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Feature and Statistical Model Development in Structural Health Monitoring.

机译:结构健康监测的特征和统计模型开发。

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摘要

All structures suffer wear and tear because of impact, excessive load, fatigue, corrosion, etc. in addition to inherent defects during their manufacturing processes and their exposure to various environmental effects. These structural degradations are often imperceptible, but they can severely affect the structural performance of a component, thereby severely decreasing its service life. Although previous studies of Structural Health Monitoring (SHM) have revealed extensive prior knowledge on the parts of SHM processes, such as the operational evaluation, data processing, and feature extraction, few studies have been conducted from a systematical perspective, the statistical model development.;The first part of this dissertation, the characteristics of inverse scattering problems, such as ill-posedness and nonlinearity, reviews ultrasonic guided wave-based structural health monitoring problems. The distinctive features and the selection of the domain analysis are investigated by analytically searching the conditions of the uniqueness solutions for ill-posedness and are validated experimentally.;Based on the distinctive features, a novel wave packet tracing (WPT) method for damage localization and size quantification is presented. This method involves creating time-space representations of the guided Lamb waves (GLWs), collected at a series of locations, with a spatially dense distribution along paths at pre-selected angles with respect to the direction, normal to the direction of wave propagation. The fringe patterns due to wave dispersion, which depends on the phase velocity, are selected as the primary features that carry information, regarding the wave propagation and scattering.;The following part of this dissertation presents a novel damage-localization framework, using a fully automated process. In order to construct the statistical model for autonomous damage localization deep-learning techniques, such as restricted Boltzmann machine and deep belief network, are trained and utilized to interpret nonlinear far-field wave patterns.;Next, a novel bridge scour estimation approach that comprises advantages of both empirical and data-driven models is developed. Two field datasets from the literature are used, and a Support Vector Machine (SVM), a machine-learning algorithm, is used to fuse the field data samples and classify the data with physical phenomena. The Fast Non-dominated Sorting Genetic Algorithm (NSGA-II) is evaluated on the model performance objective functions to search for Pareto optimal fronts.
机译:除了制造过程中固有的缺陷以及暴露于各种环境影响外,所有结构还因冲击,过度负载,疲劳,腐蚀等原因而遭受磨损。这些结构退化通常是无法察觉的,但是它们会严重影响组件的结构性能,从而严重缩短其使用寿命。尽管以前的结构健康监测(SHM)研究已经揭示了关于SHM过程各个部分的广泛先验知识,例如操作评估,数据处理和特征提取,但是从系统的角度进行统计模型开发的研究很少。论文的第一部分,逆散射问题的特征,例如不适定性和非线性,回顾了基于超声导波的结构健康监测问题。通过分析不适定性唯一性解的条件,研究了特征和域分析的选择,并进行了实验验证。基于特征,提出了一种新颖的波包跟踪(WPT)损伤定位和定位方法。大小量化提出。该方法涉及创建在一系列位置收集的导引兰姆波(GLW)的时空表示,这些波沿相对于垂直于波传播方向的方向具有预选角度的路径沿路径具有空间密集的分​​布。选择由波分散引起的条纹图案,该条纹图案取决于相速度,作为携带信息的主要特征,有关波的传播和散射。本论文的以下部分提出了一种新颖的损伤定位框架,该模型充分利用了自动化过程。为了构建自主损伤定位的统计模型,训练并利用了受约束的玻尔兹曼机和深度信念网络等深度学习技术来解释非线性远场波型。开发了经验模型和数据驱动模型的优点。使用了来自文献的两个现场数据集,并且使用了支持向量机(SVM)(一种机器学习算法)来融合现场数据样本并将数据与物理现象进行分类。在模型性能目标函数上评估快速非支配排序遗传算法(NSGA-II),以搜索帕累托最优前沿。

著录项

  • 作者

    Kim, Inho.;

  • 作者单位

    Arizona State University.;

  • 授予单位 Arizona State University.;
  • 学科 Mechanical engineering.;Aerospace engineering.;Civil engineering.
  • 学位 Ph.D.
  • 年度 2016
  • 页码 179 p.
  • 总页数 179
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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