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Damage identification in civil engineering structures utilizing PCA-compressed residual frequency response functions and neural network ensembles

机译:利用PCA压缩残余频率响应函数和神经网络集成的土木工程结构中的损伤识别

摘要

This paper presents a non-destructive, global, vibration-based damage identification method that utilizes damage pattern changes in frequency response functions (FRFs) and artificial neural networks (ANNs) to identify defects. To extract damage features and to obtain suitable input parameters for ANNs, principal component analysis (PCA) techniques are applied. Residual FRFs, which are the differences in the FRF data from the intact and the damaged structure, are compressed to a few principal components and fed to ANNs to estimate the locations and severities of structural damage. A hierarchy of neural network ensembles is created to take advantage of individual information from sensor signals. To simulate field-testing conditions, white Gaussian noise is added to the numerical data and a noise sensitivity study is conducted to investigate the robustness of the developed damage detection technique to noise. Both numerical and experimental results of simply supported steel beam structures have been used to demonstrate effectiveness and reliability of the proposed method.
机译:本文提出了一种基于振动的非破坏性全局损伤识别方法,该方法利用频率响应函数(FRF)和人工神经网络(ANN)中的损伤模式变化来识别缺陷。为了提取损伤特征并获得适用于人工神经网络的输入参数,应用了主成分分析(PCA)技术。残余FRF是完整结构和受损结构的FRF数据中的差异,被压缩为几个主要成分,并馈入ANN以估计结构损坏的位置和严重程度。创建了神经网络集成的层次结构,以利用来自传感器信号的单个信息。为了模拟现场测试条件,将白高斯噪声添加到数值数据中,并进行了噪声敏感性研究,以研究已开发的损伤检测技术对噪声的鲁棒性。简支钢梁结构的数值和实验结果均已被用来证明所提方法的有效性和可靠性。

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