The Precipitation Inferred from Soil Moisture (PrISM) Near Real-Time Rainfall Product: Evaluation and Comparison

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Pellarin, Thierry and Román Cascón, Carlos and Baron, Christian and Bindlish, Rajat and Brocca, Luca and Camberlin, Pierre and Fernández-Prieto, Diego and Kerr, Yann H. and Massari, Christian and Panthou, Geremy and Perrimond, Benoit and Philippon, Nathalie and Quantin, Guillaume (2020) The Precipitation Inferred from Soil Moisture (PrISM) Near Real-Time Rainfall Product: Evaluation and Comparison. Remote Sensing, 12 (3). p. 481. ISSN 2072-4292

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Official URL: https://doi.org/10.3390/rs12030481



Abstract

Near real-time precipitation is essential to many applications. In Africa, the lack of dense rain-gauge networks and ground weather radars makes the use of satellite precipitation products unavoidable. Despite major progresses in estimating precipitation rate from remote sensing measurements over the past decades, satellite precipitation products still suffer from quantitative uncertainties and biases compared to ground data. Consequently, almost all precipitation products are provided in two modes: a real-time mode (also called early-run or raw product) and a corrected mode (also called final-run, adjusted or post-processed product) in which ground precipitation measurements are integrated in algorithms to correct for bias, generally at a monthly timescale. This paper describes a new methodology to provide a near-real-time precipitation product based on satellite precipitation and soil moisture measurements. Recent studies have shown that soil moisture intrinsically contains information on past precipitation and can be used to correct precipitation uncertainties. The PrISM (Precipitation inferred from Soil Moisture) methodology is presented and its performance is assessed for five in situ rainfall measurement networks located in Africa in semi-arid to wet areas: Niger, Benin, Burkina Faso, Central Africa, and East Africa. Results show that the use of SMOS (Soil Moisture and Ocean Salinity) satellite soil moisture measurements in the PrISM algorithm most often improves the real-time satellite precipitation products, and provides results comparable to existing adjusted products, such as TRMM (Tropical Rainfall Measuring Mission), GPCC (Global Precipitation Climatology Centre) and IMERG (Integrated Multi-satellitE Retrievals for GPM), which are available a few weeks or months after their detection.


Item Type:Article
Uncontrolled Keywords:precipitation; soil moisture; Africa; satellite rainfall products; comparison
Subjects:Sciences > Physics > Atmospheric physics
Sciences > Physics > Meteorology
ID Code:66359
Deposited On:24 Jun 2021 10:43
Last Modified:24 Jun 2021 10:43

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