多边形网格
失真(音乐)
度量(数据仓库)
公制(单位)
尺寸
数学
黎曼几何
算法
功能(生物学)
体积网格
畸变函数
常量(计算机编程)
数学优化
缩小
数学分析
计算机科学
拓扑(电路)
几何学
曲率
应用数学
网格生成
微分几何
最小偏差
作者
Aparicio-Estrems, Guillermo,Gargallo-Peiró, Abel,Roca, Xevi
出处
期刊:Cornell University - arXiv
日期:2024-03-20
标识
DOI:10.48550/arxiv.2403.13528
摘要
We define a regularized size-shape distortion (quality) measure for curved high-order elements on a Riemannian space. To this end, we measure the deviation of a given element, straight-sided or curved, from the stretching, alignment, and sizing determined by a target metric. The defined distortion (quality) is suitable to check the validity and the quality of straight-sided and curved elements on Riemannian spaces determined by constant and point-wise varying metrics. The examples illustrate that the distortion can be minimized to curve (deform) the elements of a given high-order (linear) mesh and try to match with curved (linear) elements the point-wise stretching, alignment, and sizing of a discrete target metric tensor. In addition, the resulting meshes simultaneously match the curved features of the target metric and boundary. Finally, to verify if the minimization of the metric-aware size-shape distortion leads to meshes approximating the target metric, we compute the Riemannian measures for the element edges, faces, and cells. The results show that, when compared to anisotropic straight-sided meshes, the Riemannian measures of the curved high-order mesh entities are closer to unit. Furthermore, the optimized meshes illustrate the potential of curved $r$-adaptation to improve the accuracy of a function representation.
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