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Vibration-based damage detection for bridges by deep convolutional denoising autoencoder

机译:深度卷积去噪自动化器的桥梁基于振动的损伤检测

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摘要

One of the main challenges for structural damage detection using monitoring data is to acquire features that are sensitive to damages but insensitive to noise (e.g. sensor measurement noise) as well as environmental and operational effects (e.g. temperature effect). Inspired by the capabilities of deep learning methods in representation learning, various deep neural networks have been developed to obtain effective damage features from raw vibration data. However, most of the available deep neural networks are supervised, resulting in practical difficulties owing to the lack of damage labels. This article proposes a damage detection strategy based on an unsupervised deep neural network, referred to as deep convolutional denoising autoencoder, which accepts multi-dimensional cross-correlation functions as input. The strategy aims to extract damage features from field measurements of undamaged structures under the influence of noise and temperature uncertainties. In the proposed strategy, cross-correlation functions of vibration data are first calculated as basic features; then deep convolutional denoising autoencoder is developed to reconstruct cross-correlation functions from their noise-corrupted versions to extract desired features; exponentially weighted moving average control charts are finally established for these features to identify minor structural damages. The strategy is evaluated through a numerical simply supported beam model and an experimental continuous beam model. The mechanism of deep convolutional denoising autoencoder to extract damage features is interpreted by visualizing feature maps of convolutional layers in the encoder. It is found that these layers perform rough estimations of modal properties and preserve the damage information as the general trend of these properties in multiple extra frequency bands. The results show that the proposed strategy is competent for structural damage detection under the exposed environment and worth further exploring its capabilities in applications of real bridges.
机译:使用监测数据的结构损伤检测的主要挑战之一是获得对损坏而敏感但对噪声(例如传感器测量噪声)以及环境和操作效果不敏感的特征(例如,温度效应)。灵感灵感来自代表学习中深度学习方法的能力,已经开发出各种深度神经网络以获得从原始振动数据获得有效的损坏特征。然而,大多数可用的深度神经网络受到监督,导致由于损坏标签缺乏造成的实际困难。本文提出了一种基于无监督的深神经网络的损坏检测策略,称为深度卷积去噪自动化器,其接受多维互相关函数作为输入。该策略旨在在噪声和温度不确定性的影响下从现场测量中提取损伤特征。在所提出的策略中,振动数据的互相关函数首先计算为基本特征;然后开发了深度卷积的剥夺自动化器以从其噪声损坏版本重建互相关函数以提取所需的功能;最终建立指数加权移动平均控制图以确定这些功能以识别较小的结构损坏。通过数值简单地支持的光束模型和实验连续光束模型来评估该策略。通过可视化编码器中的卷积层的特征映射来解释深度卷积去噪自动化器来提取损坏特征的机制。发现这些层对模态属性进行粗略估计,并将损坏信息视为多个额外频带中这些属性的一般趋势。结果表明,拟议的策略是在暴露环境下的结构损伤检测的能力,并进一步探索其在实际桥梁应用中的能力。

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