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Approaches to the rapid seismic damage prediction of r/c buildings using artificial neural networks

机译:基于人工神经网络的钢筋混凝土建筑震害快速预测方法。

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The present paper deals with the investigation of the ability of Artificial Neural Networks (ANN) to reliably predict the r/c buildings' seismic damage state. In this investigation, the problem was formulated as a problem of approximation of an unknown function as well as a pattern recognition problem. In both cases, Multilayer Feedforward Perceptron networks were used. For the creation of the ANNs' training data set, 30 r/c buildings with different structural characteristics, which were subjected to 65 actual ground motions, were selected. These buildings were subjected to Nonlinear Time History Analyses. These analyses led to the calculation of the buildings' damage indices expressed in terms of the Maximum Interstorey Drift Ratio. The influence of several configuration parameters of ANNs to the level of the predictions' reliability was also investigated. In order to investigate the generalization ability of the trained networks, three scenarios were considered. In the framework of these scenarios, the ANNs' seismic damage state predictions were evaluated for buildings subjected to earthquakes, neither of which are included to the training data set. The most significant conclusion of the investigation is that the ANNs can reliably approach the seismic damage state of r/c buildings in real time after an earthquake.
机译:本文研究了人工神经网络(ANN)可靠地预测遥控建筑物的地震破坏状态的能力的研究。在这项研究中,该问题被表述为一个未知函数的近似问题以及一个模式识别问题。在这两种情况下,都使用了多层前馈感知器网络。为了创建ANN的训练数据集,选择了30个具有不同结构特征的r / c建筑物,这些建筑物经受了65次实际地面运动。这些建筑物经过了非线性时程分析。这些分析导致以最大层间漂移率表示的建筑物破坏指数的计算。还研究了人工神经网络的几个配置参数对预测的可靠性水平的影响。为了研究训练网络的泛化能力,考虑了三种情况。在这些场景的框架中,对遭受地震的建筑物评估了人工神经网络的地震破坏状态预测,而这两者均未包含在训练数据集中。调查的最重要结论是,人工神经网络可以在地震发生后实时可靠地接近遥控建筑物的地震破坏状态。

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