Fusion of multi-source precipitation records via coordinate-based generative model
Sencan Sun, Congyi Nai, Baoxiang Pan, Wentao Li, Lu Li, Xin Li, Efi Foufoula-Georgiou, and Yanluan Lin

TL;DR
This paper introduces PRIMER, a deep generative model that fuses multiple precipitation data sources to produce accurate, high-resolution, global precipitation estimates, effectively correcting biases and enhancing spatial coherence.
Contribution
PRIMER is a novel coordinate-based diffusion model that integrates gauge, satellite, and model data, enabling bias correction and high-resolution precipitation mapping without retraining.
Findings
PRIMER significantly reduces errors at most stations.
It improves spatial coherence of precipitation fields.
It generalizes to correct biases in unseen operational forecasts.
Abstract
Precipitation remains one of the most challenging climate variables to observe and predict accurately. Existing datasets face intricate trade-offs: gauge observations are relatively trustworthy but sparse, satellites provide global coverage with retrieval uncertainties, and numerical models offer physical consistency but are biased and computationally intensive. Here we introduce PRIMER (Precipitation Record Infinite MERging), a deep generative framework that fuses these complementary sources to produce accurate, high-resolution, full-coverage precipitation estimates. PRIMER employs a coordinate-based diffusion model that learns from arbitrary spatial locations and associated precipitation values, enabling seamless integration of gridded data and irregular gauge observations. Through two-stage training--first learning large-scale patterns, then refining with accurate gauge…
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