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A robust error estimator and a residual-free error indicator for reduced basis methods

机译:健壮的误差估计器和无残差误差指示符,用于简化基础方法

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The Reduced Basis Method (RBM) is a rigorous model reduction approach for solving parameterized partial differential equations. It identifies a low-dimensional subspace for approximation of the parametric solution manifold that is embedded in high-dimensional space. A reduced order model is subsequently constructed in this subspace. RBM relies on residual-based error indicators or a posteriori error bounds to guide construction of the reduced solution subspace, to serve as a stopping criteria, and to certify the resulting surrogate solutions. Unfortunately, it is well-known that the standard algorithm for residual norm computation suffers from premature stagnation at the level of the square root of machine precision.In this paper, we develop two alternatives to the standard offline phase of reduced basis algorithms. First, we design a robust strategy for computation of residual error indicators that allows RBM algorithms to enrich the solution subspace with accuracy beyond root machine precision. Secondly, we propose a new error indicator based on the Lebesgue function in interpolation theory. This error indicator does not require computation of residual norms, and instead only requires the ability to compute the RBM solution. This residual-free indicator is rigorous in that it bounds the error committed by the RBM approximation, but up to an uncomputable multiplicative constant. Because of this, the residual-free indicator is effective in choosing snapshots during the offline RBM phase, but cannot currently be used to certify error that the approximation commits. However, it circumvents the need for a posteriori analysis of numerical methods, and therefore can be effective on problems where such a rigorous estimate is hard to derive. (C) 2018 Elsevier Ltd. All rights reserved.
机译:简化基础法(RBM)是用于求解参数化偏微分方程的严格模型简化方法。它标识了一个低维子空间,用于逼近嵌入在高维空间中的参数解流形。随后在该子空间中构造降阶模型。 RBM依赖于基于残差的误差指标或后验误差界限,以指导简化解子空间的构造,用作停止准则并验证生成的替代解决方案。不幸的是,众所周知,残差范数的标准算法在机器精度平方根的水平上会出现过早的停滞。在本文中,我们为标准的离线基础的约简算法开发了两种选择。首先,我们设计了一种用于计算残差误差指标的可靠策略,该策略允许RBM算法以超出根计算机精度的精度来丰富解决方案子空间。其次,我们提出了一种基于Lebesgue函数的插值理论新的误差指标。该错误指示符不需要计算残差准则,而仅需要具有计算RBM解决方案的能力。该无残差指示符很严格,因为它限制了RBM近似所造成的误差,但一直到不可计算的乘法常数。因此,无残差指示器在脱机RBM阶段可以有效地选择快照,但是当前不能用于证明近似值所带来的误差。但是,它避免了对数值方法进行后验分析的需要,因此可以有效解决难以得出如此严格的估计值的问题。 (C)2018 Elsevier Ltd.保留所有权利。

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