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A single-mode recursive validation method for modal identification of linear time-varying structures based on prior knowledge

机译:基于先前知识的线性时变结构模态识别的单模递归验证方法

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摘要

Discerning the spurious modes for time-invariant or extremely slow time-varying structures with time-consuming tools (stabilization diagram and clustering), which is the main task of the automated modal identification, has been developed in last years. However, there is still a challenge the recursive identification of the linear time-varying structures. This study presents a single-mode recursive validation method for the recursive identification of the linear time-varying structures. Since one major issue is that the properties of the physical modes are time-varying, the proposed method extracts the information about the current state of the time-varying structures from the nonstationary vibration responses via deep learning method for the separation between physical and spurious modes. For the sake of effective elimination to spurious modes and control of computation efforts, the proposed method utilizes the application-dependent prior knowledge rather than iterations or high-dimensional optimizations, with robustness to hyperparameters. It can be combined with any parametric system identification method. A time-varying stiffness numerical example and a time-varying mass distribution experimental example illustrate the performance of the proposed modal validation method under various time-varying processes.
机译:在去年已经开发出具有耗时的工具(稳定图和聚类的耗时工具(稳定图和聚类)的时间不变或极其慢的时变结构的虚假模式,这是自动模态识别的主要任务。然而,仍然是一种挑战线性时变结构的递归识别。本研究提出了一种用于线性时变结构的递归识别的单模递归验证方法。由于一个主要问题是物理模式的性质是时变的,所以提出的方法通过深入学习方法从非营养的振动响应中提取关于时变结构的当前状态的信息,以便在物理和虚假模式之间分离。为了有效地消除对虚假模式和计算工作的控制,所提出的方法利用应用程序相关的先验知识而不是迭代或高维优化,具有鲁棒性对HyperParameters。它可以与任何参数系统识别方法组合。时变刚度数值和时变块分布实验示例说明了在各种时变过程下所提出的模态验证方法的性能。

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