Physics-constrained convolutional neural networks for inverse problems in spatiotemporal partial differential equations

被引:1
作者
Kelshaw, Daniel [1 ]
Magri, Luca [1 ,2 ,3 ]
机构
[1] Imperial Coll London, Dept Aeronaut, London, England
[2] Alan Turing Inst, British Lib, London, England
[3] Politecn Torino, DIMEAS, Turin, Italy
来源
DATA-CENTRIC ENGINEERING | 2024年 / 5卷
关键词
scientific machine learning; convolutional neural networks; inverse problems;
D O I
10.1017/dce.2024.46
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
We propose a physics-constrained convolutional neural network (PC-CNN) to solve two types of inverse problems in partial differential equations (PDEs), which are nonlinear and vary both in space and time. In the first inverse problem, we are given data that is offset by spatially varying systematic error (i.e., the bias, also known as the epistemic uncertainty). The task is to uncover the true state, which is the solution of the PDE, from the biased data. In the second inverse problem, we are given sparse information on the solution of a PDE. The task is to reconstruct the solution in space with high resolution. First, we present the PC-CNN, which constrains the PDE with a time-windowing scheme to handle sequential data. Second, we analyze the performance of the PC-CNN to uncover solutions from biased data. We analyze both linear and nonlinear convection-diffusion equations, and the Navier-Stokes equations, which govern the spatiotemporally chaotic dynamics of turbulent flows. We find that the PC-CNN correctly recovers the true solution for a variety of biases, which are parameterized as non-convex functions. Third, we analyze the performance of the PC-CNN for reconstructing solutions from sparse information for the turbulent flow. We reconstruct the spatiotemporal chaotic solution on a high-resolution grid from only 1% of the information contained in it. For both tasks, we further analyze the Navier-Stokes solutions. We find that the inferred solutions have a physical spectral energy content, whereas traditional methods, such as interpolation, do not. This work opens opportunities for solving inverse problems with partial differential equations.
引用
收藏
页数:21
相关论文
共 41 条
[1]  
[Anonymous], 1948, Advances in Applied Mechanics, DOI 10.1016/S0065-2156(08)70100-5
[2]  
Bateman H., 1915, MON WEATHER REV, V43, P163, DOI [DOI 10.1175/1520-0493(1915)432.0.CO
[3]  
2, 10.1175/1520-0493(1915)43<163:SRROTM>2.0.CO
[4]  
2, DOI 10.1175/1520-0493(1915)43<163:SRROTM>2.0.CO
[5]  
2]
[6]   Discovering governing equations from data by sparse identification of nonlinear dynamical systems [J].
Brunton, Steven L. ;
Proctor, Joshua L. ;
Kutz, J. Nathan .
PROCEEDINGS OF THE NATIONAL ACADEMY OF SCIENCES OF THE UNITED STATES OF AMERICA, 2016, 113 (15) :3932-3937
[7]  
CANUTO C, 1988, SPRINGER SERIES COMP
[8]   Short- and long-term predictions of chaotic flows and extreme events: a physics-constrained reservoir computing approach [J].
Doan, N. A. K. ;
Polifke, W. ;
Magri, L. .
PROCEEDINGS OF THE ROYAL SOCIETY A-MATHEMATICAL PHYSICAL AND ENGINEERING SCIENCES, 2021, 477 (2253)
[9]   Learning a Deep Convolutional Network for Image Super-Resolution [J].
Dong, Chao ;
Loy, Chen Change ;
He, Kaiming ;
Tang, Xiaoou .
COMPUTER VISION - ECCV 2014, PT IV, 2014, 8692 :184-199
[10]   Using deep learning to learn physics of conduction heat transfer [J].
Edalatifar, Mohammad ;
Tavakoli, Mohammad Bagher ;
Ghalambaz, Mohammad ;
Setoudeh, Farbod .
JOURNAL OF THERMAL ANALYSIS AND CALORIMETRY, 2021, 146 (03) :1435-1452