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首页> 外文期刊>Journal of water resource and protection >Identification of Influential Sea Surface Temperature Locations and Predicting Streamflow for Six Months Using Bayesian Machine Learning Regression
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Identification of Influential Sea Surface Temperature Locations and Predicting Streamflow for Six Months Using Bayesian Machine Learning Regression

机译:利用贝叶斯机器学习回归确定有影响的海面温度位置并预测六个月的水流

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Sea surface temperature (SST) has significant influence in the hydrological cycle and affects the discharge in the stream. SST is an atmospheric circulation indicator which provides the predictive information about the hydrologic variability in the region around the world. Use of right location of SST for a given location of stream gage can capture the effect of oceanic-atmospheric interaction, improving the predictive ability of the model. This study aims on identifying the best locations of SST at the selected stream gage in the state of Utah that spatially covers the state from south to north, and use them for next six-month streamflow volume predictions. The data-driven model derived from the statistical learning theory was used in this study. Using an appropriate location of SST together with local climatic conditions and state of basin, an accurate and reliable stream-flow was predicted for next six months. Influence of Pacific Ocean SST was observed to be stronger than that of Atlantic Ocean SST in the state of Utah. The SST of North Pacific developed the best model in most of the selected stream gages. Each model was ensured to be robust by the bootstrap analysis. The long-term streamflow prediction is important for water resource planning and management in the river basin scale and is a key step for successful water resource management in arid regions.
机译:海面温度(SST)在水文循环中具有重要影响,并影响溪流中的流量。 SST是一种大气环流指示器,可提供有关世界各地水文变异性的预测信息。将SST的正确位置用于水位计的给定位置可以捕获海洋-大气相互作用的影响,从而提高模型的预测能力。这项研究的目的是在犹他州选定的流量表上确定SST的最佳位置,该流量表从南到北在空间上覆盖该州,并将其用于未来六个月的流量预测。在这项研究中使用了基于统计学习理论的数据驱动模型。使用适当的SST位置以及当地的气候条件和流域状况,可以预测接下来六个月的流量准确,可靠。在犹他州,发现太平洋SST的影响要强于大西洋SST。北太平洋的海表温度在大多数选定的流量表中开发出最佳模型。引导分析确保了每个模型的鲁棒性。长期流量预报对于流域尺度的水资源规划和管理非常重要,并且是干旱地区成功进行水资源管理的关键步骤。

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