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An automatic adaptive refinement procedure for the reproducing kernel particle method. Part I: Stress recovery and a posteriori error estimation

机译:用于复制核粒子方法的自动自适应细化过程。第一部分:压力恢复和后验误差估计

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摘要

In this study, an adaptive refinement procedure using the reproducing kernel particle method (RKPM) for the solution of 2D elastostatic problems is suggested. This adaptive refinement procedure is based on the Zienkiewicz and Zhu (ZZ) error estimator for the a posteriori error estimation and an adaptive finite point mesh generator for new point mesh generation. The presentation of the work is divided into two parts. In Part I, concentration will be paid on the stress recovery and the a posteriori error estimation processes for the RKPM. The proposed error estimator is different from most recovery type error estimators suggested previously in such a way that, rather than using the least-squares fitting approach, the recovery stress field is constructed by an extraction function approach. Numerical studies using 2D benchmark boundary value problems indicated that the recovered stress field obtained is more accurate and converges at a higher rate than the RKPM stress field. In Part II of the study, concentration will be shifted to the development of an adaptive refinement algorithm for the RKPM.
机译:在这项研究中,提出了使用再生核粒子法(RKPM)的自适应细化程序来解决2D弹性静力学问题。该自适应细化过程基于后验误差估计的Zienkiewicz和Zhu(ZZ)误差估计器以及用于生成新点网格的自适应有限点网格生成器。作品的介绍分为两个部分。在第一部分中,将重点关注RKPM的应力恢复和后验误差估计过程。所提出的误差估计器与先前建议的大多数恢复类型误差估计器的不同之处在于,不是使用最小二乘拟合方法,而是通过提取函数方法构造恢复应力场。使用二维基准边界值问题进行的数值研究表明,所获得的恢复应力场比RKPM应力场更准确且收敛速度更高。在研究的第二部分中,重点将转移到针对RKPM的自适应细化算法的开发上。

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