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Monitoring hydrological drought using long-term satellite-based precipitation data

机译:使用基于卫星的长期降水数据监测水文干旱

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Long-term (over 30a) satellite-based quantitative rainfall estimate (SRE) products provide an ideal data source for hydrological drought monitoring. This study mainly explores the suitability of the two long-term SREs, the Precipitation Estimation from Remotely Sensed Information using Artificial Neural Networks-Climate Data Record (PERSIANN-CDR) and the Climate Hazards Group (CHG) Infrared Precipitation with Stations (CHIRPS), for hydrological drought monitoring. A hydrological drought index called the standardized streamflow index (SSI) was used as an example and the Grid-based Xinanjiang (GXAJ) hydrological model was used for strearnflow generation of the SREs. A middle size basin in the humid region of south China was selected as case study. The obtained results show that both SREs present acceptable performances for hydrological modeling, and CHIRPS outperformed PERSIANN-CDR. SSIs calculated by the SRE simulations generally fit well with the trend of observation-based on SSI but apparent deviations in drought intensity were also found. In contrast to hydrological modeling, performance of the SRE-based SSI showed almost no change after model recalibration. Both SREs generally present acceptable classification accuracy but tended to underestimate the levels of drought types. Both SREs accurately captured the beginning, end, and duration of this drought event; however, several deviations were found in severity and intensity estimation of the drought event. In general, both SREs are suitable for hydrological drought monitoring. Although the CHIRPS generally presented better performance, the PERSIANN-CDR is still adequate for hydrological drought monitoring. (C) 2018 Elsevier B.V. All rights reserved.
机译:基于卫星的长期(超过30a)定量降雨估计(SRE)产品为水文干旱监测提供了理想的数据源。这项研究主要探讨了两种长期SRE的适用性,即使用人工神经网络-气候数据记录(PERSIANN-CDR)和气候危害小组(CHG)的站外红外降水(CHIRPS)来自遥感信息的降水估计,用于水文干旱监测。以水文干旱指数为标准流指数(SSI)为例,基于网格的新安江(GXAJ)水文模型用于SREs的强流生成。选择了中国南方湿润地区中型盆地作为案例研究。获得的结果表明,两种SRE都具有可接受的水文模拟性能,CHIRPS的性能优于PERSIANN-CDR。通过SRE模拟计算得出的SSI通常与基于SSI的观测趋势非常吻合,但也发现干旱强度存在明显偏差。与水文建模相反,基于SRE的SSI的性能在模型重新校准后几乎没有变化。两种SRE通常都具有可接受的分类精度,但往往低估了干旱类型的水平。两个SRE都准确地记录了干旱事件的开始,结束和持续时间。但是,在干旱事件的严重程度和强度估计中发现了一些偏差。通常,两个SRE都适合进行水文干旱监测。尽管CHIRPS通常表现出更好的性能,但PERSIANN-CDR仍然足以进行水文干旱监测。 (C)2018 Elsevier B.V.保留所有权利。

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