Intrusive deconvolutional neural networks for enhancing PIC/FLIP solutions

Y. van Halder, B. Sanderse, B. Koren

Onderzoeksoutput: WerkdocumentAcademic

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Samenvatting

Traditional fluid flow predictions require large computational resources. Despite recent progress in parallel and GPU computing, the ability to run fluid flow predictions in real-time is often infeasible. Recently developed machine learning approaches, which are trained on high-fidelity data, perform unsatisfactorily outside the training set and remove the ability of utilising legacy codes after training. We propose a novel methodology that uses a deep learning approach that can be used within a low-fidelity fluid flow solver to significantly increase the accuracy of the low-fidelity simulations. The resulting solver enables accurate while reducing computational times up to 100 times. The deep neural network is trained on a combination of low- and high-fidelity data, and the resulting solver is referred to as a multi-fidelity solver. The proposed methodology is demonstrated by means of enhancing a fluid flow simulator, known as PIC/FLIP, which is a popular fluid flow simulator in the field of computer generated imagery.
Originele taal-2Engels
StatusGepubliceerd - 7 jun. 2021

Trefwoorden

  • physics.flu-dyn
  • physics.comp-ph

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