Lab for Measurement Technology, Saarland University, 66123 Saarbrücken, Germany.
Department of Non-Destructive Testing, Acoustic and Electromagnetic Methods Division, Bundesanstalt für Materialforschung und -Prüfung (BAM), 12205 Berlin, Germany.
Sensors (Basel). 2022 Jan 5;22(1):406. doi: 10.3390/s22010406.
Data-driven analysis for damage assessment has a large potential in structural health monitoring (SHM) systems, where sensors are permanently attached to the structure, enabling continuous and frequent measurements. In this contribution, we propose a machine learning (ML) approach for automated damage detection, based on an ML toolbox for industrial condition monitoring. The toolbox combines multiple complementary algorithms for feature extraction and selection and automatically chooses the best combination of methods for the dataset at hand. Here, this toolbox is applied to a guided wave-based SHM dataset for varying temperatures and damage locations, which is freely available on the Open Guided Waves platform. A classification rate of 96.2% is achieved, demonstrating reliable and automated damage detection. Moreover, the ability of the ML model to identify a damaged structure at untrained damage locations and temperatures is demonstrated.
基于机器学习(ML)工具包的工业状态监测,本文提出了一种用于自动损伤检测的 ML 方法,该工具包结合了多种互补的特征提取和选择算法,并能自动为手头的数据集选择最佳的方法组合。在此,将该工具包应用于基于导波的结构健康监测数据集,该数据集的温度和损伤位置各不相同,可在开放式导波平台上免费获取。实验结果实现了 96.2%的分类率,表明该方法能够可靠且自动地进行损伤检测。此外,还证明了 ML 模型能够识别未经训练的损伤位置和温度下的损伤结构。