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Evaluation of anomalies in GLDAS-1996 dataset

机译:GLDAS-1996数据集中的异常评估

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Global Land Data Assimilation System (GLDAS) data are widely used for land-surface flux simulations. Therefore, the simulation accuracy using GLDAS dataset is largely contingent upon the accuracy of the GLDAS dataset. It is found that GLDAS land-surface model simulated runoff exhibits strong anomalies for 1996. These anomalies are investigated by evaluating four GLDAS meteorological forcing data (precipitation, air temperature, downward shortwave radiation and downward longwave radiation) in six large basins across the world (Danube, Mississippi, Yangtze, Congo, Amazon and Murray-Darling basins). Precipitation data from the Global Precipitation Climatology Centre (GPCC) are also compared with GLDAS forcing precipitation data. Large errors and lack of monthly variability in GLDAS-1996 precipitation data are the main sources for the anomalies in the simulated runoff. The impact of the precipitation data on simulated runoff for 1996 is investigated with the Community Atmosphere Biosphere Land Exchange (CABLE) land-surface model in the Yangtze basin, for which area high-quality local precipitation data are obtained from the China Meteorological Administration (CMA). The CABLE model is driven by GLDAS daily precipitation data and CMA daily precipitation, respectively. The simulated daily and monthly runoffs obtained from CMA data are noticeably better than those obtained from GLDAS data, suggesting that GLDAS-1996 precipitation data are not so reliable for land-surface flux simulations.
机译:全球土地数据同化系统(GLDAS)数据被广泛用于地表通量模拟。因此,使用GLDAS数据集的模拟准确性很大程度上取决于GLDAS数据集的准确性。研究发现,GLDAS地表模型模拟的径流在1996年表现出强异常。对这些异常进行了评估,方法是评估全球六个大型盆地中的四个GLDAS气象强迫数据(降水,气温,向下短波辐射和向下长波辐射)(多瑙河,密西西比州,扬子,刚果,亚马逊和墨累达令盆地)。来自全球降水气候中心(GPCC)的降水数据也与GLDAS强迫降水数据进行了比较。 GLDAS-1996年降水量数据的大误差和缺乏月变化性是模拟径流异常的主要来源。利用长江流域的社区大气生物圈土地交换(CABLE)地表模型研究了1996年降水数据对模拟径流的影响,该地区的高质量本地降水数据来自中国气象局(CMA)。 )。 CABLE模型分别由GLDAS日降水量数据和CMA日降水量驱动。从CMA数据获得的模拟日径流量和月径流量均明显优于从GLDAS数据获得的径流量,这表明GLDAS-1996年降水量数据对于地表通量模拟而言并不那么可靠。

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