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A novel technique for structural health assessment in the presence of nonlinearity.

机译:存在非线性时用于结构健康评估的新技术。

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摘要

A novel structural health assessment (SHA) technique is proposed. It is a finite element-based time domain nonlinear system identification technique. The procedure is developed in two stages to incorporate several desirable features and increase its implementation potential. First, a weighted global iteration with an objective function is introduced in the unscented Kalman filter (UKF) procedure in order to obtain stable, convergent, and optimal solution. Furthermore, it also improves the capability of the UKF procedure to identify a large structural system using only a short duration of responses measured at a limited number of dynamic degrees of freedom (DDOFs). The combined procedure is denoted as unscented Kalman filter with weighted global iteration (UKF-WGI).;Then, UKF-WGI is integrated with iterative least-squares with unknown input (ILS-UI) in order to increase its implementation potential. The substructure concept is also incorporated in the procedure. The integrated procedure is denoted as unscented Kalman filter with unknown input and weighted global iteration (UKF-UI-WGI). The two most important features of the method are that it does not need information on input excitation and uses only limited number of noise-contaminated response information to identify structural systems. Also, the method is able to identify the defects at the local element level by tracking the changes in the stiffness of the structural elements in the finite element representation.;The UKF-UI-WGI procedure is implemented in two stages. In Stage 1, based on the location of input excitation, the substructure is selected. Using only responses at all DDOFs in the substructure, ILS-UI can identify the input excitation time-histories, stiffness parameters of all the elements in the substructure, and two Rayleigh damping coefficients. The outcomes of the first stage are necessary to initiate UKF-WGI. Using the information from Stage 1, the stiffness parameters of all the elements in the structure are identified using UKF-WGI in Stage 2.;To demonstrate the effectiveness of the procedure, health assessment of relatively large structural systems is presented. Small and relatively large defects are introduced at different locations in the structure and the capability of the method to detect the health of the structure is examined. The optimum number and location of measured responses are also investigated. It is demonstrated that the method is capable of identifying defect-free and defective states of the structures using minimum information. Furthermore, it can locate defect spot within a defective element accurately.;The comparative studies are also conducted between the proposed methods and available methods in the literature. First, it is between the UKF-WGI and extended Kalman filter with weighted global iteration (EKF-WGI) procedure. Then, it is between UKF-UI-WGI and generalized iterative least-squares extended Kalman filter with unknown input (GILS-EKF-UI) procedure, developed earlier by the research team. It is demonstrated that the proposed UKF-based procedures are superior to the EKF-based procedures for SHA.
机译:提出了一种新颖的结构健康评估(SHA)技术。它是一种基于有限元的时域非线性系统识别技术。该程序分两个阶段进行开发,以合并几个理想的功能并增加其实现潜力。首先,在无味卡尔曼滤波(UKF)过程中引入了具有目标函数的加权全局迭代,以获得稳定,收敛和最优的解决方案。此外,它还提高了UKF程序仅使用有限数量的动态自由度(DDOF)测得的短响应时间来识别大型结构系统的能力。合并的过程称为带有加权全局迭代的无味卡尔曼滤波器(UKF-WGI)。然后,UKF-WGI与未知输入的迭代最小二乘(ILS-UI)集成在一起,以增加其实现潜力。子结构概念也包含在该过程中。集成过程表示为输入未知且加权全局迭代(UKF-UI-WGI)的无味卡尔曼滤波器。该方法的两个最重要的特征是它不需要输入激励信息,而仅使用有限数量的受噪声污染的响应信息来识别结构系统。而且,该方法能够通过跟踪有限元表示中结构元素刚度的变化来识别局部元素级别的缺陷。UKF-UI-WGI过程分两个阶段实施。在阶段1中,根据输入激励的位置,选择子结构。仅使用子结构中所有DDOF的响应,ILS-UI即可识别输入激励时程,子结构中所有元素的刚度参数以及两个瑞利阻尼系数。第一阶段的结果对于启动UKF-WGI是必要的。使用来自阶段1的信息,使用阶段2中的UKF-WGI识别结构中所有元素的刚度参数;;为了证明该程序的有效性,提出了相对大型结构系统的健康评估。在结构的不同位置引入了较小和相对较大的缺陷,并检查了该方法检测结构健康状况的能力。还研究了测量响应的最佳数量和位置。证明了该方法能够使用最少的信息来识别结构的无缺陷和缺陷状态。此外,它还可以准确地定位缺陷元件中的缺陷点。;还对提出的方法与文献中可用的方法进行了比较研究。首先,它在UKF-WGI和带有加权全局迭代(EKF-WGI)过程的扩展卡尔曼滤波器之间。然后,它在UKF-UI-WGI和具有未知输入的广义迭代最小二乘扩展卡尔曼滤波器(GILS-EKF-UI)过程之间,由研究团队较早开发。事实证明,基于UKF的拟议程序优于SHA的基于EKF程序。

著录项

  • 作者单位

    The University of Arizona.;

  • 授予单位 The University of Arizona.;
  • 学科 Civil engineering.;Mechanical engineering.
  • 学位 Ph.D.
  • 年度 2014
  • 页码 228 p.
  • 总页数 228
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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