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Error indicators and refinement strategies for solving Poisson problems through a RBF partition of unity collocation scheme

机译:通过RBF分区解决单核搭配方案的泊松问题的错误指标和改进策略

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摘要

In this article adaptive refinement algorithms are presented to solve Poisson problems by a radial basis function partition of unity (RBF-PU) collocation scheme. Since in this context the problem of constructing an adaptive discretization method to be really effective is still open, we propose some error indicators and refinement strategies, so that each of these two essential ingredients takes advantage of the potentiality of the other one. More precisely, the refinement techniques coupled with a local error indicator is an ad-hoc strategy for the RBF-PU method. The resulting scheme turns out to be flexible and the use of efficient searching procedures enables us a fast detection of the regions that adaptively need the addition/removal of points. Several numerical experiments and applications support our study by illustrating the performance of our adaptive algorithms. (C) 2019 Elsevier Inc. All rights reserved.
机译:在本文中,提出了自适应细化算法,以通过统一(RBF-PU)搭配方案的径向基函数分区解决泊松问题。 由于在这种情况下,构建自适应离散化方法的问题仍然是公开的,我们提出了一些错误指标和细化策略,因此这两个必需成分中的每一个都利用了另一个的潜在性。 更精确地,与本地误差指示器耦合的细化技术是RBF-PU方法的ad-hoc策略。 所产生的方案旨在灵活,并且使用有效的搜索程序使我们能够快速地检测自适应需要点的添加/去除点。 通过说明我们的自适应算法的性能,若干数值实验和应用支持我们的研究。 (c)2019 Elsevier Inc.保留所有权利。

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