Automated honeycomb detection during Impact Echo inspections in concrete using AI trained by simulation data

Florian Dethof, S. Kessler
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Abstract

The Impact Echo method is well established in the civil engineering world of NDT for defect detection and thickness estimation in thick and highly reinforced concrete structures. For most applications of Impact Echo however, only the resonance frequency of the measured time signal is evaluated, meaning that most information is neglected. Here, artificial intelligence (AI) in the form of machine learning can help to classify signals based on multiple input parameters and therefore make use of the additional information stored in the measured signals. As the most powerful classification models need labelled input data, this usually marks a problem since labelled NDT data sets are rarely available for concrete structures. One solution to overcome this problem is the use of numerical simulations. In the past, numerical simulations showed that they are capable to produce realistic synthetic data for Impact Echo testing in concrete specimens. In this study, numerical simulations of Impact Echo measurements were conducted using the Elastodynamic Finite Integration technique (EFIT) to create training data for machine learning models. The measurements were carried out on two concrete specimens (17 cm and 50 cm thickness) containing honeycombs. Using the simulation data, multi-layer perceptron (MLPNN) and convolutional neural networks (CNN) are trained and tested on measured data from each specimen for performance. Results showed that an accurate honeycomb detection using machine learning was only possible in some cases with many false alarms arising near the specimen edges.
使用模拟数据训练的人工智能在混凝土冲击回波检测过程中自动检测蜂窝
在土木工程无损检测领域,冲击回波法在厚、高钢筋混凝土结构的缺陷检测和厚度估计中得到了很好的应用。然而,对于大多数撞击回波的应用,只评估被测时间信号的共振频率,这意味着大多数信息被忽略了。在这里,机器学习形式的人工智能(AI)可以帮助基于多个输入参数对信号进行分类,从而利用存储在测量信号中的附加信息。由于最强大的分类模型需要标记的输入数据,这通常标志着一个问题,因为标记的无损检测数据集很少用于混凝土结构。克服这个问题的一个解决方案是使用数值模拟。过去的数值模拟表明,它们能够为混凝土试件的冲击回波测试提供真实的合成数据。在本研究中,使用弹性动力有限积分技术(EFIT)对冲击回波测量进行数值模拟,为机器学习模型创建训练数据。测量是在两个含有蜂窝的混凝土试件(17厘米和50厘米厚度)上进行的。利用模拟数据,多层感知器(MLPNN)和卷积神经网络(CNN)在每个样本的测量数据上进行训练和性能测试。结果表明,使用机器学习进行精确的蜂窝检测仅在某些情况下是可能的,在样品边缘附近会出现许多假警报。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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