We describe new machine-learning-based methods to defeature CAD models for tetrahedral meshing. Using machine learning predictions of mesh quality for geometric features of a CAD model prior to meshing we can identify potential problem areas and improve meshing outcomes by presenting a prioritized list of suggested geometric operations to users. Our machine learning models are trained using a combination of geometric and topological features from the CAD model and local quality metrics for ground truth. We demonstrate a proof-of-concept implementation of the resulting workflow using Sandia’s Cubit Geometry and Meshing Toolkit
Mechanical design is one of the essential disciplines in engineering applications, while inspiration...
Simulations are used intensively in the developing process of new industrial products and have achie...
The objective of this project is to perform 3D modeling using machine learning techniques, extensive...
International audienceSince the quality of FE meshes strongly affects the quality of the FE simulati...
Numerical simulations play more and more important role in product development cycles and are increa...
Pascal Laube presents machine learning approaches for three key problems of reverse engineering of d...
Cylindrical Algebraic Decomposition (CAD) is a key tool in computational algebraic geometry, best kn...
Essential when adapting CAD model for finite element analysis, the defeaturing ensures the feasibili...
While current engineering design and construction methods include computer aided design drawings in ...
Classification of CAD helps the reuse of engineering designs and accelerates productdevelopment. Exi...
As technologies advance over the years, machine learning techniques have advanced and are applied in...
Standard 3D mesh generation algorithms may produce a low quality tetrahedral mesh, i.e., a mesh wher...
Multidisciplinary optimization systems rely increasingly on parametric CAD engines to supply the geo...
Geometry processing, which focuses on reconstructing and analyzing physical objects and scenes, enjo...
TetGen is a C++ program for generating good quality tetrahedral meshes aimed to support numerical me...
Mechanical design is one of the essential disciplines in engineering applications, while inspiration...
Simulations are used intensively in the developing process of new industrial products and have achie...
The objective of this project is to perform 3D modeling using machine learning techniques, extensive...
International audienceSince the quality of FE meshes strongly affects the quality of the FE simulati...
Numerical simulations play more and more important role in product development cycles and are increa...
Pascal Laube presents machine learning approaches for three key problems of reverse engineering of d...
Cylindrical Algebraic Decomposition (CAD) is a key tool in computational algebraic geometry, best kn...
Essential when adapting CAD model for finite element analysis, the defeaturing ensures the feasibili...
While current engineering design and construction methods include computer aided design drawings in ...
Classification of CAD helps the reuse of engineering designs and accelerates productdevelopment. Exi...
As technologies advance over the years, machine learning techniques have advanced and are applied in...
Standard 3D mesh generation algorithms may produce a low quality tetrahedral mesh, i.e., a mesh wher...
Multidisciplinary optimization systems rely increasingly on parametric CAD engines to supply the geo...
Geometry processing, which focuses on reconstructing and analyzing physical objects and scenes, enjo...
TetGen is a C++ program for generating good quality tetrahedral meshes aimed to support numerical me...
Mechanical design is one of the essential disciplines in engineering applications, while inspiration...
Simulations are used intensively in the developing process of new industrial products and have achie...
The objective of this project is to perform 3D modeling using machine learning techniques, extensive...