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首页> 外文期刊>Journal of Hydrology >Use of statistically and dynamically downscaled atmospheric model output for hydrologic simulations in three mountainous basins in the western United States
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Use of statistically and dynamically downscaled atmospheric model output for hydrologic simulations in three mountainous basins in the western United States

机译:统计和动态缩减的大气模型输出在美国西部三个山区流域的水文模拟中的应用

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This paper examines the hydrologic model performance in three snowmelt-dominated basins in the western United States to dynamically- and statistically downscaled output from the National Centers for Environmental Prediction/National Center for Atmospheric Research Reanalysis (NCEP). Runoff produced using a distributed hydrologic model is compared using daily precipitation and maximum and minimum temperature timeseries derived from the following sources: (1) NCEP output (horizontal grid spacing of approximately 210 km); (2) dynamically downscaled (DDS) NCEP output using a Regional Climate Model (RegCM2, horizontal grid spacing of approximately 52 km); (3) statistically downscaled (SDS) NCEP output; (4) spatially averaged measured data used to calibrate the hydrologic model (Best-Sta) and (5) spatially averaged measured data derived from stations located within the area of the RegCM2 model output used for each basin, but excluding Best-Sta set (All-Sta). In all three basins the SDS-based simulations of daily runoff were as good as runoff produced using the Best-Sta timeseries. The NCEP, DDS, and All-Sta timeseries were able to capture the gross aspects of the seasonal cycles of precipitation and temperature. However, in all three basins, the NCEP-, DDS-, and All-Sta-based simulations of runoff showed little skill on a daily basis. When the precipitation and temperature biases were corrected in the NCEP, DDS, and All-Sta timeseries, the accuracy of the daily runoff simulations improved dramatically, but, with the exception of the bias-corrected All-Sta data set, these simulations were never as accurate as the SDS-based simulations. This need for a bias correction may be somewhat troubling, but in the case of the lame station-timeseries (All-Sta), the bias correction did indeed 'correct' for the change in scale. It is unknown if bias corrections to model output will be valid in a future climate. Future work is warranted to identify the causes for (and removal of) systematic biases in DDS simulations, and improve DDS simulations of daily variability in local climate. Until then, SIDS based simulations of runoff appear to be the safer downscaling choice. Published by Elsevier B.V. [References: 25]
机译:本文研究了美国西部三个融雪为主的盆地的水文模型性能,以动态地和统计地缩减了国家环境预测中心/国家大气研究再分析中心(NCEP)的产出。使用分布式水文模型产生的径流使用每日降水量和以下来源的最高和最低温度时间序列进行比较:(1)NCEP输出(水平网格间距约为210 km); (2)使用区域气候模型(RegCM2,水平网格间距约为52 km)动态缩减(DDS)NCEP输出; (3)统计缩减(SDS)NCEP输出; (4)用于校准水文模型(Best-Sta)的空间平均测量数据,以及(5)从位于每个流域的RegCM2模型输出区域内的测站获得的空间平均测量数据,但不包括Best-Sta集(全站)。在所有三个盆地中,基于SDS的每日径流模拟效果与使用Best-Sta时间序列产生的径流一样好。 NCEP,DDS和All-Sta时间序列能够捕获降水和温度季节性周期的主要方面。但是,在所有三个流域中,基于NCEP,DDS和All-Sta的径流模拟每天都显示很少的技巧。当在NCEP,DDS和All-Sta时间序列中校正了降水和温度偏差时,每日径流模拟的准确性得到了显着提高,但是,除了经过偏差校正的All-Sta数据集之外,这些模拟从未与基于SDS的模拟一样精确。这种偏倚校正的需求可能会有些麻烦,但是在the脚的站时间序列(All-Sta)的情况下,偏倚校正确实确实“校正”了比例尺的变化。尚不确定对模型输出的偏差校正在未来的气候下是否有效。有必要做进一步的工作来确定DDS模拟中系统偏差的原因(和消除原因),并改善DDS模拟中当地气候日变化的情况。在此之前,基于SIDS的径流模拟似乎是更安全的降尺度选择。由Elsevier B.V.发布[参考:25]

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