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Long Lead-Time Streamflow Forecasting Using Oceanic-Atmospheric Oscillation Indices

机译:利用海洋-大气振荡指标进行长提前期流量预测

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Climatic variability influences the hydrological cycle that subsequently affects the discharge in the stream. The variability in the climate can be represented by the ocean-atmospheric oscillations which provide the forecast opportunity for the streamflow. Prediction of future water availability accurately and reliably is a key step for successful water resource management in the arid regions. Four popular ocean-atmospheric indices were used in this study for annual streamflow volume prediction. They were Pacific Decadal Oscillation (PDO), El-Nino Southern Oscillation (ENSO), Atlantic Multidecadal Oscillation (AMO), and North Atlantic Oscillation (NAO). Multivariate Relevance Vector Machine (MVRVM), a data driven model based on Bayesian learning approach was used as a prediction model. The model was applied to four unimpaired stream gages in Utah that spatially covers the state from north to south. Different models were developed based on the combinations of oscillation indices in the input. A total of 60 years (1950-2009) of data were used for the analysis. The model was trained on 50 years of data (1950-1999) and tested on 10 years of data (2000-2009). The best combination of oscillation indices and the lead-time were identified for each gage which was used to develop the prediction model. The predicted flow had reasonable agreement with the actual annual flow volume. The sensitivity analysis shows that the PDO and ENSO have relatively stronger effect compared to other oscillation indices in Utah. The prediction results from the MVRVM were compared with the Support Vector Machine (SVM) and the Artificial Neural Network (ANN) where MVRVM performed relatively better.
机译:气候变化会影响水文循环,进而影响溪流中的流量。气候的可变性可以用海洋-大气振荡来表示,这为水流的预报提供了机会。准确可靠地预测未来的水供应量是干旱地区成功进行水资源管理的关键步骤。这项研究使用了四个流行的海洋-大气指数来预测年度流量。它们是太平洋年代际涛动(PDO),厄尔尼诺南部涛动(ENSO),大西洋多年代际涛动(AMO)和北大西洋涛动(NAO)。多元相关向量机(MVRVM)是一种基于贝叶斯学习方法的数据驱动模型,用作预测模型。该模型已应用于犹他州的四个不受阻流标尺,从北到南在空间上覆盖了该州。根据输入中振荡指标的组合,开发了不同的模型。总共使用了60年(1950-2009)的数据进行分析。该模型在50年的数据(1950-1999)上进行了训练,并在10年的数据(2000-2009)上进行了测试。确定每个量规的最佳振荡指标和提前期组合,以用于建立预测模型。预计流量与实际年流量合理吻合。灵敏度分析表明,与犹他州的其他振荡指标相比,PDO和ENSO的影响相对较强。将MVRVM的预测结果与支持向量机(SVM)和人工神经网络(ANN)进行了比较,其中MVRVM的性能相对较好。

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