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Empirical decomposition method for modeless component and its application to VIV analysis

机译:无模分量的经验分解方法及其在VIV分析中的应用

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ABSTRACT Aiming at accurately distinguishing modeless component and natural vibration mode terms from data series of nonlinear and non-stationary processes, such as Vortex-Induced Vibration (VIV), a new empirical mode decomposition method has been developed in this paper. The key innovation related to this technique concerns the method to decompose modeless component from non-stationary process, characterized by a predetermined ‘maximum intrinsic time window’ and cubic spline. The introduction of conceptual modeless component eliminates the requirement of using spurious harmonics to represent nonlinear and non-stationary signals and then makes subsequent modal identification more accurate and meaningful. It neither slacks the vibration power of natural modes nor aggrandizes spurious energy of modeless component. The scale of the maximum intrinsic time window has been well designed, avoiding energy aliasing in data processing. Finally, it has been applied to analyze data series of vortex-induced vibration processes. Taking advantage of this newly introduced empirical decomposition method and mode identification technique, the vibration analysis about vortex-induced vibration becomes more meaningful.
机译:摘要针对从非线性和非平稳过程的数据序列(如涡激振动(VIV))中准确区分出无模式分量和自然振动模式项,本文开发了一种新的经验模式分解方法。与该技术有关的关键创新涉及一种将非模态分量从非平稳过程分解的方法,该方法的特征在于预定的“最大固有时间窗口”和三次样条。概念性无模分量的引入消除了使用寄生谐波来表示非线性和非平稳信号的要求,从而使后续的模态识别更加准确和有意义。它既不减弱自然模式的振动功率,也不增强无模式分量的杂散能量。最大固有时间窗口的比例已经过精心设计,避免了数据处理中的能量混叠。最后,它已被用于分析涡激振动过程的数据序列。利用这种新引入的经验分解方法和模式识别技术,关于涡激振动的振动分析变得更加有意义。

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