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首页> 外文期刊>ESAIM. Mathematical modelling and numerical analysis >REDUCED BASIS APPROXIMATION AND A POSTERIORI ERROR ESTIMATES FOR PARAMETRIZED ELLIPTIC EIGENVALUE PROBLEMS
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REDUCED BASIS APPROXIMATION AND A POSTERIORI ERROR ESTIMATES FOR PARAMETRIZED ELLIPTIC EIGENVALUE PROBLEMS

机译:参数化椭圆特征值问题的减小的近似值和后验误差估计

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摘要

We develop a new reduced basis (RB) method for the rapid and reliable approximation of parametrized elliptic eigenvalue problems. The method hinges upon dual weighted residual type a posteriori error indicators which estimate, for any value of the parameters, the error between the high-fidelity finite element approximation of the first eigenpair and the corresponding reduced basis approximation. The proposed error estimators are exploited not only to certify the RB approximation with respect to the high-fidelity one, but also to set up a greedy algorithm for the offline construction of a reduced basis space. Several numerical experiments show the overall validity of the proposed RB approach.
机译:我们为参数化椭圆形特征值问题的快速可靠逼近开发了一种新的缩减基数(RB)方法。该方法依赖于双重加权残差类型的后验误差指示符,其对于参数的任何值,估计第一特征对的高保真有限元近似与相应的减少的基础近似之间的误差。提出的误差估计器不仅可以用于验证关于高保真度的RB近似,而且可以为减少的基础空间的离线构建建立贪婪算法。几个数值实验表明了所提出的RB方法的整体有效性。

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