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首页> 外文期刊>Journal of Soft Computing in Civil Engineering >Stream Flow Forecasting using Least Square Support Vector Regression
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Stream Flow Forecasting using Least Square Support Vector Regression

机译:使用最小二乘支持向量回归的流量预测

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Effective stream flow forecast for different lead-times is useful in almost all water resources related issues. The Support Vector Machines (SVMs) are learning systems that use a hypothetical space of linear functions in a kernel induced higher dimensional feature space, and are trained with a learning algorithm from optimization theory. The support vector regression attempts to fit a curve with respect to the kernel used in SVM on data points such that the points lie between two marginal hyper planes which helps in minimizing the regression error. The current paper presents least square support vector regression (LS-SVR) to predict one day ahead stream flow using past values of the rainfall and stream flow at three stations in India, namely Nighoje and Budhwad in Krishna river basin and Mandaleshwar in Narmada river basin. The relevant inputs are fixed on the basis of autocorrelation, Cross-correlation and trial and error. The model results are reasonable as can be seen from low value of Root Mean Square Error (RMSE), Coefficient of Efficiency (CE) and Mean Absolute Relative Error (MARE) accompanied by scatter plots and hydrographs.
机译:在几乎所有与水资源有关的问题中,针对不同提前期进行有效的流量预测都是有用的。支持向量机(SVM)是在内核诱发的高维特征空间中使用线性函数的假设空间的学习系统,并使用来自优化理论的学习算法进行训练。支持向量回归尝试针对数据点上的SVM中使用的内核拟合曲线,以使这些点位于两个边缘超平面之间,这有助于最大程度地减少回归误差。本文采用最小二乘支持向量回归(LS-SVR)来预测未来三天的流量,该值使用了印度三个站点(克里希纳河流域的Nighoje和Budhwad和纳尔默达河流域的Mandaleshwar)的降雨和流量的过去值进行预测。 。相关输入根据自相关,互相关以及反复试验进行固定。从低均方根误差(RMSE),效率系数(CE)和平均绝对相对误差(MARE)的低值以及散点图和水位图可以看出,该模型的结果是合理的。

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