首页> 外文会议>ASME(American Society of Mechanical Engineers) Power Conference; 20070717-19; San Antonio,TX(US) >A NOVEL ONLINE STRUCTURE DAMAGE IDENTIFICATION USING PRINCIPAL COMPONENT ANALYSIS (PCA)
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A NOVEL ONLINE STRUCTURE DAMAGE IDENTIFICATION USING PRINCIPAL COMPONENT ANALYSIS (PCA)

机译:使用主成分分析(PCA)的新型在线结构损伤识别

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摘要

A novel online structure damage identification using Principal Component Analysis (PCA) techniques and the perceptron backpropagation neural network is presented.There are three phases to execute this method. In Phase I, system modal information, frequencies and mode shapes, are calculated. Phase II is for damage location identification; the Residual Force Vectors (RFVs) are computed as input to the first neural network. Then the network was trained to simulate damage location identification. Phase III is the severity identification step. The PCA method is used to modify the input for the second neural network. Then this network identifies the severity. There are three advantages of using the PCA method. First, PCA method characterizes the original modal information precisely. Second, PCA method creates the unique data for different damage cases unlike other modal property based data. Third, the accuracy of the damage identification improves significantly, when compared with previously developed methods. This method can be operated online for the real time structural damage identification.
机译:提出了一种利用主成分分析(PCA)技术和感知器反向传播神经网络的在线结构损伤识别方法。该方法分为三个阶段。在第一阶段,计算系统模态信息,频率和模态形状。第二阶段用于确定损坏的位置;残余力矢量(RFV)被计算为第一神经网络的输入。然后训练网络以模拟损坏位置识别。第三阶段是严重性识别步骤。 PCA方法用于修改第二个神经网络的输入。然后,该网络识别严重性。使用PCA方法具有三个优点。首先,PCA方法精确地描述了原始模态信息。其次,与其他基于模态特性的数据不同,PCA方法针对不同的损坏情况创建唯一的数据。第三,与以前开发的方法相比,损伤识别的准确性大大提高。该方法可以在线操作以实时识别结构损伤。

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