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A data-driven approach to construct a quantitative relationship between microstructural features of fatigue cracks and contact acoustic nonlinearity

机译:一种构建疲劳裂纹微结构特征与接触声非线性的定量关系的数据驱动方法

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摘要

This study demonstrates the feasibility of a data-driven approach to construct a quantitative relationship between nonlinear acoustic parameters and microstructural features of contact interfaces. The near-surface nonlinearity is measured using dynamic acousto-elastic testing (DAET) with a surface wave probe, while the microstructural features are extracted from scanning electron microscopy (SEM) images of fatigue cracks. Four aluminum alloy samples, each having a fatigue crack are prepared. Six local nonlinearity parameters are measured at different locations along the crack propagation direction. A total of 40 local measurements are acquired. A principal component analysis (PCA) reveals that all six nonlinearity parameters are correlated and hence can be replaced by one principal component (PC). Fifteen crack micro-geometrical features at each measurement point were extracted from the SEM images. Regression analysis is used to relate the PC of the nonlinearity parameters to the microstructural features at the crack interface. We compare three regression models that take variable selection into account: stepwise multiple linear regression (MLR), stepwise principal component regression (PCR), and least absolute shrinkage and selection operator (LASSO). Despite having different principles, the three predictive models identify two features as the most significant in predicting the interface nonlinearity: the crack aperture (opening) distribution and the distance to the crack tip. The differences between the three models and the physical interpretation of the data-driven predictions are discussed.
机译:该研究表明了数据驱动方法构建非线性声学参数和接触接口微结构特征之间的定量关系的可行性。使用具有表面波探针的动态声学 - 弹性测试(DAET)测量近表面非线性,同时从扫描电子显微镜(SEM)图像中提取微观结构特征。制备四个铝合金样品,每个铝合金样品具有疲劳裂缝。在沿裂纹传播方向的不同位置处测量六个局部非线性参数。共有40个本地测量。主成分分析(PCA)显示所有六个非线性参数都是相关的,因此可以由一个主组件(PC)替换。每次测量点处的十五个裂纹微观几何特征从SEM图像中提取。回归分析用于将非线性参数的PC与裂缝接口的微观结构特征相关联。我们比较了三个回归模型,该模型考虑了可变选择:逐步多元线性回归(MLR),逐步主成分回归(PCR),以及最小的绝对收缩和选择操作员(套索)。尽管具有不同的原理,但是三个预测模型鉴定了两个特征,在预测界面非线性方面是最重要的:裂缝孔径(开口)分布和到裂缝尖端的距离。讨论了三种模型与数据驱动预测的物理解释之间的差异。

著录项

  • 作者

    Jiang Jin; Parisa Shokouhi;

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  • 年度 2019
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  • 原文格式 PDF
  • 正文语种 eng
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