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Feasibility of damage detection of Tsing Ma Bridge using vibration measurements

机译:使用振动测量的青马桥损伤检测的可行性

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In this paper, we study the feasibility of vibration-based damage identification methods for the instrumented Tsing Ma Suspension Bridge with a main span of 1377m. Emphasis is placed on how to deal with the noise-corrupted/uncertain measurement data and how to use the series data from the on-line monitoring system for damage detection. Numerical simulation studies of using the noisy series measurement modal data for damage occurrence detection with the auto-associative neural network and for damage localization with the probabilistic neural network are presented. Five neural network based novelty detectors using only natural frequencies of the intact and damaged structure are first developed for the detection of damage occurrence in the Tsing Ma Bridge. The noisy/uncertain measurement data are produced by polluting the analytical natural frequencies with random noise. Numerical simulations of a series of damage scenarios show that when the maximum frequency change caused by damage exceeds a certain threshold, the occurrence of damage can be unambiguously flagged with the novelty detectors. A probabilistic neural network using noisy modal data (natural frequencies and incomplete modal vectors) is then constructed for the localization of damage occurring at the Tsing Ma Bridge deck. The main-span deck is divided into 16 segments and the damage in each segment is defined as a pattern class. The analytical modal data for each pattern class are artificially corrupted with random noise and then used as training samples to establish a three-layer probabilistic neural network for damage localization. A preliminary investigation shows that the damage to deck members can be localized only when the level of the corrupted noise is low.
机译:在本文中,我们研究了仪表造型的青穗悬架桥振动损伤识别方法的可行性,主跨度为1377米。重点是如何处理噪声损坏/不确定的测量数据以及如何使用来自在线监控系统的系列数据进行损坏检测。介绍了使用自动关联神经网络损伤发生检测的噪声串的数值模拟研究,以及概率神经网络损坏定位。首先开发了仅使用完整和损坏结构的自然频率的基于神经网络的新奇探测器,以检测青马桥的损坏。通过随机噪声污染分析自然频率来产生嘈杂/不确定的测量数据。一系列损伤情景的数值模拟表明,当损坏引起的最大频率变化超过一定阈值时,损坏的发生可以用新颖性探测器明确标记。然后构建使用噪声模态数据(自然频率和不完整模式和不完整模式)的概率神经网络,用于在青马桥甲板上发生的损坏定位。主跨度甲板分为16个段,每个段的损坏被定义为模式类。每个模式类的分析模态数据具有随机噪声的人为损坏,然后用作训练样本以建立用于损坏定位的三层概率神经网络。初步调查表明,只有当损坏噪声的水平低时,才能损坏甲板成员。

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