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Damage Localization of Cable-Supported Bridges Using Modal Frequency Data and Probabilistic Neural Network

机译:基于模态频率数据和概率神经网络的斜拉桥损伤定位

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This paper presents an investigation on using the probabilistic neural network (PNN) for damage localization in the suspension Tsing Ma Bridge (TMB) and the cable-stayed Ting Kau Bridge (TKB) from simulated noisy modal data. Because the PNN approach describes measurement data in a Bayesian probabilistic framework, it is promising for structural damage detection in noisy conditions. For locating damage on the TMB deck, the main span of the TMB is divided into a number of segments, and damage to the deck members in a segment is classified as one pattern class. The characteristic ensembles (training samples) for each pattern class are obtained by computing the modal frequency change ratios from a 3D finite element model (FEM) when incurring damage at different members of the same segment and then corrupting the analytical results with random noise. The testing samples for damage localization are obtained in a similar way except that damage is generated at locations different from the training samples. For damage region/type identification of the TKB, a series of pattern classes are defined to depict different scenarios with damage occurring at different portions/components. Research efforts have been focused on evaluating the influence of measurement noise level on the identification accuracy.
机译:本文通过模拟噪声模态数据,对使用概率神经网络(PNN)进行悬索式青马大桥(TMB)和斜拉式汀九桥(TKB)的损伤定位进行了研究。由于PNN方法在贝叶斯概率框架中描述了测量数据,因此有望在嘈杂条件下检测结构损伤。为了确定TMB甲板上的损坏,将TMB的主跨分为多个段,并且将段中对甲板成员的损坏分类为一个模式类别。通过在3D有限元模型(FEM)中计算相同模式段的不同成员处的损坏时的模态频率变化率,然后使用随机噪声破坏分析结果,可以获取每种模式类别的特征集合(训练样本)。以类似的方式获得用于损伤定位的测试样品,除了在不同于训练样品的位置处产生损伤之外。对于TKB的损坏区域/类型识别,定义了一系列模式类别,以描绘在不同部分/组件发生损坏的不同情况。研究工作集中在评估测量噪声水平对识别精度的影响上。

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