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Prediction of Maximum Story Drift of MDOF Structures under Simulated Wind Loads Using Artificial Neural Networks

机译:使用人工神经网络预测风荷载下MDOF结构的最大楼层漂移

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The aim of this paper is to investigate the prediction of maximum story drift of Multi-Degree of Freedom (MDOF) structures subjected to dynamics wind load using Artificial Neural Networks (ANNs) through the combination of several structural and turbulent wind parameters. The maximum story drift of 1600 MDOF structures under 16 simulated wind conditions are computed with the purpose of generating the data set for the networks training with the Levenberg–Marquardt method. The Shinozuka and Newmark methods are used to simulate the turbulent wind and dynamic response, respectively. In order to optimize the computational time required for the dynamic analyses, an array format based on the Shinozuka method is presented to perform the parallel computing. Finally, it is observed that the already trained ANNs allow for predicting adequately the maximum story drift with a correlation close to 99%.
机译:本文的目的是通过结合多个结构和湍流风参数,利用人工神经网络(ANN)研究动态风荷载作用下的多自由度(MDOF)结构的最大层位移预测。计算了16种模拟风况下1600个MDOF结构的最大楼层位移,目的是生成用于Levenberg-Marquardt方法进行网络训练的数据集。 Shinozuka和Newmark方法分别用于模拟湍流和动态响应。为了优化动态分析所需的计算时间,提出了一种基于Shinozuka方法的数组格式来执行并行计算。最后,可以观察到,经过训练的人工神经网络可以充分预测最大故事漂移,相关系数接近99%。

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