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首页> 外文期刊>Journal of Sound and Vibration >Experimental investigation of seismic damage identification using PCA-compressed frequency response functions and neural networks
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Experimental investigation of seismic damage identification using PCA-compressed frequency response functions and neural networks

机译:基于PCA压缩频率响应函数和神经网络的震害识别实验研究

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摘要

This paper presents an experimental investigation of seismic damage identification of a 38-storey tall building model using measured frequency response functions (FRFs) and neural networks (NNs). The 1:20 scale reinforced concrete structure is tested on a shaking table by exerting successively enhanced ground earthquake excitation to generate trifling, moderate, serious and complete (nearly collapsed) damage, respectively. After incurring the earthquake excitations at each level, a 20-min white-noise random excitation of low intensity is applied to the structure to produce ambient vibration response, from which FRFs are measured for post-earthquake damage detection by means of the NN technology. Principal component analysis (PCA) is pursued to the measured FRFs for dimensionality reduction and noise elimination, and then the PCA-compressed FRF data are used as input to NNs for damage identification. After a study on tolerance of PCA-reconstructed FRFs to measurement noise, different PCA configurations are designed for overall damage evaluation and damage location (distribution) identification, respectively. It is shown that the identification results by means of the FRF projections on a few principal components are much better than those directly using the measured FRF data, and agree fairly well with the visual inspection results of seismic damage during tests. (c) 2005 Elsevier Ltd. All rights reserved.
机译:本文介绍了使用测得的频率响应函数(FRF)和神经网络(NN)对38层高层建筑模型进行地震破坏识别的实验研究。 1:20比例尺的钢筋混凝土结构在振动台上进行测试,依次施加地面地震激励,分别产生微不足道的,中等,严重和完全(几乎倒塌)的破坏。在每个级别发生地震激发后,将低强度的20分钟白噪声随机激发应用于结构以产生环境振动响应,然后通过NN技术从中测量FRF以检测震后破坏。对测量的FRF进行主成分分析(PCA),以降低尺寸和消除噪声,然后将PCA压缩的FRF数据用作NN的输入,以进行损伤识别。在研究了PCA重建的FRF对测量噪声的耐受性之后,分别设计了不同的PCA配置,以分别进行整体损伤评估和损伤位置(分布)识别。结果表明,通过FRF投影对几个主要成分的识别结果比直接使用实测FRF数据的识别结果要好得多,并且与测试期间地震破坏的目测结果非常吻合。 (c)2005 Elsevier Ltd.保留所有权利。

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