Numerical Solution of Mixed-Dimensional PDEs Using a Neural Preconditioner
Nunzio Dimola, Nicola Rares Franco, Paolo Zunino

TL;DR
This paper introduces a neural network-based preconditioner for mixed-dimensional PDEs that adapts to different geometries and mesh resolutions, significantly improving solver efficiency.
Contribution
It presents a novel neural preconditioning strategy for 3D-1D mixed-dimensional PDEs that generalizes across shapes and resolutions without retraining.
Findings
Accelerates convergence of iterative solvers.
Generalizes to different 1D manifold shapes.
Effective across various mesh resolutions.
Abstract
Mixed-dimensional partial differential equations (PDEs) are characterized by coupled operators defined on domains of varying dimensions and pose significant computational challenges due to their inherent ill-conditioning. Moreover, the computational workload increases considerably when attempting to accurately capture the behavior of the system under significant variations or uncertainties in the low-dimensional structures such as fractures, fibers, or vascular networks, due to the inevitable necessity of running multiple simulations. In this work, we present a novel preconditioning strategy that leverages neural networks and unsupervised operator learning to design an efficient preconditioner specifically tailored to a class of 3D-1D mixed-dimensional PDEs. The proposed approach is capable of generalizing to varying shapes of the 1D manifold without retraining, making it robust to…
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