GrADE: A graph based data-driven solver for time-dependent nonlinear partial differential equations

08/24/2021
by   Yash Kumar, et al.
15

The physical world is governed by the laws of physics, often represented in form of nonlinear partial differential equations (PDEs). Unfortunately, solution of PDEs is non-trivial and often involves significant computational time. With recent developments in the field of artificial intelligence and machine learning, the solution of PDEs using neural network has emerged as a domain with huge potential. However, most of the developments in this field are based on either fully connected neural networks (FNN) or convolutional neural networks (CNN). While FNN is computationally inefficient as the number of network parameters can be potentially huge, CNN necessitates regular grid and simpler domain. In this work, we propose a novel framework referred to as the Graph Attention Differential Equation (GrADE) for solving time dependent nonlinear PDEs. The proposed approach couples FNN, graph neural network, and recently developed Neural ODE framework. The primary idea is to use graph neural network for modeling the spatial domain, and Neural ODE for modeling the temporal domain. The attention mechanism identifies important inputs/features and assign more weightage to the same; this enhances the performance of the proposed framework. Neural ODE, on the other hand, results in constant memory cost and allows trading of numerical precision for speed. We also propose depth refinement as an effective technique for training the proposed architecture in lesser time with better accuracy. The effectiveness of the proposed framework is illustrated using 1D and 2D Burgers' equations. Results obtained illustrate the capability of the proposed framework in modeling PDE and its scalability to larger domains without the need for retraining.

READ FULL TEXT

page 11

page 13

page 14

page 15

research
04/15/2022

Learning time-dependent PDE solver using Message Passing Graph Neural Networks

One of the main challenges in solving time-dependent partial differentia...
research
08/03/2023

Deep Learning-based surrogate models for parametrized PDEs: handling geometric variability through graph neural networks

Mesh-based simulations play a key role when modeling complex physical sy...
research
04/16/2021

Finite Difference Nets: A Deep Recurrent Framework for Solving Evolution PDEs

There has been an arising trend of adopting deep learning methods to stu...
research
12/06/2022

RBF-MGN:Solving spatiotemporal PDEs with Physics-informed Graph Neural Network

Physics-informed neural networks (PINNs) have lately received significan...
research
12/23/2021

Adaptive Neural Domain Refinement for Solving Time-Dependent Differential Equations

A classic approach for solving differential equations with neural networ...
research
08/17/2023

Neural oscillators for generalization of physics-informed machine learning

A primary challenge of physics-informed machine learning (PIML) is its g...
research
09/23/2019

PPINN: Parareal Physics-Informed Neural Network for time-dependent PDEs

Physics-informed neural networks (PINNs) encode physical conservation la...

Please sign up or login with your details

Forgot password? Click here to reset