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A hierarchical deep convolutional neural network and gated recurrent unit framework for structural damage detection

机译:用于结构损伤检测的分层深度卷积神经网络和门控复发单元框架

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摘要

Structural damage detection has become an interdisciplinary area of interest for various engineering fields, while the available damage detection methods are being in the process of adapting machine learning concepts. Most machine learning based methods heavily depend on extracted "hand-crafted" features that are manually selected in advance by domain experts and then, fixed. Recently, deep learning has demonstrated remarkable performance on traditional challenging tasks, such as image classification, object detection, etc., due to the powerful feature learning capabilities. This breakthrough has inspired researchers to explore deep learning techniques for structural damage detection problems. However, existing methods have considered either spatial relation (e.g., using convolutional neural network (CNN)) or temporal relation (e.g., using long short term memory network (LSTM)) only. In this work, we propose a novel Hierarchical CNN and Gated recurrent unit (GRU) framework to model both spatial and temporal relations, termed as HCG, for structural damage detection. Specifically, CNN is utilized to model the spatial relations and the short-term temporal dependencies among sensors, while the output features of CNN are fed into the GRU to learn the long-term temporal dependencies jointly. Extensive experiments on IASC-ASCE structural health monitoring benchmark and scale model of three-span continuous rigid frame bridge structure datasets have shown that our proposed HCG outperforms other existing methods for structural damage detection significantly. (c) 2020 Elsevier Inc. All rights reserved.
机译:结构损伤检测已成为各种工程领域的跨学科领域,而可用的损坏检测方法正在调整机器学习概念的过程中。基于机器的大多数基于机器的方法大量取决于由域专家提前手动选择的“手工制作的”功能,然后固定。最近,由于强大的特征学习能力,深入学习对传统挑战性的任务(如图像分类,物体检测等)表现出显着性能。这种突破激发了研究人员,探索了结构损伤检测问题的深度学习技术。然而,现有方法已经考虑了空间关系(例如,使用卷积神经网络(CNN))或时间关系(例如,使用长短短期内存网络(LSTM))。在这项工作中,我们提出了一种新的分层CNN和门控复发单元(GRU)框架,以模拟作为HCG称为结构损伤检测的空间和时间关系。具体地,CNN用于模拟传感器之间的空间关系和短期时间依赖性,而CNN的输出特征被馈送到GU中以共同地学习长期时间依赖性。关于IASC-ASCE结构健康监测基准和规模模型的三跨连续刚架桥梁结构数据集的广泛实验表明,我们提出的HCG优于结构损伤的其他现有方法显着。 (c)2020 Elsevier Inc.保留所有权利。

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