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A probabilistic damage identification approach for structures with uncertainties under unknown input

机译:输入未知的不确定性结构的概率损伤识别方法

摘要

To avoid the false positives of damages in the deterministic identification method induced by uncertainties in measurement noise, a probabilistic method is proposed to identify damages of the structures with uncertainties under unknown input. The proposed probabilistic method is developed from a deterministic simultaneous identification method of structural physical parameters and input based on dynamic response sensitivity. The deterministic simultaneous identification method is first derived. The effect of uncertainties caused by measurement noise on the identified parameters is then investigated. The statistical parameters of the identified structural parameters are calculated. The damage index is derived from the statistical parameters of the physical parameters of intact and damaged structure. The probability of identified damage, defined as the probability of identified structural stiffness smaller than that of intact structure, is further derived using the probability method. A twelve-story building and a nine-bay three-dimensional frame structure are, respectively, analyzed numerically and experimentally using the proposed method. The research results indicate that the probabilistic simultaneous identification method for damage and input can decrease the false positives of damages in contrast with the deterministic method under intensive measurement noise, and it can also achieve an accurate identification for structural unknown input.
机译:为了避免测量噪声的不确定性导致确定性识别方法中损伤的误报,提出了一种概率方法来识别未知输入下具有不确定性的结构的损伤。所提出的概率方法是基于动态响应灵敏度的确定性结构物理参数和输入同时识别方法开发的。首先推导确定性同时识别方法。然后研究由测量噪声引起的不确定性对识别出的参数的影响。计算所识别的结构参数的统计参数。损坏指数是从完整和损坏的结构的物理参数的统计参数得出的。使用概率方法进一步推导确定损坏的概率,定义为确定的结构刚度小于完整结构的概率。利用所提出的方法,分别对一栋十二层建筑物和一间九托架三维框架进行了数值分析和实验分析。研究结果表明,与确定性方法相比,在大量测量噪声下,损伤和输入的概率同时识别方法可以减少损伤的误报,并且可以准确识别结构未知输入。

著录项

  • 作者

    Zhang K; Li H; Duan Z; Law SS;

  • 作者单位
  • 年度 2011
  • 总页数
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类

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