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On a construction of a hierarchy of best linear spline approximations using a finite element approach

机译:使用有限元方法构造最佳线性样条近似值的层次结构

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We present a method for the hierarchical approximation of functions in one, two, or three variables based on the finite element method (Ritz approximation). Starting with a set of data sites with associated function, we first determine a smooth (scattered-data) interpolant. Next, we construct an initial triangulation by triangulating the region bounded by the minimal subset of data sites defining the convex hull of all sites. We insert only original data sites, thus reducing storage requirements. For each triangulation, we solve a minimization problem: computing the best linear spline approximation of the interpolant of all data, based on a functional involving function values and first derivatives. The error of a best linear spline approximation is computed in a Sobolev-like norm, leading to element-specific error values. We use these interval/triangle/tetrahedron-specific values to identify the element to subdivide next. The subdivision of an element with largest error value requires the recomputation of all spline coefficients due to the global nature of the problem. We improve efficiency by 1) subdividing multiple elements simultaneously and 2) by using a sparse-matrix representation and system solver.
机译:我们提出了一种基于有限元方法(里兹近似)的函数在一个,两个或三个变量中的层次近似方法。从一组具有关联功能的数据站点开始,我们首先确定一个平滑的(分散数据)插值。接下来,我们通过对由定义所有站点的凸包的数据站点的最小子集界定的区域进行三角剖分来构造初始三角剖分。我们仅插入原始数据站点,从而减少了存储需求。对于每个三角剖分,我们解决了一个最小化问题:基于涉及函数值和一阶导数的函数,计算所有数据的插值的最佳线性样条近似。最佳线性样条逼近的误差是在类似Sobolev的范数中计算的,从而导致特定于元素的误差值。我们使用这些特定于间隔/三角形/四面体的值来标识接下来要细分的元素。由于问题的全局性质,细分最大误差值的单元需要重新计算所有样条系数。我们通过1)同时细分多个元素和2)使用稀疏矩阵表示和系统求解器来提高效率。

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