2023
DOI: 10.48550/arxiv.2302.11006
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Data-driven reduced-order modelling for blood flow simulations with geometry-informed snapshots

Abstract: Computational fluid dynamics is a common tool in cardiovascular science and engineering to simulate, predict and study hemodynamics in arteries. However, owing to the complexity and scale of cardiovascular flow problems, the evaluation of the model could be computationally expensive, especially in those cases where a large number of evaluations are required, such as uncertainty quantification and design optimisation. In such scenarios, the model may have to be repeatedly evaluated due to the changes or distinc… Show more

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