A Deep Uzawa-Lagrange Multiplier Approach for Boundary Conditions in PINNs and Deep Ritz Methods

Authors

  • Charalambos G. Makridakis
  • Aaron Pim
  • Tristan Pryer

DOI:

https://doi.org/10.4208/jml.250107

Keywords:

Physics-informed neural networks, Deep Ritz method, Uzawa algorithm, Lagrange multipliers, Boundary condition enforcement.

Abstract

We introduce a deep learning-based framework for weakly enforcing boundary conditions in the numerical approximation of partial differential equations. Building on existing physics-informed neural network and deep Ritz methods, we propose the Deep Uzawa algorithm, which incorporates Lagrange multipliers to handle boundary conditions effectively. This modification requires only a minor computational adjustment but ensures enhanced convergence properties and provably accurate enforcement of boundary conditions, even for singularly perturbed problems. We provide a comprehensive mathematical analysis demonstrating the convergence of the scheme and validate the effectiveness of the Deep Uzawa algorithm through numerical experiments, including high dimensional, singularly perturbed problems and those posed over non-convex domains.

Published

2025-09-12

Issue

Section

Articles