Generative Models for the Deformation of Industrial Shapes with Linear Geometric Constraints: model order and parameter space reductions
Guglielmo Padula, Francesco Romor, Giovanni Stabile, Gianluigi Rozza

TL;DR
This paper introduces a machine learning-based generative modeling approach to efficiently produce geometries with linear constraints, reducing computational costs and parameter space for fluid dynamics and biomedical applications.
Contribution
It presents a novel paradigm that employs generative models to sample geometries with linear constraints, significantly reducing the parameter space and enhancing non-intrusive model order reduction.
Findings
Effective sampling of constrained geometries demonstrated on test cases
Parameter space reduction improves computational efficiency
Method maintains quality of geometrical and physical quantities
Abstract
Real-world applications of computational fluid dynamics often involve the evaluation of quantities of interest for several distinct geometries that define the computational domain or are embedded inside it. For example, design optimization studies require the realization of response surfaces from the parameters that determine the geometrical deformations to relevant outputs to be optimized. In this context, a crucial aspect to be addressed are the limited resources at disposal to computationally generate different geometries or to physically obtain them from direct measurements. This is the case for patient-specific biomedical applications for example. When additional linear geometrical constraints need to be imposed, the computational costs increase substantially. Such constraints include total volume conservation, barycenter location and fixed moments of inertia. We develop a new…
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Taxonomy
TopicsAdvanced Numerical Analysis Techniques · Computer Graphics and Visualization Techniques · Human Motion and Animation
