Deep learning-based surrogate model for 3-D patient-specific
computational fluid dynamics
- URL: http://arxiv.org/abs/2204.08939v1
- Date: Mon, 11 Apr 2022 17:34:51 GMT
- Title: Deep learning-based surrogate model for 3-D patient-specific
computational fluid dynamics
- Authors: Pan Du, Xiaozhi Zhu, Jian-Xun Wang
- Abstract summary: It is notoriously challenging to parameterize the input space of arbitrarily complex 3-D geometries.
We propose a novel deep learning surrogate modeling solution to address these challenges and enable rapid hemodynamic predictions.
- Score: 6.905238157628892
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Optimization and uncertainty quantification have been playing an increasingly
important role in computational hemodynamics. However, existing methods based
on principled modeling and classic numerical techniques have faced significant
challenges, particularly when it comes to complex 3D patient-specific shapes in
the real world. First, it is notoriously challenging to parameterize the input
space of arbitrarily complex 3-D geometries. Second, the process often involves
massive forward simulations, which are extremely computationally demanding or
even infeasible. We propose a novel deep learning surrogate modeling solution
to address these challenges and enable rapid hemodynamic predictions.
Specifically, a statistical generative model for 3-D patient-specific shapes is
developed based on a small set of baseline patient-specific geometries. An
unsupervised shape correspondence solution is used to enable geometric morphing
and scalable shape synthesis statistically. Moreover, a simulation routine is
developed for automatic data generation by automatic meshing, boundary setting,
simulation, and post-processing. An efficient supervised learning solution is
proposed to map the geometric inputs to the hemodynamics predictions in latent
spaces. Numerical studies on aortic flows are conducted to demonstrate the
effectiveness and merit of the proposed techniques.
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