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首页> 外文期刊>Journal of Computing in Civil Engineering >Quick Seismic Response Estimation of Prestressed Concrete Bridges Using Artificial Neural Networks
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Quick Seismic Response Estimation of Prestressed Concrete Bridges Using Artificial Neural Networks

机译:基于人工神经网络的预应力混凝土桥梁快速地震反应估计。

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Seismic early warning has been very important and has become feasible in Taiwan. Perhaps because of the lack of quick and reliable estimations of the induced structural response, however, the triggering criteria of almost all of the existing earthquake protection or early warning systems in the world are merely based on the collected or estimated data of the ground motion, without any information regarding the structural response. This paper presents a methodology of generating quick seismic response estimations of a prestressed concrete (PC) bridge using artificial neural networks (ANNs), which may be incorporated in a seismic early warning system for the bridge. In the methodology ANNs were applied to model the critical structural response of a PC bridge subjected to earthquake excitation of various magnitudes along various directions. The objective was to implement a well-trained network that is capable of providing a quick prediction for the critical response of the target bridge. The well-known multilayer perception (MLP) networks with back propagation algorithm were employed. A simple augmented form of MLP that can be quantitatively determined was proposed. These networks were trained and tested based on the analytical data obtained from the nonlinear dynamic finite fiber element analyses of the target PC bridge. The augmented MLPs were found to be much more efficient than the MLPs in modeling the critical bending moments of the piers and girder of the PC bridge.
机译:地震预警非常重要,在台湾已经变得可行。也许是由于缺乏对结构响应的快速可靠的估算,然而,世界上几乎所有现有的地震保护或预警系统的触发标准仅基于地震动的收集或估算数据,没有有关结构响应的任何信息。本文提出了一种使用人工神经网络(ANN)生成预应力混凝土(PC)桥梁快速地震响应估计的方法,该方法可以并入桥梁的地震预警系统中。在该方法中,将人工神经网络用于模拟PC桥在不同方向上受到各种地震激励的临界结构响应。目的是实施一个训练有素的网络,该网络能够为目标桥梁的关键响应提供快速预测。使用了具有反向传播算法的众所周知的多层感知(MLP)网络。提出了一种可以定量确定的MLP的简单增强形式。这些网络是根据目标PC桥的非线性动态有限纤维单元分析获得的分析数据进行训练和测试的。发现增强的MLP在建模PC桥墩和梁的临界弯矩时比MLP效率更高。

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