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Saudi Rainfall (SaRa): hourly 0.1° gridded rainfall (1979–present) for Saudi Arabia via machine learning fusion of satellite and model data
by
Abid, Muhammad A.
, Green, Amy
, Van Dijk, Albert I. J. M.
, Wang, Xuetong
, Alharbi, Raied S.
, Beck, Hylke E.
, McCabe, Matthew F.
, Wada, Yoshihide
, Baez-Villanueva, Oscar M.
in
Bias
/ Climate change
/ Flood control
/ Flood management
/ Floods
/ Gauges
/ Hourly rainfall
/ Hydrologic models
/ Latency
/ Learning algorithms
/ Machine learning
/ Median (statistics)
/ Neural networks
/ New products
/ Peninsulas
/ Performance evaluation
/ Precipitation
/ Rainfall
/ Real time
/ Satellites
/ Training
/ Water resources
2025
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Saudi Rainfall (SaRa): hourly 0.1° gridded rainfall (1979–present) for Saudi Arabia via machine learning fusion of satellite and model data
by
Abid, Muhammad A.
, Green, Amy
, Van Dijk, Albert I. J. M.
, Wang, Xuetong
, Alharbi, Raied S.
, Beck, Hylke E.
, McCabe, Matthew F.
, Wada, Yoshihide
, Baez-Villanueva, Oscar M.
in
Bias
/ Climate change
/ Flood control
/ Flood management
/ Floods
/ Gauges
/ Hourly rainfall
/ Hydrologic models
/ Latency
/ Learning algorithms
/ Machine learning
/ Median (statistics)
/ Neural networks
/ New products
/ Peninsulas
/ Performance evaluation
/ Precipitation
/ Rainfall
/ Real time
/ Satellites
/ Training
/ Water resources
2025
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Saudi Rainfall (SaRa): hourly 0.1° gridded rainfall (1979–present) for Saudi Arabia via machine learning fusion of satellite and model data
by
Abid, Muhammad A.
, Green, Amy
, Van Dijk, Albert I. J. M.
, Wang, Xuetong
, Alharbi, Raied S.
, Beck, Hylke E.
, McCabe, Matthew F.
, Wada, Yoshihide
, Baez-Villanueva, Oscar M.
in
Bias
/ Climate change
/ Flood control
/ Flood management
/ Floods
/ Gauges
/ Hourly rainfall
/ Hydrologic models
/ Latency
/ Learning algorithms
/ Machine learning
/ Median (statistics)
/ Neural networks
/ New products
/ Peninsulas
/ Performance evaluation
/ Precipitation
/ Rainfall
/ Real time
/ Satellites
/ Training
/ Water resources
2025
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Saudi Rainfall (SaRa): hourly 0.1° gridded rainfall (1979–present) for Saudi Arabia via machine learning fusion of satellite and model data
Journal Article
Saudi Rainfall (SaRa): hourly 0.1° gridded rainfall (1979–present) for Saudi Arabia via machine learning fusion of satellite and model data
2025
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Overview
We introduce Saudi Rainfall (SaRa), a gridded historical and near-real-time precipitation (P) product specifically designed for the Arabian Peninsula, one of the most arid, water-stressed, and data-sparse regions on Earth. The product has an hourly 0.1° resolution spanning 1979 to the present and is continuously updated with a latency of less than 2 h. The algorithm underpinning the product involves 18 machine learning model stacks trained for different combinations of satellite and (re)analysis P products along with several static predictors. As a training target, hourly and daily P observations from gauges in Saudi Arabia (n = 113) and globally (n = 14 256) are used. To evaluate the performance of SaRa, we carried out the most comprehensive evaluation of gridded P products in the region to date, using observations from independent gauges (randomly excluded from training) in Saudi Arabia as a reference (n = 119). Among the 20 evaluated P products, our new product, SaRa, consistently ranked first across all evaluation metrics, including the Kling–Gupta efficiency (KGE), correlation, bias, peak bias, wet-day bias, and critical success index. Notably, SaRa achieved a median KGE – a summary statistic combining correlation, bias, and variability – of 0.36, while widely used non-gauge-based products such as CHIRP, ERA5, GSMaP V8, and IMERG-L V07 achieved values of −0.07, 0.21, −0.13, and −0.39, respectively. SaRa also outperformed four gauge-based products such as CHIRPS V2, CPC Unified, IMERG-F V07, and MSWEP V2.8 which had median KGE values of 0.17, −0.03, 0.29, and 0.20, respectively. Our new P product – available at https://www.gloh2o.org/sara (last access: 24 September 2025) – addresses a crucial need in the Arabian Peninsula, providing a robust and reliable dataset to support hydrological modeling, water resource assessments, flood management, and climate research.
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