Institute of Structural Lightweight Design, Johannes Kepler University Linz, 4040 Linz, Austria.
Silicon Austria Labs GmbH, 4040 Linz, Austria.
Sensors (Basel). 2023 Mar 7;23(6):2910. doi: 10.3390/s23062910.
The present research proposes a two-step physics- and machine-learning(ML)-based electromechanical impedance (EMI) measurement data evaluation approach for sandwich face layer debonding detection and size estimation in structural health monitoring (SHM) applications. As a case example, a circular aluminum sandwich panel with idealized face layer debonding was used. Both the sensor and debonding were located at the center of the sandwich. Synthetic EMI spectra were generated by a finite-element(FE)-based parameter study, and were used for feature engineering and ML model training and development. Calibration of the real-world EMI measurement data was shown to overcome the FE model simplifications, enabling their evaluation by the found synthetic data-based features and models. The data preprocessing and ML models were validated by unseen real-world EMI measurement data collected in a laboratory environment. The best detection and size estimation performances were found for a One-Class Support Vector Machine and a K-Nearest Neighbor model, respectively, which clearly showed reliable identification of relevant debonding sizes. Furthermore, the approach was shown to be robust against unknown artificial disturbances, and outperformed a previous method for debonding size estimation. The data and code used in this study are provided in their entirety, to enhance comprehensibility, and to encourage future research.
本研究提出了一种两步法的物理和机器学习(ML)基础的机电阻抗(EMI)测量数据评估方法,用于结构健康监测(SHM)应用中的夹层面板分层检测和尺寸估计。作为一个案例,使用了带有理想化分层脱粘的圆形铝制夹层板。传感器和分层脱粘都位于夹层的中心。通过基于有限元(FE)的参数研究生成合成 EMI 谱,用于特征工程和 ML 模型的训练和开发。通过真实世界 EMI 测量数据的校准,克服了 FE 模型的简化,使得可以通过发现的基于合成数据的特征和模型来评估这些数据。通过在实验室环境中收集的未见过的真实世界 EMI 测量数据验证了数据预处理和 ML 模型。对于单类支持向量机和 K-最近邻模型,分别找到了最佳的检测和尺寸估计性能,它们清楚地显示了对相关分层尺寸的可靠识别。此外,该方法对未知的人为干扰具有鲁棒性,并在分层尺寸估计方面优于以前的方法。本研究中使用的数据和代码全部提供,以提高可理解性,并鼓励未来的研究。