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Combining Satellite Infrared and Lightning Information to Estimate Warm-Season Convective and Stratiform Rainfall

机译:结合卫星红外和雷电信息估算暖季对流和层状降雨

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This paper describes and evaluates a satellite rainfall estimation technique that combines infrared and lightning information to estimate precipitation in deep convective systems. The algorithm is developed and tested using seven years (2002-08) of TRMM measurements over the southern United States during the warm season. Lightning information is coupled with a modified IR-based convective-stratiform technique (CST) and produces a lightning-enhanced CST (CSTL). Both the CST and CSTL are then applied to the training (2002-04) and independent (2005-08) datasets. In general, this study shows significant improvement over the IR rainfall estimates (rain area, intensity, and volume) by adding lightning information. The CST and CSTL display critical skill in estimating warm-season precipitation and the performance is very stable. The CST can generally identify the heavy (convective) and light rain regions, while CSTL further identifies convective areas that are missed by CST and removes convective cores that are incorrectly defined by CST. Specifically, the CSTL improves the convective cell detection by 5% and reduces the convective false alarm rate by more than 30%. Similarly, CSTL substantially improves the CST in the overall estimate of instantaneous rainfall rates. For example, when compared with passive microwave estimates, CSTL increases the correlation coefficient by 30%, reduces the bias by 50%, and reduces RMSE by 25%. Both CST and CSTL reproduce the rain area and volume fairly accurately over a region, although both techniques show some degree of overestimation relative to radar estimates.
机译:本文介绍并评估了一种卫星降水估算技术,该技术结合了红外和闪电信息来估算深对流系统中的降水。该算法是在温暖季节使用美国南部的七年(2002-08)TRMM测量结果开发和测试的。雷电信息与改进的基于IR的对流层状技术(CST)结合使用,并产生雷电增强的CST(CSTL)。然后将CST和CSTL都应用于训练(2002-04)和独立(2005-08)数据集。总的来说,这项研究表明,通过增加闪电信息,红外雨量估算值(雨水面积,强度和体积)大大改善。 CST和CSTL在估算暖季降水方面显示出关键技能,并且性能非常稳定。 CST通常可以识别大雨(对流)和小雨区域,而CSTL可以进一步识别CST错过的对流区域,并删除CST错误定义的对流核心。具体而言,CSTL将对流单元检测提高了5%,并将对流虚警率降低了30%以上。同样,CSTL在瞬时降雨率的总体估算中大大提高了CST。例如,与无源微波估计相比,CSTL将相关系数提高了30%,将偏差降低了50%,并将RMSE降低了25%。 CST和CSTL都相当准确地再现了一个地区的降雨面积和雨量,尽管两种技术都显示出相对于雷达估算值的某种程度的高估。

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