Exact imposition of boundary conditions with distance functions in physics-informed deep neural networks
N. Sukumar, Ankit Srivastava

TL;DR
This paper presents a novel method using distance functions to exactly impose boundary conditions in physics-informed neural networks, improving accuracy and applicability to complex geometries in PDE solutions.
Contribution
Introduces geometry-aware trial functions with distance fields for exact boundary condition enforcement in PINNs, extending to complex and higher-dimensional domains.
Findings
Eliminates boundary modeling error in collocation methods
Successfully solves boundary-value problems in multiple dimensions
Extends approach to complex geometries and higher dimensions
Abstract
In this paper, we introduce a new approach based on distance fields to exactly impose boundary conditions in physics-informed deep neural networks. The challenges in satisfying Dirichlet boundary conditions in meshfree and particle methods are well-known. This issue is also pertinent in the development of physics informed neural networks (PINN) for the solution of partial differential equations. We introduce geometry-aware trial functions in artifical neural networks to improve the training in deep learning for partial differential equations. To this end, we use concepts from constructive solid geometry (R-functions) and generalized barycentric coordinates (mean value potential fields) to construct , an approximate distance function to the boundary of a domain. To exactly impose homogeneous Dirichlet boundary conditions, the trial function is taken as multiplied by the PINN…
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