Affiliation:
1. Department of Mathematical Sciences, Tsinghua University , 100084 Beijing , China
2. School of Mathematics and Statistics, Beijing Technology and Business University (BTBU) , 100048 Beijing , China
Abstract
Abstract
In this paper, we introduce the deep numerical technique DeepNM, which is designed for solving one-dimensional (1D) hyperbolic conservation laws, particularly wave equations. By creatively integrating traditional numerical schemes with deep learning techniques, the method yields improvements over conventional approaches. Specifically, we compare this approach against two established classical numerical methods: the discontinuous Galerkin method (DG) and the Lax–Wendroff correction method (LWC). While maintaining a comparable level of accuracy, DeepNM significantly improves computational speed, surpassing conventional numerical methods in this aspect by more than tenfold, and reducing storage requirements by over 1000 times. Furthermore, DeepNM facilitates the utilization of higher-order numerical schemes and allows for an increased number of grid points, thereby enhancing precision. In contrast to the more prevalent PINN method, DeepNM optimally combines the strengths of conventional mathematical techniques with deep learning, resulting in heightened accuracy and expedited computations for solving partial differential equations. Notably, DeepNM introduces a novel research paradigm for numerical equation-solving that can be seamlessly integrated with various traditional numerical methods.
Funder
National Natural Science Foundation of China
Publisher
Oxford University Press (OUP)
Reference41 articles.
1. DiffusionNet: Accelerating the solution of Time-Dependent partial differential equations using deep learning;Asem
2. Continued development of the discontinuous Galerkin method for computational aeroacoustic applications;Atkins,1997
3. Automatic differentiation in machine learning: a survey;Baydin;J Mach Learn Res,2018
4. Finite-difference calculations for hydrodynamic flows containing discontinuities;Burstein;J Comput Phys,1966
5. Physics-informed neural networks for heat transfer problems;Cai;J Heat Transf,2021