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Using oceanic-atmospheric oscillations for long lead time streamflow forecasting

机译:利用海洋 - 大气振荡进行长提前期流量预测

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摘要

We present a data-driven model, Support Vector Machine (SVM), for long lead time streamflow forecasting using oceanic-atmospheric oscillations. The SVM is based on statistical learning theory that uses a hypothesis space of linear functions based on Kernel approach and has been used to predict a quantity forward in time on the basis of training from past data. The strength of SVM lies in minimizing the empirical classification error and maximizing the geometric margin by solving inverse problem. The SVM model is applied to three gages, i.e., Cisco, Green River, and Lees Ferry in the Upper Colorado River Basin in the western United States. Annual oceanic-atmospheric indices, comprising Pacific Decadal Oscillation (PDO), North Atlantic Oscillation (NAO), Atlantic Multidecadal Oscillation (AMO), and El Nino–Southern Oscillations (ENSO) for a period of 1906–2001 are used to generate annual streamflow volumes with 3 years lead time. The SVM model is trained with 86 years of data (1906–1991) and tested with 10 years of data (1992–2001). On the basis of correlation coefficient, root means square error, and Nash Sutcliffe Efficiency Coefficient the model shows satisfactory results, and the predictions are in good agreement with measured streamflow volumes. Sensitivity analysis, performed to evaluate the effect of individual and coupled oscillations, reveals a strong signal for ENSO and NAO indices as compared to PDO and AMO indices for the long lead time streamflow forecast. Streamflow predictions from the SVM model are found to be better when compared with the predictions obtained from feedforward back propagation artificial neural network model and linear regression.
机译:我们提出了一种数据驱动模型,即支持向量机(SVM),用于使用海洋-大气振荡来进行长提前期的流量预测。 SVM基于统计学习理论,该理论使用基于Kernel方法的线性函数的假设空间,并已被用于基于过去数据的训练来预测时间上的正向数量。 SVM的优势在于通过解决反问题将经验分类误差最小化和将几何余量最大化。 SVM模型应用于美国西部上科罗拉多河盆地的三个测量仪器,即Cisco,Green River和Lees Ferry。使用1906-2001年期间的年度海洋大气指数(包括太平洋年代际涛动(PDO),北大西洋涛动(NAO),大西洋多年代际涛动(AMO)和厄尔尼诺-南方涛动(ENSO))来产生年度流量交货期为3年。支持向量机模型使用86年的数据(1906–1991)进行训练,并使用10年的数据(1992–2001)进行测试。在相关系数,均方根误差和纳什·苏特克利夫效率系数的基础上,该模型显示出令人满意的结果,并且预测结果与测得的流量有很好的一致性。进行敏感性分析以评估单个和耦合振荡的影响,对于长期提前期流量预测,与PDO和AMO指数相比,ENSO和NAO指数显示出较强的信号。与从前馈反向传播人工神经网络模型和线性回归获得的预测结果相比,SVM模型的流量预测结果更好。

著录项

  • 作者

    Kalra Ajay; Ahmad Sajjad;

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  • 年度 2009
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  • 原文格式 PDF
  • 正文语种 English
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