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Group method of data handling to predict scour depth around bridge piers

机译:预测桥墩周围冲刷深度的数据处理分组方法

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摘要

In this study, group method of data handling network with quadratic polynomial was used to predict scour depth around bridge piers. Effective parameters on scour phenomena include sediment size, geometry of bridge pier, and upstream flow conditions. Different shapes of piers have been utilized to develop the GMDH network. Back propagation algorithm was performed to train the GHMD network which updated weighting coefficients of quadratic polynomial in each iteration of the training stage. The GMDH performed with the lowest errors of training and testing stages for cylindrical pier. Also, Richardson and Davis, Johnson's equations produced relatively good performances for different types of piers. Finally, the results indicated that GMDH could be provided more accurate prediction than those obtained using traditional equations.
机译:在这项研究中,采用二次多项式的数据处理网络分组方法来预测桥墩周围的冲刷深度。关于冲刷现象的有效参数包括沉积物尺寸,桥墩的几何形状和上游流动条件。已利用不同形状的墩来开发GMDH网络。执行反向传播算法来训练GHMD网络,该网络在训练阶段的每次迭代中更新二次多项式的加权系数。 GMDH在圆柱墩的训练和测试阶段的误差最小。同样,约翰逊的理查森(Richardson)和戴维斯(Davis)的方程对于不同类型的墩产生了相对较好的性能。最后,结果表明,与传统方程式相比,GMDH可以提供更准确的预测。

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