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Hybrid Gaussian-cubic radial basis functions for scattered data interpolation

机译:混合高斯-三次径向基函数用于散乱数据插值

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Scattered data interpolation schemes using kriging and radial basis functions (RBFs) have the advantage of being meshless and dimensional independent; however, for the datasets having insufficient observations, RBFs have the advantage over geostatistical methods as the latter requires variogram study and statistical expertise. Moreover, RBFs can be used for scattered data interpolation with very good convergence, which makes them desirable for shape function interpolation in meshless methods for numerical solution of partial differential equations. For interpolation of large datasets, however, RBFs in their usual form, lead to solving an ill-conditioned system of equations, for which, a small error in the data can cause a significantly large error in the interpolated solution. In order to reduce this limitation, we propose a hybrid kernel by using the conventional Gaussian and a shape parameter independent cubic kernel. Global particle swarm optimization method has been used to analyze the optimal values of the shape parameter as well as the weight coefficients controlling the Gaussian and the cubic part in the hybridization. Through a series of numerical tests, we demonstrate that such hybridization stabilizes the interpolation scheme by yielding a far superior implementation compared to those obtained by using only the Gaussian or cubic kernels. The proposed kernel maintains the accuracy and stability at small shape parameter as well as relatively large degrees of freedom, which exhibit its potential for scattered data interpolation and intrigues its application in global as well as local meshless methods for numerical solution of PDEs.
机译:使用克里金法和径向基函数(RBF)的分散数据插值方案具有无网格且尺寸无关的优点。但是,对于观测不足的数据集,RBF具有优于地统计方法的优势,因为后者需要方差图研究和统计专业知识。此外,RBF可以很好的收敛性用于散乱数据插值,这使其成为无网格方法中偏微分方程数值解的形状函数插值的理想方法。但是,对于大型数据集的插值,通常采用RBF形式会导致求解病态方程组,为此,数据中的小误差会导致插值解中的极大误差。为了减少这种限制,我们通过使用常规的高斯和形状参数无关的立方核提出了混合核。全局粒子群优化方法已用于分析形状参数的最佳值以及控制杂交中高斯和立方部分的权重系数。通过一系列数值测试,我们证明了与仅使用高斯或三次核获得的结果相比,这种杂交方法可产生更好的实现效果,从而稳定了插值方案。所提出的内核在较小的形状参数以及相对较大的自由度下都保持了精度和稳定性,这显示了其散乱数据插值的潜力,并激发了其在PDE数值解的全局和局部无网格方法中的应用。

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