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首页> 外文期刊>Hydrology and Earth System Sciences >Physically based distributed hydrological model calibration based on a short period of streamflow data: case studies in four Chinese basins
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Physically based distributed hydrological model calibration based on a short period of streamflow data: case studies in four Chinese basins

机译:基于短期流量数据的基于物理的分布式水文模型校准:中国四个盆地的案例研究

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Physically based distributed hydrological models are widely used for hydrological simulations in various environments. As with conceptual models, they are limited in data-sparse basins by the lack of streamflow data for calibration. Short periods of observational data (less than 1?year) may be obtained from fragmentary historical records of previously existing gauging stations or from temporary gauging during field surveys, which might be of value for model calibration. However, unlike lumped conceptual models, such an approach has not been explored sufficiently for physically based distributed models. This study explored how the use of limited continuous daily streamflow data might support the application of a physically based distributed model in data-sparse basins. The influence of the length of the observation period on the calibration of the widely applied soil and water assessment tool model was evaluated in four Chinese basins with differing climatic and geophysical characteristics. The evaluations were conducted by comparing calibrations based on short periods of data with calibrations based on data from a 3-year period, which were treated as benchmark calibrations of the four basins, respectively. To ensure the differences in the model simulations solely come from differences in the calibration data, the generalized likelihood uncertainty analysis scheme was employed for the automatic calibration and uncertainty analysis. In the four basins, contrary to the common understanding of the need for observations over a period of several years, data records with lengths of less than 1?year were shown to calibrate the model effectively, i.e., performances similar to the benchmark calibrations were achieved. The models of the wet Jinjiang and Donghe basins could be effectively calibrated using a shorter data record (1?month), compared with the dry Heihe and upstream Yalongjiang basins (6?months). Even though the four basins are very different, when using 1-year or 6-month (covering a whole dry season or rainy season) data, the results show that data from wet seasons and wet years are generally more reliable than data from dry seasons and dry years, especially for the two dry basins. The results demonstrated that this idea could be a promising approach to the problem of calibration of physically based distributed hydrological models in data-sparse basins, and findings from the discussion in this study are valuable for assessing the effectiveness of short-period data for model calibration in real-world applications.
机译:基于物理的分布式水文模型被广泛用于各种环境中的水文模拟。与概念模型一样,由于缺乏用于校准的流量数据,它们在数据稀疏的盆地中受到限制。短期的观测数据(少于1年)可以从以前存在的测量站的零碎历史记录中获得,也可以从现场调查期间的临时测量中获得,这可能对模型校准很有用。但是,与集总的概念模型不同,对于基于物理的分布式模型,尚未充分探索这种方法。这项研究探索了如何使用有限的连续日流量数据来支持基于物理的分布式模型在数据稀疏盆地中的应用。在四个气候和地球物理特征不同的中国盆地中,评估了观测期长度对广泛应用的水土评估工具模型校准的影响。评估是通过将基于短期数据的校准与基于三年周期数据的校准进行比较来进行的,这些数据分别作为四个盆地的基准校准。为了确保模型仿真中的差异仅来自校准数据中的差异,采用了广义似然不确定性分析方案进行自动校准和不确定性分析。在这四个盆地中,与对多年观察需求的普遍理解相反,显示长度小于1年的数据记录可以有效地校准模型,即获得了与基准校准相似的性能。 。与干旱的黑河盆地和上游的亚龙江盆地(6个月)相比,使用较短的数据记录(1个月)可以有效地校正晋江和东河盆地的模型。即使四个流域有很大不同,使用1年或6个月(涵盖整个干旱季节或雨季)的数据时,结果也显示,雨季和雨季的数据通常比旱季的数据更可靠。和干旱年份,尤其是两个干旱盆地。结果表明,该想法可能是解决数据稀疏盆地中基于物理的分布式水文模型校正问题的有前途的方法,并且本研究中的讨论结果对于评估短期数据对模型校正的有效性是有价值的在实际应用中。

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