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Framework for Small Crack Propagation and Detection Joint Modeling Using Gaussian Process Regression

机译:高斯过程回归的小裂纹扩展与检测联合建模框架

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摘要

Engineers have witnessed much advancement in the study of fatigue crack detection and propagation (CPD) modeling. More recently the use of certain damage precursors such as acoustic emission (AE) signals to assess the integrity of structures has been proposed for application to prognosis and health management of structures. However, due to uncertainties associated with small crack detection of damage precursors as well as crack size measurement errors of the detection technology used, applications of prognosis and health management assessments have been limited.;This dissertation defines a new methodology for the assessment of CPD parameters and the minimization of uncertainties including detection and sizing errors associated with a series of known CPD models that use AE as the precursor to fatigue cracking. The first step of the procedure is defining the separate crack propagation and crack detection models that are to be used for the testing of a joint-CPD model. The two propagation models for this study are based on a Gaussian process regression model that correlates crack shaping factors (CSFs) to the propagation of the crack. One of these propagation models includes a particle filtering technique that includes several AE data. The testing of this joint-CPD model is facilitated by the Bayesian inference of the CPD likelihood where the posterior models are extracted and tested for correctness.;The CSFs, the CPD data, and the AE signal data used for testing of this methodology come from a series of fatigue tests done on dog-bone Al 7075-T6 specimens. The data is first corrected for measurement error that is present based on the initial crack measurements. Then the data is used to generate the prior CPD models that is needed for the Bayesian inference procedure. With the resulting posterior CPD models, a correlation procedure that estimates the CPD model parameters of validation specimens based on the relationship that exists between the CSFs and the CPD model parameters is performed as well as a model error correction procedure. The result of this correlation provides reasonable estimates for the remaining useful life of a given validation specimen.
机译:工程师见证了疲劳裂纹检测和传播(CPD)建模研究的巨大进步。最近,已经提出使用某些损坏的前体例如声发射(AE)信号来评估结构的完整性,以用于结构的预后和健康管理。然而,由于损伤前体小裂纹检测的不确定性以及所使用检测技术的裂纹尺寸测量误差,预后和健康管理评估的应用受到了限制。最小化不确定性,包括与一系列已知的CPD模型相关的检测和尺寸错误,这些CPD模型使用AE作为疲劳裂纹的先兆。该程序的第一步是定义单独的裂纹扩展和裂纹检测模型,这些模型将用于测试联合CPD模型。本研究的两个传播模型基于高斯过程回归模型,该模型将裂纹成形因子(CSF)与裂纹的传播相关联。这些传播模型之一包括粒子滤波技术,该技术包含多个AE数据。贝叶斯对CPD可能性的贝叶斯推断有助于对该联合CPD模型的测试,其中提取后验模型并进行正确性测试;用于测试此方法的CSF,CPD数据和AE信号数据来自对狗骨头Al 7075-T6标本进行了一系列疲劳测试。首先对数据进行校正,以基于初始裂纹测量结果出现的测量误差。然后,将数据用于生成贝叶斯推理过程所需的先前CPD模型。对于生成的后验CPD模型,将执行基于CSF和CPD模型参数之间存在的关系来估计验证样本的CPD模型参数的相关过程以及模型误差校正过程。这种相关性的结果为给定验证样本的剩余使用寿命提供了合理的估计。

著录项

  • 作者

    Smith, Reuel.;

  • 作者单位

    University of Maryland, College Park.;

  • 授予单位 University of Maryland, College Park.;
  • 学科 Engineering.;Acoustics.;Statistics.
  • 学位 Ph.D.
  • 年度 2017
  • 页码 175 p.
  • 总页数 175
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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