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Frequency response-based damage identification in frames by minimum constitutive relation error and sparse regularization

机译:基于频率响应的帧帧帧中的最小组成关系误差和稀疏正则化

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摘要

The objective of this paper is to provide a new damage identification method using frequency response data. In this approach, the inverse identification problem is treated as a nonlinear optimization problem whose objective function is just the constitutive relation error (CRE). To circumvent the ill-posedness of the inverse problem which is caused by use of the possibly insufficient data and enhance the robustness of the identification process, the sparse regularization is introduced where the l(1)-norm regularization term is added to the original CRE function. In regard to the minimum solution of the sparse-regularized CRE objective function, the alternating minimization (AM) method is established. The attractive features of the present damage identification approach are: (a) while coping with the sparse regularization, a closed-form solution is obtained due to the decoupling of the CRE function with respect to the damage parameters and hence the sparse regularization term would introduce little computational complexity; (b) the sparse regularization parameters are directly determined by a simple threshold setting method; (c) no sensitivity analysis is involved herein. Numerical examples are conducted to verify the proposed approach and the results show that the sparse regularization obviously improves the accuracy and robustness for the identified damages. (C) 2018 Elsevier Ltd. All rights reserved.
机译:本文的目的是提供使用频率响应数据的新损害识别方法。在这种方法中,逆识别问题被视为非线性优化问题,其客观函数仅仅是本构关系误差(CRE)。为了规避由于使用可能不足的数据和增强识别过程的鲁棒性而引起的逆问题的不良问题,介绍了L(1)-norm正规化项的稀疏正则化在原始CRE中添加功能。关于稀疏正规的CRE目标函数的最小解决方案,建立了交替的最小化(AM)方法。本损伤识别方法的吸引力特征是:(a)在应对稀疏正则化的同时,由于CRE函数关于损坏参数的去耦而获得闭合溶液,因此稀疏的正则化术语将介绍几乎没有计算复杂性; (b)通过简单的阈值设置方法直接确定稀疏正则化参数; (c)本文没有涉及敏感性分析。进行数值例子以验证所提出的方法,结果表明,稀疏的正则化明显提高了所确定的损害的准确性和鲁棒性。 (c)2018年elestvier有限公司保留所有权利。

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