标题: 应用类神经网路于桥梁实测地震反应之模态识别
Application of Neural Networks to the Modal Identification of Bridges from the Measured Earthquake Responses
作者: 黄炯宪
HUANG CHIUNG-SHIANN
国立交通大学
关键字: 类神经网路;模态识别;桥梁地震反应;Neural networks;Modal identification;Earthquake responses of bridges
公开日期: 2001
摘要: 由文献回顾,知自从1943年McCulloch and Pitts提出类神经网路之数学模型后,于80年代开始类神经网路才逐渐被受到重视。由于类神经网路具有可训练性及容错性,其已成功地被应用于不同领域,包含自动控制、最佳化问题、语言及影像之判识、气象预测、结构反应模拟。从文献中可发现类神经网路应用于结构系统之模态识别则不多见。 本研究即拟以利用倒传递神经网路分析桥梁地震反应量测数据,利用训练所得之权重矩阵直接估算结构系统之振态频率、阻尼比及模态。本研究中拟分别利用batch learning及per-example learning两模式训练网路,并利用敏感度分析减少输入层中不必要之神经元(减少系统识别中虚拟振态之产生)。此分析模式将先以数值模拟验证,再应用于实测桥梁地震反应。
It is known from article review that McCulloch and Pitts first proposed a mathematical model of neural networks in 1943. However, the neural computing did not catch the attention of researchers until 80’s. Due to the capacity of training and the high tolerance to partially inaccurate data, neural networks have been successfully applied to various fields such as automatic control, optimization, speech and image recognition, weather prediction, and prediction of structural responses. Nevertheless, it is hardly found the applications of neural networks to determine the dynamic characteristics of structures in the published work. The main purpose of this project is to extend the application of neural network to identify the dynamic characteristics of bridges from their earthquake responses. The natural frequencies, modal damping, and mode shapes can be directly determined from the weighting matrices of a neural network. In this research, the neural network will be trained by using batch learning and per-example learning to investigate the effects of the two types of learning process on establishing an appropriate neural network. Furthermore, sensitivity analysis will also be carried out to cut out the unneeded neuron in the input layer. The proposed procedure will be verified by numerical simulation, then, applied to processing the measured responses of bridges.
官方说明文件#: MOTC-CWB-90-E-12
URI: http://hdl.handle.net/11536/94687
https://www.grb.gov.tw/search/planDetail?id=617290&docId=115042
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