E2N: Error Estimation Networks for Goal-Oriented Mesh Adaptation
Joseph G. Wallwork, Jingyi Lu, Mingrui Zhang, Matthew D. Piggott

TL;DR
This paper introduces a neural network-based method for goal-oriented mesh adaptation in PDE simulations, replacing expensive error estimation with a data-driven approach to reduce computational costs while maintaining accuracy.
Contribution
It proposes an element-wise neural network model for error estimation, eliminating the need for enriched spaces in goal-oriented mesh adaptation.
Findings
Achieves similar accuracy to traditional methods with lower computational cost.
Demonstrates effectiveness in flow simulations around tidal turbines.
Shows low training costs for the neural network model.
Abstract
Given a partial differential equation (PDE), goal-oriented error estimation allows us to understand how errors in a diagnostic quantity of interest (QoI), or goal, occur and accumulate in a numerical approximation, for example using the finite element method. By decomposing the error estimates into contributions from individual elements, it is possible to formulate adaptation methods, which modify the mesh with the objective of minimising the resulting QoI error. However, the standard error estimate formulation involves the true adjoint solution, which is unknown in practice. As such, it is common practice to approximate it with an 'enriched' approximation (e.g. in a higher order space or on a refined mesh). Doing so generally results in a significant increase in computational cost, which can be a bottleneck compromising the competitiveness of (goal-oriented) adaptive simulations. The…
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Taxonomy
TopicsModel Reduction and Neural Networks · Computational Fluid Dynamics and Aerodynamics · Advanced Numerical Methods in Computational Mathematics
MethodsTest
