LGCEJan 4, 2024

Integration of physics-informed operator learning and finite element method for parametric learning of partial differential equations

arXiv:2401.02363v15 citationsh-index: 25
Originality Incremental advance
AI Analysis

This work addresses the challenge of parametric learning for partial differential equations in domains like heat transfer and diffusion, offering a more efficient alternative to classical solvers, though it is incremental in its methodological improvements.

The authors tackled the problem of solving steady-state heat equations in heterogeneous solids by integrating physics-informed operator learning with a novel loss function based on the discretized weak form, achieving accurate and faster predictions compared to standard finite element methods.

We present a method that employs physics-informed deep learning techniques for parametrically solving partial differential equations. The focus is on the steady-state heat equations within heterogeneous solids exhibiting significant phase contrast. Similar equations manifest in diverse applications like chemical diffusion, electrostatics, and Darcy flow. The neural network aims to establish the link between the complex thermal conductivity profiles and temperature distributions, as well as heat flux components within the microstructure, under fixed boundary conditions. A distinctive aspect is our independence from classical solvers like finite element methods for data. A noteworthy contribution lies in our novel approach to defining the loss function, based on the discretized weak form of the governing equation. This not only reduces the required order of derivatives but also eliminates the need for automatic differentiation in the construction of loss terms, accepting potential numerical errors from the chosen discretization method. As a result, the loss function in this work is an algebraic equation that significantly enhances training efficiency. We benchmark our methodology against the standard finite element method, demonstrating accurate yet faster predictions using the trained neural network for temperature and flux profiles. We also show higher accuracy by using the proposed method compared to purely data-driven approaches for unforeseen scenarios.

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