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Full-Scale Building Structural Health Monitoring by Shake Table Tests and Extreme Learning Machine

机译:通过摇架测试和极端学习机的全规模建筑结构健康监测

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摘要

Structural health monitoring (SHM) represents a type of techniques that enables the monitoring of structural motion of a building structure during external loading such as earthquakes. SHM always provides the in-depth understanding of the severity and location of damage to a structure without requiring visual structural inspection. In this research, it proposes a data-driven approach for building structural health monitoring based on data collected from Shake Table tests. Experimental data from shake table experiments has been utilized and analyzed. Fast Fourier Transformation is employed to extract the SHM related data-features. Engineers are also invited to label the ground truth risk levels according to the observation from the shake table test. A data-driven classifier namely extreme learning machine is introduced to classify the structural risk based on the extracted features. Comparison is performed with other state-of-art machine-learning classification algorithms. Numerical experiments validates the effectiveness, efficiency, and universality of the proposed method.
机译:结构健康监测(SHM)代表一种技术,其能够在诸如地震之类的外部负荷期间监测建筑物结构的结构运动。 SHM总是在不需要视觉结构检查的情况下,始终提供对结构严重程度和损坏位置的深入了解。在本研究中,它提出了一种基于从摇动台测试收集的数据构建结构健康监测的数据驱动方法。来自Shak表实验的实验数据已被利用和分析。采用快速傅里叶变换来提取SHM相关的数据特征。还邀请工程师根据摇动台测试的观察来标记地面真理风险水平。介绍数据驱动的分类器即极端学习机,以基于提取的特征对结构风险进行分类。使用其他最先进的机器学习分类算法进行比较。数值实验验证了所提出的方法的有效性,效率和普遍性。

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