GRINN: a physics-informed neural network for solving hydrodynamic systems in the presence of self-gravity

被引:5
作者
Auddy, Sayantan [1 ]
Dey, Ramit [2 ,3 ]
Turner, Neal J. [1 ]
Basu, Shantanu [2 ,4 ]
机构
[1] CALTECH, Caltech Micromachining Lab, Pasadena, CA 91109 USA
[2] Univ Western Ontario, Dept Phys & Astron, London, ON N6A 3K7, Canada
[3] Perimeter Inst Theoret Phys, 31 Caroline St N, Waterloo, ON, Canada
[4] Univ Western Ontario, Inst Earth & Space Explorat, London, ON, Canada
来源
MACHINE LEARNING-SCIENCE AND TECHNOLOGY | 2024年 / 5卷 / 02期
基金
美国国家航空航天局; 加拿大自然科学与工程研究理事会;
关键词
hydrodynamics; star formation; gravitational instability; neural networks; machine learning; PINN; PDEs; DEEP LEARNING FRAMEWORK; STAR-FORMATION;
D O I
10.1088/2632-2153/ad3a32
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Modeling self-gravitating gas flows is essential to answering many fundamental questions in astrophysics. This spans many topics including planet-forming disks, star-forming clouds, galaxy formation, and the development of large-scale structures in the Universe. However, the nonlinear interaction between gravity and fluid dynamics offers a formidable challenge to solving the resulting time-dependent partial differential equations (PDEs) in three dimensions (3D). By leveraging the universal approximation capabilities of a neural network within a mesh-free framework, physics informed neural networks (PINNs) offer a new way of addressing this challenge. We introduce the gravity-informed neural network (GRINN), a PINN-based code, to simulate 3D self-gravitating hydrodynamic systems. Here, we specifically study gravitational instability and wave propagation in an isothermal gas. Our results match a linear analytic solution to within 1% in the linear regime and a conventional grid code solution to within 5% as the disturbance grows into the nonlinear regime. We find that the computation time of the GRINN does not scale with the number of dimensions. This is in contrast to the scaling of the grid-based code for the hydrodynamic and self-gravity calculations as the number of dimensions is increased. Our results show that the GRINN computation time is longer than the grid code in one- and two- dimensional calculations but is an order of magnitude lesser than the grid code in 3D with similar accuracy. Physics-informed neural networks like GRINN thus show promise for advancing our ability to model 3D astrophysical flows.
引用
收藏
页数:17
相关论文
共 54 条
[11]   Enhancing gravitational-wave science with machine learning [J].
Cuoco, Elena ;
Powell, Jade ;
Cavaglia, Marco ;
Ackley, Kendall ;
Bejger, Michal ;
Chatterjee, Chayan ;
Coughlin, Michael ;
Coughlin, Scott ;
Easter, Paul ;
Essick, Reed ;
Gabbard, Hunter ;
Gebhard, Timothy ;
Ghosh, Shaon ;
Haegel, Leila ;
Iess, Alberto ;
Keitel, David ;
Marka, Zsuzsa ;
Marka, Szabolcs ;
Morawski, Filip ;
Nguyen, Tri ;
Ormiston, Rich ;
Puerrer, Michael ;
Razzano, Massimiliano ;
Staats, Kai ;
Vajente, Gabriele ;
Williams, Daniel .
MACHINE LEARNING-SCIENCE AND TECHNOLOGY, 2021, 2 (01)
[12]   Scientific Machine Learning Through Physics-Informed Neural Networks: Where we are and What's Next [J].
Cuomo, Salvatore ;
Di Cola, Vincenzo Schiano ;
Giampaolo, Fabio ;
Rozza, Gianluigi ;
Raissi, Maziar ;
Piccialli, Francesco .
JOURNAL OF SCIENTIFIC COMPUTING, 2022, 92 (03)
[13]   Evolutional deep neural network [J].
Du, Yifan ;
Zaki, Tamer A. .
PHYSICAL REVIEW E, 2021, 104 (04)
[14]   A physics-informed deep neural network for surrogate modeling in classical elasto-plasticity [J].
Eghbalian, Mahdad ;
Pouragha, Mehdi ;
Wan, Richard .
COMPUTERS AND GEOTECHNICS, 2023, 159
[15]  
Eymard R, 2000, HDBK NUM AN, V7, P713
[16]  
Fujita K, 2022, 2022 ASIA-PACIFIC MICROWAVE CONFERENCE (APMC), P623
[17]   Deep Learning for real-time gravitational wave detection and parameter estimation: Results with Advanced LIGO data [J].
George, Daniel ;
Huerta, E. A. .
PHYSICS LETTERS B, 2018, 778 :64-70
[18]   Transfer learning enhanced physics informed neural network for phase-field modeling of fracture [J].
Goswami, Somdatta ;
Anitescu, Cosmin ;
Chakraborty, Souvik ;
Rabczuk, Timon .
THEORETICAL AND APPLIED FRACTURE MECHANICS, 2020, 106
[19]   A physics-informed deep learning framework for inversion and surrogate modeling in solid mechanics [J].
Haghighat, Ehsan ;
Raissi, Maziar ;
Moure, Adrian ;
Gomez, Hector ;
Juanes, Ruben .
COMPUTER METHODS IN APPLIED MECHANICS AND ENGINEERING, 2021, 379
[20]   Mesh-Free Surrogate Models for Structural Mechanic FEM Simulation: A Comparative Study of Approaches [J].
Hoffer, Johannes G. ;
Geiger, Bernhard C. ;
Ofner, Patrick ;
Kern, Roman .
APPLIED SCIENCES-BASEL, 2021, 11 (20)