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arxiv 2504.00456 v1 pith:L5QZXOOA submitted 2025-04-01 cs.CE

Anisotropic mesh spacing prediction using neural networks

classification cs.CE
keywords spacinganisotropicnetworkneuralunseenexamplesgeometricinvolving
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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This work presents a framework to predict near-optimal anisotropic spacing functions suitable to perform simulations with unseen operating conditions or geometric configurations. The strategy consists of utilising the vast amount of high fidelity data available in industry to compute a target anisotropic spacing and train an artificial neural network to predict the spacing for unseen scenarios. The trained neural network outputs the metric tensor at the nodes of a coarse background mesh that is then used to generate meshes for unseen cases. Examples are used to demonstrate the effect of the network hyperparameters and the training dataset on the accuracy of the predictions. The potential is demonstrated for examples involving up to 11 geometric parameters on CFD simulations involving a full aircraft configuration.

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