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首页> 外文期刊>Engineering Structures >Application Of Regularization Methods To Damage Detection In Large Scale Plane Frame Structures Using Incomplete Noisy Modal Data
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Application Of Regularization Methods To Damage Detection In Large Scale Plane Frame Structures Using Incomplete Noisy Modal Data

机译:正则化方法在不完整噪声模态数据在大型平面框架结构损伤检测中的应用

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摘要

This paper presents an approach for detecting local damage in large scale frame structures by utilizing regularization methods for ill-posed problems. A direct relationship between the change in stiffness caused by local damage and the measured modal data for the damaged structure is developed, based on the perturbation method for structural dynamic systems. Thus, the measured incomplete modal data can be directly adopted in damage identification without requiring model reduction techniques, and common regularization methods could be effectively employed to solve the developed equations. Damage indicators are appropriately chosen to reflect both the location and severity of local damage in individual components of frame structures such as in brace members and at beam-column joints. The Truncated Singular Value Decomposition solution incorporating the Generalized Cross Validation method is introduced to evaluate the damage indicators for the cases when realistic errors exist in modal data measurements. Results for a 16-story building model structure show that structural damage can be correctly identified at detailed level using only limited information on the measured noisy modal data for the damaged structure.
机译:本文提出了一种利用不适定问题的正则化方法检测大型框架结构中局部损伤的方法。基于结构动力系统的摄动方法,建立了由局部损伤引起的刚度变化与被测结构的模态数据之间的直接关系。因此,可以将测得的不完整模态数据直接用于损伤识别,而无需模型简化技术,并且可以有效地采用常见的正则化方法来求解所开发的方程。适当选择损坏指示器,以反映框架结构的各个组件(如支杆构件和梁柱节点中)的局部损坏的位置和严重程度。引入了包含通用交叉验证方法的截断奇异值分解解决方案,以评估模态数据测量中存在实际错误时的损坏指标。 16层建筑模型结构的结果表明,仅使用有关已损坏结构的已测量噪声模态数据的有限信息,就可以在详细级别正确识别出结构损坏。

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