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A hierarchical a posteriori error estimator for the Reduced Basis Method

机译:减少基础方法的分层后验误差估计

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In this contribution, we are concerned with tight a posteriori error estimation for projection-based model order reduction of in f stable parameterized variational problems. In particular, we consider the Reduced Basis Method in a Petrov-Galerkin framework, where the reduced approximation spaces are constructed by the (weak) greedy algorithm. We propose and analyze a hierarchical a posteriori error estimator which evaluates the difference of two reduced approximations of different accuracy. Based on the a priori error analysis of the (weak) greedy algorithm, it is expected that the hierarchical error estimator is sharp with efficiency index close to one, if the Kolmogorov N-with decays fast for the underlying problem and if a suitable saturation assumption for the reduced approximation is satisfied. We investigate the tightness of the hierarchical a posteriori estimator both from a theoretical and numerical perspective. For the respective approximation with higher accuracy, we study and compare basis enrichment of Lagrange- and Taylor-type reduced bases. Numerical experiments indicate the efficiency for both, the construction of a reduced basis using the hierarchical error estimator in a greedy algorithm, and for tight online certification of reduced approximations. This is particularly relevant in cases where the infdocumentclass[12pt] constant may become small depending on the parameter. In such cases, a standard residual-based error estimator-complemented by the successive constrained method to compute a lower bound of the parameter dependent inf constant-may become infeasible.
机译:在这一贡献中,我们涉及对F稳定参数化变分问题的基于投影的模型顺序进行后验误差估计。特别地,我们考虑在Petrov-Galerkin框架中的降低的基础方法,其中减小的近似空间由(弱)贪婪算法构成。我们提出并分析了分层的后验误差估计器,其评估了不同精度的两个减少近似的差异。基于对(弱)贪婪算法的先验误差分析,预期分层误差估计器与效率指数接近一个,如果Kolmogorov N-and and XIblying问题的衰减以及合适的饱和假设为了满足降低的近似。我们从理论和数值角度调查了分层后验估计的紧张性。对于具有更高的准确度的相应近似,我们研究并比较拉格朗日和泰勒型降低基地的基础富集。数值实验表明,在贪婪算法中使用分层误差估计器的效率,降低的基础,以及用于减少近似的在线认证。这在INF DocumentClass [12pt]常量可能变小的情况下尤其相关,这取决于参数。在这种情况下,由连续约束方法补充的标准残余误差估计器来计算参数依赖性INF常数的下限 - 可能变得不可行。

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