Water surface profile prediction in non-prismatic compound channel using support vector machine (SVM)

Vijay Kaushik, Munendra Kumar
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Abstract

The process of estimating the level of water surface in two-stage waterways is a crucial aspect in the design of flood control and diversion structures. Human activities carried out along the course of rivers, such as agricultural and construction operation, have the potential to modify the geometry of floodplains, leading to the formation of compound channels with non-prismatic floodplains, thus possibly exhibiting convergent, divergent, or skewed characteristics. In the current investigation, the Support Vector Machine (SVM) technique is employed to approximate the water surface profile of compound channels featuring narrowing floodplains. Some models are constructed by utilizing significant experimental data obtained from both contemporary and previous investigations. Water surface profiles in these channels can be estimated through the utilization of non-dimensional geometric and flow parameters, including: converging angle, width ratio, relative depth, aspect ratio, relative distance, and bed slope. The results of this study indicate that the SVM-generated water surface profile exhibits a high degree of concordance with both the empirical data and the findings from previous research, as evidenced by its R2 value of 0.99, RMSE value of 0.0199, and MAPE value of 1.263. The findings of this study based on statistical analysis demonstrate that the SVM model developed is dependable and suitable for applications in this particular domain, exhibiting superior performance in forecasting water surface profiles.

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基于支持向量机的非棱柱形复合河道水面线预测
两级河道水位估算是防洪引水工程设计中的一个重要环节。人类沿着河流进行的活动,如农业和建筑作业,有可能改变洪泛区的几何形状,导致与非棱形洪泛区形成复合河道,从而可能表现出收敛、发散或倾斜的特征。在本研究中,采用支持向量机(SVM)技术来近似河漫滩变窄的复合河道的水面剖面。一些模型是利用从当代和以前的研究中获得的重要实验数据构建的。通过利用无量纲几何和流动参数,包括:会聚角、宽度比、相对深度、纵横比、相对距离和河床坡度,可以估算出这些河道的水面剖面。本研究结果表明,svm生成的水面剖面与经验数据和前人研究结果都具有高度的一致性,其R2值为0.99,RMSE值为0.0199,MAPE值为1.263。基于统计分析的研究结果表明,所建立的支持向量机模型是可靠的,适合该特定领域的应用,在水面剖面预测方面表现出优异的性能。
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