Error Control in Terms of Linear Functionals Based on Gradient Averaging Techniques

S. Korotov
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引用次数: 8

Abstract

We show how commonly used gradient averaging techniques can be successfully applied to estimation of computational errors evaluated by linear (goal-oriented) functionals for linear elliptic type problems. General scheme for construction of corresponding estimators is described and effectivity of the proposed approach is demonstrated in numerical tests.
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基于梯度平均技术的线性泛函误差控制
我们展示了常用的梯度平均技术如何成功地应用于线性椭圆型问题的线性(目标导向)泛函评估的计算误差估计。给出了构造相应估计量的一般方案,并通过数值试验验证了该方法的有效性。
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