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首页> 外文期刊>Journal of hydrometeorology >The Influence of Surface and Precipitation Characteristics on TRMM Microwave Imager Rainfall Retrieval Uncertainty
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The Influence of Surface and Precipitation Characteristics on TRMM Microwave Imager Rainfall Retrieval Uncertainty

机译:表面和降水特征对TRMM微波成像仪降雨反演不确定度的影响

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Characterization of the error associated with quantitative precipitation estimates (QPEs) from spaceborne passive microwave (PMW) sensors is important for a variety of applications ranging from flood forecasting to climate monitoring. This study evaluates the joint influence of precipitation and surface characteristics on the error structure of NASA's Tropical Rainfall Measurement Mission (TRMM) Microwave Imager (TMI) surface QPE product (2A12). TMI precipitation products are compared with high-resolution reference precipitation products obtained from the NOAA/NSSL ground radar-based Multi-Radar Multi-Sensor (MRMS) system. Surface characteristics were represented via a surface classification dataset derived from NASA's Moderate Resolution Imaging Spectroradiometer (MODIS). This study assesses the ability of 2A12 to detect, classify, and quantify precipitation at its native resolution for the 2011 warm season (March-September) over the southern continental United States. Decreased algorithm performance is apparent over dry and sparsely vegetated regions, a probable result of the surface radiation signal mimicking the scattering signature associated with frozen hydrometeors. Algorithm performance is also shown to be positively correlated with precipitation coverage over the sensor footprint. The algorithm also performs better in pure stratiform and convective precipitation events, compared to events containing a mixture of stratiform and convective precipitation within the footprint. This possibly results from the high spatial gradients of precipitation associated with these events and an underrepresentation of such cases in the retrieval database. The methodology and framework developed herein apply more generally to precipitation estimates from other passive microwave sensors on board low-Earth-orbiting satellites and specifically could be used to evaluate PMW sensors associated with the recently launched Global Precipitation Measurement (GPM) mission.
机译:与星载无源微波(PMW)传感器的定量降水估计(QPE)相关的误差的表征对于从洪水预报到气候监测的各种应用都很重要。这项研究评估了降水和地表特征对NASA热带雨量测量任务(TRMM)微波成像仪(TMI)地表QPE产品(2A12)的误差结构的共同影响。将TMI降水产品与从基于NOAA / NSSL地面雷达的多雷达多传感器(MRMS)系统获得的高分辨率参考降水产品进行比较。表面特征通过NASA中分辨率成像光谱仪(MODIS)得出的表面分类数据集表示。这项研究评估了2A12在美国南部大陆2011年暖季(3月至9月)以其原始分辨率检测,分类和定量降水的能力。在干燥和植物稀疏的地区,算法性能的下降很明显,这可能是表面辐射信号模仿了与冷冻水凝物相关的散射特征的结果。算法性能也显示与传感器覆盖范围内的降水覆盖率呈正相关。与在足迹内包含层状和对流降水混合的事件相比,该算法在纯层状和对流降水事件中也表现更好。这可能是由于与这些事件相关的降水的高空间梯度,以及这种情况在检索数据库中的代表性不足。本文开发的方法和框架更普遍地适用于来自低地球轨道卫星上其他被动微波传感器的降水估计,并且特别可以用于评估与最近启动的全球降水测量(GPM)任务相关的PMW传感器。

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