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Pairwise graphical models for structural health monitoring with dense sensor arrays

机译:成对图形模型,用于密集传感器阵列的结构健康监测

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摘要

Through advances in sensor technology and development of camera-based measurement techniques, it has become affordable to obtain high spatial resolution data from structures. Although measured datasets become more informative by increasing the number of sensors, the spatial dependencies between sensor data are increased at the same time. Therefore, appropriate data analysis techniques are needed to handle the inference problem in presence of these dependencies. In this paper, we propose a novel approach that uses graphical models (GM) for considering the spatial dependencies between sensor measurements in dense sensor networks or arrays to improve damage localization accuracy in structural health monitoring (SHM) application. Because there are always unobserved damaged states in this application, the available information is insufficient for learning the GMs. To overcome this challenge, we propose an approximated model that uses the mutual information between sensor measurements to learn the GMs. The study is backed by experimental validation of the method on two test structures. The first is a three-story two-bay steel model structure that is instrumented by MEMS accelerometers. The second experimental setup consists of a plate structure and a video camera to measure the displacement field of the plate. Our results show that considering the spatial dependencies by the proposed algorithm can significantly improve damage localization accuracy.
机译:通过传感器技术的进步和基于相机的测量技术的发展,从结构中获取高空间分辨率数据已变得可承受。尽管通过增加传感器数量可以使测量的数据集的信息量更大,但是同时增加了传感器数据之间的空间依赖性。因此,需要适当的数据分析技术来在存在这些依赖性的情况下处理推理问题。在本文中,我们提出了一种新颖的方法,该方法使用图形模型(GM)考虑密集传感器网络或阵列中传感器测量值之间的空间依赖性,以提高结构健康监测(SHM)应用中的损伤定位精度。由于在此应用程序中始终存在无法观察到的损坏状态,因此可用信息不足以学习GM。为了克服这一挑战,我们提出了一种近似模型,该模型使用传感器测量之间的相互信息来学习GM。该研究得到该方法在两个测试结构上的实验验证的支持。第一个是由MEMS加速度计检测的三层两舱钢模型结构。第二个实验设置由板结构和用于测量板位移场的摄像机组成。我们的结果表明,通过提出的算法考虑空间依赖性可以显着提高损伤定位精度。

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