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Validation of a global satellite rainfall product for real time monitoring of meteorological extremes

机译:验证全球卫星降雨产品,用于实时监测气象极端

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The real time monitoring of storms is important for the management and prevention of flood risks. However, in the southeast of Spain, it seems that the density of the rain gauge network may not be sufficient to adequately characterize the rainfall spatial distribution or the high rainfall intensities that are reached during storms. Satellite precipitation products such as PERSIANN-CCS (Precipitation Estimation from Remotely Sensed Information using Artificial Neural Networks - Cloud Classification System) could be used to complement the automatic rain gauge networks and so help solve this problem. However, the PERSIANN-CCS product has only recently become available, so its operational validity for areas such as south-eastern Spain is not yet known. In this work, a methodology for the hourly validation of PERSIANN-CCS is presented. We used the rain gauge stations of the SIAM (Sistema de Information Agraria de Murcia) network to study three storms with a very high return period. These storms hit the east and southeast of the Iberian Peninsula and resulted in the loss of human life, major damage to agricultural crops and a strong impact on many different types of infrastructure. The study area is the province of Murcia (Region of Murcia), located in the southeast of the Iberian Peninsula, covering an area of more than 11,000 km~2 and with a population of almost 1.5 million. In order to validate the PERSIANN-CCS product for these three storms, contrasts were made with the hyetographs registered by the automatic rain gauges, analyzing statistics such as bias, mean square difference and Pearson's correlation coefficient. Although in some cases the temporal distribution of rainfall was well captured by PERSIANN-CCS, in several rain gauges high intensities were not properly represented. The differences were strongly correlated with the rain gauge precipitation, but not with satellite-obtained rainfall. The main conclusion concerns the need for specific local calibration for the study area if PERSIANN-CCS is to be used as an operational tool for the monitoring of extreme meteorological phenomena.
机译:风暴的实时监测对于管理和预防洪水风险非常重要。然而,在西班牙东南部,雨量仪网络的密度可能不足以充分表征降雨空间分布或风暴期间达到的高降雨强度。卫星降水产品如Persiann-CCS(使用人工神经网络 - 云分类系统的远程感测信息的降水估计)可用于补充自动雨量网络,因此帮助解决这个问题。然而,Persiann-CCS产品最近只有可用,因此西班牙东南部等地区的运作有效性尚不清楚。在这项工作中,介绍了Persiann-CCS每小时验证的方法。我们使用了暹罗(Sistema de Information Agraria de Murcia)网络的雨量仪站,以研究三个风暴,返回时期非常高。这些风暴袭击了伊比利亚半岛的东部和东南,导致人类生命失去,对农业作物的重大损害以及对许多不同类型的基础设施产生强烈影响。研究区是穆尔西亚(穆尔西亚地区),位于伊比利亚半岛东南部,占地面积超过11000公里〜2,人口近150万。为了验证这三种风暴的Persiann-CCS产品,对自动雨量记录的杂记图进行了对比,分析偏差,均方差异和Pearson的相关系数等统计数据。虽然在某些情况下,普遍存在的降雨量的时间分布很好地捕获,但在几个雨量仪表中,高强度没有适当地代表。差异与雨量测量沉淀强烈相关,但没有卫星获得的降雨。主要结论涉及研究区域的特定局部校准,如果Persiann-CCS将被用作监测极端气象现象的操作工具。

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