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DAMAGE DETECTION OF STRUCTURES USING UNSUPERVISED FUZZY NEURAL NETWORK

机译:使用无监督模糊神经网络损坏结构的损伤检测

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This work presents an artificial neural network (ANN) approach for detecting structural damage. An unsupervised neural network which incorporates the fuzzy concept (named the Unsupervised Fuzzy Neural Network, UFN) is adopted to detect localized damage. The structural damage is assumed to take the form of reduced elemental stiffness. The damage site is demonstrated to correlate with the changes in the modal parameters of the structure. Therefore, a feature representing the damage location termed the Damage Localization Feature (DLF) is presented. When the structure experiences damage or change in the structural member, the measured DLF is obtained by analyzing the recorded dynamic responses of the structure. The location of the structural damage then can be identified using the UFN according to the measured DLF information. This study verifies the proposed model using an example involving a five-storey frame building. Both single and multiple damaged sites are considered. The effects of measured noise and the use of incomplete modal data are introduced to inspect the capability of the proposed detection approach.
机译:这项工作提出了一种用于检测结构损伤的人工神经网络(ANN)方法。采用一种无监督的神经网络,其中采用模糊概念(命名为无监督的模糊神经网络,UFN)来检测局部损坏。假设结构损伤采取降低元素刚度的形式。损坏部位被证明与结构的模态参数的变化相关联。因此,呈现了代表损坏位置称为损坏定位特征(DLF)的特征。当结构经历损坏或改变结构构件时,通过分析结构的记录动态响应来获得测量的DLF。然后,可以根据测量的DLF信息使用UFN来识别结构损坏的位置。本研究使用涉及五层框架建筑的示例来验证所提出的模型。单一和多个损坏的站点都被考虑。引入了测量噪声和使用不完全模态数据的影响,检查了所提出的检测方法的能力。

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