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Development of expert systems for the prediction of scour depth under live-bed conditions at river confluences: Application of different types of ANNs and the M5P model tree

机译:河流汇合处活床条件下冲刷深度预测专家系统的开发:不同类型的人工神经网络和M5P模型树的应用

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摘要

The three-dimensional structure of water flow at river confluences makes these zones of particular importance in the fields of river engineering, fluvial geomorphology, sedimentology and navigation. While previous research has concentrated on the effects of hydraulic and geometric parameters on the scour patterns at river confluences, there remains a lack of expert systems designed to predict the maximum scour depth (d(sm)). In the present study, several soft computing models, namely multi-layer perceptron (MLP), radial basis function (RBF) and M5P model tree, were used to predict the d(sm) at river confluences under live-bed conditions. Model performance, assessed through a number of statistical indices (RMSE, MAE, MARE and R-2), showed that while all three models could provide acceptable predictions of d(sm) under live-bed conditions, the MLP model was the most accurate. By testing the models at three different ranges of scour depths, we determined that while the MLP model was the most accurate model in the low scour depth range, the RBF model was more accurate in the higher range of scour depths. (C) 2015 Elsevier B.V. All rights reserved.
机译:河流汇合处的水流三维结构使这些区域在河流工程,河流地貌,沉积学和航海领域特别重要。尽管先前的研究集中于水力和几何参数对河流汇合处冲刷模式的影响,但仍缺乏设计用于预测最大冲刷深度(d(sm))的专家系统。在本研究中,使用多层感知器(MLP),径向基函数(RBF)和M5P模型树等几种软计算模型来预测活床条件下河道汇合处的d(sm)。通过许多统计指标(RMSE,MAE,MARE和R-2)评估的模型性能表明,尽管所有三个模型都可以在活床条件下提供可接受的d(sm)预测,但MLP模型是最准确的。通过在三个不同的冲刷深度范围内测试模型,我们确定虽然MLP模型是低冲刷深度范围内最准确的模型,但RBF模型在较高冲刷深度范围内更准确。 (C)2015 Elsevier B.V.保留所有权利。

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