Neural Network Solutions to Differential Equations in Non-Convex Domains: Solving the Electric Field in the Slit-Well Microfluidic Device

04/25/2020
by   Martin Magill, et al.
0

The neural network method of solving differential equations is used to approximate the electric potential and corresponding electric field in the slit-well microfluidic device. The device's geometry is non-convex, making this a challenging problem to solve using the neural network method. To validate the method, the neural network solutions are compared to a reference solution obtained using the finite element method. Additional metrics are presented that measure how well the neural networks recover important physical invariants that are not explicitly enforced during training: spatial symmetries and conservation of electric flux. Finally, as an application-specific test of validity, neural network electric fields are incorporated into particle simulations. Conveniently, the same loss functional used to train the neural networks also seems to provide a reliable estimator of the networks' true errors, as measured by any of the metrics considered here. In all metrics, deep neural networks significantly outperform shallow neural networks, even when normalized by computational cost. Altogether, the results suggest that the neural network method can reliably produce solutions of acceptable accuracy for use in subsequent physical computations, such as particle simulations.

READ FULL TEXT

page 3

page 5

page 14

research
10/24/2020

Deep neural network for solving differential equations motivated by Legendre-Galerkin approximation

Nonlinear differential equations are challenging to solve numerically an...
research
08/07/2022

Stochastic Scaling in Loss Functions for Physics-Informed Neural Networks

Differential equations are used in a wide variety of disciplines, descri...
research
11/21/2021

Physics-informed neural networks for solving thermo-mechanics problems of functionally graded material

Differential equations are indispensable to engineering and hence to inn...
research
01/30/2023

Temporal Consistency Loss for Physics-Informed Neural Networks

Physics-informed neural networks (PINNs) have been widely used to solve ...
research
02/09/2021

On Theory-training Neural Networks to Infer the Solution of Highly Coupled Differential Equations

Deep neural networks are transforming fields ranging from computer visio...
research
11/17/2021

A Neural Solver for Variational Problems on CAD Geometries with Application to Electric Machine Simulation

This work presents a deep learning-based framework for the solution of p...

Please sign up or login with your details

Forgot password? Click here to reset