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首页> 外文期刊>Inverse Problems: An International Journal of Inverse Problems, Inverse Methods and Computerised Inversion of Data >Goal oriented adaptivity in the IRGNM for parameter identification in PDEs: I. reduced formulation
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Goal oriented adaptivity in the IRGNM for parameter identification in PDEs: I. reduced formulation

机译:IRGNM中面向目标的适应性,用于PDE中的参数识别:I.简化公式

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摘要

In this paper we study adaptive discretization of the iteratively regularized Gauss-Newton method (IRGNM) with an a posteriori (discrepancy principle) choice of the regularization parameter in each Newton step and of the stopping index. We first of all prove convergence and convergence rates under some accuracy requirements formulated in terms of four quantities of interest. Then computation of error estimators for these quantities based on a weighted dual residual method is discussed, which results in an algorithm for adaptive refinement. Finally we extend the results from the Hilbert space setting with quadratic penalty to Banach spaces and general Tikhonov functionals for the regularization of each Newton step.
机译:在本文中,我们研究了迭代正则化高斯-牛顿法(IRGNM)的自适应离散化,以及在每个牛顿步长和停止指数的后验(离散原则)选择。首先,我们证明了在根据四个感兴趣量制定的某些精度要求下的收敛性和收敛速度。然后讨论了基于加权对偶残差法的这些量的误差估计器的计算,从而得出了一种自适应细化算法。最后,我们将具有二次惩罚的希尔伯特空间设置的结果扩展到Banach空间和通用的Tikhonov函数,以进行每个牛顿步的正则化。

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