Journal article
Improving precipitation forecasts by generating ensembles through postprocessing
DL Shrestha, DE Robertson, JC Bennett, QJ Wang
Monthly Weather Review | AMER METEOROLOGICAL SOC | Published : 2015
Abstract
This paper evaluates a postprocessing method for deterministic quantitative precipitation forecasts (raw QPFs) from a numerical weather prediction model. The postprocessing aims to produce calibrated QPF ensembles that are bias free, more accurate than raw QPFs, and reliable for use in streamflow forecasting applications. The method combines a simplified version of the Bayesian joint probability (BJP) modeling approach and the Schaake shuffle. The BJP modeling approach relates raw QPFs and observed precipitation by modeling their joint distribution. It corrects biases in the raw QPFs and generates ensemble forecasts that reflect the uncertainty in the raw QPFs. The BJP modeling approach is a..
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