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An inverse approach based on uniform load surface for damage detection in structures

机译:基于均匀载荷表面的逆方法,用于结构中的损坏检测

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摘要

In this paper, an inverse approach based on uniform load surface (ULS) is presented for structural damage localization and quantification. The ULS is excellent approximation for deformed configuration of a structure under distributed unit force applied on all degrees of freedom. The ULS make use of natural frequencies and mode shapes of structure and in mathematical point of view is a weighted average of mode shapes. An objective function presented to damage detection is discrepancy between the ULS of monitored structure and numerical model of structure. Solving this objective function to find minimum value yields damage's parameters detection. The teaching-learning based optimization algorithm has been employed to solve inverse problem. The efficiency of present damage detection method is demonstrated through three numerical examples. By comparison between proposed objective function and another objective function which make use of natural frequencies and mode shapes, it is revealed present objective function have faster convergence and is more sensitive to damage. The method has good robustness against measurement noise and could detect damage by using the first few mode shapes. The results indicate that the proposed method is reliable technique to damage detection in structures.
机译:在本文中,提出了一种基于均匀载荷表面(ULS)的反向方法,用于结构损伤定位和量化。对于在所有自由度上施加的分布式单元力下的结构的变形配置,ULS是优异的近似。 ULS利用结构的自然频率和模式形状,并且在数学的角度中是模式形状的加权平均值。呈现损坏检测的目标函数是监测结构的ULS与结构数值模型之间的差异。解决此目标函数以找到最小值产生损坏的参数检测。基于教学的教学优化算法已经采用来解决逆问题。通过三个数值例示表出现损伤检测方法的效率。通过比较所提出的目标函数和使用自然频率和模式形状的另一目标函数,揭示了当前的目标函数具有更快的收敛性并且对损坏更敏感。该方法对测量噪声具有良好的鲁棒性,并且可以通过使用前几种模式形状来检测损坏。结果表明,该方法是可靠的技术在结构中损坏检测。

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