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Modal parameter identification of structures based on short-time narrow-banded mode decomposition

机译:基于短时窄带模式分解的结构模态参数识别

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摘要

The accurate estimation of natural frequencies and damping ratios is critical for civil structures. In this article, a method based on short-time narrow-banded mode decomposition is proposed to analyze the modal parameters of civil structures. In this approach, short-time narrow-banded mode decomposition is applied to identify time-varying structures with free vibration responses. On the contrary, by analysis of the weighting factors α and β , short-time narrow-banded mode decomposition is improved to estimate the parameter of time-invariant systems. In the case of enhanced short-time narrow-banded mode decomposition, the original short-time narrow-banded mode decomposition approach is modified in two ways. First, the instantaneous frequency term of the objective function is removed, and one weighting factor remains, that is, α in the objective function. Second, a technique is provided to automatically detect the optimum value of α . Two numerical examples, that is, a three-degree-of-freedom time-variant system and a simple model of the Lysefjord bridge are provided. In addition, an experiment with a real-life pedestrian bridge located at Tufts University, United States, is used to demonstrate the applicability of the proposed method. The analysis results indicate that the proposed method can easily identify high-quality natural frequencies and damping ratios.
机译:准确估计自然频率和阻尼比对于民间结构至关重要。在本文中,提出了一种基于短时窄带模式分解的方法来分析民用结构的模态参数。在这种方法中,施加短时窄带模式分解以识别具有自由振动响应的时变结构。相反,通过分析加权因子α和β,改善了短时窄带模式分解以估计时间不变系统的参数。在增强短时窄带模式分解的情况下,原始的短时窄带模式分解方法以两种方式修改。首先,去除目标函数的瞬时频率项,并且一个加权因子保持在目标函数中。其次,提供了一种技术以自动检测α的最佳值。提供了两个数值示例,即三度自由度的时间变体系统和Lysefjord桥的简单模型。此外,在美国的现实生活步行桥的实验,用于证明该方法的适用性。分析结果表明,该方法可以容易地识别高质量的自然频率和阻尼比率。

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