NDE DATA CORRELATION USING ENCODE-DECODER NETWORKS WITH SCALOGRAM IMAGES

Mozhgan Momtaz Dargahi, D. Lattanzi
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Abstract

Nondestructive Evaluation (NDE) technologies are increasingly used for structural condition assessments. Over the lifespan of a structure, a variety of NDE techniques may be employed, leading to a scenario where a structure’s life-cycle time history is depicted through a variety of complex and heterogeneous measurements. Therefore, improved understanding of the statistical associations between NDE data sources would allow engineers to integrate these data sources for analysis purposes. It would also provide new insights into the fundamental information shared between heterogeneous NDE observations, potentially leading to new forms of structural monitoring and assessment. This paper explores the correlations between NDE data types through an encoder-decoder neural network architecture. The network is designed to take in one type of NDE measurement as input, generating a synthetic measurement from a second NDE measurement as output. At the center of the encoder is a dimensionally reduced latent representation of the information that is shared between two associated NDE data sources. Additionally, this paper shows how transforming waveform NDE data into 2D time-frequency images using a Continuous Wavelet Transform (CWT) facilitates network training and representation of these shared fundamental data features. To illustrate this concept, the results from a series of laboratory scale tests are presented, representing how this network architecture would represent information collected from NDE of bridge decks.
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使用编码-解码器网络与尺度图图像的无损数据关联
无损评估技术越来越多地用于结构状态评估。在结构的整个生命周期中,可能会采用各种NDE技术,导致通过各种复杂和异构的测量来描述结构的生命周期时间历史的场景。因此,提高对NDE数据源之间的统计关联的理解将允许工程师将这些数据源集成到分析目的中。它还将为不同的濒死体验观测之间共享的基本信息提供新的见解,可能导致新的结构监测和评估形式。本文通过编码器-解码器神经网络架构探讨了NDE数据类型之间的相关性。该网络设计为将一种NDE测量作为输入,从另一种NDE测量作为输出生成合成测量。编码器的中心是在两个相关的NDE数据源之间共享的信息的降维潜在表示。此外,本文还展示了如何使用连续小波变换(CWT)将波形NDE数据转换为二维时频图像,从而促进网络训练和表示这些共享的基本数据特征。为了说明这一概念,本文给出了一系列实验室规模测试的结果,这些结果表明了该网络架构如何表示从桥面无损检测中收集的信息。
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