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Enhanced streamflow prediction with SWAT using support vector regression for spatial calibration: A case study in the Illinois River watershed, U.S.

机译:使用SWAT使用支持向量回归用于空间校准的SWAT增强的流流预测:美国伊利诺伊河流域的案例研究,美国

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Accurate streamflow prediction plays a pivotal role in hydraulic project design, nonpoint source pollution estimation, and water resources planning and management. However, the highly non-linear relationship between rainfall and runoff makes prediction difficult with desirable accuracy. To improve the accuracy of monthly streamflow prediction, a seasonal Support Vector Regression (SVR) model coupled to the Soil and Water Assessment Tool (SWAT) model was developed for 13 subwatersheds in the Illinois River watershed (IRW), U.S. Terrain, precipitation, soil, land use and land cover, and monthly streamflow data were used to build the SWAT model. SWAT Streamflow output and the upstream drainage area were used as two input variables into SVR to build the hybrid SWAT-SVR model. The Calibration Uncertainty Procedure (SWAT-CUP) and Sequential Uncertainty Fitting-2 (SUFI-2) algorithms were applied to compare the model performance against SWAT-SVR. The spatial calibration and leave-one-out sampling methods were used to calibrate and validate the hybrid SWAT-SVR model. The results showed that the SWAT-SVR model had less deviation and better performance than SWAT-CUP simulations. SWAT-SVR predicted streamflow more accurately during the wet season than the dry season. The model worked well when it was applied to simulate medium flows with discharge between 5 m 3 s -1 and 30 m 3 s -1 , and its applicable spatial scale fell between 500 to 3000 km 2 . The overall performance of the model on yearly time series is “Satisfactory”. This new SWAT-SVR model has not only the ability to capture intrinsic non-linear behaviors between rainfall and runoff while considering the mechanism of runoff generation but also can serve as a reliable regional tool for an ungauged or limited data watershed that has similar hydrologic characteristics with the IRW.
机译:精确的流流预测在液压项目设计,非点源污染估算和水资源规划和管理中起着关键作用。然而,降雨和径流之间的高度线性关系使得具有所需的精度困难。为了提高月流流出预测的准确性,为伊利诺伊州河流流域(IRW),美国地形,降水,土壤中的13个副水域开发了一种季节性支持向量(SVR)模型(SWAT)模型(SWAT)模型。 ,土地使用和陆地覆盖以及每月流流数据用于构建SWAT模型。 SWAT流流输出和上游排水区用作两个输入变量进入SVR以构建混合动力SWAT-SVR模型。校准不确定程序(SWAT杯)和顺序不确定性配合-2(SUFI-2)算法被应用于比较SWAT-SVR的模型性能。空间校准和休留一次采样方法用于校准并验证混合动力SWAT-SVR模型。结果表明,SWAT-SVR模型的偏差较小,性能比SWAT-CUP模拟更少。 SWAT-SVR在潮湿的季节比旱季更准确地预测流流。当施加到5米3 S -1和30m 3 S -1之间的放电时,该模型效果很好,并且其适用的空间尺度在500至3000公里处。模型在年度时间序列的整体性能是“令人满意”。这种新的SWAT-SVR模型不仅可以在考虑径流发电机制而捕获降雨和径流之间的内在非线性行为的能力,而且可以作为具有类似水文特征的未吞并或有限的数据流域的可靠区域工具用伊斯尔。

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