A New Procedure for Damage Assessment of Prestressed Concrete Beams Using Artificial Neural Network

K. Sumangala, C. A. J. Chellam
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引用次数: 4

Abstract

A damage assessment procedure has been developed using artificial neural network (ANN) for prestressed concrete beams. The methodology had been formulated using the results obtained from an experimental study conducted in the laboratory. Prestressed concrete (PSC) rectangular beams were cast, and pitting corrosion was introduced in the prestressing wires and was allowed to be snapped using accelerated corrosion process. Both static and dynamic tests were conducted to study the behaviour of perfect and damaged beams. The measured output from both static and dynamic tests was taken as input to train the neural network. Back propagation network was chosen for this purpose, which was written using the programming package MATLAB. The trained network was tested using separate test data obtained from the tests. A damage assessment procedure was developed using the trained network, it was validated using the data available in literature, and the outcome is presented in this paper.
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基于人工神经网络的预应力混凝土梁损伤评估新方法
提出了一种基于人工神经网络的预应力混凝土梁损伤评估方法。该方法是根据在实验室进行的一项实验研究的结果制定的。预应力混凝土(PSC)矩形梁浇筑,预应力钢丝引入点蚀,并允许使用加速腐蚀过程进行断裂。进行了静力和动力试验,研究了完好梁和损坏梁的性能。将静态和动态测试的测量输出作为训练神经网络的输入。为此选择了反向传播网络,使用MATLAB编程包编写。使用从测试中获得的单独测试数据对训练后的网络进行测试。利用训练好的网络开发了一种损伤评估程序,并利用文献数据对其进行了验证,并在本文中给出了结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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