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首页> 外文期刊>Computational Mechanics: Solids, Fluids, Fracture Transport Phenomena and Variational Methods >Monotonicity-based regularization for shape reconstruction in linear elasticity
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Monotonicity-based regularization for shape reconstruction in linear elasticity

机译:基于单调性的线弹性形状重建正则化

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We deal with the shape reconstruction of inclusions in elastic bodies. For solving this inverse problem in practice, data fitting functionals are used. Those work better than the rigorous monotonicity methods from Eberle and Harrach (Inverse Probl 37(4):045006, 2021), but have no rigorously proven convergence theory. Therefore we show how the monotonicity methods can be converted into a regularization method for a data-fitting functional without losing the convergence properties of the monotonicity methods. This is a great advantage and a significant improvement over standard regularization techniques. In more detail, we introduce constraints on the minimization problem of the residual based on the monotonicity methods and prove the existence and uniqueness of a minimizer as well as the convergence of the method for noisy data. In addition, we compare numerical reconstructions of inclusions based on the monotonicity-based regularization with a standard approach (one-step linearization with Tikhonov-like regularization), which also shows the robustness of our method regarding noise in practice.
机译:我们处理弹性体中夹杂物的形状重建。为了在实践中解决这个逆问题,使用了数据拟合泛函。这些方法比 Eberle 和 Harrach 的严格单调性方法(Inverse Probl 37(4):045006,2021 年)效果更好,但没有经过严格验证的收敛理论。因此,我们展示了如何在不失去单调性方法的收敛特性的情况下将单调性方法转换为数据拟合泛函的正则化方法。这是一个很大的优势,与标准正则化技术相比是一个重大改进。更详细地,我们引入了基于单调性方法的残差最小化问题的约束,并证明了最小化器的存在性和唯一性以及噪声数据方法的收敛性。此外,我们将基于单调性正则化的夹杂物数值重建与标准方法(一步线性化与类似Tikhonov的正则化)进行了比较,这也表明了我们的方法在实践中对噪声的鲁棒性。

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