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Prediction of longitudinal dispersion coefficients in natural rivers using artificial neural network

机译:基于人工神经网络的天然河流纵向弥散系数预测

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摘要

An artificial neural network (ANN) model is developed for predicting the longitudinal dispersion coefficient in natural rivers. The model uses few rivers' hydraulic and geometric characteristics, that are readily available, as the model input, and the target output is the longitudinal dispersion coefficient (K). For performance evaluation of the model, using published field data, predictions by the developed ANN model are compared with those of other reported important models. Based on various performance indices, it is concluded that the new model predicts the longitudinal dispersion coefficient more accurately. Sensitive analysis performed on input parameters indicates stream width, flow depth, stream sinuosity, flow velocity, and shear velocity to be the most influencing parameters for accurate prediction of the longitudinal dispersion coefficient.
机译:建立了人工神经网络(ANN)模型来预测天然河流中的纵向弥散系数。该模型使用了几乎没有的河流的水力和几何特征作为模型输入,目标输出是纵向弥散系数(K)。为了对模型进行性能评估,使用已发布的现场数据,将已开发的ANN模型的预测与其他已报告的重要模型的预测进行比较。基于各种性能指标,可以得出结论,新模型可以更准确地预测纵向色散系数。对输入参数进行的敏感分析表明,对于准确预测纵向弥散系数而言,水流宽度,水流深度,水流弯曲度,流速和剪切速度是影响最大的参数。

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