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Deep Convolutional Neural Network-Based Structural Damage Localization and Quantification Using Transmissibility Data

机译:基于卷积神经网络的深度卷积神经网络的结构损坏本地化和使用传输数据量化

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Damage diagnosis has become a valuable tool for asset management, enhanced by advances in sensor technologies that allows for system monitoring and providing massive amount of data for use in health state diagnosis. However, when dealing with massive data, manual feature extraction is not always a suitable approach as it is labor intensive requiring the intervention of domain experts with knowledge about the relevant variables that govern the system and their impact on its degradation process. To address these challenges, convolutional neural networks (CNNs) have been recently proposed to automatically extract features that best represent a system’s degradation behavior and are a promising and powerful technique for supervised learning with recent studies having shown their advantages for feature identification, extraction, and damage quantification in machine health assessment. Here, we propose a novel deep CNN-based approach for structural damage location and quantification, which operates on images generated from the structure’s transmissibility functions to exploit the CNNs’ image processing capabilities and to automatically extract and select relevant features to the structure’s degradation process. These feature maps are fed into a multilayer perceptron to achieve damage localization and quantification. The approach is validated and exemplified by means of two case studies involving a mass-spring system and a structural beam where training data are generated from finite element models that have been calibrated on experimental data. For each case study, the models are also validated using experimental data, where results indicate that the proposed approach delivers satisfactory performance and thus being an appropriate tool for damage diagnosis.
机译:损坏诊断已成为资产管理的宝贵工具,通过传感器技术的进步增强,允许系统监控和提供用于健康状态诊断的大量数据。然而,在处理大规模数据时,手动特征提取并不总是一种合适的方法,因为它是劳动力密集型,需要域专家的干预,了解控制系统的相关变量及其对其退化过程的影响。为了解决这些挑战,最近已经提出了卷积神经网络(CNNS)自动提取最能代表系统退化行为的特征,并且是对最近的研究进行监督学习的有前途和强大的技术,对特征识别,提取和具有特征识别,提取和机械健康评估中的损伤量化。在这里,我们提出了一种用于结构损伤位置和量化的新型CNN的基于CNN的方法,其在结构的传输功能中产生的图像上运行,以利用CNNS的图像处理能力并自动提取和选择与结构的劣化过程中的相关特征。这些特征贴图被馈送到多层的Perceptron中以实现损坏本地化和量化。通过两个涉及质量弹簧系统的案例研究和结构束验证并举例说明,其中从实验数据上校准的有限元模型产生训练数据。对于每种案例研究,还使用实验数据验证模型,其中结果表明该方法提供了令人满意的性能,因此是损害诊断的适当工具。

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