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首页> 外文期刊>Advances in Structural Engineering >Deep learning-based brace damage detection for concentrically braced frame structures under seismic loadings
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Deep learning-based brace damage detection for concentrically braced frame structures under seismic loadings

机译:地震载荷作用下基于深度学习的同心支撑框架结构支撑损伤检测

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摘要

Automated and robust damage detection tool is needed to enhance the resilience of civil infrastructures. In this article, a deep learning-based damage detection procedure using acceleration data is proposed as an automated post-hazard inspection tool for rapid structural condition assessment. The procedure is investigated with a focus on application in concentrically braced frame structure, a commonly used seismic force-resisting structural system with bracing as fuse members. A case study of six-story concentrically braced frame building was selected to numerically validate and demonstrate the proposed method. The deep learning model, a convolutional neural network, was trained and tested using numerically generated dataset from over 2000 sets of nonlinear seismic simulation, and an accuracy of over 90% was observed for bracing buckling damage detection in this case study. The results of the deep learning model were also discussed and extended to define other damage feature indices. This study shows that the proposed procedure is promising for rapid bracing condition inspection in concentrically braced frame structures after earthquakes.
机译:需要一种自动且强大的损坏检测工具来增强民用基础设施的弹性。在本文中,提出了一种使用加速度数据的基于深度学习的损伤检测程序,作为用于快速结构状况评估的自动化事后危险检查工具。对程序进行了研究,重点是在同心支撑框架结构中的应用,同心支撑框架结构是常用的以支撑为保险丝构件的抗地震力结构系统。以六层同心支撑框架建筑为例,对数值方法进行了验证和论证。深度学习模型是一个卷积神经网络,它使用来自2000多个非线性地震模拟的数值生成的数据集进行了训练和测试,在本案例研究中,观察到支撑屈曲损伤检测的准确性超过90%。还讨论了深度学习模型的结果,并将其扩展以定义其他损伤特征指标。这项研究表明,所提出的程序对于地震后在同心支撑框架结构中的快速支撑条件检查很有希望。

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