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小波神经网络在基桩动测信号处理中的应用
引用本文:麦榕,贺怀建,潘冬子,黄正华.小波神经网络在基桩动测信号处理中的应用[J].水文地质工程地质,2004,31(5):91-96.
作者姓名:麦榕  贺怀建  潘冬子  黄正华
作者单位:1. 中国科学院武汉岩土力学研究所,武汉,430071
2. 浙江大学建工学院,杭州,310027
3. 江苏省电力建设第一工程公司,南京,210072
摘    要:基于小波变换的时频局部化特性及人工神经网络的非线性映射特性,将小波变换和人工神经网络的优点结合起来,从基桩动测信号二进小波变换的频域中提取特征,最后将这些特征输入人工神经网络进行训练和分类,进而实现基桩缺陷的诊断。数值模拟试验显示了该方法的合理性,在此基础上进行了工程桩的现场试验研究,结果表明训练成功的神经网络可以作为智能分类器对基桩常见缺陷进行识别和诊断。

关 键 词:小波分析  神经网络  基桩检测  缺陷诊断
文章编号:1000-3665(2004)05-0091-06
修稿时间:2003年9月3日

Application of wavelet and neural network in dealing with dynamic testing signals of piles
MAI Rong,HE Huai-jian,PAN Dong-zi,HUANG Zheng-hua.Application of wavelet and neural network in dealing with dynamic testing signals of piles[J].Hydrogeology and Engineering Geology,2004,31(5):91-96.
Authors:MAI Rong  HE Huai-jian  PAN Dong-zi  HUANG Zheng-hua
Institution:MAI Rong~1,HE Huai-jian~2,PAN Dong-zi~2,HUANG Zheng-hua~3
Abstract:Based on the time-frequency locatization of wavelet transform and the nonlinear mapping of neural network, a method of dynamic testing signals combining with the advantage of wavelet analysis and neural network is presented. Some features are extracted from the frequency spectrum analysis at the various resolution of the dyadic wavelet transform. These features are taken the wavelet neural network as the input patterns for training and classifying. Then, it can be used to diagnose the faults of piles. The result of insitu test is in good agreement with numerical simulation and it show that this method can successfully be applied to the identification and diagnosis of plies faults as an intelligentized classifier.
Keywords:wavelet analysis  BP neural network  dynamic testing  signal analysis  fault diagnosis
本文献已被 CNKI 维普 万方数据 等数据库收录!
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