Positional Embeddings for Solving PDEs with Evolutional Deep Neural Networks
Mariella Kast, Jan S Hesthaven

TL;DR
This paper advances evolutional deep neural networks (EDNNs) for solving complex, parametric time-dependent PDEs by introducing eigenfunction-based positional embeddings, improving accuracy, efficiency, and applicability to realistic geometries.
Contribution
It introduces eigenfunction-based positional embeddings into EDNNs, enabling intrinsic encoding of geometric properties and boundary conditions for solving complex PDEs.
Findings
Improved error convergence for static PDEs.
Enhanced scalability to complex domains.
Effective handling of various boundary conditions.
Abstract
This work extends the paradigm of evolutional deep neural networks (EDNNs) to solving parametric time-dependent partial differential equations (PDEs) on domains with geometric structure. By introducing positional embeddings based on eigenfunctions of the Laplace-Beltrami operator, geometric properties are encoded intrinsically and Dirichlet, Neumann and periodic boundary conditions of the PDE solution are enforced directly through the neural network architecture. The proposed embeddings lead to improved error convergence for static PDEs and extend EDNNs towards computational domains of realistic complexity. Several steps are taken to improve performance of EDNNs: Solving the EDNN update equation with a Krylov solver avoids the explicit assembly of Jacobians and enables scaling to larger neural networks. Computational efficiency is further improved by an ad-hoc active sampling scheme…
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Taxonomy
TopicsModel Reduction and Neural Networks · Fractional Differential Equations Solutions · Numerical methods for differential equations
