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Comparison of Hydrologic Model Performance Statistics Using Rain Gauge and NEXRAD Precipitation Input at Different Watershed Spatial Scales and Rainfall Return Frequencies for the Upper St. Johns River, Florida USA

机译:不同流域空间尺度下雨量计和Nexrad降水输入的水文模型性能统计数据的比较及降雨频率为佛罗里达州的上部圣约翰河

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Water resources numerical models are dependent upon various input hydrologic field data. As models become increasingly complex and model simulation times expand, it is critical to understand the inherent value in using different input datasets available. One important category of model input is precipitation data. For hydrologic models, the precipitation data inputs are perhaps the most critical. Common precipitation model input includes either rain gauge or remotely-sensed data such next-generation radar-based (NEXRAD) data. NEXRAD data provides a higher level of spatial resolution than point rain gauge coverage, but is subject to more extensive data pre and post processing along with additional computational requirements. This study first documents the development and initial calibration of a HEC-HMS model of a subtropical watershed in the Upper St. Johns River Basin in Florida, USA. Then, the study compares calibration performance of the same HEC-HMS model using either rain gauge or NEXRAD precipitation inputs. The results are further discretized by comparing key calibration statistics such as Nash–Sutcliffe Efficiency for different spatial scale and at different rainfall return frequencies. The study revealed that at larger spatial scale, the calibration performance of the model was about the same for the two different precipitation datasets while the study showed some benefit of NEXRAD for smaller watersheds. Similarly, the study showed that for smaller return frequency precipitation events, NEXRAD data was superior.
机译:水资源数值模型取决于各种输入水文场数据。由于模型变得越来越复杂并且模型仿真时间展开,因此了解使用可用的不同输入数据集的固有值至关重要。一个重要类型的模型输入是降水数据。对于水文模型,降水数据输入可能是最关键的。公共降水模型输入包括雨量计或远程感测数据,如下一代雷达(Nexrad)数据。 Nexrad数据提供比点雨量覆盖率更高水平的空间分辨率,但受到更广泛的数据预先和后处理以及额外的计算要求。本研究首先于美国佛罗里达州佛罗里达州佛罗里达州上层河流流域亚热带流域HEC-HMS模型的开发和初始校准。然后,该研究比较了使用雨量计或Nexrad降水输入的相同HEC-HMS模型的校准性能。通过比较不同的空间尺度和不同的降雨返回频率,通过比较键校准统计数据等键校准统计数据进一步离散化结果。该研究表明,在较大的空间尺度下,对于两个不同的降水数据集,该模型的校准性能大致相同,而该研究表明Nexrad的较小流域的一些好处。同样,该研究表明,对于较小的回复频率降水事件,Nexrad数据是优越的。

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