An energy-based error bound of physics-informed neural network solutions in elasticity

10/18/2020
by   Mengwu Guo, et al.
0

An energy-based a posteriori error bound is proposed for the physics-informed neural network solutions of elasticity problems. An admissible displacement-stress solution pair is obtained from a mixed form of physics-informed neural networks, and the proposed error bound is formulated as the constitutive relation error defined by the solution pair. Such an error estimator provides an upper bound of the global error of neural network discretization. The bounding property, as well as the asymptotic behavior of the physics-informed neural network solutions, are studied in a demonstrating example.

READ FULL TEXT

page 6

page 7

research
05/02/2022

Solving PDEs by Variational Physics-Informed Neural Networks: an a posteriori error analysis

We consider the discretization of elliptic boundary-value problems by va...
research
06/16/2023

GPINN: Physics-informed Neural Network with Graph Embedding

This work proposes a Physics-informed Neural Network framework with Grap...
research
11/22/2022

Robustness of Physics-Informed Neural Networks to Noise in Sensor Data

Physics-Informed Neural Networks (PINNs) have been shown to be an effect...
research
10/07/2022

Certified machine learning: Rigorous a posteriori error bounds for PDE defined PINNs

Prediction error quantification in machine learning has been left out of...
research
08/25/2023

Bayesian Reasoning for Physics Informed Neural Networks

Physics informed neural network (PINN) approach in Bayesian formulation ...
research
09/25/2022

Stochastic projection based approach for gradient free physics informed learning

We propose a stochastic projection-based gradient free physics-informed ...
research
09/24/2022

Higher-Order Error estimates for physics-informed neural networks approximating the primitive equations

Large scale dynamics of the oceans and the atmosphere are governed by th...

Please sign up or login with your details

Forgot password? Click here to reset