Amir Bani Mohammad Ali, Saleh Valizadeh Sotubadi, Sajad Alimirzaei, Mehdi Ahmadi Najafabadi, Lotfollah Pahlavan
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引用次数: 0
Abstract
Composite structures in transportation industries have gained significant attention due to their unique characteristics, including high energy absorption. Non-destructive testing methods coupled with machine learning techniques offer valuable insights into failure mechanisms by analyzing basic parameters. In this study, damage monitoring technologies for composite tubes experiencing progressive damage were investigated. The challenges associated with quantitative failure monitoring were addressed, and the Genetic K-means algorithm, hierarchical clustering, and artificial neural network (ANN) methods were employed along with other three alternative methods. The impact characteristics and damage mechanisms of composite tubes under axial compressive load were assessed using Acoustic Emission (AE) monitoring and machine learning.Various failure modes such as matrix cracking, delamination, debonding, and fiber breakage were induced by layer bending. An increase in fibers/matrix separation and fiber breakage was observed with altered failure modes, while matrix cracking decreased Signal classification was achieved using hierarchical and K-means genetic clustering methods, providing insights into failure mode frequency ranges and corresponding amplitude ranges. The ANN model, trained with labeled data, demonstrated high accuracy in classifying data and identifying specific failure mechanisms. Comparative analysis revealed that the Random Forest model consistently outperformed the ANN and Support Vector Machine (SVM) models, exhibiting superior predictive accuracy and classification using ACC, MCC and F1-Score metrics. Moreover, our evaluation emphasized the Random Forest model's higher true positive rates and lower false positive rates. Overall, this study contributes to the understanding of model selection, performance assessment in machine learning, and failure detection in composite structures.
复合材料结构因其独特的特性(包括高能量吸收)在交通运输业中备受关注。非破坏性测试方法与机器学习技术相结合,通过分析基本参数为了解失效机制提供了宝贵的见解。在本研究中,对复合材料管渐进式损伤的损伤监测技术进行了研究。针对与定量失效监测相关的挑战,采用了遗传 K 均值算法、分层聚类和人工神经网络(ANN)方法以及其他三种替代方法。利用声发射(AE)监测和机器学习评估了复合材料管在轴向压缩载荷下的冲击特性和损伤机制。随着失效模式的改变,观察到纤维/基体分离和纤维断裂的增加,而基体开裂的减少 使用分层和 K-means 遗传聚类方法实现了信号分类,提供了对失效模式频率范围和相应振幅范围的深入了解。使用标记数据训练的 ANN 模型在数据分类和识别特定失效机制方面表现出很高的准确性。对比分析表明,随机森林模型的性能始终优于 ANN 和支持向量机 (SVM) 模型,在使用 ACC、MCC 和 F1 分数指标进行预测和分类时,表现出更高的准确性。此外,我们的评估强调了随机森林模型较高的真阳性率和较低的假阳性率。总之,本研究有助于理解模型选择、机器学习的性能评估以及复合材料结构的故障检测。
期刊介绍:
Applied Composite Materials is an international journal dedicated to the publication of original full-length papers, review articles and short communications of the highest quality that advance the development and application of engineering composite materials. Its articles identify problems that limit the performance and reliability of the composite material and composite part; and propose solutions that lead to innovation in design and the successful exploitation and commercialization of composite materials across the widest spectrum of engineering uses. The main focus is on the quantitative descriptions of material systems and processing routes.
Coverage includes management of time-dependent changes in microscopic and macroscopic structure and its exploitation from the material''s conception through to its eventual obsolescence.