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Linear and nonlinear time domain system identification at element level for structural systems with unknown excitation.

机译:具有未知激励的结构系统在元素级别的线性和非线性时域系统识别。

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摘要

Three time domain system identification (SI) approaches, i.e., Modified Iterative Least Square with Unknown Input (ILS-UI), Localized Structural Identification, and Modified Iterative Least Square---Extended Kalman Filter with Unknown Input (ILS-EKF-UI), are proposed to identify defects at the element level of structures. In all these methods, structures are modeled using the finite element method (FEM) and the structural parameters (stiffness and damping) are identified using only output response measurements without using any information on input excitation. Excitations are identified as a byproduct of the SI procedures.;If damping is considered to be proportional or Rayleigh-type, the time domain SI technique becomes nonlinear even though the dynamic system remains linear. The Modified ILS-UI approach is essentially a nonlinear SI algorithm.;The Localized Structural Identification combines a time domain SI technique and FEM formulation representing a part of the structure. The time domain responses at each time instance represent an equilibrium status of the system which is reflected in the nodal equilibrium in the FEM. Using the Localized Structural Model, only dynamic responses at the local region closely connected to the part of the structure to be identified are required. This dramatically reduces the measurement requirements, and makes it possible to identify the parameters of the whole structure by identifying only part of it. This study discusses how to select elements of the local structure and how to determine the locations and number of the output measurements.;The Modified ILS-EKF-UI approach was developed by combining the Modified ILS-UI and the Localized Structural Identification. Using the Modified ILS-EKF-UI approach, the system can be identified using responses at a reduced number of dynamic degrees of freedom. This method allows the finite element mesh to be refined further for more localized parameter identification without additional response information.;All three methods are verified using numerical examples. They identify the structures very well. They are found to be more accurate than other methods currently reported in the literature even when input excitation information is used to identify structures. Various types of structures are examined, including shear buildings, plane frames, and plane trusses. The proposed methods are found to be robust even when the responses are contaminated with noise.
机译:三种时域系统识别(SI)方法,即具有未知输入的改进迭代最小二乘(ILS-UI),局部结构识别和具有未知输入的改进迭代最小二乘-扩展卡尔曼滤波器(ILS-EKF-UI)建议用于识别结构元素级别的缺陷。在所有这些方法中,都使用有限元方法(FEM)对结构建模,并且仅使用输出响应测量结果来识别结构参数(刚度和阻尼),而无需使用任何有关输入激励的信息。激励被认为是SI程序的副产品。如果将阻尼视为比例或瑞利型,则即使动态系统保持线性,时域SI技术也会变为非线性。改进的ILS-UI方法本质上是非线性SI算法。局部结构识别结合了时域SI技术和代表结构一部分的FEM公式。每个时间实例的时域响应表示系统的平衡状态,这反映在FEM的节点平衡中。使用局部结构模型,只需要与要识别的结构部分紧密相连的局部区域的动态响应。这大大降低了测量要求,并使得仅通过识别一部分结构就可以确定整个结构的参数。这项研究讨论了如何选择局部结构的元素以及如何确定输出测量值的位置和数量。改进的ILS-EKF-UI方法是通过结合改进的ILS-UI和局部结构识别而开发的。使用改进的ILS-EKF-UI方法,可以使用动态自由度减少的响应来识别系统。该方法允许进一步完善有限元网格,以进行更局部的参数识别,而无需其他响应信息。;所有三个方法均通过数值示例进行了验证。他们很好地识别了结构。即使使用输入的激励信息来识别结构,也发现它们比目前文献中报道的其他方法更准确。检查了各种类型的结构,包括剪力建筑物,平面框架和平面桁架。发现即使在响应被噪声污染的情况下,所提出的方法也很健壮。

著录项

  • 作者

    Ling, Xiaolin.;

  • 作者单位

    The University of Arizona.;

  • 授予单位 The University of Arizona.;
  • 学科 Engineering Civil.;Engineering System Science.;Engineering Mechanical.
  • 学位 Ph.D.
  • 年度 2000
  • 页码 182 p.
  • 总页数 182
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 建筑科学;机械、仪表工业;系统科学;
  • 关键词

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