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Experimental Study on Digital Image Correlation for Deep Learning-Based Damage Diagnostic

机译:深层学习损伤诊断数字图像相关性的实验研究

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Large quantities of data which contain detailed condition information over an extended period of time should be utilized to prioritize infrastructure repairs. As the temporal and spatial resolution of monitoring data drastically increase by advances in sensing technology, structural health monitoring applications reach the thresholds of big data. Deep neural networks are ideally suited to use large representative training datasets to learn complex damage features. In the previous study of authors, a real-time deep learning platform was developed to solve damage detection and localization challenge. The network was trained by using simulated structural connection mimicking the real test object with a variety of loading cases, damage scenarios, and measurement noise levels for successful and robust diagnosis of damage. In this study, the proposed damage diagnosis platform is validated by using temporally and spatially dense data collected by Digital Image Correlation (DIC) from the specimen. Laboratory testing of the specimen with induced damage condition is performed to evaluate the performance and efficiency of damage detection and localization approach.
机译:应利用在延长的时间段内包含详细条件信息的大量数据来优先考虑基础设施维修。由于监测数据的时间和空间分辨率通过传感技术的进步大大增加,结构健康监测应用达到大数据的阈值。深度神经网络非常适合使用大型代表性训练数据集来学习复杂的损坏功能。在上一篇关于作者的研究中,开发了一个实时的深度学习平台来解决损害检测和本地化挑战。通过使用模拟结构连接使用模拟结构连接,使用各种装载案例,损坏场景和测量噪声水平来验证,用于成功且稳健地诊断损坏。在这项研究中,通过从样本中使用数字图像相关(DIC)收集的时间和空间密集的数据来验证所提出的损坏诊断平台。进行了具有诱导损伤条件的样品的实验室检测,以评估损伤检测和定位方法的性能和效率。

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