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Computational modeling with sensitivity analysis: case study velocity distribution of natural rivers

机译:具有敏感性分析的计算模型:天然河流速度分布的案例研究

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Determining the velocity profile of an open channel is essential in many hydraulic workspaces such as channel improvement studies, sediment modeling, and energy and turbidity calculations. Since the field observations are labor intensive and time-consuming, many empirical equations have been used for many years. Additionally, many data-based modeling studies have been conducted for both natural rivers and experimental channels. There are two objectives of this study. The first one consists of developing accurate models and criticizing the model performances based on the observational velocity dataset. Hence, classification and regression tree (C&RT), artificial neural network (ANN), and multilinear stepwise regression models are used with different input sets and the models are compared. The second objective is to gain a brief insight about the relationships of the velocity distribution model parameters and determining the significant variables for usage of further modeling studies by considering the co-linearity effects. The relative importance of input variables is investigated on settled models by using sensitivity analysis. The results of the sensitivity analysis indicated that for low-slope natural river studies, instead of using superfluous variables, using only four parameters (U (sh) , z/H, y/T and z/Y) is adequate to obtain accurate models. The predictive performances of C&RT model and the ANN model were found to be very close to each other, while the multilinear models appeared insufficient. The four variable input set is found superior to other input sets, and the variable water surface velocity is found the most significant parameter across all models.
机译:在许多水力工作空间中,例如在河道改善研究,沉积物模型以及能量和浊度计算中,确定明渠的流速分布至关重要。由于现场观察是劳动密集型且费时的,因此许多经验方程式已使用了很多年。另外,已经针对天然河流和实验河道进行了许多基于数据的建模研究。这项研究有两个目标。第一个步骤包括根据观测速度数据集开发准确的模型并批评模型的性能。因此,将分类和回归树(C&RT),人工神经网络(ANN)和多线性逐步回归模型用于不同的输入集,并对模型进行比较。第二个目标是获得对速度分布模型参数之间关系的简要了解,并通过考虑共线性效应来确定重要变量以用于进一步的建模研究。通过使用敏感性分析,在沉降模型上研究了输入变量的相对重要性。敏感性分析的结果表明,对于低坡度天然河流研究,不使用多余的变量,仅使用四个参数(U(sh),z / H,y / T和z / Y)即可获得准确的模型。发现C&RT模型和ANN模型的预测性能非常接近,而多线性模型似乎不足。发现四个变量输入集优于其他输入集,并且在所有模型中,发现可变水面速度是最重要的参数。

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