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Application Of Artificial Neural Network To Predict The Friction Factor Of Open Channel Flow

机译:人工神经网络在明渠水流摩阻预测中的应用

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The friction factor of an open channel flow is generally affected by the Reynolds number and the roughness conditions, and can be decided by laboratory or field measurements. During practical applications, researchers often find that a correct choice of the friction factor can be crucial to make a sound prediction of hydraulic problems. In this paper, a three-layer artificial neural network (ANN) was set up to predict the friction factors of an open channel flow, with the Reynolds number and the relative roughness as two input parameters. The Levenberg-Marquardt (LM) learning algorithm was employed to train the model by using Зегжда's laboratory experimental data, and the trained network was tested by a single set separated from the rest of the data and a good correlation between the experimental and predicted results has been obtained. Finally, the ANN simulated results were compared with the calculated results obtained by the empirical formula and both comparisons showed that the ANN model can be used to predict the non-linear relationship between the friction factor and its influencing factors correctly once enough samples are provided. The successful application proved that ANN model can be used in engineering practice as a convenient and effective method, and those traditional hydraulic problems which are mostly based on laboratory tests can be analyzed by ANN modelling.
机译:明渠流动的摩擦系数通常受雷诺数和粗糙度条件的影响,并且可以由实验室或现场测量确定。在实际应用中,研究人员经常发现正确选择摩擦系数对于正确预测液压问题至关重要。本文建立了一个三层人工神经网络(ANN),以雷诺数和相对粗糙度为两个输入参数,预测明渠水流的摩擦系数。 Levenberg-Marquardt(LM)学习算法用于使用Зегжда的实验室实验数据来训练模型,并且训练后的网络由与其余数据分开的单个集合进行测试,并且实验结果与预测结果之间具有良好的相关性已获得。最后,将人工神经网络的模拟结果与通过经验公式获得的计算结果进行比较,两次比较都表明,一旦提供了足够的样本,人工神经网络模型就可以正确地预测摩擦系数及其影响因素之间的非线性关系。成功的应用证明,人工神经网络模型可以作为一种方便有效的方法在工程实践中使用,并且可以通过人工神经网络建模来分析那些主要基于实验室测试的传统水力问题。

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