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Prediction of pipeline scour depth in clear-water and live-bed conditions using group method of data handling

机译:使用数据处理的分组方法预测清水和活床条件下的管道冲刷深度

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In the present study, the Group method of data handling (GMDH) network was utilized to predict the scour depth below pipelines. GMDH network was developed using back propagation. Input parameters that were considered as effective parameters on the scour depth included those of sediment size, geometry of pipeline, and approaching flow characteristics. Training and testing performances of the GMDH networks have been carried out using nondimensional data sets that were collected from the literature. These data sets are related to the two main situations of pipelines scour experiments namely clear-water and live-bed conditions. The testing results of performances were compared with the support vector machines (SVM) and existing empirical equations. The GMDH network indicated that using of back propagation produced lower error of scour depth prediction than those obtained using the SVM and empirical equations. Also, the effects of many input parameters on the scour depth have been investigated.
机译:在本研究中,使用分组数据处理(GMDH)网络方法来预测管道下方的冲刷深度。 GMDH网络是使用反向传播开发的。被认为是冲刷深度有效参数的输入参数包括沉积物尺寸,管道几何形状和接近流量特征。 GMDH网络的训练和测试性能已使用从文献中收集的无量纲数据集进行了。这些数据集与管道冲刷试验的两种主要情况有关,即清水和活床条件。将性能测试结果与支持向量机(SVM)和现有的经验方程式进行了比较。 GMDH网络表明,与使用SVM和经验公式获得的结果相比,使用反向传播产生的冲刷深度预测误差更低。同样,已经研究了许多输入参数对冲刷深度的影响。

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