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Estimation of Transverse Mixing Coefficient in Straight and Meandering Streams

机译:直线和曲流中横向混合系数的估计

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Transverse mixing coefficient (TMC) is one of the key factors in the modelling of lateral dispersion of pollutants. Several researchers have attempted to estimate this coefficient using various models. However, robust equations that can accurately estimate lateral mixing in both straight and meandering streams are still required. In this study, novel formulae were developed using the hydraulic and geometric parameters of rivers. The multiple linear regression (MLR), genetic programming based symbolic regression (GPSR) and dimensionless parameters were used for this purpose. Two extensive data sets including data from straight channels/streams and meandering ones were employed to develop the formulae. The main advantage of the developed formula for meandering streams is proper consideration of the effects of aspect ratio, friction, and sinuosity. The formulae performances were then compared quantitatively with those of existing ones using accuracy metrics such as RMSE (Root Mean Square Error). The results illustrated that the proposed formulae outperform others in terms of accuracy and can be used for estimating TMC in straight and meandering streams. In addition, the comparison of MLR and GPSR models showed that the latter is marginally more accurate than MLR specially in meandering streams. However, the MLR models presented a more justifiable relationship between the TMC and governing dimensionless parameters. The main advantages of the presented formulae are that they are more accurate than previous models, can be used in both meandering and straight streams; and can be easily implemented in numerical models to estimate the pollutant concentration and mixing length.
机译:横向混合系数(TMC)是污染物横向扩散建模的关键因素之一。一些研究人员尝试使用各种模型来估计该系数。然而,仍然需要能够精确估计直流和曲流中的横向混合的鲁棒方程。在这项研究中,利用河流的水力和几何参数开发了新的公式。为此,使用了多元线性回归(MLR),基于遗传编程的符号回归(GPSR)和无量纲参数。使用两个广泛的数据集(包括来自直接通道/流的数据和蜿蜒的数据集)来开发公式。所开发的曲折流公式的主要优点是可以适当考虑纵横比,摩擦力和弯曲度的影响。然后,使用诸如RMSE(均方根误差)之类的准确性指标,将公式的性能与现有的性能进行定量比较。结果表明,所提出的公式在准确性方面优于其他公式,可用于估算直线和曲流中的TMC。此外,对MLR和GPSR模型的比较表明,后者在弯折流中比MLR准确得多。但是,MLR模型在TMC和控制无量纲参数之间提供了更合理的关系。提出的公式的主要优点是,它们比以前的模型更精确,可用于蜿蜒流和直流。并且可以很容易地在数值模型中实现以估算污染物浓度和混合长度。

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