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首页> 外文期刊>Journal of applied mathematics >A Conjunction Method of Wavelet Transform-Particle Swarm Optimization-Support Vector Machine for Streamflow Forecasting
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A Conjunction Method of Wavelet Transform-Particle Swarm Optimization-Support Vector Machine for Streamflow Forecasting

机译:小波变换-粒子群-支持向量机相结合的流量预测方法

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Streamflow forecasting has an important role in water resource management and reservoir operation. Support vector machine (SVM) is an appropriate and suitable method for streamflow prediction due to its best versatility, robustness, and effectiveness. In this study, a wavelet transform particle swarm optimization support vector machine (WT-PSO-SVM) model is proposed and applied for streamflow time series prediction. Firstly, the streamflow time series were decomposed into various details (Ds) and an approximation (A3) at three resolution levels (21-22-23) using Daubechies (db3) discrete wavelet. Correlation coefficients between eachDsubtime series and original monthly streamflow time series are calculated.Dscomponents with high correlation coefficients (D3) are added to the approximation (A3) as the input values of the SVM model. Secondly, the PSO is employed to select the optimal parameters,C,ε, andσ, of the SVM model. Finally, the WT-PSO-SVM models are trained and tested by the monthly streamflow time series of Tangnaihai Station located in Yellow River upper stream from January 1956 to December 2008. The test results indicate that the WT-PSO-SVM approach provide a superior alternative to the single SVM model for forecasting monthly streamflow in situations without formulating models for internal structure of the watershed.
机译:流量预报在水资源管理和水库运营中具有重要作用。支持向量机(SVM)具有最佳的通用性,鲁棒性和有效性,是一种适用于流量预测的合适方法。本研究提出了一种小波变换粒子群优化支持向量机(WT-PSO-SVM)模型,并将其应用于水流时间序列预测。首先,使用Daubechies(db3)离散小波将流时间序列分解为三个分辨率级别(21-22-23)的各种细节(Ds)和近似值(A3)。计算每个D子时间序列与原始月流量时间序列之间的相关系数,将具有高相关系数(D3)的Ds分量添加到近似值(A3)中,作为SVM模型的输入值。其次,使用PSO选择SVM模型的最佳参数C,ε和σ。最后,利用1956年1月至2008年12月位于黄河上游的唐乃海站的月流量时间序列对WT-PSO-SVM模型进行了训练和测试。在不为流域内部结构建立模型的情况下,可以替代单一SVM模型来预测情况下的每月流量。

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