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Evaluation of high-resolution satellite precipitation products using rain gauge observations over the Tibetan Plateau

机译:利用青藏高原雨量计观测评估高分辨率卫星降水产品

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High-resolution satellite precipitation products are very attractive for studying the hydrologic processes in mountainous areas where rain gauges are generally sparse. Four high-resolution satellite precipitation products are evaluated using gauge measurements over different climate zones of the Tibetan Plateau (TP) within a 6 yr period from 2004 to 2009. The four satellite-based precipitation data sets are: Tropical Rainfall Measuring Mission (TRMM) Multisatellite Precipitation Analysis 3B42 version 6 (TMPA) and its Real Time version (TMPART), Climate Prediction Center Morphing Technique (CMOPRH) and Precipitation Estimation from Remotely Sensed Information using Artificial Neural Network (PERSIANN). TMPA and CMORPH, with higher correlation coefficients and lower root mean square errors (RMSEs), show overall better performance than PERSIANN and TMPART. TMPA has the lowest biases among the four precipitation data sets, which is likely due to the correction process against the monthly gauge observations from global precipitation climatology project (GPCP). TMPA also shows large improvement over TMPART, indicating the importance of gauge-based correction on accuracy of rainfall. The four products show better agreement with gauge measurements over humid regions than that over arid regions where correlation coefficients are less than 0.5. Moreover, the four precipitation products generally tend to overestimate light rainfall (0–10 mm) and underestimate moderate and heavy rainfall (>10 mm). Moreover, this study extracts 24 topographic variables from a DEM (digital elevation model) and uses a linear regression model to explore the bias–topography relationship. Results show that biases of TMPA and CMORPH present weak dependence on topography. However, biases of TMPART and PERSIANN present dependence on topography and variability of elevation and surface roughness plays important roles in explaining their biases.
机译:高分辨率卫星降水产品对于研究通常雨量稀少的山区的水文过程非常有吸引力。在2004年至2009年的6年中,使用青藏高原(TP)不同气候带的量规测量,对四种高分辨率卫星降水产品进行了评估。这四种基于卫星的降水数据集是:热带降雨测量任务(TRMM)多卫星降水分析3B42第6版(TMPA)及其实时版本(TMPART),气候预测中心变形技术(CMOPRH)和使用人工神经网络(PERSIANN)的遥感信息中的降水估算。具有较高的相关系数和较低的均方根误差(RMSE)的TMPA和CMORPH显示出总体上优于PERSIANN和TMPART的性能。在四个降水数据集中,TMPA的偏差最低,这很可能是由于对全球降水气候学项目(GPCP)的月度观测值进行校正的过程。 TMPA还显示出比TMPART更大的改进,表明基于雨量计的校正对降雨精度的重要性。与在相关系数小于0.5的干旱地区相比,这四种产品在湿润地区的仪表测量结果显示出更好的一致性。此外,这四种降水产物通常倾向于高估轻降雨(0-10 mm),而低估中重降雨(> 10 mm)。此外,本研究从DEM(数字高程模型)中提取了24个地形变量,并使用线性回归模型来探索偏倚-地形关系。结果表明,TMPA和CMORPH的偏倚表现出对地形的弱依赖性。但是,TMPART和PERSIANN的偏差目前取决于地形,而高程和表面粗糙度的变化在解释它们的偏差方面起着重要作用。

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