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Bringing statistical learning machines together for hydro-climatological predictions - Case study for Sacramento San joaquin River Basin, California

机译:将统计学习机整合在一起进行水文气候预测-加利福尼亚萨克拉曼多圣华金河流域的案例研究

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Study regionSacramento San Joaquin River Basin, CaliforniaStudy focusThe study forecasts the streamflow at a regional scale within SSJ river basin with largescale climate variables. The proposed approach eliminates the bias resulting from predefined indices at regional scale. The study was performed for eight unimpaired streamflow stations from 1962–2016. First, the Singular Valued Decomposition (SVD) teleconnections of the streamflow corresponding to 500 mbar geopotential height, sea surface temperature, 500 mbar specific humidity (SHUM500), and 500 mbar U-wind (U500) were obtained. Second, the skillful SVD teleconnections were screened non-parametrically. Finally, the screened teleconnections were used as the streamflow predictors in the non-linear regression models (K-nearest neighbor regression and data-driven support vector machine).New hydrological insightsThe SVD results identified new spatial regions that have not been included in existing predefined indices. The nonparametric model indicated the teleconnections of SHUM500and U500being better streamflow predictors compared to other climate variables. The regression models were capable to apprehend most of the sustained low flows, proving the model to be effective for drought-affected regions. It was also observed that the proposed approach showed better forecasting skills with preprocessed large scale climate variables rather than using the predefined indices. The proposed study is simple, yet robust in providing qualitative streamflow forecasts that may assist water managers in making policy-related decisions when planning and managing watersheds.
机译:研究区域加利福尼亚萨克拉曼多圣华金河流域研究重点该研究预测SSJ流域内具有大规模气候变量的区域范围内的径流。所提出的方法消除了由区域范围内的预定指标导致的偏差。这项研究是在1962年至2016年期间对八个未受损的水流站进行的。首先,获得了对应于500 mbar地势高度,海面温度,500 mbar比湿(SHUM500)和500 mbar U形风(U500)的水流的奇异值分解(SVD)遥相关。其次,非参数地筛选了熟练的SVD远程连接。最后,筛选出的遥相关被用作非线性回归模型(K近邻回归和数据驱动的支持向量机)中的水流预测因子。水文新见识SVD结果确定了现有预定义中未包括的新空间区域索引。非参数模型表明,与其他气候变量相比,SHUM500和U500的遥相关性更好。回归模型能够理解大多数持续的低流量,证明该模型对受干旱影响地区有效。还观察到,所提出的方法在使用预处理的大规模气候变量而不是使用预定指标的情况下显示出更好的预测技能。拟议的研究很简单,但是在提供定性流量预测方面却很可靠,可以帮助水管理者在规划和管理流域时做出与政策相关的决策。

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