标题: 应用小波神经网路于桥梁实测地震反应之损坏侦测
Application of Wavelet Neural Network Models to the Damage Detection of Bridges from the Measured Earthquake Responses
作者: 洪士林
HUNG SHIH-LIN
国立交通大学
关键字: 小波理论;小波神经网路;损坏侦测;桥梁;Wavelet theory;Wavelet Neural Network;Damage detection;Bridges
公开日期: 2002
摘要: 本计画系应用小波神经网路来发展以实测之地震反应资料侦测桥梁损坏的方法。小波转换(Wavelet Transform)改善了傅立叶转换(Fourier Transformation)只能观察到频率域资料的特性,其二维(时间和频率)分析的功能使得信号在时间和频率域内的变化能同时被侦测到,因此非常适合应用于结构损坏侦测。小波神经网路(Wavelet Neural Network)是根据类神经网路(Artificial Neural Network)架构所发展出来的,由小波转换取代类神经网路中神经元(Neuron)的转换函数(Transfer Function)而建构出小波元(Wavelon)。实际之大维度(Dimension)问题,由于可得到的资料很少,若应用小波转换,则需要大量的小波来分解(Decompose)及合成(Synthesis)讯号。小波神经网路的训练采用类似于类神经网路常用的BP(Back-Propagation)学习演算法,根据工程问题的输入与输出讯号自动调整小波元中的参数,因此可大量减少分解及重建讯号所需的小波数目。并快速而有效地分解及重建讯号。此外,这个计画的研究成果可提供工程界参考,做为将来结构健康诊断之基本资料。本计划之流程如下:(一) 利用地震反应训练建立小波神经网路;(二) 进行数值模拟确认程序可行性;(三) 应用至实测桥 梁地震反应。
The study is an application of the Wavelet Neural Network (WNN) in bridge damage detection after excitation of strong earthquakes based on the recorded structural responses measured in site. The drawback of Fourier transform is that only signal properties in frequency domain can be observed. Wavelet transform improves this drawback, its analysis abilities in both time domain and frequency domain make it possible to detect, at the same time, the signal changes in both time domain and frequency domain. Thus, wavelet transform is highly promising for structural damage detection. WNNs are developed based on the architecture similar to the Artificial Neural Network (ANN). Wavelet transform is then used as the activation function for the ?§Wavelons?? in the wavelet neural network (WNN) instead of ?§neuron?? in the ANN. In most practical situations of large dimension, the available data are sparse. Therefore, considerable wavelons are needed to decompose and synthesize signals by applying wavelet transform. The forward networks and back-propagation based learning algorithm are adopted to converge the WNNs during training, and the parameters of wavelons can be adjusted automatically according to input and output signals of a certain engineering problem. Thus, the number of wavelons for decomposing and synthesizing signals can be drastically reduced, and signals can be decomposed and synthesized rapidly and effectively. Besides, the results of this study can offer to civil engineers as the basic data for structural health monitoring. The procedures of this project is as follows: (1) using structural responses excited by earthquakes to train and construct the WNN; (2) verifying the feasibility of the proposed approach by numerical simulations; and (3) applying the proposed approach to in-situ measured structural responses excited by earthquakes.
官方说明文件#: MOTC-CWB-91-E-12
URI: http://hdl.handle.net/11536/93293
https://www.grb.gov.tw/search/planDetail?id=708234&docId=132933
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