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Improved independent component analysis based modal identification of higher damping structures

机译:基于改进的独立成分分析的高阻尼结构模态识别

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Structural modal parameter identification under ambient excitation has strong engineering value and theoretical significance. As the most popular tool for solving Blind Source Separation (BSS) problems, Independent Component Analysis (ICA) is able to directly extract the time-domain modal parameters, including frequencies, damping ratios and modal shapes. ICA, however, has a fatal flaw of failing to identify structures with higher damping. To overcome the flaw above, the paper proposes a new method named "ICA +IDT". Firstly, free vibration response of a structure is obtained from structural outputs under ambient excitation. Inverse damping transfer (IDT) is employed to turn a highly damped signal into a low damping response signal without changing of frequencies and mode shapes. Then, structural modal parameters are extracted from the low damping response signal by ICA. Finally, the identified damping ratios are adjusted to eliminate the impact of IDT. To verify the effectiveness and applicability of IDT + ICA proposed herein, two numerical simulations-mass-spring model and simply supported concrete beam-and an experiment model of three-story steel frame are built, and the analysis results reveal that presented method can identify structures with higher damping effectively. (C) 2016 Elsevier Ltd. All rights reserved.
机译:环境激励下的结构模态参数辨识具有较强的工程价值和理论意义。作为解决盲源分离(BSS)问题的最受欢迎的工具,独立分量分析(ICA)能够直接提取时域模态参数,包括频率,阻尼比和模态形状。但是,ICA的致命缺陷是无法识别具有更高阻尼的结构。为了克服上述缺陷,本文提出了一种新方法“ ICA + IDT”。首先,在环境激励下从结构输出获得结构的自由振动响应。逆阻尼传递(IDT)用于将高阻尼信号转换为低阻尼响应信号,而无需改变频率和模式形状。然后,通过ICA从低阻尼响应信号中提取结构模态参数。最后,调整确定的阻尼比以消除IDT的影响。为了验证本文提出的IDT + ICA的有效性和适用性,建立了两个数值模拟-弹簧-弹簧模型和简支混凝土梁-以及三层钢框架的实验模型,分析结果表明,该方法可以识别具有较高阻尼的结构。 (C)2016 Elsevier Ltd.保留所有权利。

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