Higher-order block-structured hex meshing of tubular structures

被引:0
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作者
Domagoj Bošnjak
Antonio Pepe
Richard Schussnig
Dieter Schmalstieg
Thomas-Peter Fries
机构
[1] Graz University of Technology,Institute of Structural Analysis
[2] Graz University of Technology,Institute of Computer Graphics and Vision
[3] University of Augsburg,High
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关键词
Mesh generation; Convolution surfaces; Block structure; Higher-order meshes; Transfinite mappings;
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摘要
Numerical simulations of the cardiovascular system are growing in popularity due to the increasing availability of computational power, and their proven contribution to the understanding of pathodynamics and validation of medical devices with in-silico trials as a potential future breakthrough. Such simulations are performed on volumetric meshes reconstructed from patient-specific imaging data. These meshes are most often unstructured, and result in a brutally large amount of elements, significantly increasing the computational complexity of the simulations, whilst potentially adversely affecting their accuracy. To reduce such complexity, we introduce a new approach for fully automatic generation of higher-order, structured hexahedral meshes of tubular structures, with a focus on healthy blood vessels. The structures are modeled as skeleton-based convolution surfaces. From the same skeleton, the topology is captured by a block-structure, and the geometry by a higher-order surface mesh. Grading may be induced to obtain tailored refinement, thus resolving, e.g., boundary layers. The volumetric meshing is then performed via transfinite mappings. The resulting meshes are of arbitrary order, their elements are of good quality, while the spatial resolution may be as coarse as needed, greatly reducing computing time. Their suitability for practical applications is showcased by a simulation of physiological blood flow modelled by a generalised Newtonian fluid in the human aorta.
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页码:931 / 951
页数:20
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