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Prediction of pressure coefficients on roofs of low buildings using artificial neural networks

机译:利用人工神经网络预测低层建筑屋顶的压力系数

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摘要

This paper describes an artificial neural network (ANN) approach for the prediction of mean and root-mean-square (rms) pressure coefficients on the gable roofs of low buildings. The ANN models, which employ a backpropagation training algorithm, are capable of generalizing the complex, nonlinear functional relationships between the pressure coefficients and eave height, wind direction and spatial location on the roof. The performance of the ANN is demonstrated by the prediction of the pressure coefficients for roof tap locations in a corner bay. The mean bay uplift can be predicted accurately with an average error less than 2% for three cornering wind directions not seen by the ANN during training. The mean-square errors of all of the individual pressure taps in the corner bay were 12% and 9% for the mean and rms coefficients, respectively. This approach could be used to expand aerodynamic databases to a larger variety of geometries and increase its practical feasibility.
机译:本文介绍了一种人工神经网络(ANN)方法,用于预测低层建筑山墙屋顶上的均值和均方根(rms)压力系数。 ANN模型采用反向传播训练算法,能够概括压力系数与屋檐高度,风向和屋顶空间位置之间的复杂非线性函数关系。人工神经网络的性能通过角a湾屋顶水龙头位置的压力系数预测得到证明。在训练过程中,ANN看不到的三个转弯风向可以准确地预测平均海湾上升,平均误差小于2%。对于均值和均方根系数,角舱中所有单个压力抽头的均方误差分别为12%和9%。这种方法可用于将空气动力学数据库扩展到更多的几何形状,并增加其实际可行性。

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