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DAMAGE CLASSIFICATION OF COMPOSITES USING MACHINE LEARNING

机译:基于机器学习的复合材料损伤分类

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Composite materials have tremendous and ever-increasing applications in complex engineering systems; thus, it is important to develop non-destructive and efficient condition monitoring methods to improve damage prediction, thereby avoiding catastrophic failures and reducing standbv time. Nondestructive condition monitoring techniques when combined with machine learning applications can contribute towards the stated improvements. Thus, the research question taken into consideration for this paper is "Can machine learning techniques provide efficient damage classification of composite materials to improve condition monitoring using features extracted from acousto-ultrasonic measurements?" In order to answer this question, acoustic-ultrasonic signals in Carbon Fiber Reinforced Polymer (CFRP) composites for distinct damage levels were taken from NASA Ames prognostics data repository. Statistical condition indicators of the signals were used as features to train and test four traditional machine learning algorithms such as K-nearest neighbors, support vector machine. Decision Tree and Random Forest, and their performance was compared and discussed. Results showed higher accuracy for Random Forest with a strong dependency on the feature extraction/selection techniques employed. By combining data analysis from acoustic-ultrasonic measurements in composite materials with machine learning tools, this work contributes to the development of intelligent damage classification algorithms that can be applied to advanced online diagnostics and health management strategies of composite materials, operating under more complex working conditions.
机译:复合材料在复杂的工程系统中有着巨大且不断增加的应用。因此,开发非破坏性且有效的状态监测方法以改善损伤预测,从而避免灾难性故障并减少待机时间是很重要的。当与机器学习应用程序结合使用时,非破坏性状态监视技术可有助于实现上述改进。因此,本文考虑的研究问题是“机器学习技术是否可以提供复合材料的有效损伤分类,以使用从声波-超声测量中提取的特征来改善状态监测?”为了回答这个问题,从NASA Ames预后数据存储库中获取了碳纤维增强聚合物(CFRP)复合材料中不同损伤程度的声学超声信号。信号的统计状态指示器用作训练和测试四种传统机器学习算法(例如K近邻,支持向量机)的功能。对决策树和随机森林及其性能进行了比较和讨论。结果表明,Random Forest的准确性更高,这与所采用的特征提取/选择技术有很大的依赖关系。通过将复合材料中超声-超声测量的数据分析与机器学习工具相结合,这项工作有助于开发智能损伤分类算法,该算法可应用于复合材料的高级在线诊断和健康管理策略,并在更复杂的工作条件下运行。

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