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首页> 外文期刊>Journal of the American Water Resources Association >CONSTRAINING SWAT CALIBRATION WITH REMOTELY SENSED EVAPOTRANSPIRATION DATA
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CONSTRAINING SWAT CALIBRATION WITH REMOTELY SENSED EVAPOTRANSPIRATION DATA

机译:通过远程传感蒸发蒸腾数据来约束拍打校准

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Historically, many watershed studies have been based on using the streamflow flux, typically from a single gauge at the basin's outlet, to support calibration. In this setting, there is great potential for equifinality of parameters during the optimization process, especially for parameters that are not directly related to streamflow. Therefore, some of the optimal parameter values achieved during the autocalibration process may be physically unrealistic. In recent decades a vast array of data from land surface models and remote sensing platforms can help to constrain hydrologic fluxes such as evapotranspiration (ET). While the spatial resolution of these ancillary datasets varies, the continuous spatial coverage of these gridded datasets provides flux measurements across the entire basin, in stark contrast to point-based streamflow data. This study uses Global Land Evaporation: the Amsterdam Model data to constrain Soil and Water Assessment Tool parameter values associated with ET to a more physically realistic range. The study area is the Little Washita River Experimental Watershed, in southern Oklahoma. Traditional objective metrics such as the Nash-Sutcliffe coefficients record no performance improvement after application of this method. However, there is a dramatic increase in the number of days with receding flow where simulations match observed streamflow.
机译:从历史上看,许多分水岭研究都基于使用流量通量(通常来自盆地出口处的单个标尺)来支持标定。在这种情况下,最有可能在优化过程中实现参数的均等性,尤其是对于与流量无关的参数。因此,在自动校准过程中获得的一些最佳参数值可能在物理上是不现实的。近几十年来,来自陆地表面模型和遥感平台的大量数据可以帮助限制水文通量,例如蒸散量(ET)。尽管这些辅助数据集的空间分辨率有所不同,但这些网格化数据集的连续空间覆盖范围提供了整个盆地的通量测量,这与基于点的流量数据形成了鲜明的对比。本研究使用“全球土地蒸发:阿姆斯特丹模型”数据将与ET相关的土壤和水评估工具参数值限制在一个更实际的范围内。研究区域是俄克拉荷马州南部的小华盛顿河实验流域。应用此方法后,传统的客观指标(如Nash-Sutcliffe系数)记录不到性能改进。但是,随着模拟结果与观测到的流量相匹配,流量减少的天数显着增加。

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