Ballarin Pietro, Sala Giuseppe, Macchi Marco, Roda Irene, Baldi Andrea, Airoldi Alessandro
Department of Aerospace Science and Technology, Politecnico di Milano, 20156 Milan, Italy.
Department of Management, Economics and Industrial Engineering, Politecnico di Milano, 20156 Milan, Italy.
Sensors (Basel). 2024 Aug 21;24(16):5411. doi: 10.3390/s24165411.
Monitoring the integrity of aeronautical structures is fundamental for safety. Structural Health Monitoring Systems (SHMSs) perform real-time monitoring functions, but their performance must be carefully assessed. This is typically done by introducing artificial damages to the components; however, such a procedure requires the production and testing of a large number of structural elements. In this work, the damage detection performance of a strain-based SHMS was evaluated on a composite helicopter rotor blade root, exploiting a Finite Element (FE) model of the component. The SHMS monitored the bonding between the central core and the surrounding antitorsional layer. A damage detection algorithm was trained through FE analyses. The effects of the load's variability and of the damage were decoupled by including a load recognition step in the algorithm, which was accomplished either with an Artificial Neural Network (ANN) or a calibration matrix. Anomaly detection, damage assessment, and localization were performed by using an ANN. The results showed a higher load identification and anomaly detection accuracy using an ANN for the load recognition, and the load set was recognized with a satisfactory accuracy, even in damaged blades. This case study was focused on a real-world subcomponent with complex geometrical features and realistic load conditions, which was not investigated in the literature and provided a promising approach to estimate the performance of a strain-based SHMS.
监测航空结构的完整性对安全至关重要。结构健康监测系统(SHMS)执行实时监测功能,但其性能必须仔细评估。这通常是通过对部件引入人工损伤来完成的;然而,这样的程序需要生产和测试大量的结构元件。在这项工作中,利用该部件的有限元(FE)模型,在复合直升机旋翼叶片根部评估了基于应变的SHMS的损伤检测性能。SHMS监测中央芯体与周围抗扭层之间的粘结。通过有限元分析训练损伤检测算法。通过在算法中纳入载荷识别步骤,将载荷变异性和损伤的影响解耦,该步骤可通过人工神经网络(ANN)或校准矩阵来完成。使用人工神经网络进行异常检测、损伤评估和定位。结果表明,使用人工神经网络进行载荷识别时,载荷识别和异常检测精度更高,即使在受损叶片中,载荷集也能以令人满意的精度被识别。本案例研究聚焦于一个具有复杂几何特征和实际载荷条件的实际子部件,该部件在文献中未被研究,并提供了一种有前景的方法来评估基于应变的SHMS的性能。