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Wavelet-based multiresolution analysis coupled with deep learning to efficiently monitor cracks in concrete

机译:基于小波的多分辨率分析与深度学习耦合,以有效监测混凝土裂缝

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This paper proposes an efficient methodology to monitor the formation of cracks in concrete after non-destructive ultrasonic testing of a structure. The objective is to be able to automatically detect the initiation of cracks early enough, i.e. well before they are visible on the concrete surface, in order to implement adequate maintenance actions on civil engineering structures. The key element of this original approach is the wavelet-based multiresolution analysis of the ultrasonic signal received from a sample or a specimen of the studied material subjected to several types of solicitation. This analysis is finally coupled to an automatic identification scheme of the types of cracks based on artificial neural networks (ANNs), and in particular deep learning by convolutional neural networks (CNNs); a technology today at the cutting edge of machine learning, in particular for all applications of pattern recognition. Wavelet-based multiresolution analysis does not add any value in detecting fractures in concrete visible by optical inspection. However, the results of its implementation coupled with different CNN architectures show cracks in concrete can be identified at an early stage with a very high accuracy, i.e. around 99.8%, and a loss function of less than 0.1, regardless of the implemented learning architecture.
机译:本文提出了一种有效的方法,以监测混凝土裂缝的形成,在结构的非破坏性超声波测试之后。目标是能够自动检测足够的裂缝的启动,即在混凝土表面上可见之前,以便在土木工程结构上实施足够的维护行动。这种原始方法的关键要素是从样品接收的超声波信号的基于小波的多分辨率分析,或者所研究的材料的样本经受多种类型的征集。该分析最终耦合到基于人工神经网络(ANNS)的裂缝类型的自动识别方案,特别是卷积神经网络(CNNS)的深度学习;今天的一项技术在机器学习的前沿,特别是对于模式识别的所有应用。基于小波的多分辨率分析在通过光学检测可见的混凝土中检测裂缝中的任何值都不会增加任何值。然而,与不同的CNN架构耦合的实现结果显示混凝土中的裂缝可以在高精度的早期阶段识别,即左右99.8%,无论实施的学习架构如何,损耗函数小于0.1。

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