Department of Civil and Environmental Engineering, North Dakota State University, Fargo, ND 58018, USA.
Sensors (Basel). 2020 Mar 24;20(6):1790. doi: 10.3390/s20061790.
Lamb wave approaches have been accepted as efficiently non-destructive evaluations in structural health monitoring for identifying damage in different states. Despite significant efforts in signal process of Lamb waves, physics-based prediction is still a big challenge due to complexity nature of the Lamb wave when it propagates, scatters and disperses. Machine learning in recent years has created transformative opportunities for accelerating knowledge discovery and accurately disseminating information where conventional Lamb wave approaches cannot work. Therefore, the learning framework was proposed with a workflow from dataset generation, to sensitive feature extraction, to prediction model for lamb-wave-based damage detection. A total of 17 damage states in terms of different damage type, sizes and orientations were designed to train the feature extraction and sensitive feature selection. A machine learning method, support vector machine (SVM), was employed for the learning model. A grid searching (GS) technique was adopted to optimize the parameters of the SVM model. The results show that the machine learning-enriched Lamb wave-based damage detection method is an efficient and accuracy wave to identify the damage severity and orientation. Results demonstrated that different features generated from different domains had certain levels of sensitivity to damage, while the feature selection method revealed that time-frequency features and wavelet coefficients exhibited the highest damage-sensitivity. These features were also much more robust to noise. With increase of noise, the accuracy of the classification dramatically dropped.
兰姆波方法已被接受为结构健康监测中的有效无损评估方法,可用于识别不同状态下的损伤。尽管在兰姆波信号处理方面做了大量工作,但由于兰姆波传播、散射和频散的复杂性,基于物理的预测仍然是一个巨大的挑战。近年来,机器学习为加速知识发现和准确传播信息提供了变革性的机会,而传统的兰姆波方法无法做到这一点。因此,提出了一个学习框架,其工作流程包括从数据集生成、敏感特征提取到基于兰姆波的损伤检测的预测模型。总共设计了 17 种不同的损伤类型、大小和方向的损伤状态来训练特征提取和敏感特征选择。采用机器学习方法支持向量机(SVM)作为学习模型。采用网格搜索(GS)技术对 SVM 模型的参数进行优化。结果表明,基于机器学习的兰姆波损伤检测方法是一种高效、准确的方法,可用于识别损伤的严重程度和方向。结果表明,来自不同域的不同特征对损伤具有一定程度的敏感性,而特征选择方法表明时频特征和小波系数表现出最高的损伤敏感性。这些特征对噪声也更稳健。随着噪声的增加,分类的准确性急剧下降。