Data-driven reduced-order modelling for blood flow simulations with geometry-informed snapshots
Dongwei Ye, Valeria Krzhizhanovskaya, Alfons G. Hoekstra

TL;DR
This paper introduces a data-driven reduced-order model for blood flow simulations that efficiently handles patient-specific geometries by using shape registration and geometry-informed snapshots, enabling real-time predictions.
Contribution
It proposes a novel surrogate modeling approach that incorporates shape registration and geometry-informed snapshots for patient-specific blood flow simulations.
Findings
Accurately predicts blood flow in complex geometries.
Demonstrates efficiency suitable for real-time applications.
Shows potential for uncertainty quantification in hemodynamics.
Abstract
Parametric reduced-order modelling often serves as a surrogate method for hemodynamics simulations to improve the computational efficiency in many-query scenarios or to perform real-time simulations. However, the snapshots of the method require to be collected from the same discretisation, which is a straightforward process for physical parameters, but becomes challenging for geometrical problems, especially for those domains featuring unparameterised and unique shapes, e.g. patient-specific geometries. In this work, a data-driven surrogate model is proposed for the efficient prediction of blood flow simulations on similar but distinct domains. The proposed surrogate model leverages group surface registration to parameterise those shapes and formulates corresponding hemodynamics information into geometry-informed snapshots by the diffeomorphisms constructed between a reference domain…
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Taxonomy
TopicsModel Reduction and Neural Networks · Lattice Boltzmann Simulation Studies
