Probabilistic quantitative precipitation field forecasting using a two-stage spatial model
Veronica J. Berrocal, Adrian E. Raftery, Tilmann Gneiting

TL;DR
This paper introduces a two-stage spatial statistical model for postprocessing numerical weather forecasts to produce calibrated, correlated probabilistic precipitation forecasts at multiple sites, improving accuracy over traditional methods.
Contribution
The study develops a novel two-stage spatial model that captures precipitation occurrence and accumulation, integrating numerical forecast information for improved probabilistic predictions.
Findings
Model produces well-calibrated, sharp probabilistic forecasts.
Outperforms reference forecasts for spatially aggregated quantities.
Effectively captures spatial dependence in precipitation fields.
Abstract
Short-range forecasts of precipitation fields are needed in a wealth of agricultural, hydrological, ecological and other applications. Forecasts from numerical weather prediction models are often biased and do not provide uncertainty information. Here we present a postprocessing technique for such numerical forecasts that produces correlated probabilistic forecasts of precipitation accumulation at multiple sites simultaneously. The statistical model is a spatial version of a two-stage model that represents the distribution of precipitation by a mixture of a point mass at zero and a Gamma density for the continuous distribution of precipitation accumulation. Spatial correlation is captured by assuming that two Gaussian processes drive precipitation occurrence and precipitation amount, respectively. The first process is latent and drives precipitation occurrence via a threshold. The…
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