Ngeljaratan Luna, Bas Elif Ecem, Moustafa Mohamed A
Department of Civil and Environmental Engineering, University of Nevada, Reno, NV 89557, USA.
Research Center for Structural Strength Technology, National Research and Innovation Agency (BRIN), Science and Technology Research Center Bd. 220, Setu, Tangerang Selatan 15314, Indonesia.
Sensors (Basel). 2024 Feb 23;24(5):1450. doi: 10.3390/s24051450.
Computer vision in the structural health monitoring (SHM) field has become popular, especially for processing unmanned aerial vehicle (UAV) data, but still has limitations both in experimental testing and in practical applications. Prior works have focused on UAV challenges and opportunities for the vibration-based SHM of buildings or bridges, but practical and methodological gaps exist specifically for linear infrastructure systems such as pipelines. Since they are critical for the transportation of products and the transmission of energy, a feasibility study of UAV-based SHM for linear infrastructures is essential to ensuring their service continuity through an advanced SHM system. Thus, this study proposes a single UAV for the seismic monitoring and safety assessment of linear infrastructures along with their computer vision-aided procedures. The proposed procedures were implemented in a full-scale shake-table test of a natural gas pipeline assembly. The objectives were to explore the UAV potential for the seismic vibration monitoring of linear infrastructures with the aid of several computer vision algorithms and to investigate the impact of parameter selection for each algorithm on the matching accuracy. The procedure starts by adopting the Maximally Stable Extremal Region (MSER) method to extract covariant regions that remain similar through a certain threshold of image series. The feature of interest is then detected, extracted, and matched using the Speeded-Up Robust Features (SURF) and K-nearest Neighbor (KNN) algorithms. The Maximum Sample Consensus (MSAC) algorithm is applied for model fitting by maximizing the likelihood of the solution. The output of each algorithm is examined for correctness in matching pairs and accuracy, which is a highlight of this procedure, as no studies have ever investigated these properties. The raw data are corrected and scaled to generate displacement data. Finally, a structural safety assessment was performed using several system identification models. These procedures were first validated using an aluminum bar placed on an actuator and tested in three harmonic tests, and then an implementation case study on the pipeline shake-table tests was analyzed. The validation tests show good agreement between the UAV data and reference data. The shake-table test results also generate reasonable seismic performance and assess the pipeline seismic safety, demonstrating the feasibility of the proposed procedure and the prospect of UAV-based SHM for linear infrastructure monitoring.
计算机视觉在结构健康监测(SHM)领域已变得很流行,特别是在处理无人机(UAV)数据方面,但在实验测试和实际应用中仍存在局限性。先前的工作主要集中在无人机在建筑物或桥梁基于振动的结构健康监测方面的挑战和机遇,但对于诸如管道等线性基础设施系统,在实际和方法上仍存在差距。由于它们对于产品运输和能量传输至关重要,因此对基于无人机的线性基础设施结构健康监测进行可行性研究,对于通过先进的结构健康监测系统确保其服务连续性至关重要。因此,本研究提出了一种用于线性基础设施地震监测和安全评估的单架无人机及其计算机视觉辅助程序。所提出的程序在天然气管道组件的全尺寸振动台试验中得以实施。目标是借助几种计算机视觉算法探索无人机在线性基础设施地震振动监测方面的潜力,并研究每种算法的参数选择对匹配精度的影响。该程序首先采用最大稳定极值区域(MSER)方法来提取在图像序列的某个阈值范围内保持相似的协变区域。然后使用加速稳健特征(SURF)和K近邻(KNN)算法检测、提取并匹配感兴趣的特征。应用最大样本一致性(MSAC)算法通过最大化解的似然性进行模型拟合。检查每种算法输出在匹配对中的正确性和准确性,这是该程序的一个亮点,因为此前尚无研究调查过这些特性。对原始数据进行校正和缩放以生成位移数据。最后,使用几种系统识别模型进行结构安全评估。这些程序首先通过放置在执行器上的铝棒进行验证,并在三次谐波试验中进行测试,然后对管道振动台试验的实施案例进行分析。验证测试表明无人机数据与参考数据之间具有良好的一致性。振动台试验结果还得出了合理的地震性能并评估了管道的地震安全性,证明了所提出程序的可行性以及基于无人机的结构健康监测用于线性基础设施监测的前景。