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Comparative studies on damage identification with Tikhonov regularization and sparse regularization

机译:用Tikhonov正则化和稀疏正则化进行损伤识别的比较研究

摘要

Summary Structural damage identification is essentially an inverse problem. Ill-posedness is a common obstacle encountered in solving such an inverse problem, especially in the context of a sensitivity-based model updating for damage identification. Tikhonov regularization, also termed as ?2-norm regularization, is a common approach to handle the ill-posedness problem and yields an acceptable and smooth solution. Tikhonov regularization enjoys a more popular application as its explicit solution, computational efficiency, and convenience for implementation. However, as the ?2-norm term promotes smoothness, the solution is sometimes over smoothed, especially in the case that the sensor number is limited. On the other side, the solution of the inverse problem bears sparse properties because typically, only a small number of components of the structure are damaged in comparison with the whole structure. In this regard, this paper proposes an alternative way, sparse regularization, or specifically ?1-norm regularization, to handle the ill-posedness problem in response sensitivity-based damage identification. The motivation and implementation of sparse regularization are firstly introduced, and the differences with Tikhonov regularization are highlighted. Reweighting sparse regularization is adopted to enhance the sparsity in the solution. Simulation studies on a planar frame and a simply supported overhanging beam show that the sparse regularization exhibits certain superiority over Tikhonov regularization as less false-positive errors exist in damage identification results. The experimental result of the overhanging beam further demonstrates the effectiveness and superiorities of the sparse regularization in response sensitivity-based damage identification.
机译:总结结构损伤识别本质上是一个反问题。病态是解决此类逆问题的常见障碍,尤其是在基于灵敏度的模型更新以识别损害的情况下。 Tikhonov正则化也称为2范数正则化,是一种处理不适姿势问题的常用方法,并且可以得出可接受且平滑的解决方案。 Tikhonov正则化由于其显式解决方案,计算效率高,实现方便而享有更广泛的应用。但是,由于β2范数项提高了平滑度,因此解决方案有时过于平滑,尤其是在传感器数量有限的情况下。另一方面,反问题的解决方案具有稀疏性质,因为与整个结构相比,通常仅破坏结构的少量组件。在这方面,本文提出了一种替代方法,即稀疏正则化,或者特别是?1-范数正则化,来处理基于响应灵敏度的损伤识别中的不适定问题。首先介绍了稀疏正则化的动机和实现,并重点介绍了与Tikhonov正则化的区别。采用重加权稀疏正则化以增强解决方案中的稀疏性。在平面框架和简单支撑的悬臂梁上的仿真研究表明,稀疏正则化比Tikhonov正则化具有一定的优势,因为损伤识别结果中的假阳性误差较小。悬臂梁的实验结果进一步证明了稀疏正则化在基于响应灵敏度的损伤识别中的有效性和优越性。

著录项

  • 作者

    Zhang CD; Xu YL;

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  • 年度 2016
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  • 原文格式 PDF
  • 正文语种 eng
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