Local modifications of a computational domain are often performed in order to simplify the meshing process and to reduce computational costs and memory requirements. However, removing geometrical features of a domain often introduces a non-negligible error in the solution of a differential problem in which it is defined. In this paper, we aim at generalizing the work from [1], in which an a posteriori estimator of the geometrical defeaturing error is derived for domains from which one geometrical feature is removed. More precisely, we study the case of domains containing an arbitrary number of distinct features, and we perform an analysis on Poisson's, linear elasticity, and Stokes' equations. We introduce a simple and computationally cheap a posteriori estimator of the geometrical defeaturing error, whose reliability and efficiency are rigorously proved, and we introduce a geometric refinement strategy that accounts for the defeaturing error: Starting from a fully defeatured geometry, the algorithm determines at each iteration step which features need to be added to the geometrical model to reduce the defeaturing error. These important features are then added to the (partially) defeatured geometrical model at the next iteration, until the solution attains a prescribed accuracy. A wide range of numerical experiments are finally reported to illustrate and validate this work.
翻译:本地对计算域的修改往往是为了简化网格过程,减少计算成本和内存要求。然而,去除一个域的几何特征往往在解决界定其定义的差别问题时引入一个不可忽略的错误。在本文中,我们的目标是从[1]中概括工作,从[1]中得出一个几何败坏错误的事后估计符,从中得出一个排除一个几何特征的域。更确切地说,我们研究含有不同特征任意数的域,我们对Poisson的域、线性弹性和Stokes等式进行分析。我们采用一个简单和计算上便宜的地算误差的事后估计,其可靠性和效率得到严格证明,我们采用一个几何何测错的精度战略来计算败坏误:从完全败坏的几何特征开始,算法在每一梯度步骤中确定这些特性需要添加到下几何模型,以减少失败性误差。这些重要的特征在计算方法上,最终被添加到所报告的数字精确度,然后加以量化。