Abstract

This study evaluated the suitability of the latest retrospective Integrated Multi-satellitE Retrievals for Global Precipitation Measurement V06 (IMERG) Final Run product with a relatively long period (beginning from June 2000) for drought monitoring over mainland China. First, the accuracy of IMERG was evaluated by using observed precipitation data from 807 meteorological stations at multiple temporal (daily, monthly, and yearly) and spatial (pointed and regional) scales. Second, the IMERG-based standardized precipitation index (SPI) was validated and analyzed through statistical indicators. Third, a light–extreme–light drought-event process was adopted as the case study to dissect the latent performance of IMERG-based SPI in capturing the spatiotemporal variation of drought events. Our results demonstrated a sufficient consistency and small error of the IMERG precipitation data against the gauge observations with the regional mean correlation coefficient (CC) at the daily (0.7), monthly (0.93), and annual (0.86) scales for mainland China. The IMERG possessed a strong capacity for estimating intra-annual precipitation changes; especially, it performed well at the monthly scale. There was a strong agreement between the IMERG-based SPI values and gauge-based SPI values for drought monitoring in most regions in China (with CCs above 0.8). In contrast, there was a comparatively poorer capability and notably higher heterogeneity in the Xinjiang and Qinghai-Tibet Plateau regions with more widely varying statistical metrics. The IMERG featured the advantage of satisfactory spatiotemporal accuracy in terms of depicting the onset and extinction of representative drought disasters for specific consecutive months. Furthermore, the IMERG has obvious drought monitoring abilities, which was also complemented when compared with the Precipitation Estimation from the Remotely Sensed Information using Artificial Neural Networks Climate Data Record (PERSIANN-CDR), Climate Hazards Group Infrared Precipitation with Stations (CHIRPS), and Tropical Rainfall Measuring Mission Multi-satellite Precipitation Analysis (TMPA) 3B42V7. The outcomes of this study demonstrate that the retrospective IMERG can provide a more competent data source and potential opportunity for better drought monitoring utility across mainland China, particularly for eastern China.

Highlights

  • Drought, with its complexity, destructiveness, universality, and extensive influence, is one of the most common natural disasters

  • The Palmer drought severity index (PDSI) and standardized precipitation evapotranspiration index (SPEI) are available to reflect the impact of global warming on drought [20,27,34,35], while they may introduce some impacts of other data sets when only evaluating the usability of satellite precipitation products (SPPs) for drought monitoring

  • The CCs of R1−R6 and mainland China are greater than 0.7, while the CC is 0.52 in R7 where there is less annual precipitation, and 0.64 in R8 where Rthemeroete iSsenas.h2i0g2h0,e1r2,axltFitOuRdPeE.ETRhReERVIMEWSEs are large in eastern China with heavy precipitation (i.e., R7MofS2E1 pofre1c0i.p2itmatmio/nda(iy.ei.n, RRM4)S,Eanodf 1m0.u2cmh msm/daallyerininRr4e)g, aionndsmwuitchhlsemssapllreerciinpirteagtiioonn,sewspitehcilaesllsyptrheeciRpMitaStEioonf, 1eIoM.sb8ps1EeeRmcrviGameldl/pydpratorhyedeciuniRpctRiMt7aaS.gtiEaRoinenogfsdat1art.dt8hai1enisgmontbmhesaee/rdrRvtaBheye,daionpsburRleiffiq7c.uicpReiiete(na4gtt5aip◦or)donliiinndntgaegtt(aahFteihigseRurnriBnee,ag2ar)f,ostahurlefttfhhioceobiueIlMgniqhtEuptRehoGe(i4nIp5tMr°go)EadlRtiuhnGceetrmia(nFgogiadgifeunorrsraetttte2hhl)yee, aolvtehroeusgtihmtahteesItMheERprGecmipoitdaetiroante(lRyBovbeelroewstim11a.7te%s)tahnedpnreegcilpigitiabtliyonun(dReBrebsetilmowate1s1.i7n%R)7a(nRdB noefg−li0g.6ib%ly)

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Summary

Introduction

With its complexity, destructiveness, universality, and extensive influence, is one of the most common natural disasters. In order to conduct a high-precision digital assessment and monitoring regarding the drought evolution process from onset to extinction, it is necessary to establish drought indices according to regional characteristics and to gather high-precision natural variable data, e.g., hydrology and meteorological data [3,6,7,20,21,22,23]. These indices and datasets can serve as valuable references for managing water resources, forewarning drought/flood disasters, and decreasing agricultural losses.

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