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神经网络技术在桥梁构件声波检测中的应用研究
引用本文:孙渊,王东燕,张良,李津.神经网络技术在桥梁构件声波检测中的应用研究[J].成都理工大学学报(自然科学版),2005,32(5):534-538.
作者姓名:孙渊  王东燕  张良  李津
作者单位:长安大学地球探测与信息工程系,西安,710054;西安石油大学资源工程系,西安,710065
摘    要:随着桥梁工程建设的发展,其混凝土构件质量检测显得越来越重要.采用非线性的BP神经网络方法技术,利用声波的运动学和动力学特征参数,在已知样本参数的约束下,对桥梁混凝土构件缺陷进行多参数综合检测,就方法技术而言是可行的.通过对某大桥混凝土腹板裂缝采用非线性BP神经网络方法技术进行综合检测,其结果验证正确,证明了该方法技术的有效性,且较常规的线性方法技术有着更高的精度和可靠性.为BP神经网络方法技术的应用探索了一个新的领域.

关 键 词:神经网络  声波  速度  频率  裂缝
文章编号:1671-9727(2005)05-0534-05
收稿时间:2004-12-28
修稿时间:2004年12月28日

Application of the neural net technique in the sound wave detection of bridge members
SUN Yuan,WANG Dong-yan,ZHANG Liang,LI Jin.Application of the neural net technique in the sound wave detection of bridge members[J].Journal of Chengdu University of Technology: Sci & Technol Ed,2005,32(5):534-538.
Authors:SUN Yuan  WANG Dong-yan  ZHANG Liang  LI Jin
Abstract:With the development of engineering construction of the bridge,the concrete component quality testing seems more and more important.Adopting nonlinear BP neural network method technology and utilizing kinematics and dynamics characteristrc parameters of sonic wave,the authors make multi-parameters synthetic detection to the bridge concrete member defects under the restraint of the parameter of the known sample.This is feasible as regards method technology.Through adopting nonlinear BP neural network method technology measure synthetically some bridge concrete web cracks,the result is verified correctly.This proves the validity of this method technology which has higher precision and dependability than the routine linear superposition method.And it has explored a new field for the application of BP neural network method technology.
Keywords:neural net  sonic wave  velocity  frequency  crack
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