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A variable-correlation model to characterize asymmetric dependence for post-processing short-term precipitation forecasts
2019
Monthly Weather Review
Statistical postprocessing methods can be used to correct bias and dispersion error in raw ensemble forecasts from numerical weather prediction models. Existing postprocessing models generally perform well when they are assessed on all events, but their performance for extreme events still needs to be investigated. Commonly used joint probability postprocessing models are based on the correlation between forecasts and observations. Because the correlation may be lower for extreme events as a
doi:10.1175/mwr-d-19-0258.1
fatcat:vaxlesusnvgnpffjpxro3xf5hm