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SM2RAIN–ASCAT (2007–2018): global daily satellite rainfall data from ASCAT soil moisture observations

机译:SM2RAIN-ASCAT(2007-2018):来自ASCAT土壤水分观测的全球日常卫星降雨数据

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摘要

Long-term gridded precipitation products are crucial for several applications in hydrology, agriculture and climate sciences. Currently available precipitation products suffer from space and time inconsistency due to the non-uniform density of ground networks and the difficulties in merging multiple satellite sensors. The recent “bottom-up” approach that exploits satellite soil moisture observations for estimating rainfall through the SM2RAIN (Soil Moisture to Rain) algorithm is suited to build a consistent rainfall data record as a single polar orbiting satellite sensor is used. Here we exploit the Advanced SCATterometer (ASCAT) on board three Meteorological Operational (MetOp) satellites, launched in 2006, 2012, and 2018, as part of the European Organisation for the Exploitation of Meteorological Satellites (EUMETSAT) Polar System programme. The continuity of the scatterometer sensor is ensured until the mid-2040s through the MetOp Second Generation Programme. Therefore, by applying the SM2RAIN algorithm to ASCAT soil moisture observations, a long-term rainfall data record will be obtained, starting in 2007 and lasting until the mid-2040s. The paper describes the recent improvements in data pre-processing, SM2RAIN algorithm formulation, and data post-processing for obtaining the SM2RAIN–ASCAT quasi-global (only over land) daily rainfall data record at a 12.5 km spatial sampling from 2007 to 2018. The quality of the SM2RAIN–ASCAT data record is assessed on a regional scale through comparison with high-quality ground networks in Europe, the United States, India, and Australia. Moreover, an assessment on a global scale is provided by using the triple-collocation (TC) technique allowing us also to compare these data with the latest, fifth-generation European Centre for Medium-Range Weather Forecasts (ECMWF) reanalysis (ERA5), the Early Run version of the Integrated Multi-Satellite Retrievals for Global Precipitation Measurement (IMERG), and the gauge-based Global Precipitation Climatology Centre (GPCC) products. Results show that the SM2RAIN–ASCAT rainfall data record performs relatively well at both a regional and global scale, mainly in terms of root mean square error (RMSE) when compared to other products. Specifically, the SM2RAIN–ASCAT data record provides performance better than IMERG and GPCC in data-scarce regions of the world, such as Africa and South America. In these areas, we expect larger benefits in using SM2RAIN–ASCAT for hydrological and agricultural applications. The limitations of the SM2RAIN–ASCAT data record consist of the underestimation of peak rainfall events and the presence of spurious rainfall events due to high-frequency soil moisture fluctuations that might be corrected in the future with more advanced bias correction techniques. The SM2RAIN–ASCAT data record is freely available at https://doi.org/10.5281/zenodo.3405563 (Brocca et al., 2019) (recently extended to the end of August 2019).
机译:长期网格沉淀产品对于水文,农业和气候科学的几种应用至关重要。目前可用的降水量由于地面网络的不均匀密度和合并多个卫星传感器的困难而遭受空间和时间不一致。最近利用卫星土壤水分观察的“自下而上”方法通过SM2RAIN(土壤水分对雨水)估算降雨量估算算法,适用于使用一致的降雨数据记录,因为使用单个极性轨道卫星传感器。在这里,我们在2006年,2012年和2018年推出的三个气象操作(Metop)卫星上的先进散射仪(Qualtat),作为欧洲剥削气象卫星(Eumetsat)极性系统计划的欧洲组织的一部分。通过Metop第二代程序确保散射计传感器的连续性直到20世纪40年代中期。因此,通过将SM2RAIN算法应用于ASCAT土壤水分观察,将获得长期降雨数据记录,从2007年开始,持续到20世纪40年代中期。本文介绍了最近数据预处理,SM2RAIN算法制定和数据后处理的最新改进,以获得从2007年至2018年的12.5公里的空间采样中获得SM2Rain-Actat准全球(仅限土地)日降雨数据记录。通过与欧洲,美国,印度和澳大利亚的高质量地面网络进行比较,在区域规模上评估SM2RAIN-ASCAT数据记录的质量。此外,使用三重搭配(TC)技术提供了对全球范围的评估,允许我们使用最新的第五代欧洲的中距离天气预报(ECMWF)重新分析(ERA5)进行比较这些数据,全球降水测量(IMERG)集成的多卫星检索的早期运行版本,以及基于仪表的全球降水气候中心(GPCC)产品。结果表明,与其他产品相比,SM2Rain-ASCAT降雨数据记录主要以区域和全球规模相对较好地执行相对较好的。具体而言,SM2Rain-ASCAT数据记录在世界数据稀缺地区的IMERG和GPCC中提供性能,例如非洲和南美洲。在这些领域,我们预计使用SM2Rain-Ascat进行水文和农业应用的更大益处。 SM2RAIN-ASCAT数据记录的局限性包括低估峰降雨事件的最低峰值,以及由于未来可能纠正的高频土壤湿度波动导致的杂散降雨事件的存在,具有更先进的偏置校正技术。 SM2Rain-ascat数据记录在https://doi.org/10.5281/zenodo.3405563(Brocca等,2019)(最近延长到2019年8月底)。

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