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首页> 外文期刊>Nondestructive Testing and Evaluation >Condition monitoring with defect localisation in a two-dimensional structure based on linear discriminant and nearest neighbour classification of strain features
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Condition monitoring with defect localisation in a two-dimensional structure based on linear discriminant and nearest neighbour classification of strain features

机译:基于线性判别和最近邻分类的二维结构中缺陷定位的状态监测和应变特征的分类

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摘要

A method for condition monitoring and localization of defects in mass-produced structural members using supervised learning is presented. An example for the effectiveness of the developed method comprises cantilevered carbon composite plate. In a numerical finite element model, the plate is partitioned into zones and a point mass is put on several locations within each zone. Point mass is treated as a pseudo-defect locally modifying structural properties of the plate. For each act of mass application, strain values are recorded and serve as defect-sensitive feature. Two variables of classification are tested - two different supervised learning algorithms (linear discriminant and non-linear k-nearest neighbours) and a limited number of strain data points per class which is varied in the range of 2 to 9 points. Several query points are simulated and subjected to classification in terms of belonging to particular zones of the partitioned plate. This step can be treated as a defect localization. It is shown that only 2 strain readings per class are sufficient for defect localization. The methodology is experimentally validated on a cantilevered carbon composite prepreg of the same dimensions and properties.
机译:介绍了使用监督学习的批量生产结构构件中缺陷的条件监测和定位方法。用于开发方法的有效性的示例包括悬臂碳复合板。在数值有限元模型中,将板被分成区域,并且将点质量放在每个区域内的若干位置。点质量被视为板的伪缺陷局部修饰结构特性。对于每个批量应用行为,记录应变值并用作缺陷敏感特征。测试了两个分类变量 - 两个不同的监督学习算法(线性判别和非线性k最近邻居)和每个类的有限数量的应变数据点,其在2到9点的范围内变化。模拟几个查询点并根据属于分隔板的特定区域进行分类。该步骤可以被视为缺陷本地化。结果表明,每阶级仅2个应变读数足以缺陷定位。该方法在同一尺寸和性质的悬臂碳复合预浸料上进行实验验证。

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