuefeng Feng and Shuanglin Huang and Zhi-Chao Zhao and Yue-Liang Wu},
journal= {arXiv preprint arXiv:2607.06002},
year = {2026}
}
备注
14 pages, 10 figures; accepted for publication in Physical Review D