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Detection of Surface Cracking in Steel Pipes based on Vibration Data using a Multi-Class Support Vector Machine Classifier

机译:多类支持向量机分类器基于振动数据的钢管表面裂纹检测

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In this study, we focused at the development and verification of a robust framework for surface crack detection in steel pipes using measured vibration responses; with the presence of multiple progressive damage occurring in different locations within the structure. Feature selection, dimensionality reduction, and multi-class support vector machine were established for this purpose. Nine damage cases, at different locations, orientations and length, were introduced into the pipe structure. The pipe was impacted 300 times using an impact hammer, after each damage case, the vibration data were collected using 3 PZT wafers which were installed on the outer surface of the pipe. At first, damage sensitive features were extracted using the frequency response function approach followed by recursive feature elimination for dimensionality reduction. Then, a multi-class support vector machine learning algorithm was employed to train the data and generate a statistical model. Once the model is established, decision values and distances from the hyper-plane were generated for the new collected data using the trained model. This process was repeated on the data collected from each sensor. Overall, using a single sensor for training and testing led to a very high accuracy reaching 98% in the assessment of the 9 damage cases used in this study.
机译:在这项研究中,我们专注于使用测量的振动响应的钢管表面裂纹检测的稳健框架的开发和验证;在结构内的不同位置发生多种渐进损坏。为此目的建立了特征选择,维度减少和多级支持向量机。在不同的位置,方向和长度下引入了九个损伤案例,被引入管道结构。在每个损坏情况下,使用冲击锤击管道300次,使用3个PZT晶片在管道外表面上收集振动数据。首先,使用频率响应函数方法提取损伤敏感特征,然后通过递归特征消除来减少维数减少。然后,采用多级支持向量机学习算法训练数据并生成统计模型。一旦建立了模型,使用经过培训的模型为新的收集数据生成了来自超平面的判定值和距离。对从每个传感器收集的数据重复该过程。总的来说,使用单个传感器进行培训和测试导致在本研究中使用的9例损伤病例的评估中达到98%的高精度。

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