Censored and shifted gamma distribution based EMOS model for probabilistic quantitative precipitation forecasting
S\'andor Baran, D\'ora Nemoda

TL;DR
This paper introduces a censored and shifted gamma (CSG) distribution-based EMOS model for calibrating ensemble forecasts of 24-hour precipitation, improving probabilistic and point forecast accuracy over existing methods.
Contribution
The paper proposes a novel EMOS model using a censored and shifted gamma distribution tailored for precipitation, demonstrating superior performance over traditional models.
Findings
CSG EMOS slightly outperforms GEV EMOS in calibration and accuracy.
CSG EMOS significantly improves predictive skill compared to raw ensemble and BMA.
Model tested on ensembles from the University of Washington and Hungarian Meteorological Service.
Abstract
Recently all major weather prediction centres provide forecast ensembles of different weather quantities which are obtained from multiple runs of numerical weather prediction models with various initial conditions and model parametrizations. However, ensemble forecasts often show an underdispersive character and may also be biased, so that some post-processing is needed to account for these deficiencies. Probably the most popular modern post-processing techniques are the ensemble model output statistics (EMOS) and the Bayesian model averaging (BMA) which provide estimates of the density of the predictable weather quantity. In the present work an EMOS method for calibrating ensemble forecasts of precipitation accumulation is proposed, where the predictive distribution follows a censored and shifted gamma (CSG) law with parameters depending on the ensemble members. The CSG EMOS model is…
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