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Abutment scour in clear-water and live-bed conditions by GMDH network

机译:GMDH网络在清水和活床条件下进行基台冲刷

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In the present study, the Group Method of Data Handling (GMDH) network has been utilized to predict abutments scour depth for both clear-water and live-bed conditions. The GMDH network was developed using a Back Propagation algorithm (BP). Input parameters that were considered as effective variables on abutment scour depth included properties of sediment size, geometry of bridge abutments, and properties of approaching flow. Training and testing performances of the GMDH network were carried out using dimensionless parameters that were collected from the literature. The testing results were compared with those obtained using the Support Vector Machines (SVM) model and the traditional equations. The GMDH network predicted the abutment scour depth with lower error (RMSE (root mean square error) = 0.29 and MAPE (mean absolute percentage of error) = 0.99) and higher (R = 0.98) accuracy than those performed using the SVM model and the traditional equations.
机译:在本研究中,数据处理的分组方法(GMDH)网络已被用于预测清水和活床条件下的基台冲刷深度。 GMDH网络是使用反向传播算法(BP)开发的。输入参数被认为是基台冲刷深度的有效变量,包括沉积物尺寸,桥基的几何形状和进水特性。 GMDH网络的训练和测试性能是使用从文献中收集的无量纲参数进行的。将测试结果与使用支持向量机(SVM)模型和传统方程式获得的结果进行了比较。 GMDH网络预测的基台冲刷深度具有比使用SVM模型和SVM模型执行的精度更低的误差(RMSE(均方根误差)= 0.29和MAPE(平均绝对误差百分比)= 0.99)和更高的精度(R = 0.98)传统方程式。

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