Going Deeper with Five-point Stencil Convolutions for Reaction-Diffusion Equations

08/09/2023
by   Yongho Kim, et al.
0

Physics-informed neural networks have been widely applied to partial differential equations with great success because the physics-informed loss essentially requires no observations or discretization. However, it is difficult to optimize model parameters, and these parameters must be trained for each distinct initial condition. To overcome these challenges in second-order reaction-diffusion type equations, a possible way is to use five-point stencil convolutional neural networks (FCNNs). FCNNs are trained using two consecutive snapshots, where the time step corresponds to the step size of the given snapshots. Thus, the time evolution of FCNNs depends on the time step, and the time step must satisfy its CFL condition to avoid blow-up solutions. In this work, we propose deep FCNNs that have large receptive fields to predict time evolutions with a time step larger than the threshold of the CFL condition. To evaluate our models, we consider the heat, Fisher's, and Allen-Cahn equations with diverse initial conditions. We demonstrate that deep FCNNs retain certain accuracies, in contrast to FDMs that blow up.

READ FULL TEXT

page 8

page 9

page 10

research
01/04/2022

FCNN: Five-point stencil CNN for solving reaction-diffusion equations

In this paper, we propose Five-point stencil CNN (FCNN) containing a fiv...
research
09/14/2023

Improving physics-informed DeepONets with hard constraints

Current physics-informed (standard or operator) neural networks still re...
research
11/24/2022

Design of Turing Systems with Physics-Informed Neural Networks

Reaction-diffusion (Turing) systems are fundamental to the formation of ...
research
11/19/2020

DiffusionNet: Accelerating the solution of Time-Dependent partial differential equations using deep learning

We present our deep learning framework to solve and accelerate the Time-...
research
01/30/2023

Temporal Consistency Loss for Physics-Informed Neural Networks

Physics-informed neural networks (PINNs) have been widely used to solve ...
research
11/03/2021

Schwarz Waveform Relaxation Physics-Informed Neural Networks for Solving Advection-Diffusion-Reaction Equations

This paper develops a physics-informed neural network (PINN) based on th...
research
05/05/2023

Physics-Informed Localized Learning for Advection-Diffusion-Reaction Systems

The global push for new energy solutions, such as Geothermal, and Carbon...

Please sign up or login with your details

Forgot password? Click here to reset