MSWEP V3: Machine Learning-Powered Global Precipitation Estimates at 0.1$^\circ$ Hourly Resolution (1979-Present)
Xuetong Wang, Raied S. Alharbi, Oscar M. Baez-Villanueva, Diego G. Miralles, Jun Ma, Shiqin Xu, Matthew F. McCabe, Florian Pappenberger, Albert I.J.M. van Dijk, Tim R. McVicar, Lanka Karthikeyan, Hayley J. Fowler, Ming Pan, Solomon H. Gebrechorkos, Hylke E. Beck

TL;DR
MSWEP V3 is a global, hourly, machine learning-based precipitation dataset from 1979 to present, offering improved accuracy and timeliness for climate and water risk management.
Contribution
This work introduces the first fully global, machine learning-powered precipitation dataset with hourly updates, integrating multiple data sources and gauge corrections for enhanced accuracy.
Findings
MSWEP V3 outperforms other global precipitation products in accuracy.
Baseline model achieves median daily KGE of 0.69, surpassing alternatives.
Gauge correction improves correlation, enhancing reliability.
Abstract
We introduce Version 3 (V3) of the gridded near real-time Multi-Source Weighted-Ensemble Precipitation (MSWEP) product -- the first fully global, historical machine learning powered precipitation (P) dataset, developed to meet the growing demand for timely and accurate P estimates amid escalating climate challenges. MSWEP V3 provides hourly data at 0.1 resolution from 1979 to the present, continuously updated with a latency of approximately two hours. Development follows a two-stage process. First, baseline P fields are generated using machine learning model stacks that integrate satellite- and (re)analysis-based P and air-temperature products, along with static variables. The models are trained using hourly and daily observations from 15,959 P gauges worldwide. Second, these baseline P fields are corrected using daily and monthly gauge observations from 57,666 and 86,000…
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Taxonomy
TopicsClimate variability and models · Meteorological Phenomena and Simulations · Precipitation Measurement and Analysis
