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Modeling river stage-discharge-sediment rating relation using support vector regression

机译:利用支持向量回归模型模拟河流水位流量与泥沙比关系

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摘要

A variety of data-driven approaches have been developed in the recent past to capture the properties of hydrological data for improved modeling. These include artificial neural networks (ANNs), fuzzy logic and evolutionary algorithms, amongst others. Of late, kernel-based machine learning approaches have become popular due to their inherent advantages over traditional modeling techniques. In this work, support vector machines (SVMs), a kernel-based learning approach, has been investigated for its suitability to model the relationship between the river stage, discharge, and sediment concentration. SVMs are an approximate implementation of the structural risk minimization principle that aims at minimizing a bound on the generalization error of a model. These have been found to be promising in many areas including hydrology. Application of SVMs to regression problems is known as support vector regression (SVR). This paper presents an application of SVR to model river discharge and sediment concentration rating relation. The results obtained using SVR were compared with those from ANNS and it was found that the SVR approach is better when compared with ANNs.
机译:近年来,已经开发了各种数据驱动的方法来捕获水文数据的属性以进行改进的建模。其中包括人工神经网络(ANN),模糊逻辑和进化算法等。最近,基于内核的机器学习方法因其相对于传统建模技术的固有优势而变得流行。在这项工作中,已经对基于内核的学习方法支持向量机(SVM)进行了建模,以适合于模拟河段,流量和沉积物浓度之间的关系。支持向量机是结构风险最小化原则的近似实现,旨在最小化模型泛化误差的范围。已发现这些在包括水文学在内的许多领域都很有希望。 SVM在回归问题上的应用称为支持向量回归(SVR)。本文介绍了SVR在模拟河流流量和泥沙浓度等级关系中的应用。将使用SVR的结果与来自ANNS的结果进行比较,发现与ANN相比,SVR方法更好。

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