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首页> 外文期刊>Journal of hydrometeorology >Evaluation of GLDAS-1 and GLDAS-2 Forcing Data and Noah Model Simulations over China at the Monthly Scale
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Evaluation of GLDAS-1 and GLDAS-2 Forcing Data and Noah Model Simulations over China at the Monthly Scale

机译:月尺度中国GLDAS-1和GLDAS-2强迫数据评估及Noah模型模拟

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The Global Land Data Assimilation System (GLDAS) is an important data source for global water cycle research. Using ground-based measurements over continental China, the monthly scale forcing data (precipitation and air temperature) during 1979-2010 and model outputs (runoff, water storage, and evapotranspiration) during 2002-10 of GLDAS models [focusing on GLDAS, version 1 (GLDAS-1)/Noah and GLDAS, version 2 (GLDAS-2)/Noah] are evaluated. Results show that GLDAS-1 has serious discontinuity issues in its forcing data, with large precipitation errors in 1996 and large temperature errors during 2000-05. While the bias correction of the GLDAS-2 precipitation data greatly improves temporal continuity and reduces the biases, it makes GLDAS-2 precipitation less correlated with observed precipitation and makes it have larger mean absolute errors than GLDAS-1 precipitation for most months over the year. GLDAS-2 temperature data are superior to GLDAS-1 temperature data temporally and spatially. The results also show that the change rates of terrestrial water storage (TWS) data by GLDAS and the Gravity Recovery and Climate Experiment (GRACE) do not match well in most areas of China, and both GLDAS-1 and GLDAS-2 are not very capable of capturing the seasonal variation in monthly TWS change observed by GRACE. Runoff is underestimated in the exorheic basins over China, and runoff simulations of GLDAS-2 are much more accurate than those of GLDAS-1 for two of the three major river basins of China investigated in this study. Evapotranspiration is overestimated in the exorheic basins in China by both GLDAS-1 and GLDAS-2, whereas the overestimation of evapotranspiration by GLDAS-2 is less than that by GLDAS-1.
机译:全球土地数据同化系统(GLDAS)是全球水循环研究的重要数据来源。使用中国大陆的地面测量数据,分析1979-2010年期间的月尺度强迫数据(降水和气温)以及2002-10年GLDAS模型的模型输出(径流,蓄水和蒸散)[着重于GLDAS,版本1 (GLDAS-1)/ Noah和GLDAS,版本2(GLDAS-2)/ Noah]进行了评估。结果表明,GLDAS-1的强迫数据存在严重的不连续性问题,1996年的降水误差较大,而2000-05年的温度误差较大。虽然GLDAS-2降水量数据的偏差校正大大改善了时间连续性并减少了偏差,但它使GLDAS-2降水量与观测到的降水量之间的相关性降低,并且在一年中的大多数月份中,GLDAS-2降水量均比GLDAS-1降水量具有更大的平均绝对误差。 。 GLDAS-2温度数据在时间和空间上均优于GLDAS-1温度数据。结果还表明,GLADS和重力恢复与气候实验(GRACE)得出的陆地储水(TWS)数据的变化率在中国大部分地区都不太匹配,而且GLDAS-1和GLDAS-2都不很能够捕获GRACE观测到的每月TWS变化的季节性变化。在中国的高流域,径流被低估了,在本研究中,中国三个主要流域中的两个流域,GLDAS-2的径流模拟比GLDAS-1的径流模拟准确得多。 GLDAS-1和GLDAS-2都高估了中国流外盆地的蒸散量,而GLDAS-2的高估了高于GLDAS-1的蒸散量。

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