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A neural network approach for damage detection and identification of structures

机译:用于结构损伤检测和识别的神经网络方法

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摘要

This study examines the feasibility of using artificial neural network in conjunction with system identification techniques to detect the existence and to identify the characteristics of damage in composite structures. The methodology proposed here includes a training phase and a recognition phase. In the training phase, candidate models for structures with various types of damage are designated as the patterns. These patterns are organized into pattern classes according to the location and the severity of the damage. Then system identifications are performed to extract the transfer functions as the features of the structural systems. These transfer functions are fed into a multi-layer perceptron (MLP) as the input patterns for training. The MLP serves as a nearest neighborhood classifier. In the pattern recognition phase, a structure with unforeseen damage is classified within the closest class in the training set and the damage in the structure is identified as that of the class. The results of numerical tests demonstrate the feasibility of the proposed method.
机译:这项研究探讨了使用人工神经网络结合系统识别技术来检测复合结构中是否存在并识别损伤特征的可行性。这里提出的方法包括训练阶段和识别阶段。在训练阶段,将具有各种损坏类型的结构的候选模型指定为模式。根据损坏的位置和严重程度,将这些图案组织为图案类别。然后进行系统识别以提取传递函数作为结构系统的特征。这些传递函数被输入到多层感知器(MLP)中,作为训练的输入模式。 MLP用作最近邻域分类器。在模式识别阶段,将具有不可预见损坏的结构分类为训练集中最接近的类别,并将该结构中的损坏标识为该类别的损坏。数值测试结果证明了该方法的可行性。

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